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. 2017 May 2;6:e22054. doi: 10.7554/eLife.22054

Transcriptome analysis illuminates the nature of the intracellular interaction in a vertebrate-algal symbiosis

John A Burns 1,2,*, Huanjia Zhang 3, Elizabeth Hill 3, Eunsoo Kim 1,2, Ryan Kerney 3,*
Editor: Debashish Bhattacharya4
PMCID: PMC5413350  PMID: 28462779

Abstract

During embryonic development, cells of the green alga Oophila amblystomatis enter cells of the salamander Ambystoma maculatum forming an endosymbiosis. Here, using de novo dual-RNA seq, we compared the host salamander cells that harbored intracellular algae to those without algae and the algae inside the animal cells to those in the egg capsule. This two-by-two-way analysis revealed that intracellular algae exhibit hallmarks of cellular stress and undergo a striking metabolic shift from oxidative metabolism to fermentation. Culturing experiments with the alga showed that host glutamine may be utilized by the algal endosymbiont as a primary nitrogen source. Transcriptional changes in salamander cells suggest an innate immune response to the alga, with potential attenuation of NF-κB, and metabolic alterations indicative of modulation of insulin sensitivity. In stark contrast to its algal endosymbiont, the salamander cells did not exhibit major stress responses, suggesting that the host cell experience is neutral or beneficial.

DOI: http://dx.doi.org/10.7554/eLife.22054.001

Research Organism: Other

eLife digest

Throughout the natural world, when different species form a close association, it is known as a symbiosis. One species can depend on another for food, defense against predators or even for reproduction. Corals, for example, incorporate single-celled algae into their own cells. The algae photosynthesize, harnessing energy from sunlight to make sugars and other molecules that also feed the coral cells. In return, corals protect the algae from the environment and provide them with the materials they need for photosynthesis. This type of relationship where one organism lives inside another species is called an endosymbiosis.

In animals with a backbone, endosymbioses with a photosynthetic organism are rare. There is only one known example so far, which is between a green alga called Oophila amblystomatis and the spotted salamander, Ambystoma maculatum. The female spotted salamander deposits her eggs in pools of water, and algae enter the eggs, proliferate, and later invade tissues and cells of the developing embryos. However, it is not understood how similar the interaction between the alga and the salamander is to that in coral-algal symbioses, or whether it is rather more similar to a parasitic infection.

Burns et al. now address this question by comparing salamander cells harboring algae to those that lacked algae. A technique called RNA-Seq was used to characterize the changes in gene activity that take place in both organisms during the endosymbiosis. The results show that algae inside salamander cells are stressed and they change the way in which they make energy. Instead of carrying out photosynthesis to produce food for the salamander host – as happens in coral-algal interactions – Oophila amblystomatis is fighting to adapt to its new environment and switches to a less efficient energy producing pathway known as fermentation.

Burns et al. found that, in striking contrast to the alga, affected salamander cells do not show signs of stress. Instead several genes that are known to suppress immune responses against foreign invaders are expressed to high levels. This may explain how salamander cells are able to tolerate algae inside them.

The next challenge is to understand how the alga enters salamander cells. The current work identified some potential routes of entry, and follow up studies are now needed to explore those possibilities.

DOI: http://dx.doi.org/10.7554/eLife.22054.002

Introduction

All vertebrates have a ‘microbiome’ that includes mutualist ecto-symbionts living in close association with, but not within, their cells (Douglas, 2010). The most substantial vertebrate ecto-symbioses occur in the colon and small intestine and are implicated in physiological processes such as nutrient absorption from undigested complex carbohydrates (Ley et al., 2008; Krajmalnik-Brown et al., 2012). Known endosymbioses in vertebrates, where microbial cells live within the vertebrate cells, are almost exclusively parasitic, causing diseases such as malaria, toxoplasmosis, and chytridomycosis (Douglas, 2010; Sibley, 2004; Davidson et al., 2003). Currently, there is only a single exception. The green alga Oophila amblystomatis enters the cells of the salamander Ambystoma maculatum during early development (Kerney et al., 2011), and co-culture experiments show that the algae consistently benefit the salamander embryo hosts (Small et al., 2014; Graham et al., 2013; Pinder and Friet, 1994).

There is a long history of experimentation on the ectosymbiotic association between O. amblystomatis and A. maculatum: where the alga populates salamander egg capsules that contain developing embryos (Small et al., 2014; Gilbert, 1944). In the ectosymbiosis, the alga appears to benefit from nitrogenous waste excreted by the developing embryo while providing periodic oxygen and photosynthate to the microenvironment of the embryo’s egg capsule, aiding salamander development (Small et al., 2014; Graham et al., 2013; Gilbert, 1944). However, the intracellular association between these two organisms was only recently recognized (Kerney et al., 2011), 122 years after the first published description of green salamander egg masses (Orr, 1888).

Perhaps the most intensively studied endosymbiosis between photosynthetic microbes and non-photosynthetic animal hosts is the facultative mutualistic interactions between various invertebrate cnidarians (i.e. corals and sea anemones) and dinoflagellate endosymbionts (Davy et al., 2012). Such interactions provide the host animals the ability to obtain energy through photosynthesis. Cnidarian-dinoflagellate endosymbioses involve a number of physiological changes in both the host and photo-symbiont on a cellular level. The host animal tends to exhibit a tempered immune response to the ingressing cells (modulated by the host, symbiont, or both) (Detournay et al., 2012), and to express genes necessary for transferring nutrients to the symbiont (Lehnert et al., 2014), receiving nutrients from the symbiont (Lehnert et al., 2014), and use of the endosymbiont-derived metabolites (Lehnert et al., 2014). Less is known about adaptations of the endosymbiotic cells, but they can include modified osmoregulation (Mayfield and Gates, 2007), export of nutrients to the host cell (Lin et al., 2015), and physical changes such as loss of flagella (Muller-Parker et al., 2015).

In this study, we used a dual RNA-Seq approach on wild-collected A. maculatum salamander embryos and their endosymbiont alga O. amblystomatis to characterize the transcriptomic changes that occur in both organisms during this unique endosymbiosis. We isolated free-swimming algal cells living within the egg capsule (‘intracapsular environment’, triplicate sampling), salamander cells that did not contain algae (N = 50 cells per replicate, quadruplicate sampling), and salamander cells containing intracellular algae (N = 50 cells per replicate, quadruplicate sampling) from the same individuals. We identified differentially expressed genes in both organisms attributed to the intracellular association. The algal endosymbiont undergoes drastic changes in metabolism, displaying signs of cellular stress, fermentation, and decreased nutrient transport, while the host salamander cell displays a limited innate immune response and changes to nutrient sensing, but does not appear to invoke cell stress responses such as apoptosis or autophagy.

Results

Cell isolation, mRNA sequencing, and de-novo assembly

Ectosymbiotic, intra-capsular algal cells were isolated from egg capsules with a syringe (Figure 1a). Individual A. maculatum cells were manually separated into groups of 50 cells with or without intracellular algal symbionts (Figure 1a,b). Total RNA was extracted from A. maculatum cells or from intra-capsular algal samples, and converted to cDNA (Figure 1c). A test for contaminating mRNA from A. maculatum lysed during dissociation was shown to be negative (Figure 1—figure supplement 1) A total evidence assembly contained all reads from all samples (n = 3 intra-capsular algal samples from three different eggs; salamander cells with and without algae from n = 4 individual salamander embryos). This was followed by homology and abundance filtering (Figure 1—figure supplements 2, 3 and 4), producing 46,549 A. maculatum and 6,726 O. amblystomatis genes that were used in differential expression analysis.

Figure 1. Three populations of cells from A. maculatum egg capsules containing stage 39 embryos were collected and prepared for mRNA extraction, cDNA sequencing, and differential expression analysis revealing several hundred significantly differentially expressed genes detected for the salamander and alga.

(a) Intracapsular algae (Population 1) were removed from intact eggs using a syringe and hypodermic needle (photo credit: Roger Hangarter). Embryos were decapsulated and washed, and the liver diverticulum region (dashed line), containing high concentrations of algae (red dots), was isolated and dissociated into a single cell suspension (illustration adapted from Harrison, 1969). The dissociated cells were screened for A. maculatum endoderm cells without alga (black arrowheads) and endoderm cells with intracellular alga (green arrowhead). Scale bars on microscope images are 20 µm. (b) Isolated endoderm cell, and isolated endoderm cell with intracellular alga. Scale bars on microscope images are 20 µm. (c) Representative cDNA distribution (bioanalyzer trace) from a population of 50 manually isolated A. maculatum endoderm cells. Peaks at 35 bp and 10380 bp are markers. Due to evidence of lysed A. maculatum cells observed in the cell suspension fluid after dissociation of A. maculatum embryos (debris seen in dissociated A. maculatum microscope images in (a) and (b)), that fluid was tested for the presence of contaminating mRNA. mRNA was not detected in the surrounding fluid, Figure 1—figure supplement 1. Lower limit abundance thresholds (Figure 1—figure supplement 2), and correction for low sequencing depth in intracelluar algal samples (Figure 1—figure supplement 3) were implemented to obtain the final gene sets used for differential expression analysis. Depth of sequencing was not biased for A. maculatum cell with and without alga samples (Figure 1—figure supplement 4). Library preparation GC bias affected the completeness of the algal transcriptome obtained from intracapsular and intracellular O. amblystomatis (Figure 1—figure supplement 5). (d and e) Dotplots of log2 fold change vs. expression level. The blue horizontal lines are plus and minus 4-fold change in expression between samples. The red dots are genes with FDR adjusted p-values<0.05, indicating a significant difference in expression level between conditions. (d) Differentially expressed algal transcripts. (e) Differentially expressed salamander transcripts.

DOI: http://dx.doi.org/10.7554/eLife.22054.003

Figure 1—source data 1. Raw counts matrix with counts for all reads mapped to the total evidence assembly (the assembly of all salamander and algal reads from wild-collected samples).
The data in this file (after filtering and normalization) was used to generate the dotplots in Figure 1D and E, Figure 1—figure supplements 24, and Figure 3. This is the raw data that was used for differential expression analysis. Rows are genes. Column names are as follows: S2a-S5a are counts for salamander cells without algae. S2b-S5b are counts for salamander cells with intracellular algae (samples are paired from the same individuals, such that S2a and S2b came from the same salamander). A1-A3 are intracapsular algae samples. RK_* are cultured algal samples.
DOI: 10.7554/eLife.22054.004
Figure 1—source data 2. List of 6,726 algal gene IDs used in differential expression analysis.
Use to filter raw counts matrix to get final algal gene list.
DOI: 10.7554/eLife.22054.005
Figure 1—source data 3. List of 46,549 salamander gene IDs used in differential expression analysis.
Use to filter raw counts matrix to get final salamander gene list.
DOI: 10.7554/eLife.22054.006

Figure 1.

Figure 1—figure supplement 1. A. maculatum cell lysis during embryo dissociation did not contaminate the cell suspension fluid with significant quantities of mRNA.

Figure 1—figure supplement 1.

(a) Representative cDNA distribution (bioanalyzer trace) from a population of 50 manually isolated A. maculatum endoderm cells. (b) No cDNA was produced when the fluid the cells were suspended in was tested indicating that the cDNA populations from manually isolated A. maculatum endoderm cells was specific and not contaminated with cDNAs derived from randomly lysed cells. In both (a) and (b), the peaks at 35 bp and 10380 bp are markers.
Figure 1—figure supplement 2. Determining lower limit FPKM thresholds for inclusion in differential expression analysis.

Figure 1—figure supplement 2.

For pairs of experimental conditions (i.e. n = 4 A. maculatum samples without intracellular algae, and n = 4 A. maculatum samples with intracellular algae), gene expression levels were sorted by the mean FPKM value (expression level) in one set of samples (i.e. in (a) expression levels of A. maculatum genes from samples with and without intracellular algae were sorted by mean expression per gene for n = 4 A. maculatum samples without intracellular algae). Using a sliding window of 100 genes, starting with the 100 most lowly expressed genes of the sorted set, median expression levels of the 100 gene bins were calculated for both experimental conditions. Those binned values were plotted with the expectation that on average, gene expression from one experimental condition should be positively correlated with gene expression from the other experimental condition. Vertical red dashed lines indicate the level of expression along the x-axis (in the sorted sample, determined by visual inspection of the plots) where positively correlated expression between the experimental conditions begins. Those values were used as lower limit thresholds in data pre-filtering steps. (a) Salamander cells with endosymbionts vs. salamander cells without endosymbionts; sorted by salamander cells without endosymbionts expression levels. (b) Salamander cells without endosymbionts vs. salamander cells with endosymbionts; sorted by salamander cells with endosymbionts expression levels. (c) Intracellular algae vs. intracapsular algae; sorted by intracapsular algae expression levels. (d) Intracapsular algae vs. intracellular algae; sorted by intracellular algae expression levels.
Figure 1—figure supplement 3. Determining a threshold for absence calls in intracellular algal data.

Figure 1—figure supplement 3.

Intracapsular algae samples had a higher sequencing depth than the intracellular algae. This filtering determined the lower FPKM limit of expression in intracapsular algae for inclusion in differential expression analysis. (a) Algal gene expression levels in intracapsular (red) and intracellular (blue) algae. The vertical dashed lines represent the median expression level of the respective populations. The large blue bar at −5 ln(FPKM) is the overrepresented proportion of genes with no expression in intracellular algal samples due to the low depth of sequencing. (b) Genes with low levels of intracapsular algal expression are detected in 100% of the intracellular algal samples due to pre-filtering inclusion of genes that were detected in all four intracellular algal samples. However, as the expression level of genes in intracapsular algal samples increases, the proportion of genes detected in intracellular algae decreases sharply with a minimum of 40%. Following this minimum, the proportion of genes detected in intracellular samples increase proportionally with the intracapsular expression. The red dashed vertical line is the FPKM value in intracapsular algae where 95% or more of the intracellular genes are detected. Below this threshold, a gene’s absence in intracellular genes is possibly due to the low sequencing depth, above this threshold, a gene’s absence in intracellular algae is interpreted as potential under-expression. (c) The same plot as in (a), after filtering to remove genes absent in intracellular algae with expression levels in intracapsular algae below threshold. (d) The same plot as in (b), after the dependence of detection on expression level was removed.
Figure 1—figure supplement 4. Determining threshold for absence calls in salamander data.

Figure 1—figure supplement 4.

The algal filtering described in Figure 1—figure supplement 3 was not required for salamander transcripts. (a) Salamander gene expression levels in salamander cells without algae (red) and salamander cells with algal endosymbionts (blue). Data is plotted on a natural log scale. The vertical dashed lines represent the median expression level of the respective populations (overlapping in this case). (b) The proportion of salamander mRNA’s detected in alga-containing cells does not depend on the mRNA expression level in salamander cells without algae. Greater than 95% of all genes are detected in salamander cells plus algal samples for all values of expression in salamander cells without alga samples.
Figure 1—figure supplement 5. High GC content algal genes were not detected by the combination of SMARTer cDNA synthesis and Nextera-XT library preparation.

Figure 1—figure supplement 5.

(a) The GC content distribution of algal transcripts generated using TrueSeq library preparation of total RNA, sequenced on the MySeq platform with approximately 30 million 75 bp paired end reads. 79% of eukaryote BUSCOs were detected in this assembly. The median GC content (green dashed line) is 62%. (b) The GC content distribution from (a), split by library preparation method. Red bars represent algal transcripts found in transcriptomes generated by both library preparation methods (SMARTer-Netxtera-XT and TruSeq). Blue bars represent transcripts found only in the transcriptome assembly from the TrueSeq library preparation method, that are absent from the transcriptome generated using the SMARTer cDNA synthesis-Nextera-XT library preparation method. There is an apparent bias against high GC content algal transcripts in library prepared using the SMARTer cDNA synthesis-Nextera-XT protocol (Kolgomorov-Smirnov test, p<2.2 × 10−16). Both libraries were sequenced to a similar depth of approximately 30 million reads for the alga-only samples in the total-evidence assembly from the SMARTer-cDNA synthesis-Nextera-XT library and 30 million reads for the TrueSeq library from unialgal cultures. Since sequencing depth was equivalent and GC bias is apparent, the data suggests that GC bias in the SMARTer-cDNA synthesis-Nextera-XT library is what accounts for the low number of detected BUSCOs (49%) in the algal transcriptome generated from wild-collected algal samples associated with salamander eggs and cells. (C.) The distribution of GC content in A. maculatum transcripts (gray bars) is centered around much lower GC content transcripts (median GC content of 43%) compared to that of O. amblystomatis (green bars, median GC content of 62%). The A. maculatum assembly contained 88% of eukaryote BUSCOs. Our evidence points to bias against high GC content transcripts in the SMARTer cDNA synthesis and Nextera-XT library prep method, that becomes significant above 60% GC content. Transcripts with GC content of 60% or greater are in the tail of the salamander GC content distribution, but near the median of the algal GC content distribution. This offers an explanation for the BUSCO results, where the salamander transcriptome from the wild-collected samples is comprehensive, while the algal transcriptome from the same samples and library prep methods is missing around 40% of the algal transcriptome.

The salamander and algal transcriptomes were tested for completeness using BUSCO (Benchmarking Universal Single-Copy Orthologs) analysis (Simão et al., 2015). The final filtered algal assembly contained 31% (130/429) of eukaryote BUSCOs, reduced, due to limitations of sequencing depth in intracellular algal samples, from 47% (199/429) for algal genes in the total evidence assembly. For comparison, a de-novo transcriptome assembly from O. amblystomatis cultured in replete media, contained 79% (336/429) of eukaryote BUSCOs. This is comparable to the Chlamydomonas reinhardtii transcriptome, containing 74% (316/429) of eukaryote BUSCOs. The algal transcriptome generated from the wild collected samples, however, was prepared using a different library preparation protocol (SMARTer cDNA synthesis followed by Nextera-XT library preparation). This was chosen for the low cell numbers of salamander cells with and without endosymbionts. The transcriptome derived from the cultured alga was sequenced from a TrueSeq library preparation. This was chosen due to relatively large quantities of RNA from lab cultured algal strains. The algal transcriptome from the wild collected total evidence assembly (SMARTer cDNA synthesis and Nextera-XT library preparation) was found to be missing as much as about 40% of the total algal transcriptome, likely due to GC-content biases introduced during library preparation (Figure 1—figure supplement 5a and b) (Lan et al., 2015). The incompleteness of the transcriptome did not affect inference of differentially expressed genes from the set of 6,726 found in all algal samples. However, the low-cell count library preparation protocol did limit the sensitivity of our algal analysis in that we could not draw inferences from genes that were not present in the wild-collected algal libraries.

The final filtered A. maculatum transcriptome assembly contained 88% (375/429) of eukaryote BUSCOs and 69% (2,078/3,023) of vertebrate BUSCOs. For comparison, the A. mexicanum transcriptome assembly (Smith et al., 2005; Voss et al., 2015; Baddar et al., 2015Voss, 2016) contained 89% (381/429) of eukaryote BUSCOs and 65% (1,953/3,023) of vertebrate BUSCOs. The SMARTer cDNA synthesis followed by Nextera-XT library prep did not exclude expected salamander transcripts. This is likely due to the low GC content of these RNAs, with a median 43% GC content compared to the algal transcript’s median GC content of 62% (Figure 1—figure supplement 5c).

Differential expression (DE) analysis

Among the 6,726 O. amblystomatis genes available for DE analysis, 277 were significantly differentially expressed with a false discovery rate (FDR) adjusted p-value (Benjamini and Hochberg, 1995) of less than 0.05 (Figure 1d) between intracellular and intracapsular algae. There were 111 genes with higher expression in intracellular algae and 166 genes with lower expression in intracellular algae. Of those, 56 (50%) of the over expressed genes and 91 (55%) of the under expressed genes were assigned putative functions based on homology to known proteins. The genes were grouped into eighteen broad functional categories (Table 1) revealing the response of the alga to the intracellular environment. Intracellular algae exhibit a stress response with over-expression of three heat shock proteins and other indicators of oxidative and osmotic stress, and large metabolic changes compared to freely swimming intracapsular algal cells. The complete list of annotated, differentially expressed alga genes can be found in the file Table 1—source data 1.

Table 1.

Functional classification of the green alga O. amblystomatis genes that are differentially expressed during intracellular association with the salamander host.

DOI: http://dx.doi.org/10.7554/eLife.22054.012

Table 1—source data 1. Differentially expressed algal transcripts, annotations, functional groupings, and expression statistics.
DOI: 10.7554/eLife.22054.013
Functional Category # genes #up #down
No Homology 90 43 47
Conserved Gene with Unknown Function 37 11 26
Stress Response 32 14 18
Fermentation 17 13 4
Electron Transport-Mitochondrial 6 0 6
Photosynthesis 13 7 6
Ribosomal Proteins 11 1 10
Nitrogen Transport 5 0 5
Phosphate Transport 2 0 2
Other Transport 12 6 6
Sulfur Metabolism 5 5 0
Lipid Metabolism 7 5 2
Other Metabolism 9 0 9
Flagellar Apparatus 4 1 3
Signaling 5 1 4
Transposable Element 4 1 3
Glycosylation 2 0 2
Other 13 2 11
Totals 277 111 166

In A. maculatum, 46,549 genes were analyzed for differential expression. A total of 300 genes were identified as differentially expressed with an FDR adjusted p-value less than 0.05 (Figure 1e). There were 134 genes with higher expression in salamander cells containing intracellular algae and 166 genes with lower expression in those cells. Of those, 74 (55%) of over expressed genes and 71 (43%) of the under expressed genes were assigned putative functional annotations. The genes were grouped into twelve broad functional categories (Table 2) reflecting the response of A. maculatum cells to the intracellular algae. Transposable elements comprise the largest category of annotated differentially expressed genes (18% of over- and 27% of the under-expressed). Other functional responses include an immune response to the intracellular alga, modulation of the host cell’s nutrient sensing, and differential expression of genes related to cell survival and interactions with other cells, including cell-cell adhesion and motility. The complete list of annotated, differentially expressed algal genes can be found in the file Table 2—source data 1.

Table 2.

Functional classification of the salamander, A. maculatum, genes that are differentially expressed when associated with intracellular alga.

DOI: http://dx.doi.org/10.7554/eLife.22054.014

Table 2—source data 1. Differentially expressed salamander transcripts, annotations, functional groupings, and expression statistics.
DOI: 10.7554/eLife.22054.015
Functional Category # genes #up #down
No Homology 155 60 95
Transposable Element 69 24 45
Immune Response 12 11 1
Nutrient Sensing 14 7 7
Metabolism 8 6 2
Adhesion/ECM 7 4 3
Proliferation/Survival/
Apoptosis
7 7 0
Motility 5 3 2
Transcriptional Regulation 6 2 4
Cell-Type Specific 3 3 0
DNA Repair 3 3 0
Others 11 4 7
Totals 300 134 166

Phosphate and nitrogen transporters in O. amblystomatis are regulated by phosphate and glutamine levels, respectively

Cultures of the symbiotic alga in AF6 media, allowed in vitro testing of algal inorganic phosphate and nitrogen transporter regulation, in response to availability of relevant nutrient sources.

The high affinity phosphate transporter PHT1-2, was regulated by extracellular inorganic phosphate concentration in cultured O. amblystomatis (Figure 2a). The average qPCR expression difference between high (100 µM and above) and low (10 µM and below) phosphate concentrations was 32-fold (p=4.4 × 10−15), which agrees with both the RNA-seq data (25 fold lower expression in the endosymbiotic alga), and estimates of phosphate concentrations in vernal pool water (low micromolar) (Brodman et al., 2003; Carrino-Kyker and Swanson, 2007) compared to inside amphibian cells (low millimolar) (Horowitz et al., 1979; Burt et al., 1976). A second phosphate transporter, a chloroplast localized sodium dependent phosphate transport protein 1 (ANTR1), was not regulated by extracellular phosphate levels (Figure 2b). Its low expression level in the endosymbiotic alga is therefore not likely to be related directly to an increased phosphate level of the host cytoplasm.

Figure 2. An algal phosphate transporter is modulated by inorganic phosphate levels, while nitrogen source transporters are modulated by an organic nitrogen source, glutamine.

Figure 2.

Normalized measurements from RNAseq data are provided for direct visual comparison of effect sizes in intracellular algae compared to in vitro experiments. Intracapsular alga measurements are ‘caps’ (filled red circles); intracellular alga measurements are ‘cell’ (empty red circles). (a) Expression of high affinity phosphate transporter PhT1-2 mRNA across a range of phosphate concentrations. (b) Expression of chloroplast sodium dependent phosphate transporter ANTR1 mRNA across a range of phosphate concentrations. In (a) and (b) The red dashed line indicates the average expression of the phosphate transporter in the low phosphate range (100 pM to 1 µM); the blue dashed line indicates the average expression in the high phosphate range (10 µM to 10 mM). (c) Expression of three algal nitrogen transporters in the absence (-) and presence (+) of 2 mM L-glutamine. Data is plotted on a log2 scale on the y axis, where more negative values indicate lower expression levels. Circles are individual replicates; bars are the average for each experiment. *p<0.05; n.s. indicates no significant difference; the statistical test performed was an ANOVA with contrasts.

DOI: http://dx.doi.org/10.7554/eLife.22054.016

Figure 2—source data 1. Normalized expression levels of algal phosphate transporters.
DOI: 10.7554/eLife.22054.017
Figure 2—source data 2. Normalized expression levels of algal nitrogen transporters.
DOI: 10.7554/eLife.22054.018

Expression of two inorganic nitrogen transporters (ammonium transporter 1-member 2, AMT1-2 and high-affinity nitrate transporter 2.4, NRT2.4) and a urea-proton symporter, DUR3 was repressed by L-glutamine (Figure 2c). Adding 2 mM glutamine, the concentration observed in the cytoplasm of amphibian cells (Vastag et al., 2011; Westermann et al., 2016, 2012), to algal cultures induced down-regulation of AMT1-2 (17-fold, p=3.2 × 10−4), NRT2.4 (7-fold, p=0.013), DUR3 (278-fold, p=9.5 × 10−10). All of these in vitro changes closely match the in vivo expression differences revealed by RNA-seq for the intracellular alga (Figure 2c).

Discussion

Dual-RNA-Seq of a vertebrate endosymbiont

This study provides the first transcriptomes for A. maculatum and O. amblystomatis and an in-depth look at gene expression changes of both organisms in their unique endosymbiotic state. The dual-RNA-seq approach has previously been used to investigate intracellular parasitism in vertebrates (Westermann et al., 2016, 2012; Tierney et al., 2012). However, our analysis represents the first investigation of a vertebrate endosymbiosis where the generalized interaction between the two organisms has consistently been characterized as a mutualism (Small et al., 2014; Gilbert, 1944; Bachmann et al., 1986). Our results also extend dual-RNA-seq methodology to low cell number samples from wild collected, non-model organisms. The transcriptional responses to this cellular association reveals how a vertebrate host responds to an intracellular mutualist and offers insights into the physiological condition of both partners in their endosymbiotic state.

In the host salamander, we identified only a small fraction of the analyzed genes (300/46,549; 0.64%) that are differentially expressed between endosymbiont-bearing vs endosymbiont-free salamander cells. This tempered host response is reminiscent of that of the hosts in coral-dinoflagellate endosymbioses; less than 3% of the analyzed genes were shown to be differentially expressed when the host coral was inoculated with and without a symbiosis competent strain of dinoflagellate (Voolstra et al., 2009; Mohamed et al., 2016). By comparison, the algal response to endosymbiosis from ectosymbiosis was observed to be more pronounced; 4.12% (277/6,726) of the algal genes were differentially expressed, proportionally 6.4 times more genes than in the host salamander. This level of change, nevertheless, is much more subtle when compared to the changes observed between the endosymbiont algal transcriptome and the cultured free-living alga grown in nutrient replete conditions where 40% (2,687/6,726) of the algal genes were differentially expressed.

Expression differences in intracellular algae

The over-expression of heat shock proteins, autophagy related proteins, and other stress inducible genes reveal hallmarks of stress in the intracellular algae (Supplementary file 1). These are undergoing multiple metabolic changes compared to their free-swimming intracapsular counterparts. Intracellular algae parallel the response of the closely related green alga Chlamydomonas reinhardtii to low sulfur levels (Supplementary file 2) under hypoxia, including gene expression changes consistent with a switch from oxidative to fermentative metabolism (Supplementary file 3) (Nguyen et al., 2008; Grossman et al., 2011). This response, relative to intracapsular algae, includes under-expression of photosystem II core components (Supplementary file 4) in the chloroplast and complex I of the electron transport chain in the mitochondrion (Piruat and López-Barneo, 2005) (Supplementary file 5), along with over-expression of fermentative metabolic pathways that would shuttle pyruvate toward acetyl-CoA, organic acids and alcohols [crucially, over-expression of pyruvate-ferredoxin oxidoreductase (PFOR), phosphate acetyltransferase (PAT), and aldehyde-alcohol dehydrogenase (ADHE)], and potentially produce H2 gas [over-expression of an iron hydrogenase (HYDA1)] (Supplementary file 3) (Volgusheva et al., 2013; Yang et al., 2013Catalanotti et al., 2013).

To verify the observed expression differences between intracapsular and intracellular algae, we performed a comparison of expression in the intracellular algae to O. amblystomatis gene expression in unialgal culture in nutrient replete media. A complete analysis of differentially expressed genes between O. amblystomatis cultured in nutrient replete media and intracellular algae revealed 1,805 over-expressed transcripts and 882 under-expressed transcripts in the intracellular algae (indicating 40% of transcripts are differentially expressed, Figure 3). A summary of GO terms enriched among the 1,805 genes over-expressed in intracellular algae relative to algae cultured in nutrient replete media confirms an enrichment in fermentation and stress response processes (Figure 3—figure supplement 1). Processes enriched among the 882 under-expressed genes are also consistent with low oxygen and stress to the intracellular algae relative to algae cultured in nutrient replete media (Figure 3—figure supplement 2).

Figure 3. Differentially expressed genes between intracellular algae and cultured algae.

Red dots indicate significantly differentially expressed genes (FDR < 0.05). Blue dashed lines represent a plus and minus 2-fold difference in expression. There are 1,805 over-expressed genes in intracellular algae and 802 under-expressed genes in intracellular algae in this comparison.

DOI: http://dx.doi.org/10.7554/eLife.22054.019

Figure 3—source data 1. GC content and length of algal genes.
Use as input for normalizing algal count data based on GC content and gene length for algal libraries prepared by different methods.
DOI: 10.7554/eLife.22054.020

Figure 3.

Figure 3—figure supplement 1. REViGO anlysis of GO terms associated with 1805 over-expressed genes in intracellular algae compared to cultured algae.

Figure 3—figure supplement 1.

This analysis shows enrichment in fermentation processes such as glycerol-3 phosphate metabolism, 2-oxoglutarate metabolism, the glyoxylate cycle, photosystem II stability, photosystem I, and sulfur assimilation, all of which are consistent with the hypothesis that the intracellular algae are fermenting. Processes such as protein folding, apoptotic cell clearance, and sodium ion homeostasis support the hypothesis that the intracellular algae are stressed.
Figure 3—figure supplement 2. REViGO anlysis of 882 under-expressed genes in intracellular algae compared to cultured algae.

Figure 3—figure supplement 2.

Under-expressed processes involved in oxidative pathways, photoprotection, and protein refolding are further evidence of an intracellular algal stress response.

Specific consideration of the 36 genes demarking the fermentation response in intracellular algae compared to intracapsular algae shows that 21 are similarly significantly differentially expressed when compared to their expression in cultured O. amblystomatis from nutrient replete medium (Figure 4). Each of these 21 genes are similarly over- or under-expressed in the intracellular-intracapsular and intracellular-cultured algae comparisons. This includes under-expression of 3 components of the mitochondrial electron transport chain, and consistent over-expression of PFOR, PAT, ADHE and HYDA1. Equivalent photosystem II core components are not significantly under-expressed in intracellular algae compared to cultured algae, suggesting that intracapsular algae over-express photosystem II core components, rather than intracellular algae under-expressing them. This may be due to hyperoxic conditions in the intracapsular environment (Pinder and Friet, 1994), which could lead to oxidative damage to and rapid turnover of the photosystem II core (Richter et al., 1990).

Figure 4. Differential expression of fermentation genes in intracellular algae compared to cultured algae.

Figure 4.

Blue dots are genes that were over-expressed in intracellular algae compared to intracapsular algae. Orange dots are genes that were under-expressed in intracellular algae compared to intracapsular algae. Vertical blue lines represent plus and minus two-fold fold change. The horizontal blue line represents FDR adjusted p-value equal to 0.05. Genes above the horizontal blue line are significantly differentially expressed; genes below the blue line are not. Key fermentation genes, PFOR, HYDA1, ADHE, and PAT are significantly over-expressed in intracellular algae compared to cultured algae, in the same manner as they are over-expressed in intracellular algae compared to intracapsular algae. Several components of complex I of the electron transport chain in the mitochondrion are also significantly under-expressed (CYB, ND2, ND4), though ND1 is over-expressed in intracellular algae compared to cultured algae.

DOI: http://dx.doi.org/10.7554/eLife.22054.023

Overall, these metabolic changes suggest that photosynthesis by the alga does not keep up with respirational demand during the endosymbiotic state. In algal fermentation, some photosynthesis components are still active, notably photosystem II (even if it is downregulated) (Volgusheva et al., 2013). However, the complement of over- and under-expressed genes in the alga suggests that neither the diffuse oxygen in these tissues nor the oxygen generated by photosynthesis is sufficient to meet the metabolic demands of the algal cell through oxidative phosphorylation. Instead these cells have switched to fermentation. This is potentially attributable in part to the opaque tissues of the embryonic host, which restrict the necessary photons from reaching algal chloroplasts that would allow more oxygen to be generated by the splitting of water.

The occurrence of intracellular fermentation is also supported by decreased starch granules in the intracellular algae and transcriptional changes to algal sulfate transport and sulfur metabolism associated genes. Previous analysis of algal ultrastructure revealed intracellular algae had a significant reduction of starch reserves compared to intracapsular algae (Kerney et al., 2011). Intracellular algae had approximately 56% of the starch reserves of intracapsular algae by cross sectional area, which corresponds to around 42% of the starch reserves by volume (Kerney et al., 2011). Starch consumption during algal fermentation is well characterized in other Chlamydomonad algae (Zhang et al., 2002). Two recent studies observed a reduction of intracellular starch reserves to approximately 50% of their peak levels during long term sulfur deprivation (Zhang et al., 2002; Chader et al., 2009). The overexpression of a sulfate transporter and taurine catabolic enzymes (González-Ballester et al., 2010), along with other transcripts associated with sulfur metabolism (Figure 3; Supplementary file 2), indicates that fermentation in intracellular Oophila coincides with sulfur deprivation and closely matches the consumption of starch found in other fermenting algae.

One discrete class of algal changes entails modifications to nitrogen and phosphorous transporters (Supplementary file 6), which are likely attributed to relatively high concentrations of intracellular nutrients compared to the egg-capsule microenvironment (Brodman et al., 2003; Carrino-Kyker and Swanson, 2007; Horowitz et al., 1979; Burt et al., 1976; Vastag et al., 2011; Goff and Stein, 1978). Transcriptional responses, closely matching those seen in our DE analysis, were initiated by mimicking intracellular concentrations of phosphate or glutamine in cultured algal stocks. The algal down regulation of inorganic nitrogen transporters in response to glutamine suggests that the algal endosymbiont is using host glutamine as a nitrogen source. This scenario is supported by the use of glutamine as a sole nitrogen source in other related green algal taxa (Neilson and Larsson, 1980). The changes in transporter expression indicate that metabolite concentration differences in an algal cell’s microenvironment can account for potentially all of the observed transcriptional differences in the DE analysis. This not only validates our dual-RNA-seq experimental design but suggests mechanisms of niche-dependent transcriptional regulation consistent with other green algae (Fan et al., 2016), and the potential acquisition of host-derived glutamine for intracellular algal metabolism.

Expression differences in salamander cells with algal endosymbionts

There are interesting parallels to both parasitic infections and other known facultative endosymbioses in the salamander transcripts expressed. These include innate immune responses, nutrient sensing, cell motility and apoptosis/survival. The changes in transcript expression reveal a unique cytosolic relationship between these salamander cells and their algal endosymbionts.

Transposable elements

There are a remarkable number of transposable elements that are differentially expressed between salamander cells with and without algal endosymbionts (Supplementary file 7). Their differential expression may be controlled by the transcriptional regulation of nearby co-regulated genes (Batut et al., 2013). We posit that the observed differential regulation of transposable elements in this study is a function of A. maculatum’s extraordinarily large genome (at around 31 Gb, which is approximately ten times the size of the human genome) (Licht and Lowcock, 1991). This large size is likely attributable to a large number of mobile elements in the salamander genome (Keinath et al., 2015), which may share regulatory regions with protein coding genes (Batut et al., 2013). With a few exceptions, the genes annotated as transposable elements have few detectable RNA transcripts (median counts per million of 1.54 and 0.88 for genes with increased or decreased expression in salamander plus endosymbiont samples, respectively) compared to other, non-transposon, differentially expressed genes (median counts per million of 10.34 and 14.82, respectively). Of the 69 genes with sequence homology to known transposable elements, 32 (46%) have homologs in A. mexicanum transcriptomes (Voss, 2016,Voss, 2016; Stewart et al., 2013; Wu et al., 2013). The transposable elements are largely (68%) long interspersed nuclear elements (LINE retrotransposons), which are typically associated with genome expansions in eukaryotes (Kidwell, 2002). Other differentially expressed transposable elements are PLE retrotransposons (6%), LTR retrotransposons (11%), DIRS retrotransposons (6%), and DNA transposons (3%).

Apoptosis and cell survival

Intracellular invasion by a foreign microbe can lead to apoptosis in animal cells (e.g. salmonella [Monack et al., 1996; Kim et al., 1998] or malaria [Kakani et al., 2016]). However, the salamander cells with algal endosymbionts did not show any clear transcriptional signs of apoptosis. The one gene whose primary functional role may be in apoptosis is the salamander transcript (Bcl2-like protein 14, BCL2L14) with higher expression in salamander cells with algal endosymbionts, which contains BCL-2 homology (BH) domains BH3 and BH2 (Figure 5). Nonetheless, BCL2L14 has been explicitly shown to not be involved in pro-apoptotic regulation (Giam et al., 2012). Other genes with higher expression in salamander cells with algal endosymbionts (e.g. olfactomedin-4, OLFM4; TNFAIP3-interacting protein 1, TNIP1; serine/threonine protein kinase 1, SGK1) have demonstrated anti-apoptotoic functions in other animals (Liu and Rodgers, 2016; Ramirez et al., 2012; Lang et al., 2010). In the lab, intra-tissue, and potentially intracellular, algal cells are detected for prolonged periods during development and post hatching in salamander larvae up to Stage-46, and algal DNA was detected in adult tissues (Kerney et al., 2011). Eventually, the number of detectable algal cells within the larvae decreases (Kerney et al., 2011). This may coincide with the development of the salamander’s adaptive immune system, or it could be that the alga stops producing chlorophyll, but are nonetheless maintained within the embryo. There are seven transcripts (e.g. SGK1; GDNF receptor alpha-4, GFRA4; thymosin beta 4, TMSB4) (Supplementary file 8) with higher expression in salamander cells with algal symbionts that are linked to cell survival in different physiological contexts including cancer cell survival and proliferation, and neuronal survival during development (Lang et al., 2010; Enokido et al., 1998; Bock-Marquette et al., 2004). Genes from this category may contribute to building a novel network of gene regulation used to maintain these endosymbionts.

Figure 5. A. maculatum BCL2L14 protein has both a BH3 and BH2 domain.

Figure 5.

A multiple alignment of the A. maculatum BCL2L14 protein sequence with other organisms reveals a conserved BH3 and BH2 domains (boxed).

DOI: http://dx.doi.org/10.7554/eLife.22054.024

The salamander immune response

Our data reveals a limited immune response of embryonic cells with algal endosymbionts (Supplementary file 9). The salamander immune response can largely be categorized as an innate immune response, but it also includes components of an adaptive response (e.g., interleukin 7, IL7) that precedes the developmental formation of an adaptive immune system (Charlemagne and Tournefier, 1998). Amphibian immunology has, for the most part, been considered a physiological process of larvae and adults (Savage et al., 2014). There are no prior transcriptional datasets on embryonic immune responses, although there is a growing interest in amphibian embryo-microbial interactions (Gomez-Mestre et al., 2006). Therefore, our study fills a gap pending the availability of comparative data from embryonic pathogens such as the oomycete Saprolegnia (Petrisko et al., 2008).

The increased expression of pro-inflammatory interleukins and chemokines (e.g. interleukins, IL-8; IL-7; IL-1β; and C-X-C motif chemokine 10, CXCL10) parallels the transcriptional response of adult frog skin to the chytrid fungus Batrachochytridium dendrobatidis (BD) infection and entry (Ellison et al., 2014). Naïve BD infected frogs mount a much more dramatic immune response than these isolated salamander cells (Savage et al., 2014; Ellison et al., 2014; Rosenblum et al., 2009). However, this may, in part, be due to the tissue-level resolution of these studies on chytrid infection, as opposed to the cellular-level resolution of our study, or the comparison of embryos to adults.

Multiple transcriptional differences indicate an increased generation of reactive oxygen species (ROS) in salamander cells containing algae. The NADPH-oxidase family member dual oxidase 1 (DUOX1)is involved in the zebrafish intestinal epithelial cell immune response to Salmonella infection (Flores et al., 2010) and is also more highly expressed in salamander cells with endosymbiotic algae. While this protein is implicated in several physiological processes, its ability to catalyze the generation of reactive oxygen species (ROS) reveals a potentially conserved immune response role in these non-phagocytic embryonic cells. Moreover, we observed under-expression of subunit 6b of cytochrome c oxidase (COX6B1). Reduction of cytochrome c oxidase activity is associated with the generation of ROS through signaling to endoplasmic reticulum NADPH oxidases in yeast (Leadsham et al., 2013). Additionally, the downregulation of STEAP4 leads to lower levels of ROS in mouse osteoclasts (Zhou et al., 2013), whereas we see upregulation of STEAP4 here. Importantly, the generation of ROS does not rely on the presence of high levels of oxygen in vertebrate cells as ROS can be generated in hypoxic as well as normoxic conditions through a variety of mechanisms (Kim et al., 2012; Nathan and Cunningham-Bussel, 2013) although there is no indication that the salamander cells are suffering from hypoxia here.

Four genes with high expression during the intracellular symbiosis (OLFM4; TMSB4; TNIP1; and mucin1, MUC1) are associated with negative regulation of the NF-κB response in other systems (Ueno et al., 2008; Verstrepen et al., 2009; Liu et al., 2010; Sosne et al., 2007). NF-κB is a transcription factor complex that is expressed in all vertebrate cell types, and is involved in a variety of immune responses (Tato and Hunter, 2002; Takada et al., 2005). Of the possible genes transcriptionally regulated by NF-κB (Ali and Mann, 2004; Gilmore Lab, 2016), only effectors in the cytokine/chemokine group were observed as over-expressed in salamander cells containing intracellular algae. Our salamander transcriptiomes contain 295 genes that are homologous to downstream targets of NF-κB identified in other systems. Only five are over-expressed here, IL8, IL1b, CXCL10 and TNIP1 (with TNIP1 also being a negative regulator of NF-κB) (Supplementary file 10-sheet 1, ‘NFkB_Expr’). A fifth NF-κB response gene, which we have annotated as a trypsin, but which also has strong homology to Granzyme B (associated with apoptosis) was under-expressed in salamander cells hosting endosymbionts (Supplementary file 10-sheet 1, ‘NFkB_Expr’). Increased expression of genes associated with attenuating NF-κB signal transduction has precedent in other intracellular infections (Tato and Hunter, 2002) and possibly symbiotic associations (McFall-Ngai, 2014). The over-expressed OLFM4 and MUC1 are also implicated in establishing the vaginal microbiome, potentially through their roles in modulating NF-κB signaling (Doerflinger et al., 2014; Fields et al., 2014). How the algal cell entry may be affecting these genes and whether NF-κB by-pass is involved in algal cell entry or maintenance remains to be determined.

We did not find modified expression of toll-like receptors (TLR’s), which detect pathogen-associated molecular patterns. These function in activating an innate immune response to both bacterial and protistan pathogens (Ashour, 2015) as well as establishment of gut commensals (Round et al., 2011). While TLR’s do not require differential regulation for their normal function, established schistosomiasis, entamoeba, trypanosome, and filarial nematode infections all result in down-regulation of TLR transcripts (Ashour, 2015), and a resulting NF-κB mediated response. In our data, we found 10 salamander genes with homology to various TLRs. None were differentially expressed between salamander cells without and salamander cells with endosymbionts. Further, we examined expression of 151 additional genes associated with the TLR response, and found only one over-expressed gene downstream of TLRs, TNIP1, which is a negative regulator of NF-κB, as discussed above (Supplementary file 10-sheet 2, ‘TLRs_Expr’). While the lack of differential transcriptional regulation of TLR’s or their regulators does not preclude their involvement in algal entry response, it is notable in comparison to other parasitic infections where TLR expression is often down regulated (Ashour, 2015).

One potential benefit of having an intracellular alga may be to prime the embryo’s immune system, without over-activating it, granting the invaded embryos additional protection against the microbial environment outside of the egg capsule. One mechanism for this immune priming may be revealed by relatively increased hepcidin expression in salamander cells with intracellular algae. Elevated hepcidin levels are protective against multiple infections of malaria parasites in mammalian models (Portugal et al., 2011) and were shown to enhance resistance to bacterial infection when transgenically over-expressed in zebrafish (Hsieh et al., 2010).

Metabolism and nutrient sensing in A. maculatum

In established endosymbioses between invertebrates and algae, the transfer of organic molecules synthesized by the algal partner allows otherwise non-photosynthetic animals to become partial or complete autotrophs. The exchange of photosynthate from symbiont to host is mediated by a range of molecules including sugars, sugar alcohols, and lipids (Burriesci et al., 2012; Kellogg et al., 1983; Colombo-Pallotta et al., 2010). In the endosymbiosis between A. maculatum embryos and O. amblystomatis, the alga does not appear to be using a canonical photosynthetic process of carbon fixation, oxygen evolution, and sugar production, but is rather metabolizing by fermentation. This metabolic state does not, however, preclude the possibility of metabolite transfer from the intracellular alga to the salamander cells. Under fermentation, the alga may still generate ATP from light energy (Godaux et al., 2015), fix carbon (Godaux et al., 2015) or use alternate molecules as a carbon source (Gibbs et al., 1986). Fermenting algae are also capable of using anabolic reactions to produce sugars and lipids (Gibbs et al., 1986). Indeed, the related alga Chlamydomonas moewusii excretes glycerol, acetate, and ethanol under anoxic conditions (Klein and Betz, 1978). Release of fermentation byproducts such as formate, acetate, and glycerol, or of energy storage molecules such as sugars or lipids into the host cytoplasm could trigger differential expression of nutrient sensing mechanisms within A. maculatum cells.

In A. maculatum cells with an intracellular alga, differentially expressed genes involved in nutrient sensing (e.g. STEAP4; neurosecretory protein VGF, VGF; resistin, RETN; pyruvate dehydrogenase phosphatase 1, PDP1; and calcium/calmodulin-dependent protein kinase 1, CAM-KK 1) (Supplementary file 11) (Wellen et al., 2007; Petrocchi-Passeri et al., 2015; Steppan et al., 2001; Jeoung and Harris, 2010; Witczak et al., 2007) are suggestive of altered metabolic flux through catabolic and anabolic pathways, particularly with respect to insulin production and sensitivity. One differentially expressed algal gene that may be implicated in nutrient exchange with salamander cells is an algal gene with homology to Niemann-Pick type C (NPC) proteins, which is more highly expressed in intracellular algae. These proteins are involved in intracellular cholesterol transport, and are potential mediators of lipid transfer in cnidarian-dinoflagellate endosymbioses (Dani et al., 2014). Intriguingly, increased expression of this potential sterol sensing gene is observed in our intracellular algal transcripts, whereas in cnidarian-dinoflagellate interactions it is the host that utilizes NPC proteins (Dani et al., 2014).

Further metabolic changes include lower expression of maltase-glucoamylase (MGAM), an acid phosphatase, and trypsin-like proteins in salamander cells with intracellular algae (Supplementary file 11). These changes indicate a reduction in glycogen metabolism (Barbieri et al., 1967), and a reduction in the degradation and utilization of yolk platelets that has been shown to be mediated in part by acid phosphatases (Lemanski and Aldoroty, 1977). Collectively, these metabolic changes may be induced by detection of metabolites transferred by the alga, or alternatively, expression changes of these genes might be modulated by autocrine signaling as there is overlap between nutrient sensing and inflammatory responses (Schenk et al., 2008).

Potential mechanisms for algal entry into salamander cells

Lipoprotein-related protein 2 (LRP2), which is expressed 5.5 fold higher in invaded salamander cells, is part of a family of multi-ligand receptors that trigger endocytosis (Supplementary file 11) (Fisher and Howie, 2006). Dual binding of malaria sporozoites to a human LRP receptor and heparin sulfate proteoglycans mediates malaria sporozoite invasion into liver cells (Shakibaei and Frevert, 1996). All salamander samples also displayed expression of heparin sulfate basement protein (mean CPM 9.82), though it was not differentially expressed in invaded cells. The alga may have surface proteins that interact with the salamander LRP2 receptor however it does not have a recognizable homolog of the malaria circumsporozoite (CS) protein, which is implicated in interactions with LRP and heparin sulfate proteoglycans (Shakibaei and Frevert, 1996). The lack of a recognizable symbiosomal membrane around an intracellular alga (Kerney et al., 2011) suggests that if they do indeed enter through endocytosis, they must escape from or degrade the host-derived vesicle. Interestingly, there are two algal lipase/esterase genes and one gene with homology to the bacterial virulence factor streptolysin S that are over-expressed in endosymbiotic algae (55, 11, and 82-fold). Lipase/esterases are known virulence factors in bacterial parasites (Singh et al., 2010). These algal lipase/esterases may have a role in algal entry or endosome escape. While the LRP connection to malaria entry is an interesting parallel, the over-expression of LRP2 may be attributable to other processes in the host cell. For instance LRP2 may be involved in nutrient sensing as it has been implicated in retinol binding protein (RBP) import (Salamander RBP2 was also more highly expressed in cells with endosymbiotic algae) and vitamin homeostasis (Christensen et al., 1999).

The observed increased expression of salamander villin 1 (VIL1) in cells with intracellular algae (Supplementary file 12) may also reveal a pre-disposition of infected cells for algal entry. Similar predispositions exist in hepatocytes infected with a malaria sporozoite. These express high levels of EphA2 prior to parasite entry, which eventually allows a by-pass of host apoptosis (Kaushansky et al., 2015). Villin one is an actin modifying protein that has recently been shown to be required for membrane ruffling and closure following Salmonella typhimurium invasion of intestinal epithelial cells (Lhocine et al., 2015). This host protein is required for successful pathogen entry and is regulated by the bacterial SptP protein through phosphorylation. Similar membrane ruffling has been observed in regions of algal contact with host alimentary canal epithelium coincident with algal entry (Kerney et al., 2011).

The nature of the endosymbiosis

Whether the alga benefits from this endosymbiotic interaction remains unclear. Similar questions of net ‘mutualism’ persist for the symbiosis between the bobtail squid Eprymna scolopes and the bacterium Aliivibrio fischeri (McFall-Ngai, 2014) although in both systems microbial cells exhibit specific taxic responses to a developing host, suggesting an adaptive origin of these behaviors. In a previous study, we found evidence consistent with vertical transmission. Algal 18S rDNA was amplified from adult oviducts and Wolffian ducts, and encysted algal cells were found inside the egg capsules of freshly laid eggs using transmission electron microscopy (TEM) (Kerney et al., 2011). However, to date, we have not found conclusive evidence for vertical transmission of the alga from one generation to the next. As such, any benefit to the alga in this endosymbiotic interaction remains unknown.

We may speculate that intracellular algae are providing some benefit to its host, as many past light/dark rearing experiments have shown a net benefit to the salamander embryo from their algal symbionts, which presumably included endosymbionts as well (Pinder and Friet, 1994; Gilbert, 1944; Bachmann et al., 1986Gilbert, 1944). Two recent studies have suggested the transfer of photosynthate from intracapsular Oophila to the salamander host (Graham et al., 2013, 2014). However oxygenic photosynthesis and fixed carbon photosynthate transfer does not appear to be a significant contribution from intracellular algae to their hosts (Graham et al., 2013). Instead these algae appear to be utilizing fermentation, a common response of chalamydomonad algae to sulfur deprivation and hypoxic conditions (Yang et al., 2015).

In an intriguing parallel to the metabolic state of intracellular Oophila, some obligate intracellular parasites, such as the apicomplexan Plasmodium sp., are ‘microaeorophiles:' these generate most of their energy through the incomplete oxidation of glucose to lactate, a fermentative process (Olszewski and Llinás, 2011). Plasmodium falciparum exhibits increased infection and growth at low partial pressures of oxygen (Ng et al., 2014; Scheibel et al., 1979). Moreover, the observed cell stress response of the alga is reminiscent of that experienced by intracellular apicomplexan parasites (Bosch et al., 2015). Mutualist ectosymbionts like the bacteria Aliivibrio fischeri also use anaerobic metabolism, including fermentation, and express genes consistent with a response to oxidative stress during their association with the bobtail squid Eprymna scolopes (Thompson et al., 2017; Wier et al., 2010).

The primary fermentation products of chlamydomonad algae include glycerol, ethanol, formate, and acetate, along with smaller amounts of CO2 and H2 (Catalanotti et al., 2013). Glycerol is recognized as a major mediator of energy transfer between dinoflagellate photosymbionts and cnidarian hosts (Davy et al., 2012). In the context of the salamander-alga endosymbiosis, the related alga C. reinhardtii was shown to export glycerol after osmotic shock (Léon and Galván, 1995), a condition that intracellular Oophila likely experience upon invasion of salamander cells. Additionally, C. moewusii excretes glycerol during fermentation (Klein and Betz, 1978). Formate and acetate fermentation by-products in bacterial ectosymbionts are known sources of energy and bases for biosynthesis of more complex molecules in animal intestinal cells (den Besten et al., 2013; Karasov and Douglas, 2013). Moderate ethanol concentrations, below 2 mM, appear to be well tolerated by animal cells (Castilla et al., 2004), while higher concentrations become cytotoxic, inducing apoptosis and necrosis (Castilla et al., 2004). It is unknown whether intracellular algae are indeed releasing significant quantities of ethanol into host cells, however prior TEM observations (Kerney et al., 2011), and our results suggest that ethanol is below cytotoxic levels as we do not see indication of a necrotic or apoptotic host response.

Although the main comparison in this manuscript was between intracapsular algae and intracellular algae, we also considered differentially expressed genes between algae cultured in nutrient replete medium and intracellular algae. The latter comparison supported fermentation in the intracellular algae, but did not indicate over-expression of additional biosynthetic capabilities including enhanced vitamin biosynthesis or the production and export of other metabolites that might be beneficial to the salamander. Whether the intracellular algae are on the positive end of a net host benefit remains uncertain, however it is clear that the algae have an unconventional ‘photosymbiont’ role.

Conclusion

To the best of our knowledge there are only two models where the acquisition of horizontally acquired endosymbionts has mechanistic resolution: dinoflagellates in corals and rhizobial bacteria in root nodules. Starting from wild collected samples in a non-model system, we compiled novel transcriptomes of two organisms and revealed gene expression changes associated with their intracellular symbiosis from low cell number samples. These data reveal that life in a vertebrate’s cytoplasm induces a stress response in the symbiotic alga. While the alga appears to benefit from high concentrations of phosphate and organic nitrogen sources, our data suggests that the alga is limited in oxygen and sulfur, and is osmotically stressed (Figure 6). The salamander appears to recognize the alga as foreign, but does not mount an immune response comparable to what is seen in amphibian-pathogen interactions, and the salamander may be actively repressing important immune regulators such as NF-κB as well as receiving a nutritive benefit from the endosymbiotic alga (Figure 6).

Figure 6. Summary of the major changes in both salamander and algal cells and how they may relate to one another.

Figure 6.

The inferred salamander responses are broken into four functional categories while algal changes fall within three primary functional categories based on gene annotations. Text indicates hypothetical changes within each category based on the implied roles of under-expressed or over-expressed genes. Major sections are color-coded. Over-expressed genes represented by solid black symbols. Under-expressed gene symbols are white with black outlines. Cellular compartments are in italics. M=mitochondrion, YP=yolk platelet, V=vacuole, N=nucleus, ECM=extracellular matrix, ER=endoplasmic reticulum, Chl=chloroplast.

DOI: http://dx.doi.org/10.7554/eLife.22054.025

Components of the salamander expression profile are relevant to vertebrate interactions with commensal symbionts. For example, three of the genes with higher expression in cells with endosymbionts in this association, OLFM4, MUC1, and IL8 are also up-regulated in human irritable bowel disease (Gersemann et al., 2012). Other roles of OLFM4 and MUC1 include negative regulation of NF-κB signal transduction, and interactions with commensal ectosymbionts in humans (Liu et al., 2010; Doerflinger et al., 2014; Fields et al., 2014). The notable absence of other transcripts (e.g. TLR’s) are indicative of endosymbiont tolerance in this system, in sharp contrast to an expected response to vertebrate pathogens.

As in other endosymbiotic associations, A. maculatum and O. amblystomatis engage in a unique dialog involving host tolerance of the symbiont and metabolic cross-talk between partners. Distinctive facets of this metabolic cross-talk include fermentation in the endosymbiont as well as phosphate and glutamine acquisition from the host cytoplasm. This study has dramatically expanded our ability to interrogate this endosymbiotic dialogue on a molecular level by co-opting the dual RNA-seq approach established for parasitology research to a non-model mutualism.

Materials and methods

Embryo and alga collection, cell isolation, and cDNA library preparation

A. maculatum cells in 90% RNAlater were diluted to a 50:50 solution of cells in RNA later and amphibian-phosphate buffered saline (APBS; PBS + 25% H2O to match amphibian osmolarity of 225 ± 5 mOsm/L) because the 90% RNAlater solution was too viscous for single cell isolation. The solution was spread on a glass slide and inspected between the bright field and epi-fluorescence illumination with a Chlorophyll filter set. Fifty salamander cells with intracellular algae and fifty salamander cells without intracellular algae per individual embryo were separated by manual single cell isolation (mouth pipetting) from dissociated embryos with a hand-pulled borosilicate pipette connected to a rubber tube. Each cell was collected directly from 45% RNA later into a microcentrifuge tube containing 200 µL lysis buffer (Extraction Buffer (XB), PicoPure RNA extraction kit; ThermoFisher Scientific). Four biological replicates were collected from four different A. maculatum embryos from the same clutch. Three biological replicate samples of intracapsular algae from the intracapsular fluid of three eggs were also collected—by aspiration with a syringe and 23 gauge needle—for RNA extraction. Additional RNA was prepared from three unialgal strains of Oophila including UTEX LB3005 and LB3006, which were established previously (Kim et al., 2014). The third algal strain—isolated from an egg clutch sampled in 2012 from Greenbrook Sanctuary (Palisades, NY)—unfortunately, was lost during a laboratory power-outage. Quadruplicate sampling was made for quantitative analyses of the LB3005 strain.

RNA was extracted from each sample using the PicoPure RNA extraction kit following the manufacturer’s recommended protocol for ‘RNA Extraction from Cell Pellets’, starting with incubation of the lysate at 42°C for 30 min with the modification of adding an equal volume of 70% ethanol to the 200 µL of lysis buffer. RNA for the cultured algal strains was prepared by using a combination of TRIzol (Thermo Fisher Scientific) and a Qiagen RNeasy kit.

Whole cDNA libraries were prepared directly from total RNA using the SMARTer Ultra Low cDNA Kit–HV (Clontech, Mountain View, CA) according to the manufacturer’s protocol for a starting sample of 50 cells. Sequencing libraries for the Illumina HiSeq 2500 platform were prepared from the whole cDNA libraries using the Nextera-XT kit (Illumina, San Diego, CA) according to the manufacturer’s protocol with an input of 375 pg cDNA per sample and a final clean-up step based on an Ampure-XP (Beckman Coulter, Brea, CA) protocol with the modification of adding 0.75x volume of bead solution to cDNA sample. Sequencing took place at the New York Genome Center and on an Illumina HiSeq 2500 sequencer with 125 bp paired-end reads. Transcriptome libraries (Illumina’s TruSeq RNA library) for the cultured algae were prepared and sequenced at Genome Quebec on HiSeq 2000 with 100 bp paired-end reads or at Cornell Weill Genomics Resources Core Facility on the MySeq platform with 75 bp paired end reads.

De novo assembly

Eleven paired-end whole cDNA libraries with greater than ten million paired reads per library were processed for assembly. There were four libraries from A. maculatum cells without intracellular algae, and four paired libraries (from the same individuals) from A. maculatum cells with intracellular algae, and three libraries from motile intracapsular algae. Quality trimming of the reads was performed with Trimmomatic (v 0.32) (Bolger et al., 2014) to remove low quality bases and adapter sequences. All eleven paired end libraries were used to construct a total evidence assembly using the Trinity algorithm (version trinityrnaseq_r20140717) (Grabherr et al., 2011; Haas et al., 2013). Transcriptomes of cultured algal strains were assembled separately in Trinity.

Total evidence assembly filtering

The total evidence assembly returned 1,533,193 unique RNA-seq contigs that were clustered into 1,345,464 potential gene level (isoforms collapsed) transcript groups. The assembly largely consisted of a mixture of A. maculatum and O. amblystomatis transcripts. There were also 7,193 transcript groups (0.5%) corresponding to a predatory mite, Metaseiulus occidentalis, and 2,641 transcript groups corresponding to a dermal fungus, Malassezia globosa. Sequences corresponding to the mite and fungus were removed by BLASTN homology search (all BLAST analysis was completed using BLAST+ algorithms, v 2.2.28+ (Camacho et al., 2009) using BLAST databases comprised of all known transcript sequences from the genera Metaseiulus and Malassezia. Transcripts corresponding to the alga O. amblystomatis and salamander A. maculatum were recovered by BLASTN against a database consisting of transcript sequences from lab grown cultures of O. amblystomatis and sequences from the model salamander Ambystoma mexicanum (contributed by Randall Voss—University of Kentucky, and from [Stewart et al., 2013; Wu et al., 2013]). Transcripts were further filtered by a BLASTX homology search against a database containing the entire protein complement of: Arabidopsis thaliana, Chlamydomonas reinhardtii, Mesostigma viride, Micromonas pusilla, Ostreococcus tauri, Oryza sativa, O. amblystomatis, Chrysemys picta bellii, Xenopus tropicalis, A. mexicanum, Pseudozyma, Saccharomyces cerevisiae, and the genera Melanopsichium and Leptosphaeria. The assortment of species was chosen due to phylogentic proximity to O. amblystomatis or A. maculatum, or due to best hits from those genera/species found when a selection of transcripts was queried against the nr database. Best hits to plant or green algal species were noted as algal sequences and combined with the results of BLASTN against the O. amblystomatis database. Best hits to salamander or other animal species were noted as salamander sequences and combined with the results of BLASTN against the A. mexicanum database. Best hits to fungal sequences were discarded. The remainder with no known homology were retained and included as putative algal or salamander transcripts based on their expression pattern across samples.

One expectation of differential expression analysis is that most genes are expressed equally between control and experimental samples. If expression levels are ordered from low to high expression in control samples and binned in a sliding window of 100 genes per bin, the median expression level in each bin will increase as the index increases. Based on the expectation of equal expression, for the same sets of genes, the median expression level of experimental samples should correspondingly increase.

For a subset of genes confirmed to belong to A. maculatum by BLAST homology, genes were sorted by Fragments Per Kilobase of transcript per Million mapped reads (FPKM) values in the samples of A. maculatum without intracellular algae. Median FPKM values of bins of 100 genes, in a sliding window from the lowest expressed gene through the 100 genes with the highest FPKM values were calculated for the samples of A. maculatum with and without intracellular algae. The median FPKM values for the bins of A. maculatum only samples were plotted against the data from the samples of A. maculatum with intracellular algae (Figure 1—figure supplement 2a). At moderate to high expression levels, A. maculatum with intracellular alga FPKM values increased with A. maculatum without intracellular algae FPMK values (Figure 1—figure supplement 2a). But at very low FPKM values, the data were essentially uncorrelated. Median A. maculatum without intracellular alga FPKM values increased (since the data was ordered by those values), but median A. maculatum with intracellular alga FPKM values stayed the same (Figure 1—figure supplement 2a).

Lower limit FPKM values were determined by finding the FPKM value above which A. maculatum without intracellular alga samples and A. maculatum with intracellular alga samples exhibited a positive correlation (Figure 1—figure supplement 2a). Genes with FPKM values below the lower limit of both sets of samples being analyzed for differential expression (i.e. intracapsular algae and intracellular algae) were not included in the analysis. The uncorrelated expression pattern of genes with FPKM values below the threshold suggests that there is either insufficient sequencing depth to compare those genes between the two conditions, or those lowly expressed genes are expressed stochastically in these cells and the fluctuations in expression levels of those genes are not indicative of a biological difference between conditions. The same analysis was completed for A. maculatum cells with intracellular algae by ordering the genes based on their expression levels (Figure 1—figure supplement 2b), and for intracapsular (Figure 1—figure supplement 2c) and intracellular algal samples (Figure 1—figure supplement 2d).

The lower limit FPKM values for A. maculatum genes were 0.55 FPKM for A. maculatum cells (Figure 1—figure supplement 2a, vertical red-dashed line) and 0.61 FPKM for A. maculatum cells with algal endosymbionts (Figure 1—figure supplement 2b, vertical red-dashed line). The lower limit FPKM values for algal genes were 2 FPKM for the intracapsular alga (Figure 1—figure supplement 2c, vertical red-dashed line) and 0.04 FPKM for the intracellular alga (Figure 1—figure supplement 2d, vertical red-dashed line). The values are reflective of the sequencing depth of each sample, and are close to the widely used FPKM >1 lower limit threshold used in many RNAseq studies (Fagerberg et al., 2014; Shin et al., 2014; Graveley et al., 2011), except for the intracellular alga samples which suffer from low sequencing depth, but nonetheless display correlated expression with intracapsular alga samples starting at low FPKM values.

After determining the lower limit thresholds, the algal gene set consisted of genes with at least one read pair mapping to each of the three intracapsular algal samples or each of the four endosymbiotic cell samples that additionally were not found in the salamander, fungal, or mite BLAST data. Additionally, the genes had to have expression values above the lower limits described above in respective algal samples and below the lower limit for A. maculatum without intracellular alga samples in the salamander only cell samples for those genes. This resulted in a set of 8989 potential algal genes. However, due to a low depth of sequencing of the algal component of the endosymbiotic cell samples, additional filtering was necessary.

Genes that were not detected in intracellular algae could have been missing due to the lower depth of sequencing rather than representing an actual biological difference in expression between the algal populations. To determine what level of expression in intracapsular alga would be needed for a complete absence of measured expression in intracellular alga to be meaningful, the 8,989 algal genes were first ordered by intracapsular algal FPKM. Then the proportion of genes with no expression in intracellular samples was plotted against the median expression level in high-sequencing-depth intracapsular algae in bins of 100 genes in the ordered data. At low FPKM values in the intracapsular algae, up to 58% of the genes were absent from intracellular samples (Figure 1—figure supplement 3b). As expression in intracapsular alga samples increased, the proportion of genes with measurable expression levels in intracellular algal samples increased as well (Figure 1—figure supplement 3b). The same relationship was not observed for A. maculatum data sets, where the depth of sequencing between samples was approximately equal (Figure 1—figure supplement 4).

The dependence of gene detection in intracellular algal samples on FPKM level in intracapsular algal samples abated at intracapsular alga FPKM values where 95% or more genes could be detected in intracellular algal samples (Figure 1—figure supplement 3b, vertical red-dashed line). That expression level corresponded to 67.9 FPKM in intracapsular algal genes. After removing genes with no detectable expression in intracellular algae with expression levels below 67.9 FPKM in intracapsular algae, the dependence of gene detection on expression level in intracapsular algae was removed, and the anomalous peak of undetected genes was removed from the expression histogram (see: Figure 1—figure supplement 3a and c). This resulted in a set of 6,781 genes. Due to finding some genes with homology to anomalous organisms such as pine and beech trees without homologs in C. reinhardtii in the set of 6,781 genes (perhaps due to pollen in the low cell number samples), only genes with homologs in the lab strain Oophila transcriptomes were considered. The final set of algal genes used in differential expression analysis consisted of 6,726 genes.

Differential expression analysis

For transcripts derived from wild-collected samples, read mapping and transcript count quantification was accomplished using Bowtie2 (Langmead and Salzberg, 2012) and RSEM (Li and Dewey, 2011) using default parameters. For transcripts derived from cultured alga, read mapping and transcript quantification was accomplished using BBmap (Bushnell, 2016) and Salmon (Patro et al., 2015) (respectively). The read mapping and quantification algorithms used for reads from the cultured alga were implemented due to divergence of the two algal strains. The transcripts common between the two strains were on average 95% similar. BBmap paired with Salmon allowed for relaxed mapping parameters that were able to map the reads to the transcriptome despite differences in sequence composition with increased sensitivity compared to Bowtie2 plus RSEM. Prior to differential expression analysis, data driven abundance and homology filtering was implemented to derive the final gene lists used in differential expression analysis. A detailed account of filtering procedures can be found in Supplementary Materials and methods under the heading ‘total evidence assembly filtering’.

Differential expression analysis was conducted in R (version 3.1.2) (R Core Team, 2013) using the edgeR package (Robinson et al., 2010). Generalized linear models were used for data analysis on normalized count data. Initial normalization of data derived from wild collected samples (endosymbiont free and endosymbiont containing salamander cells, intracapsular algae, and intracellular algae), was performed by trimmed mean of M-values (TMM) library size scaling-normalization (Robinson and Oshlack, 2010). Incorporation of data from unialgal cultures into differential expression analysis required additional GC-content normalization of the libraries, due to differences in GC-bias introduced by the two different library preparation methods (SMARTer cDNA synthesis followed by Nextera-XT library preparation for the wild collected samples and TrueSeq library preparation for the RNA preparation from unialgal cultures) (Figure 7). Normalization of GC-content and transcript length biases were accomplished using conditional quantile normalization (CQN) (Hansen et al., 2012). CQN resolves GC content and transcript length biases by fitting a model that incorporates observed read counts and a covariate such as GC content, and calculates an offset that is used to remove the covariation of these confounding factors. Following cqn normalization, differential analysis between unialgal cultures and wild collected intracapsular or intracellular algae was completed in edgeR. Salamander-only and salamander-plus-alga samples from the same individual embryo were considered paired samples for statistical analysis. Differentially expressed genes were considered as those with an FDR adjusted p-value less than 0.05.

Figure 7. GC and transcript length bias in SMARTer-cDNA synthesis-Nextera-XT libraries compared to TrueSeq libraries.

Figure 7.

Red lines indicate the GC content or transcript length biases in reads obtained from SMARTer-cDNA synthesis-Nextera-XT libraries. Blue lines indicate the GC content or transcript length biases in reads obtained from TrueSeq libraries. (a) GC content and length are plotted against ‘QRfit’ which is a measure of fit by quantile regression to the models in Hansen et al. (2012). This metric approximates bias in the sequence dataset by comparing read counts to expected models based on quantiles in the distribution of the GC content of the transcripts. The opposing trends in the two sets of lines shows that GC content bias between the two different libraries is vastly different. The reads obtained from SMARTer-cDNA synthesis-Nextera-XT libraries will tend to have more counts for low GC content transcripts, while the reads obtained from TrueSeq libraries will tend to have more counts for high GC content transcripts, systemically. (b) There is also some moderate transcript length bias differences between the two library prep methods visualized as the separation between the groups of red and blue lines. The methods implemented by the conditional quantile normalization (cqn) package in R handles both types of bias to make the gene count data from both library preparation methods comparable.

DOI: http://dx.doi.org/10.7554/eLife.22054.026

Functional annotation

Functional annotation of A. maculatum and O. amblystomatis transcripts was accomplished by BLASTX of transcripts against the UniProt-SWISSProt curated database (Gasteiger et al., 2001). BLASTX results were filtered by ‘homology-derived structure of proteins’ (HSSP) score (Rost, 2002) such that annotations were retained for hits with an HSSP_DIST score greater than 5 (Burns et al., 2015). UniProt ID annotations were assigned based on the maximum HSSP score for each gene. This led to 14,761 functional annotations for A. maculatum transcripts and 3,850 functional annotations of O. amblystomatis transcripts. Further annotation of differentially expressed transcripts was accomplished by HHblits (Remmert et al., 2012) homology detection. Unannotated, differentially expressed transcripts were translated in all six reading frames and the translations were processed by HHblits. Significant hits were determined by manual inspection of the HHblits output. Transposable elements were categorized by homology to known transposons by BLASTX or HHblits, and through the use of the PASTEClassifier tool (Hoede et al., 2014). Multiple alignments were created with MUSCLE using default parameters (Edgar, 2004). Alignments were visualized in SeaView (Gouy et al., 2010).

Functional grouping of differentially expressed genes

Due to the novelty of this symbiosis, the non-model organisms under consideration, and the multi-organism functional annotation obtained, an initial automated functional grouping, gene ontology (GO) term analysis, completed as in Burns et al. (2015) (Supplementary files 13 and 14 for algal and salamander GO term analysis, respectively) was determined to be insufficient to understand the likely biological function of over and under-expressed genes. Other tools such as REViGO (Supek et al., 2011) performed better (Supplementary files 15 and 16 for algal genes, and Supplementary files 17 and 18 for salamander genes), but did not catch large functional modules that were evident upon further manual inspection of the gene lists. For the small sets of differentially expressed genes observed between salamander cells with or without algae, and between intracapsular and intracellular algae, manual curation of each differentially expressed gene was implemented by performing an extensive literature search for each of the differentially expressed genes, based on the SWISSProt or HHblits annotation. Relevant functions associated with each gene in the scientific literature were noted, and those functions were grouped manually to give the final functional categories discussed in the text. For the larger set of differentially expressed genes observed between algae cultured in nutrient replete media and intracellular algae, only automated annotation and GO term grouping (REViGO) was used to define functional categories.

qPCR validation of gene expression patterns in the alga O. amblystomatis

Hypotheses concerning gene expression patterns associated with endosymbiosis in the alga O. amblystomatis were tested using culture strains of the alga. Validation experiments could not be conducted in the salamander A. maculatum due to the seasonal nature of the association and the lack of any laboratory stock of A. maculatum.

O. amblystomatis cultures were maintained at 18°C under a 12 hr light/12 hr dark cycle with an average light intensity of 34 µmol·m−2·sec−1, in AF-6 medium (Kato, 1982) with modifications as described previously ( et al., 2004). For examining the dependence of phosphate transporter expression on phosphate levels in the media, AF6 media was formulated without potassium phosphate. Appropriate quantities of concentrated potassium phosphate at a ratio of 1:2 K2HPO4:KH2PO4 plus potassium chloride (to a final concentration of 130.8 µM K+ ions, the concentration of K+ ions present in normal AF-6 media) were added to the phosphate deficient AF-6 media to make AF-6 with the various phosphate levels used in the experiment. For examining the dependence of nitrogen-related transporters on nitrogen and glutamine concentrations, AF-6 media was formulated with various levels of nitrate and ammonia with the addition of NaCl to balance the loss of Na+ ions from leaving NaNO3 out of the media.

For phosphate limitation experiments, O. amblystomatis cells growing in AF-6 media were pelleted (1,000xg for 5 min) and washed three times with media completely depleted of phosphate. Following the third wash, cells were re-suspended in phosphate depleted media. Cells were counted and aliquoted into flasks at a concentration of 40,000 cells·mL−1 in 5 mL total volume per flask of phosphate deplete AF-6. For each phosphate concentration, 5 mL of AF-6 media with 2x phosphate was added to the appropriate flask to give the appropriate phosphate concentration for the experiment. Cultures were grown for 5 days prior to harvesting for RNA purification. Three flasks of algae were assayed for each phosphate concentration (from 100 pM to 10 mM phosphate in 10-fold intervals).

For nitrogen limitation and glutamine experiments, O. amblystomatis cells were prepared as described for the phosphate limitation experiments using nitrogen depleted AF-6 media. Cultures were grown for 5 days at nitrogen concentrations approximating observed nitrate and ammonia concentrations in salamander egg capsules (6.6 µM NO3; 17 µM NH4+) prior to addition of glutamine. Glutamine was added to a final concentration of 2 mM. Algal cells were harvested after 6 hr of incubation with or without glutamine and assayed for gene expression. Three flasks of algae were assayed for each condition.

To prepare cDNA, O. amblystomatis cells were harvested by centrifugation (1,000xg for 5 min), and 350 µL lysis buffer RLT-Plus with fresh β-mercaptoethanol (RNeasy mini Plus kit, Qiagen, Valencia, CA) was added, and the lysate was vortexed for 30s. RNA was purified from the lysate following the manufacturer’s protocol. Purified RNA was converted to cDNA using the Quantitect RT kit (Qiagen) following the manufacturer’s protocol. Resultant cDNA was diluted with three volumes of 10mM Tris buffer, pH 7.5, or RNase free water prior to qPCR reactions.

Quantitative PCR primers for four reference genes and five response genes (Table 3) were designed using conserved regions in multiple sequence alignments of cDNA sequences from the three O. amblystomatis cultured strains as well as the O. amblystomatis sequences obtained from the field material. Candidate reference genes were selected due to their utility in prior studies in the related chlorophycean alga Chlamydomonas reinhardtii, and were confirmed to have equivalent transcriptome expression levels in intracapsular and intracellular alga in this study. The reference genes were RPL32 & H2B1 (Liu et al., 2012), RACK1 (Mus et al., 2007), and YPTC1 (Lake and Willows, 2003). Several primer pairs were designed for each reference and response gene using the software tools GEMI (Sobhy and Colson, 2012), Primer3 (Untergasser et al., 2012), and PrimerQuest (Owczarzy et al., 2008). Primer pairs were validated by making standard curves using a cDNA dilution series. Primer pairs with the lowest Cq value for a given gene and PCR efficiencies between 0.9 and 1.1 in a standard curve of cDNA dilution series were validated for use in gene expression studies (Table 3).

Table 3.

O. amblystomatis qPCR primer sequences.

Primer pairs for four reference genes (RACK1, YPTC1, RPL32, H2B1), and five response genes (PhT1.2, NaPhT1 [ANTR1], AMT1.2, NRT2.4, DUR3) used in this study. Efficiency values were measured per amplicon using a standard curve with five two-fold dilutions of cDNA.

DOI: http://dx.doi.org/10.7554/eLife.22054.027

Primer Sequence (5ʹ−3ʹ) Efficiency
Ooph_RACK1_L_3 CGCACAGCCAGTAGCGGT 0.94
Ooph_RACK1_R_3 GGACCTGGCTGAGGGCAA
Ooph_YPTC1_L_4 TTGCGGATGACACCTACACG 1.09
Ooph_YPTC1_R_4 TGGTCCTGAATCGTTCCTGC
Ooph_RPL32_L_2 ATAACAGGGTCCGCAGAAAG 1.03
Ooph_RPL32_R_2 GTTGGAGACGAGGAACTTGAG
Ooph_H2B1_L_4 CAAGAAGCCCACCATGACCT 1.04
Ooph_H2B1_R_4 GGTGAACTTGGTGACTGCCT
Ooph_PhT1.2_L_4 TGCCAATGACTTCGCCTTCT 1.02
Ooph_PhT1.2_R_4 ACGTTCCACTGCTGCTTCTT
Ooph_NaPhT1_L_4 TCCATCATCGGTCTGTCGCT 0.99
Ooph_NaPhT1_R_4 GAACCACACGATGCCCAGAG
Ooph_AMT1.2_L_4 CGGTCTCCTTCCAATCGCCA 0.96
Ooph_AMT1.2_R_4 CCAATGGGTGCTGACTGGGA
Ooph_NRT2.4_L_3 CGACTACCGCGACCTGAAGA 1.03
Ooph_NRT2.4_R_3 GAACAAGACCCAGGCCCTGT
Ooph_DUR3_L_3 GCGAATGCCGAGCACTTC 1.02
Ooph_DUR3_R_3 CTGTCCCTGGGCTGGGT

Quantitative PCR reactions used 1 µL of the diluted cDNA in 20 µL reactions with a 700 nM concentration of each primer using QuantiNova Sybr green (Qiagen) for amplification and detection. QPCR reactions were done in duplicate. Reactions were performed on a RotorGeneQ instrument (Qiagen) with a 2-step cycling program of 5s at 95°C and 10s at 60°C followed by melting curve analysis. Raw data was exported from the RotorGeneQ and per run-per amplicon efficiency correction was implemented in LinRegPCR (version 2015.3) (Ramakers et al., 2003; Ruijter et al., 2009). Differences in expression were analyzed using ANOVA with contrasts in R.

Ethics approval and consent to participate

The Institutional Animal Care and Use Committee of Gettysburg College approved the research on salamander embryos (IACUC#2013 F17). Field collection of egg masses was completed under Pennsylvania Fish and Boat Commission permit (PA-727 Type 1).

Availability of data and material

All transcriptome assemblies and read data are available from the NCBI transcriptome shotgun assembly database under BioProject #PRJNA326420. Other relevant data are within the paper and its additional files.

Acknowledgements

We thank S Obado, M Bradic, S Thurston for technical comments and critical reviews and R Voss for providing the unpublished V4 assembly of an axolotl (Ambystoma mexicanum) transcriptome. This work was supported in part by a grant to Gettysburg College from the Howard Hughes Medical Institute through the Precollege and Undergraduate Science Education Program. The work was supported by an NSF EAGER to R. Kerney, E Kim, and JA Burns (#1428065) and NSF CAREER to E Kim (#1453639). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

Funding Statement

The funders had no role in study design, data collection and interpretation, or the decision to submit the work for publication.

Funding Information

This paper was supported by the following grants:

  • National Science Foundation 1428065 to John A Burns, Eunsoo Kim, Ryan Kerney.

  • National Science Foundation 1453639 to Eunsoo Kim.

Additional information

Competing interests

The authors declare that no competing interests exist.

Author contributions

JAB, Conceptualization, Resources, Data curation, Software, Formal analysis, Supervision, Funding acquisition, Validation, Investigation, Visualization, Methodology, Writing—original draft, Project administration, Writing—review and editing.

HZ, Formal analysis, Investigation.

EH, Formal analysis, Investigation.

EK, Conceptualization, Resources, Formal analysis, Supervision, Funding acquisition, Investigation, Methodology, Writing—original draft, Project administration, Writing—review and editing.

RK, Conceptualization, Formal analysis, Supervision, Funding acquisition, Validation, Investigation, Methodology, Writing—original draft, Project administration, Writing—review and editing.

Ethics

Animal experimentation: The Institutional Animal Care and Use Committee of Gettysburg College approved the research on salamander embryos (IACUC#2013F17). Field collection of egg masses was completed under Pennsylvania Fish and Boat Commission permit (PA-727 Type 1).

Additional files

Supplementary file 1. Differentially expressed stress related genes in O. amblystomatis.

DOI: http://dx.doi.org/10.7554/eLife.22054.028

elife-22054-supp1.docx (17.1KB, docx)
DOI: 10.7554/eLife.22054.028
Supplementary file 2. Differentially expressed sulfur metabolism genes in O. amblystomatis.

DOI: http://dx.doi.org/10.7554/eLife.22054.029

elife-22054-supp2.docx (13.2KB, docx)
DOI: 10.7554/eLife.22054.029
Supplementary file 3. Differentially expressed genes with roles in fermentation in O. amblystomatis.

DOI: http://dx.doi.org/10.7554/eLife.22054.030

elife-22054-supp3.docx (15KB, docx)
DOI: 10.7554/eLife.22054.030
Supplementary file 4. Differentially expressed genes in photosynthesis in O. amblystomatis.

DOI: http://dx.doi.org/10.7554/eLife.22054.031

elife-22054-supp4.docx (14.4KB, docx)
DOI: 10.7554/eLife.22054.031
Supplementary file 5. Differentially expressed genes in mitochondrial electron transport in O. amblystomatis.

DOI: http://dx.doi.org/10.7554/eLife.22054.032

elife-22054-supp5.docx (13.6KB, docx)
DOI: 10.7554/eLife.22054.032
Supplementary file 6. Differentially expressed nitrogen and phosphorous transport genes in O. amblystomatis.

DOI: http://dx.doi.org/10.7554/eLife.22054.033

elife-22054-supp6.docx (13.6KB, docx)
DOI: 10.7554/eLife.22054.033
Supplementary file 7. Differentially expressed transposable element genes in A. maculatum.

DOI: http://dx.doi.org/10.7554/eLife.22054.034

elife-22054-supp7.docx (29.7KB, docx)
DOI: 10.7554/eLife.22054.034
Supplementary file 8. Differentially expressed proliferation genes in A. maculatum.

DOI: http://dx.doi.org/10.7554/eLife.22054.035

elife-22054-supp8.docx (13.6KB, docx)
DOI: 10.7554/eLife.22054.035
Supplementary file 9. Differentially expressed genes with immune functions in A. maculatum.

DOI: http://dx.doi.org/10.7554/eLife.22054.036

elife-22054-supp9.docx (14.1KB, docx)
DOI: 10.7554/eLife.22054.036
Supplementary file 10. NF-κB and TLR response gene expression levels in salamander cells with algal endosymbionts.

DOI: http://dx.doi.org/10.7554/eLife.22054.037

elife-22054-supp10.xlsx (76.5KB, xlsx)
DOI: 10.7554/eLife.22054.037
Supplementary file 11. Differentially expressed genes in metabolism and nutrient sensing in A. maculatum.

DOI: http://dx.doi.org/10.7554/eLife.22054.038

elife-22054-supp11.docx (15.5KB, docx)
DOI: 10.7554/eLife.22054.038
Supplementary file 12. Differentially expressed genes in motility in A. maculatum.

DOI: http://dx.doi.org/10.7554/eLife.22054.039

elife-22054-supp12.docx (13.3KB, docx)
DOI: 10.7554/eLife.22054.039
Supplementary file 13. Top 25 biological process GO annotations for differentially Expressed O. amblystomatis genes.

DOI: http://dx.doi.org/10.7554/eLife.22054.040

elife-22054-supp13.docx (15.1KB, docx)
DOI: 10.7554/eLife.22054.040
Supplementary file 14. Top 25 biological process GO annotations for differentially expressed A. maculatum genes.

DOI: http://dx.doi.org/10.7554/eLife.22054.041

elife-22054-supp14.docx (15.3KB, docx)
DOI: 10.7554/eLife.22054.041
Supplementary file 15. Top 25 biological process GO annotations from REViGO for differentially expressed O. amblystomatis genes.

DOI: http://dx.doi.org/10.7554/eLife.22054.042

elife-22054-supp15.docx (14.9KB, docx)
DOI: 10.7554/eLife.22054.042
Supplementary file 16. Functional grouping of O. amblystomatis genes by REViGO.

DOI: http://dx.doi.org/10.7554/eLife.22054.043

DOI: 10.7554/eLife.22054.043
Supplementary file 17. Top 25 biological process GO annotations from REViGO for differentially expressed A. maculatum genes.

DOI: http://dx.doi.org/10.7554/eLife.22054.044

elife-22054-supp17.docx (14.9KB, docx)
DOI: 10.7554/eLife.22054.044
Supplementary file 18. Functional grouping of A. maculatum genes by REViGO.

DOI: http://dx.doi.org/10.7554/eLife.22054.045

elife-22054-supp18.pdf (42.2KB, pdf)
DOI: 10.7554/eLife.22054.045

Major datasets

The following dataset was generated:

Burns JA,Zhang H,Hill E,Kim E,Kerney RK,2016,Mechanisms of Establishing and Maintaining an Algal Endosymbiont in a Vertebrate Host,https://www.ncbi.nlm.nih.gov/bioproject/PRJNA326420,Publicly available at the NCBI BioProject database (accession no: PRJNA326420)

References

  1. Ali S, Mann DA. Signal transduction via the NF‐κB pathway: a targeted treatment modality for infection, inflammation and repair. Cell Biochemistry and Function. 2004;22:67–79. doi: 10.1002/cbf.1082. [DOI] [PubMed] [Google Scholar]
  2. Ashour DS. Toll-like receptor signaling in parasitic infections. Expert Review of Clinical Immunology. 2015;11:771–780. doi: 10.1586/1744666X.2015.1037286. [DOI] [PubMed] [Google Scholar]
  3. Bachmann MD, Carlton RG, Burkholder JM, Wetzel RG. Symbiosis between salamander eggs and green algae: microelectrode measurements inside eggs demonstrate effect of photosynthesis on oxygen concentration. Canadian Journal of Zoology. 1986;64:1586–1588. doi: 10.1139/z86-239. [DOI] [Google Scholar]
  4. Baddar NW, Woodcock MR, Khatri S, Kump DK, Voss SR. Sal-Site: research resources for the mexican axolotl. Methods in Molecular Biology. 2015;1290:321–336. doi: 10.1007/978-1-4939-2495-0_25. [DOI] [PubMed] [Google Scholar]
  5. Barbieri FD, Raisman JS, Albarracin C. Amylase and glycogenolysis in amphibian development. The Biological Bulletin. 1967;132:299–310. doi: 10.2307/1539635. [DOI] [PubMed] [Google Scholar]
  6. Batut P, Dobin A, Plessy C, Carninci P, Gingeras TR. High-fidelity promoter profiling reveals widespread alternative promoter usage and transposon-driven developmental gene expression. Genome Research. 2013;23:169–180. doi: 10.1101/gr.139618.112. [DOI] [PMC free article] [PubMed] [Google Scholar]
  7. Benjamini Y, Hochberg Y. Controlling the false discovery rate: a practical and powerful approach to multiple testing. Journal of the Royal Statistical Society. Series B. 1995;57:289–300. doi: 10.2307/2346101. [DOI] [Google Scholar]
  8. Bock-Marquette I, Saxena A, White MD, Dimaio JM, Srivastava D. Thymosin beta4 activates integrin-linked kinase and promotes cardiac cell migration, survival and cardiac repair. Nature. 2004;432:466–472. doi: 10.1038/nature03000. [DOI] [PubMed] [Google Scholar]
  9. Bolger AM, Lohse M, Usadel B. Trimmomatic: a flexible trimmer for illumina sequence data. Bioinformatics. 2014;30:2114–2120. doi: 10.1093/bioinformatics/btu170. [DOI] [PMC free article] [PubMed] [Google Scholar]
  10. Bosch SS, Kronenberger T, Meissner KA, Zimbres FM, Stegehake D, Izui NM, Schettert I, Liebau E, Wrenger C. Oxidative stress control by apicomplexan parasites. BioMed Research International. 2015;2015:1–10. doi: 10.1155/2015/351289. [DOI] [PMC free article] [PubMed] [Google Scholar]
  11. Brodman R, Ogger J, Bogard T, Long AJ, Pulver RA, Mancuso K, Falk D. Multivariate analyses of the influences of water chemistry and habitat parameters on the abundances of pond-breeding amphibians. Journal of Freshwater Ecology. 2003;18:425–436. doi: 10.1080/02705060.2003.9663978. [DOI] [Google Scholar]
  12. Burns JA, Paasch A, Narechania A, Kim E. Comparative genomics of a bacterivorous green alga reveals evolutionary causalities and consequences of Phago-Mixotrophic mode of nutrition. Genome Biology and Evolution. 2015;7:3047–3061. doi: 10.1093/gbe/evv144. [DOI] [PMC free article] [PubMed] [Google Scholar]
  13. Burriesci MS, Raab TK, Pringle JR. Evidence that glucose is the major transferred metabolite in dinoflagellate-cnidarian symbiosis. Journal of Experimental Biology. 2012;215:3467–3477. doi: 10.1242/jeb.070946. [DOI] [PMC free article] [PubMed] [Google Scholar]
  14. Burt CT, Glonek T, Bárány M. Analysis of phosphate metabolites, the intracellular pH, and the state of adenosine triphosphate in intact muscle by phosphorus nuclear magnetic resonance. The Journal of Biological Chemistry. 1976;251:2584–2591. [PubMed] [Google Scholar]
  15. Bushnell B. BBMap short read aligner. 2016. http://sourceforge net/projects/bbmap
  16. Camacho C, Coulouris G, Avagyan V, Ma N, Papadopoulos J, Bealer K, Madden TL. BLAST+: architecture and applications. BMC Bioinformatics. 2009;10:421. doi: 10.1186/1471-2105-10-421. [DOI] [PMC free article] [PubMed] [Google Scholar]
  17. Carrino-Kyker SR, Swanson AK. Seasonal physicochemical characteristics of thirty northern Ohio temporary pools along gradients of GIS-delineated human land-use. Wetlands. 2007;27:749–760. doi: 10.1672/0277-5212(2007)27[749:SPCOTN]2.0.CO;2. [DOI] [Google Scholar]
  18. Castilla R, González R, Fouad D, Fraga E, Muntané J. Dual effect of ethanol on cell death in primary culture of human and rat hepatocytes. Alcohol and Alcoholism. 2004;39:290–296. doi: 10.1093/alcalc/agh065. [DOI] [PubMed] [Google Scholar]
  19. Catalanotti C, Yang W, Posewitz MC, Grossman AR. Fermentation metabolism and its evolution in algae. Frontiers in Plant Science. 2013;4:150. doi: 10.3389/fpls.2013.00150. [DOI] [PMC free article] [PubMed] [Google Scholar]
  20. Chader S, Hacene H, Agathos SN. Study of hydrogen production by three strains of chlorella isolated from the soil in the algerian sahara. International Journal of Hydrogen Energy. 2009;34:4941–4946. doi: 10.1016/j.ijhydene.2008.10.058. [DOI] [Google Scholar]
  21. Charlemagne J, Tournefier A. Handbook of Vertebrate Immunology. 1998. Immunology of amphibians; pp. 63–72. [Google Scholar]
  22. Christensen EI, Moskaug JO, Vorum H, Jacobsen C, Gundersen TE, Nykjaer A, Blomhoff R, Willnow TE, Moestrup SK. Evidence for an essential role of megalin in transepithelial transport of retinol. Journal of the American Society of Nephrology. 1999;10:685–695. doi: 10.1681/ASN.V104685. [DOI] [PubMed] [Google Scholar]
  23. Colombo-Pallotta MF, Rodríguez-Román A, Iglesias-Prieto R. Calcification in bleached and unbleached montastraea faveolata: evaluating the role of oxygen and glycerol. Coral Reefs. 2010;29:899–907. doi: 10.1007/s00338-010-0638-x. [DOI] [Google Scholar]
  24. Dani V, Ganot P, Priouzeau F, Furla P, Sabourault C. Are Niemann-Pick type C proteins key players in cnidarian-dinoflagellate endosymbioses? Molecular Ecology. 2014;23:4527–4540. doi: 10.1111/mec.12876. [DOI] [PubMed] [Google Scholar]
  25. Davidson EW, Parris M, Collins JP, Longcore JE, Pessier AP, Brunner J. Pathogenicity and transmission of chytridiomycosis in tiger salamanders (Ambystoma tigrinum) Copeia. 2003;2003:601–607. doi: 10.1643/CP-02-120R1. [DOI] [Google Scholar]
  26. Davy SK, Allemand D, Weis VM. Cell biology of cnidarian-dinoflagellate symbiosis. Microbiology and Molecular Biology Reviews. 2012;76:229–261. doi: 10.1128/MMBR.05014-11. [DOI] [PMC free article] [PubMed] [Google Scholar]
  27. den Besten G, van Eunen K, Groen AK, Venema K, Reijngoud DJ, Bakker BM. The role of short-chain fatty acids in the interplay between diet, gut microbiota, and host energy metabolism. The Journal of Lipid Research. 2013;54:2325–2340. doi: 10.1194/jlr.R036012. [DOI] [PMC free article] [PubMed] [Google Scholar]
  28. Detournay O, Schnitzler CE, Poole A, Weis VM. Regulation of cnidarian-dinoflagellate mutualisms: evidence that activation of a host tgfβ innate immune pathway promotes tolerance of the symbiont. Developmental and Comparative Immunology. 2012;38:525–537. doi: 10.1016/j.dci.2012.08.008. [DOI] [PubMed] [Google Scholar]
  29. Doerflinger SY, Throop AL, Herbst-Kralovetz MM. Bacteria in the vaginal microbiome alter the innate immune response and barrier properties of the human vaginal epithelia in a species-specific manner. Journal of Infectious Diseases. 2014;209:1989–1999. doi: 10.1093/infdis/jiu004. [DOI] [PubMed] [Google Scholar]
  30. Douglas AE. The Symbiotic Habit. Princeton University Press; 2010. [Google Scholar]
  31. Edgar RC. MUSCLE: multiple sequence alignment with high accuracy and high throughput. Nucleic Acids Research. 2004;32:1792–1797. doi: 10.1093/nar/gkh340. [DOI] [PMC free article] [PubMed] [Google Scholar]
  32. Ellison AR, Savage AE, DiRenzo GV, Langhammer P, Lips KR, Zamudio KR. Fighting a losing battle: vigorous immune response countered by pathogen suppression of host defenses in the chytridiomycosis-susceptible frog Atelopus zeteki. Genes|Genomes|Genetics. 2014;4:1275–1289. doi: 10.1534/g3.114.010744. [DOI] [PMC free article] [PubMed] [Google Scholar]
  33. Enokido Y, de Sauvage F, Hongo JA, Ninkina N, Rosenthal A, Buchman VL, Davies AM. GFR alpha-4 and the tyrosine kinase ret form a functional receptor complex for persephin. Current Biology. 1998;8:1019–1022. doi: 10.1016/S0960-9822(07)00422-8. [DOI] [PubMed] [Google Scholar]
  34. Fagerberg L, Hallström BM, Oksvold P, Kampf C, Djureinovic D, Odeberg J, Habuka M, Tahmasebpoor S, Danielsson A, Edlund K, Asplund A, Sjöstedt E, Lundberg E, Szigyarto CA, Skogs M, Takanen JO, Berling H, Tegel H, Mulder J, Nilsson P, Schwenk JM, Lindskog C, Danielsson F, Mardinoglu A, Sivertsson A, von Feilitzen K, Forsberg M, Zwahlen M, Olsson I, Navani S, Huss M, Nielsen J, Ponten F, Uhlén M. Analysis of the human tissue-specific expression by genome-wide integration of transcriptomics and antibody-based proteomics. Molecular & Cellular Proteomics. 2014;13:397–406. doi: 10.1074/mcp.M113.035600. [DOI] [PMC free article] [PubMed] [Google Scholar]
  35. Fan J, Xu H, Li Y. Transcriptome-based global analysis of gene expression in response to carbon dioxide deprivation in the green algae Chlorella pyrenoidosa. Algal Research. 2016;16:12–19. doi: 10.1016/j.algal.2016.02.032. [DOI] [Google Scholar]
  36. Fields S, Song B, Rasoul B, Fong J, Works MG, Shew K, Yiu Y, Mirsalis J, D'Andrea A. New candidate biomarkers in the female genital tract to evaluate microbicide toxicity. PLoS One. 2014;9:e110980. doi: 10.1371/journal.pone.0110980. [DOI] [PMC free article] [PubMed] [Google Scholar]
  37. Fisher CE, Howie SE. The role of megalin (LRP-2/Gp330) during development. Developmental Biology. 2006;296:279–297. doi: 10.1016/j.ydbio.2006.06.007. [DOI] [PubMed] [Google Scholar]
  38. Flores MV, Crawford KC, Pullin LM, Hall CJ, Crosier KE, Crosier PS. Dual oxidase in the intestinal epithelium of zebrafish larvae has anti-bacterial properties. Biochemical and Biophysical Research Communications. 2010;400:164–168. doi: 10.1016/j.bbrc.2010.08.037. [DOI] [PubMed] [Google Scholar]
  39. Gasteiger E, Jung E, Bairoch A. SWISS-PROT: connecting biomolecular knowledge via a protein database. Current Issues in Molecular Biology. 2001;3:47–55. doi: 10.21775/cimb.003.047. [DOI] [PubMed] [Google Scholar]
  40. Gersemann M, Becker S, Nuding S, Antoni L, Ott G, Fritz P, Oue N, Yasui W, Wehkamp J, Stange EF. Olfactomedin-4 is a glycoprotein secreted into mucus in active IBD. Journal of Crohn's and Colitis. 2012;6:425–434. doi: 10.1016/j.crohns.2011.09.013. [DOI] [PubMed] [Google Scholar]
  41. Giam M, Okamoto T, Mintern JD, Strasser A, Bouillet P. Bcl-2 family member Bcl-G is not a proapoptotic protein. Cell Death and Disease. 2012;3:e404. doi: 10.1038/cddis.2012.130. [DOI] [PMC free article] [PubMed] [Google Scholar]
  42. Gibbs M, Gfeller RP, Chen C. Fermentative metabolism of Chlamydomonas reinhardii: III. photoassimilation of acetate. Plant Physiology. 1986;82:160–166. doi: 10.1104/pp.82.1.160. [DOI] [PMC free article] [PubMed] [Google Scholar]
  43. Gilbert PW. The Alga-Egg relationship in Ambystoma maculatum, A case of symbiosis. Ecology. 1944;25:366–369. doi: 10.2307/1931284. [DOI] [Google Scholar]
  44. Gilmore Lab BU. NF-kB target genes. 2016. http://www.bu.edu/nf-kb/gene-resources/target-genes/
  45. Godaux D, Bailleul B, Berne N, Cardol P. Induction of photosynthetic carbon fixation in anoxia relies on hydrogenase activity and Proton-Gradient Regulation-Like1-Mediated cyclic electron flow in Chlamydomonas reinhardtii. Plant Physiology. 2015;168:648–658. doi: 10.1104/pp.15.00105. [DOI] [PMC free article] [PubMed] [Google Scholar]
  46. Goff LJ, Stein JR. Ammonia: basis for algal symbiosis in salamander egg masses. Life Sciences. 1978;22:1463–1468. doi: 10.1016/0024-3205(78)90641-0. [DOI] [PubMed] [Google Scholar]
  47. Gomez-Mestre I, Touchon JC, Warkentin KM. Amphibian embryo and parental defenses and a larval predator reduce egg mortality from water mold. Ecology. 2006;87:2570–2581. doi: 10.1890/0012-9658(2006)87[2570:AEAPDA]2.0.CO;2. [DOI] [PubMed] [Google Scholar]
  48. González-Ballester D, Casero D, Cokus S, Pellegrini M, Merchant SS, Grossman AR. RNA-seq analysis of sulfur-deprived Chlamydomonas cells reveals aspects of acclimation critical for cell survival. The Plant Cell. 2010;22:2058–2084. doi: 10.1105/tpc.109.071167. [DOI] [PMC free article] [PubMed] [Google Scholar]
  49. Gouy M, Guindon S, Gascuel O. SeaView version 4: a multiplatform graphical user interface for sequence alignment and phylogenetic tree building. Molecular Biology and Evolution. 2010;27:221–224. doi: 10.1093/molbev/msp259. [DOI] [PubMed] [Google Scholar]
  50. Grabherr MG, Haas BJ, Yassour M, Levin JZ, Thompson DA, Amit I, Adiconis X, Fan L, Raychowdhury R, Zeng Q, Chen Z, Mauceli E, Hacohen N, Gnirke A, Rhind N, di Palma F, Birren BW, Nusbaum C, Lindblad-Toh K, Friedman N, Regev A. Full-length transcriptome assembly from RNA-Seq data without a reference genome. Nature Biotechnology. 2011;29:644–652. doi: 10.1038/nbt.1883. [DOI] [PMC free article] [PubMed] [Google Scholar]
  51. Graham ER, Fay SA, Davey A, Sanders RW. Intracapsular algae provide fixed carbon to developing embryos of the salamander Ambystoma maculatum. The Journal of Experimental Biology. 2013;216:452–459. doi: 10.1242/jeb.076711. [DOI] [PubMed] [Google Scholar]
  52. Graham ER, McKie-Krisberg ZM, Sanders RW. Photosynthetic carbon from algal symbionts peaks during the latter stages of embryonic development in the salamander Ambystoma maculatum. BMC Research Notes. 2014;7:764. doi: 10.1186/1756-0500-7-764. [DOI] [PMC free article] [PubMed] [Google Scholar]
  53. Graveley BR, Brooks AN, Carlson JW, Duff MO, Landolin JM, Yang L, Artieri CG, van Baren MJ, Boley N, Booth BW, Brown JB, Cherbas L, Davis CA, Dobin A, Li R, Lin W, Malone JH, Mattiuzzo NR, Miller D, Sturgill D, Tuch BB, Zaleski C, Zhang D, Blanchette M, Dudoit S, Eads B, Green RE, Hammonds A, Jiang L, Kapranov P, Langton L, Perrimon N, Sandler JE, Wan KH, Willingham A, Zhang Y, Zou Y, Andrews J, Bickel PJ, Brenner SE, Brent MR, Cherbas P, Gingeras TR, Hoskins RA, Kaufman TC, Oliver B, Celniker SE. The developmental transcriptome of Drosophila melanogaster. Nature. 2011;471:473–479. doi: 10.1038/nature09715. [DOI] [PMC free article] [PubMed] [Google Scholar]
  54. Grossman AR, Catalanotti C, Yang W, Dubini A, Magneschi L, Subramanian V, Posewitz MC, Seibert M. Multiple facets of anoxic metabolism and hydrogen production in the unicellular green alga Chlamydomonas reinhardtii. New Phytologist. 2011;190:279–288. doi: 10.1111/j.1469-8137.2010.03534.x. [DOI] [PubMed] [Google Scholar]
  55. Haas BJ, Papanicolaou A, Yassour M, Grabherr M, Blood PD, Bowden J, Couger MB, Eccles D, Li B, Lieber M, Macmanes MD, Ott M, Orvis J, Pochet N, Strozzi F, Weeks N, Westerman R, William T, Dewey CN, Henschel R, Leduc RD, Friedman N, Regev A. De novo transcript sequence reconstruction from RNA-seq using the trinity platform for reference generation and analysis. Nature Protocols. 2013;8:1494–1512. doi: 10.1038/nprot.2013.084. [DOI] [PMC free article] [PubMed] [Google Scholar]
  56. Hansen KD, Irizarry RA, Wu Z, Zhijin W. Removing technical variability in RNA-seq data using conditional quantile normalization. Biostatistics. 2012;13:204–216. doi: 10.1093/biostatistics/kxr054. [DOI] [PMC free article] [PubMed] [Google Scholar]
  57. Harrison RG. In: Organization and Development of the Embryo. Wilens S, editor. New Haven: Yale University Press; 1969. Harrison stages and description of the normal development of the spotted salamander, Amblystoma punctatum; pp. 44–66. [Google Scholar]
  58. Hoede C, Arnoux S, Moisset M, Chaumier T, Inizan O, Jamilloux V, Quesneville H. PASTEC: an automatic transposable element classification tool. PLoS One. 2014;9:e91929. doi: 10.1371/journal.pone.0091929. [DOI] [PMC free article] [PubMed] [Google Scholar]
  59. Horowitz SB, Paine PL, Tluczek L, Reynhout JK. Reference phase analysis of free and bound intracellular solutes. I. sodium and potassium in amphibian oocytes. Biophysical Journal. 1979;25:33. doi: 10.1016/S0006-3495(79)85276-5. [DOI] [PMC free article] [PubMed] [Google Scholar]
  60. Hsieh JC, Pan CY, Chen JY. Tilapia hepcidin (TH)2-3 as a transgene in transgenic fish enhances resistance to vibrio vulnificus infection and causes variations in immune-related genes after infection by different bacterial species. Fish & Shellfish Immunology. 2010;29:430–439. doi: 10.1016/j.fsi.2010.05.001. [DOI] [PubMed] [Google Scholar]
  61. Jeoung NH, Harris RA. Role of pyruvate dehydrogenase kinase 4 in regulation of blood glucose levels. Korean Diabetes Journal. 2010;34:274–283. doi: 10.4093/kdj.2010.34.5.274. [DOI] [PMC free article] [PubMed] [Google Scholar]
  62. Kakani P, Suman S, Gupta L, Kumar S. Ambivalent outcomes of cell apoptosis: a barrier or blessing in malaria progression. Frontiers in Microbiology. 2016;7:302. doi: 10.3389/fmicb.2016.00302. [DOI] [PMC free article] [PubMed] [Google Scholar]
  63. Karasov WH, Douglas AE. Comparative digestive physiology. Comprehensive Physiology. 2013;3:741–783. doi: 10.1002/cphy.c110054. [DOI] [PMC free article] [PubMed] [Google Scholar]
  64. Kasai F, editor; Kawachi M, editor; Erata M, editor; Watanabe MM, editor. NIES-Collection List of Strains: Microalge and Protozoa. 7th edn. Tsukuba: National Institute for Environmental Studies; 2004. [Google Scholar]
  65. Kato S. Laboratory culture and morphology of colacium vesiculosum Ehrb.(Euglenophyceae) Japanese Society of Phycology. 1982;30:63–67. [Google Scholar]
  66. Kaushansky A, Douglass AN, Arang N, Vigdorovich V, Dambrauskas N, Kain HS, Austin LS, Sather DN, Kappe SH. Malaria parasites target the hepatocyte receptor EphA2 for successful host infection. Science. 2015;350:1089–1092. doi: 10.1126/science.aad3318. [DOI] [PMC free article] [PubMed] [Google Scholar]
  67. Keinath MC, Timoshevskiy VA, Timoshevskaya NY, Tsonis PA, Voss SR, Smith JJ. Initial characterization of the large genome of the salamander Ambystoma mexicanum using shotgun and laser capture chromosome sequencing. Scientific Reports. 2015;5:16413. doi: 10.1038/srep16413. [DOI] [PMC free article] [PubMed] [Google Scholar]
  68. Kellogg RB, Patton JS, droplets L. Lipid droplets, medium of energy exchange in the symbiotic anemone Condylactis gigantea: a model coral polyp. Marine Biology. 1983;75:137–149. doi: 10.1007/BF00405996. [DOI] [Google Scholar]
  69. Kerney R, Kim E, Hangarter RP, Heiss AA, Bishop CD, Hall BK. Intracellular invasion of green algae in a salamander host. PNAS. 2011;108:6497–6502. doi: 10.1073/pnas.1018259108. [DOI] [PMC free article] [PubMed] [Google Scholar]
  70. Kidwell MG. Transposable elements and the evolution of genome size in eukaryotes. Genetica. 2002;115:49–63. doi: 10.1023/A:1016072014259. [DOI] [PubMed] [Google Scholar]
  71. Kim E, Lin Y, Kerney R, Blumenberg L, Bishop C. Phylogenetic analysis of algal symbionts associated with four north american amphibian egg masses. PLoS One. 2014;9:e108915. doi: 10.1371/journal.pone.0108915. [DOI] [PMC free article] [PubMed] [Google Scholar]
  72. Kim JH, Song S-Y, Park SG, Song SU, Xia Y, Sung J-H. Primary involvement of NADPH oxidase 4 in Hypoxia-Induced generation of reactive oxygen species in Adipose-Derived stem cells. Stem Cells and Development. 2012;21:2212–2221. doi: 10.1089/scd.2011.0561. [DOI] [PMC free article] [PubMed] [Google Scholar]
  73. Kim JM, Eckmann L, Savidge TC, Lowe DC, Witthöft T, Kagnoff MF. Apoptosis of human intestinal epithelial cells after bacterial invasion. The Journal of Clinical Investigation. 1998;102:1815–1823. doi: 10.1172/JCI2466. [DOI] [PMC free article] [PubMed] [Google Scholar]
  74. Klein U, Betz A. Fermentative metabolism of hydrogen-evolving Chlamydomonas moewusii. Plant Physiology. 1978;61:953–956. doi: 10.1104/pp.61.6.953. [DOI] [PMC free article] [PubMed] [Google Scholar]
  75. Krajmalnik-Brown R, Ilhan ZE, Kang DW, DiBaise JK. Effects of gut microbes on nutrient absorption and energy regulation. Nutrition in Clinical Practice. 2012;27:201–214. doi: 10.1177/0884533611436116. [DOI] [PMC free article] [PubMed] [Google Scholar]
  76. Lake V, Willows RD. Rapid extraction of RNA and analysis of transcript levels in Chlamydomonas reinhardtii using real-time RT-PCR: Magnesium chelatase chlH, chlD and chlI gene expression. Photosynthesis Research. 2003;77:69–76. doi: 10.1023/A:1024955916194. [DOI] [PubMed] [Google Scholar]
  77. Lan JH, Yin Y, Reed EF, Moua K, Thomas K, Zhang Q. Impact of three Illumina library construction methods on GC bias and HLA genotype calling. Human Immunology. 2015;76:166–175. doi: 10.1016/j.humimm.2014.12.016. [DOI] [PMC free article] [PubMed] [Google Scholar]
  78. Lang F, Perrotti N, Stournaras C. Colorectal carcinoma cells--regulation of survival and growth by SGK1. The International Journal of Biochemistry & Cell Biology. 2010;42:1571–1575. doi: 10.1016/j.biocel.2010.05.016. [DOI] [PubMed] [Google Scholar]
  79. Langmead B, Salzberg SL. Fast gapped-read alignment with bowtie 2. Nature Methods. 2012;9:357–359. doi: 10.1038/nmeth.1923. [DOI] [PMC free article] [PubMed] [Google Scholar]
  80. Leadsham JE, Sanders G, Giannaki S, Bastow EL, Hutton R, Naeimi WR, Breitenbach M, Gourlay CW. Loss of cytochrome c oxidase promotes RAS-dependent ROS production from the ER resident NADPH oxidase, Yno1p, in yeast. Cell Metabolism. 2013;18:279–286. doi: 10.1016/j.cmet.2013.07.005. [DOI] [PubMed] [Google Scholar]
  81. Lehnert EM, Mouchka ME, Burriesci MS, Gallo ND, Schwarz JA, Pringle JR. Extensive differences in gene expression between symbiotic and aposymbiotic cnidarians. Genes|Genomes|Genetics. 2014;4:277–295. doi: 10.1534/g3.113.009084. [DOI] [PMC free article] [PubMed] [Google Scholar]
  82. Lemanski LF, Aldoroty R. Role of acid phosphatase in the breakdown of yolk platelets in developing amphibian embryos. Journal of Morphology. 1977;153:419–425. doi: 10.1002/jmor.1051530307. [DOI] [PubMed] [Google Scholar]
  83. Ley RE, Lozupone CA, Hamady M, Knight R, Gordon JI. Worlds within worlds: evolution of the vertebrate gut microbiota. Nature Reviews. Microbiology. 2008;6:776–788. doi: 10.1038/nrmicro1978. [DOI] [PMC free article] [PubMed] [Google Scholar]
  84. Lhocine N, Arena ET, Bomme P, Ubelmann F, Prévost MC, Robine S, Sansonetti PJ. Apical invasion of intestinal epithelial cells by Salmonella typhimurium requires villin to remodel the brush border actin cytoskeleton. Cell Host & Microbe. 2015;17:164–177. doi: 10.1016/j.chom.2014.12.003. [DOI] [PMC free article] [PubMed] [Google Scholar]
  85. Li B, Dewey CN. RSEM: accurate transcript quantification from RNA-Seq data with or without a reference genome. BMC Bioinformatics. 2011;12:323. doi: 10.1186/1471-2105-12-323. [DOI] [PMC free article] [PubMed] [Google Scholar]
  86. Licht LE, Lowcock LA. Genome size and metabolic rate in salamanders. Comparative Biochemistry and Physiology Part B: Comparative Biochemistry. 1991;100:83–92. doi: 10.1016/0305-0491(91)90089-V. [DOI] [Google Scholar]
  87. Lin S, Cheng S, Song B, Zhong X, Lin X, Li W, Li L, Zhang Y, Zhang H, Ji Z, Cai M, Zhuang Y, Shi X, Lin L, Wang L, Wang Z, Liu X, Yu S, Zeng P, Hao H, Zou Q, Chen C, Li Y, Wang Y, Xu C, Meng S, Xu X, Wang J, Yang H, Campbell DA, Sturm NR, Dagenais-Bellefeuille S, Morse D. The Symbiodinium kawagutii genome illuminates dinoflagellate gene expression and coral symbiosis. Science. 2015;350:691–694. doi: 10.1126/science.aad0408. [DOI] [PubMed] [Google Scholar]
  88. Liu C, Wu G, Huang X, Liu S, Cong B. Validation of housekeeping genes for gene expression studies in an ice alga Chlamydomonas during freezing acclimation. Extremophiles. 2012;16:419–425. doi: 10.1007/s00792-012-0441-4. [DOI] [PubMed] [Google Scholar]
  89. Liu W, Rodgers GP. Olfactomedin 4 expression and functions in innate immunity, inflammation, and cancer. Cancer and Metastasis Reviews. 2016;35:201–212. doi: 10.1007/s10555-016-9624-2. [DOI] [PubMed] [Google Scholar]
  90. Liu W, Yan M, Liu Y, Wang R, Li C, Deng C, Singh A, Coleman WG, Rodgers GP. Olfactomedin 4 down-regulates innate immunity against Helicobacter pylori infection. PNAS. 2010;107:11056–11061. doi: 10.1073/pnas.1001269107. [DOI] [PMC free article] [PubMed] [Google Scholar]
  91. Léon R, Galván F. Glycerol photoproduction by free and Ca-alginate entrapped cells of chlamydomonas reinhardtii. Journal of Biotechnology. 1995;42:61–67. doi: 10.1016/0168-1656(95)00069-3. [DOI] [Google Scholar]
  92. Mayfield AB, Gates RD. Osmoregulation in anthozoan-dinoflagellate symbiosis. Comparative Biochemistry and Physiology. Part A, Molecular & Integrative Physiology. 2007;147:1–10. doi: 10.1016/j.cbpa.2006.12.042. [DOI] [PubMed] [Google Scholar]
  93. McFall-Ngai MJ. The importance of microbes in animal development: lessons from the squid-vibrio symbiosis. Annual Review of Microbiology. 2014;68:177–194. doi: 10.1146/annurev-micro-091313-103654. [DOI] [PMC free article] [PubMed] [Google Scholar]
  94. Mohamed AR, Cumbo V, Harii S, Shinzato C, Chan CX, Ragan MA, Bourne DG, Willis BL, Ball EE, Satoh N, Miller DJ. The transcriptomic response of the coral acropora digitifera to a competent symbiodinium strain: the symbiosome as an arrested early phagosome. Molecular Ecology. 2016;25:3127–3141. doi: 10.1111/mec.13659. [DOI] [PubMed] [Google Scholar]
  95. Monack DM, Raupach B, Hromockyj AE, Falkow S. Salmonella typhimurium invasion induces apoptosis in infected macrophages. PNAS. 1996;93:9833–9838. doi: 10.1073/pnas.93.18.9833. [DOI] [PMC free article] [PubMed] [Google Scholar]
  96. Muller-Parker G, D’Elia CF, Cook CB. Coral Reefs in the Anthropocene. Netherlands: Springer; 2015. Interactions between corals and their symbiotic algae; pp. 99–116. [DOI] [Google Scholar]
  97. Mus F, Dubini A, Seibert M, Posewitz MC, Grossman AR. Anaerobic acclimation in Chlamydomonas reinhardtii: anoxic gene expression, hydrogenase induction, and metabolic pathways. Journal of Biological Chemistry. 2007;282:25475–25486. doi: 10.1074/jbc.M701415200. [DOI] [PubMed] [Google Scholar]
  98. Nathan C, Cunningham-Bussel A. Beyond oxidative stress: an immunologist's guide to reactive oxygen species. Nature Reviews Immunology. 2013;13:349–361. doi: 10.1038/nri3423. [DOI] [PMC free article] [PubMed] [Google Scholar]
  99. Neilson AH, Larsson T. The utilization of organic nitrogen for growth of algae: physiological aspects. Physiologia Plantarum. 1980;48:542–553. doi: 10.1111/j.1399-3054.1980.tb03302.x. [DOI] [Google Scholar]
  100. Ng S, March S, Galstian A, Hanson K, Carvalho T, Mota MM, Bhatia SN. Hypoxia promotes liver-stage malaria infection in primary human hepatocytes in vitro. Disease Models & Mechanisms. 2014;7:215–224. doi: 10.1242/dmm.013490. [DOI] [PMC free article] [PubMed] [Google Scholar]
  101. Nguyen AV, Thomas-Hall SR, Malnoë A, Timmins M, Mussgnug JH, Rupprecht J, Kruse O, Hankamer B, Schenk PM. Transcriptome for photobiological hydrogen production induced by sulfur deprivation in the green alga Chlamydomonas reinhardtii. Eukaryotic Cell. 2008;7:1965–1979. doi: 10.1128/EC.00418-07. [DOI] [PMC free article] [PubMed] [Google Scholar]
  102. Olszewski KL, Llinás M. Central carbon metabolism of plasmodium parasites. Molecular and Biochemical Parasitology. 2011;175:95–103. doi: 10.1016/j.molbiopara.2010.09.001. [DOI] [PMC free article] [PubMed] [Google Scholar]
  103. Orr H. Note on the development of amphibians, chiefly concerning the central nervous system; with additional observations on the hypophysis, mouth, and the appendages and skeleton of the head. Quarterly Journal of Microscopical Science. 1888;29:295–324. [Google Scholar]
  104. Owczarzy R, Tataurov AV, Wu Y, Manthey JA, McQuisten KA, Almabrazi HG, Pedersen KF, Lin Y, Garretson J, McEntaggart NO, Sailor CA, Dawson RB, Peek AS. IDT SciTools: a suite for analysis and design of nucleic acid oligomers. Nucleic Acids Research. 2008;36:W163–W169. doi: 10.1093/nar/gkn198. [DOI] [PMC free article] [PubMed] [Google Scholar]
  105. Patro R, Duggal G, Kingsford C. Accurate, fast, and model-aware transcript expression quantification with salmon. bioRxiv. 2015 doi: 10.1038/nmeth.4197. http://biorxiv.org/content/early/2016/08/30/021592 [DOI] [PMC free article] [PubMed]
  106. Petrisko JE, Pearl CA, Pilliod DS, Sheridan PP, Williams CF, Peterson CR, Bury RB. Saprolegniaceae identified on amphibian eggs throughout the Pacific Northwest, USA, by internal transcribed spacer sequences and phylogenetic analysis. Mycologia. 2008;100:171–180. doi: 10.3852/mycologia.100.2.171. [DOI] [PubMed] [Google Scholar]
  107. Petrocchi-Passeri P, Cero C, Cutarelli A, Frank C, Severini C, Bartolomucci A, Possenti R. The VGF-derived peptide TLQP-62 modulates insulin secretion and glucose homeostasis. Journal of Molecular Endocrinology. 2015;54:227–239. doi: 10.1530/JME-14-0313. [DOI] [PubMed] [Google Scholar]
  108. Pinder A, Friet S. Oxygen transport in egg masses of the amphibians rana sylvatica and ambystoma maculatum: convection, diffusion and oxygen production by algae. The Journal of Experimental Biology. 1994;197:17. doi: 10.1242/jeb.197.1.17. [DOI] [PubMed] [Google Scholar]
  109. Piruat JI, López-Barneo J. Oxygen tension regulates mitochondrial DNA-encoded complex I gene expression. The Journal of Biological Chemistry. 2005;280:42676–42684. doi: 10.1074/jbc.M507044200. [DOI] [PubMed] [Google Scholar]
  110. Portugal S, Carret C, Recker M, Armitage AE, Gonçalves LA, Epiphanio S, Sullivan D, Roy C, Newbold CI, Drakesmith H, Mota MM. Host-mediated regulation of superinfection in malaria. Nature Medicine. 2011;17:732–737. doi: 10.1038/nm.2368. [DOI] [PMC free article] [PubMed] [Google Scholar]
  111. Ramakers C, Ruijter JM, Deprez RH, Moorman AF. Assumption-free analysis of quantitative real-time polymerase chain reaction (PCR) data. Neuroscience Letters. 2003;339:62–66. doi: 10.1016/S0304-3940(02)01423-4. [DOI] [PubMed] [Google Scholar]
  112. Ramirez VP, Gurevich I, Aneskievich BJ. Emerging roles for TNIP1 in regulating post-receptor signaling. Cytokine & Growth Factor Reviews. 2012;23:109–118. doi: 10.1016/j.cytogfr.2012.04.002. [DOI] [PMC free article] [PubMed] [Google Scholar]
  113. Remmert M, Biegert A, Hauser A, Söding J. HHblits: lightning-fast iterative protein sequence searching by HMM-HMM alignment. Nature Methods. 2012;9:173–175. doi: 10.1038/nmeth.1818. [DOI] [PubMed] [Google Scholar]
  114. Richter M, Rühle W, Wild A. Studies on the mechanism of photosystem II photoinhibition II. the involvement of toxic oxygen species. Photosynthesis Research. 1990;24:237–243. doi: 10.1007/BF00032311. [DOI] [PubMed] [Google Scholar]
  115. Robinson MD, McCarthy DJ, Smyth GK. edgeR: a bioconductor package for differential expression analysis of digital gene expression data. Bioinformatics. 2010;26:139–140. doi: 10.1093/bioinformatics/btp616. [DOI] [PMC free article] [PubMed] [Google Scholar]
  116. Robinson MD, Oshlack A. A scaling normalization method for differential expression analysis of RNA-seq data. Genome Biology. 2010;11:R25. doi: 10.1186/gb-2010-11-3-r25. [DOI] [PMC free article] [PubMed] [Google Scholar]
  117. Rosenblum EB, Poorten TJ, Settles M, Murdoch GK, Robert J, Maddox N, Eisen MB. Genome-wide transcriptional response of Silurana (Xenopus) tropicalis to infection with the deadly chytrid fungus. PLoS One. 2009;4:e6494. doi: 10.1371/journal.pone.0006494. [DOI] [PMC free article] [PubMed] [Google Scholar]
  118. Rost B. Enzyme function less conserved than anticipated. Journal of Molecular Biology. 2002;318:595–608. doi: 10.1016/S0022-2836(02)00016-5. [DOI] [PubMed] [Google Scholar]
  119. Round JL, Lee SM, Li J, Tran G, Jabri B, Chatila TA, Mazmanian SK. The Toll-like receptor 2 pathway establishes colonization by a commensal of the human microbiota. Science. 2011;332:974–977. doi: 10.1126/science.1206095. [DOI] [PMC free article] [PubMed] [Google Scholar]
  120. Ruijter JM, Ramakers C, Hoogaars WM, Karlen Y, Bakker O, van den Hoff MJ, Moorman AF. Amplification efficiency: linking baseline and bias in the analysis of quantitative PCR data. Nucleic Acids Research. 2009;37:e45. doi: 10.1093/nar/gkp045. [DOI] [PMC free article] [PubMed] [Google Scholar]
  121. Savage AE, Kiemnec-Tyburczy KM, Ellison AR, Fleischer RC, Zamudio KR. Conservation and divergence in the frog immunome: pyrosequencing and de novo assembly of immune tissue transcriptomes. Gene. 2014;542:98–108. doi: 10.1016/j.gene.2014.03.051. [DOI] [PubMed] [Google Scholar]
  122. Scheibel LW, Ashton SH, Trager W. Plasmodium falciparum: microaerophilic requirements in human red blood cells. Experimental Parasitology. 1979;47:410–418. doi: 10.1016/0014-4894(79)90094-8. [DOI] [PubMed] [Google Scholar]
  123. Schenk S, Saberi M, Olefsky JM. Insulin sensitivity: modulation by nutrients and inflammation. Journal of Clinical Investigation. 2008;118:2992–3002. doi: 10.1172/JCI34260. [DOI] [PMC free article] [PubMed] [Google Scholar]
  124. Shakibaei M, Frevert U. Dual interaction of the malaria circumsporozoite protein with the low density lipoprotein receptor-related protein (LRP) and heparan sulfate proteoglycans. Journal of Experimental Medicine. 1996;184:1699–1711. doi: 10.1084/jem.184.5.1699. [DOI] [PMC free article] [PubMed] [Google Scholar]
  125. Shin H, Shannon CP, Fishbane N, Ruan J, Zhou M, Balshaw R, Wilson-McManus JE, Ng RT, McManus BM, Tebbutt SJ, PROOF Centre of Excellence Team Variation in RNA-Seq transcriptome profiles of peripheral whole blood from healthy individuals with and without globin depletion. PLoS One. 2014;9:e91041. doi: 10.1371/journal.pone.0091041. [DOI] [PMC free article] [PubMed] [Google Scholar]
  126. Sibley LD. Intracellular parasite invasion strategies. Science. 2004;304:248–253. doi: 10.1126/science.1094717. [DOI] [PubMed] [Google Scholar]
  127. Simão FA, Waterhouse RM, Ioannidis P, Kriventseva EV, Zdobnov EM. BUSCO: assessing genome assembly and annotation completeness with single-copy orthologs. Bioinformatics. 2015;31:3210–3212. doi: 10.1093/bioinformatics/btv351. [DOI] [PubMed] [Google Scholar]
  128. Singh G, Singh G, Jadeja D, Kaur J. Lipid hydrolizing enzymes in virulence: Mycobacterium tuberculosis as a model system. Critical Reviews in Microbiology. 2010;36:259–269. doi: 10.3109/1040841X.2010.482923. [DOI] [PubMed] [Google Scholar]
  129. Small DP, Bennett RS, Bishop CD. The roles of oxygen and ammonia in the symbiotic relationship between the spotted salamander Ambystoma maculatum and the green alga Oophila amblystomatis during embryonic development. Symbiosis. 2014;64:1–10. doi: 10.1007/s13199-014-0297-8. [DOI] [Google Scholar]
  130. Smith JJ, Putta S, Walker JA, Kump DK, Samuels AK, Monaghan JR, Weisrock DW, Staben C, Voss SR. Sal-Site: integrating new and existing ambystomatid salamander research and informational resources. BMC Genomics. 2005;6:181. doi: 10.1186/1471-2164-6-181. [DOI] [PMC free article] [PubMed] [Google Scholar]
  131. Sobhy H, Colson P. Gemi: pcr primers prediction from multiple alignments. Comparative and Functional Genomics. 2012;2012:1–5. doi: 10.1155/2012/783138. [DOI] [PMC free article] [PubMed] [Google Scholar]
  132. Sosne G, Qiu P, Christopherson PL, Wheater MK. Thymosin beta 4 suppression of corneal NFκB: a potential anti-inflammatory pathway. Experimental Eye Research. 2007;84:663–669. doi: 10.1016/j.exer.2006.12.004. [DOI] [PMC free article] [PubMed] [Google Scholar]
  133. Steppan CM, Bailey ST, Bhat S, Brown EJ, Banerjee RR, Wright CM, Patel HR, Ahima RS, Lazar MA. The hormone resistin links obesity to diabetes. Nature. 2001;409:307–312. doi: 10.1038/35053000. [DOI] [PubMed] [Google Scholar]
  134. Stewart R, Rascón CA, Tian S, Nie J, Barry C, Chu LF, Ardalani H, Wagner RJ, Probasco MD, Bolin JM, Leng N, Sengupta S, Volkmer M, Habermann B, Tanaka EM, Thomson JA, Dewey CN. Comparative RNA-seq analysis in the unsequenced axolotl: the oncogene burst highlights early gene expression in the blastema. PLoS Computational Biology. 2013;9:e1002936. doi: 10.1371/journal.pcbi.1002936. [DOI] [PMC free article] [PubMed] [Google Scholar]
  135. Supek F, Bošnjak M, Škunca N, Šmuc T. REVIGO summarizes and visualizes long lists of gene ontology terms. PLoS One. 2011;6:e21800. doi: 10.1371/journal.pone.0021800. [DOI] [PMC free article] [PubMed] [Google Scholar]
  136. Takada Y, Murakami A, Aggarwal BB. Zerumbone abolishes NF-kappaB and IkappaBalpha kinase activation leading to suppression of antiapoptotic and metastatic gene expression, upregulation of apoptosis, and downregulation of invasion. Oncogene. 2005;24:6957–6969. doi: 10.1038/sj.onc.1208845. [DOI] [PubMed] [Google Scholar]
  137. Tato CM, Hunter CA. Host-pathogen interactions: subversion and utilization of the NF-kappa B pathway during infection. Infection and Immunity. 2002;70:3311–3317. doi: 10.1128/IAI.70.7.3311-3317.2002. [DOI] [PMC free article] [PubMed] [Google Scholar]
  138. R Core Team . R: A Language and Environment for Statistical Computing. Vienna, Austria: R Foundation for Statistical Computing; 2013. [Google Scholar]
  139. Thompson LR, Nikolakakis K, Pan S, Reed J, Knight R, Ruby EG. Transcriptional characterization of Vibrio fischeri during colonization of juvenile Euprymna scolopes. Environmental Microbiology. 2017 doi: 10.1111/1462-2920.13684. [DOI] [PMC free article] [PubMed] [Google Scholar]
  140. Tierney L, Linde J, Müller S, Brunke S, Molina JC, Hube B, Schöck U, Guthke R, Kuchler K. An interspecies regulatory network inferred from simultaneous RNA-seq of Candida albicans Invading Innate Immune Cells. Frontiers in Microbiology. 2012;3:85. doi: 10.3389/fmicb.2012.00085. [DOI] [PMC free article] [PubMed] [Google Scholar]
  141. Ueno K, Koga T, Kato K, Golenbock DT, Gendler SJ, Kai H, Kim KC. MUC1 mucin is a negative regulator of toll-like receptor signaling. American Journal of Respiratory Cell and Molecular Biology. 2008;38:263–268. doi: 10.1165/rcmb.2007-0336RC. [DOI] [PMC free article] [PubMed] [Google Scholar]
  142. Untergasser A, Cutcutache I, Koressaar T, Ye J, Faircloth BC, Remm M, Rozen SG. Primer3--new capabilities and interfaces. Nucleic Acids Research. 2012;40:e115. doi: 10.1093/nar/gks596. [DOI] [PMC free article] [PubMed] [Google Scholar]
  143. Vastag L, Jorgensen P, Peshkin L, Wei R, Rabinowitz JD, Kirschner MW. Remodeling of the metabolome during early frog development. PLoS One. 2011;6:e16881. doi: 10.1371/journal.pone.0016881. [DOI] [PMC free article] [PubMed] [Google Scholar]
  144. Verstrepen L, Carpentier I, Verhelst K, Beyaert R. ABINs: a20 binding inhibitors of NF-κB and apoptosis signaling. Biochemical Pharmacology. 2009;78:105–114. doi: 10.1016/j.bcp.2009.02.009. [DOI] [PubMed] [Google Scholar]
  145. Volgusheva A, Styring S, Mamedov F. Increased photosystem II stability promotes H2 production in sulfur-deprived Chlamydomonas reinhardtii. PNAS. 2013;110:7223–7228. doi: 10.1073/pnas.1220645110. [DOI] [PMC free article] [PubMed] [Google Scholar]
  146. Voolstra CR, Schwarz JA, Schnetzer J, Sunagawa S, Desalvo MK, Szmant AM, Coffroth MA, Medina M. The host transcriptome remains unaltered during the establishment of coral-algal symbioses. Molecular Ecology. 2009;18:1823–1833. doi: 10.1111/j.1365-294X.2009.04167.x. [DOI] [PubMed] [Google Scholar]
  147. Voss SR, Athippozhy A, Woodcock MR. Salamanders in Regeneration Research: Methods and Protocols. 2015. Transcriptomics using axolotls; pp. 309–319. [DOI] [Google Scholar]
  148. Voss SR. Sal-Site. 2016. www.ambystoma.org
  149. Wellen KE, Fucho R, Gregor MF, Furuhashi M, Morgan C, Lindstad T, Vaillancourt E, Gorgun CZ, Saatcioglu F, Hotamisligil GS. Coordinated regulation of nutrient and inflammatory responses by STAMP2 is essential for metabolic homeostasis. Cell. 2007;129:537–548. doi: 10.1016/j.cell.2007.02.049. [DOI] [PMC free article] [PubMed] [Google Scholar]
  150. Westermann AJ, Förstner KU, Amman F, Barquist L, Chao Y, Schulte LN, Müller L, Reinhardt R, Stadler PF, Vogel J. Dual RNA-seq unveils noncoding RNA functions in host-pathogen interactions. Nature. 2016;529:496–501. doi: 10.1038/nature16547. [DOI] [PubMed] [Google Scholar]
  151. Westermann AJ, Gorski SA, Vogel J. Dual RNA-seq of pathogen and host. Nature Reviews. Microbiology. 2012;10:618–630. doi: 10.1038/nrmicro2852. [DOI] [PubMed] [Google Scholar]
  152. Wier AM, Nyholm SV, Mandel MJ, Massengo-Tiassé RP, Schaefer AL, Koroleva I, Splinter-Bondurant S, Brown B, Manzella L, Snir E, Almabrazi H, Scheetz TE, Bonaldo MF, Casavant TL, Soares MB, Cronan JE, Reed JL, Ruby EG, McFall-Ngai MJ. Transcriptional patterns in both host and bacterium underlie a daily rhythm of anatomical and metabolic change in a beneficial symbiosis. PNAS. 2010;107:2259–2264. doi: 10.1073/pnas.0909712107. [DOI] [PMC free article] [PubMed] [Google Scholar]
  153. Witczak CA, Fujii N, Hirshman MF, Goodyear LJ. Ca2+/calmodulin-dependent protein kinase kinase-alpha regulates skeletal muscle glucose uptake independent of AMP-activated protein kinase and akt activation. Diabetes. 2007;56:1403–1409. doi: 10.2337/db06-1230. [DOI] [PubMed] [Google Scholar]
  154. Wu CH, Tsai MH, Ho CC, Chen CY, Lee HS. De novo transcriptome sequencing of axolotl blastema for identification of differentially expressed genes during limb regeneration. BMC Genomics. 2013;14:434. doi: 10.1186/1471-2164-14-434. [DOI] [PMC free article] [PubMed] [Google Scholar]
  155. Yang S, Guarnieri MT, Smolinski S, Ghirardi M, Pienkos PT. De novo transcriptomic analysis of hydrogen production in the green alga chlamydomonas moewusii through RNA-Seq. Biotechnology for Biofuels. 2013;6:118. doi: 10.1186/1754-6834-6-118. [DOI] [PMC free article] [PubMed] [Google Scholar]
  156. Yang W, Catalanotti C, Wittkopp TM, Posewitz MC, Grossman AR. Algae after dark: mechanisms to cope with anoxic/hypoxic conditions. The Plant Journal. 2015;82:481–503. doi: 10.1111/tpj.12823. [DOI] [PubMed] [Google Scholar]
  157. Zhang L, Happe T, Melis A. Biochemical and morphological characterization of sulfur-deprived and H2-producing chlamydomonas reinhardtii (green alga) Planta. 2002;214:552–561. doi: 10.1007/s004250100660. [DOI] [PubMed] [Google Scholar]
  158. Zhou J, Ye S, Fujiwara T, Manolagas SC, Zhao H. Steap4 plays a critical role in osteoclastogenesis in vitro by regulating cellular iron/reactive oxygen species (ROS) levels and cAMP response element-binding protein (CREB) activation. Journal of Biological Chemistry. 2013;288:30064–30074. doi: 10.1074/jbc.M113.478750. [DOI] [PMC free article] [PubMed] [Google Scholar]
eLife. 2017 May 2;6:e22054. doi: 10.7554/eLife.22054.048

Decision letter

Editor: Debashish Bhattacharya1

In the interests of transparency, eLife includes the editorial decision letter and accompanying author responses. A lightly edited version of the letter sent to the authors after peer review is shown, indicating the most substantive concerns; minor comments are not usually included.

Thank you for submitting your article "Transcriptome Analysis Illuminates the Nature of the Intracellular Interaction in a Vertebrate-Algal Symbiosis" for consideration by eLife. Your article has been reviewed by two peer reviewers, and the evaluation has been overseen by a Reviewing Editor and Ian Baldwin as the Senior Editor. The following individual involved in review of your submission has agreed to reveal his identity: Senjie Lin (Reviewer #2).

The reviewers have discussed the reviews with one another and the Reviewing Editor has drafted this decision to help you prepare a revised submission.

Summary:

This paper reports a very interesting study of the Oophila amblystomatis (green alga) – Ambystoma maculatum (salamander) symbiosis. Using RNA-seq the authors compared the green alga egg capsule ectosymbiont transcript repertoire to those of the endosymbionts as well as when the alga was grown in replete culture conditions. In addition, they compared the transcriptome of the salamander cells when infected or not by the green algal symbiont. The importance of this work is that it provides a unique perspective into the physiological consequences of the intracellular environment that are faced by algal endosymbionts.

The low level of differential expression for the ecto- versus the endosymbiont state of the alga (ca. 4%) and that of infected versus uninfected salamander cells (ca. 0.64%) is surprising, but not perhaps as surprising as when the algal data are compared to these cells in culture, which differ over 40% of the observed transcripts. This leads the reviewers to conclude that the OophilaAmbystoma ecto- and endosymbiosis model provides valuable insights into the changes that typify endosymbiosis of algae in animals, as well as provides a useful window into endosymbiosis in general. In addition to these considerations, the work results in novel genome data for future studies.

Essential revisions:

The authors have convincingly demonstrated that the algae are facing anoxic conditions that cannot be compensated by photosynthetic production of oxygen. In addition to this, the authors provide convincing data that, by virtue of modification in nitrogen and phosphate transport that the "symbiont" is tapping into the glutamine and phosphate cytosolic stores without compensating by supplying oxygen through photosynthesis. Yet oxygen supply to the oxygen hungry salamander cells has been demonstrated to be a major determinant of the OophilaAmbystoma ectosymbiosis in the egg capsule. In addition, there is no evidence that the endosymbionts are exporting significant amounts of photosynthate, in agreement with the general "fermentative metabolism" status of the alga. Reduced photosynthesis is also backed by reduced PSII and by the fact that light might become limiting within the mass of embryo cells. In Chlamydomonas plastid starch is the major substrate fermented under such anoxic conditions in darkness. It is suggested that staining the embryo cells with iodine solution would allow the authors to easily monitor through microscopy the presence or absence of the polysaccharide. If starch disappears it would strengthen their hypothesis that photosynthesis is either not operating in these algae or operating at a very low level and that carbohydrates or lipids are unlikely to be supplied to the host in significant amounts.

One reviewer disagreed that secretion of fermentation end products are beneficial to the host, in particular if such products are produced under "heterotrophic" conditions in an anoxic environment. In large amounts, these products, are potentially either cytotoxic by themselves (ethanol) or will impact negatively the osmotic pressure of the cytosol. This leaves us no clues as to what are the beneficial aspects of this endosymbiosis. There is no evidence supporting vertical transmission of the symbiont so maintenance of the alga for "infection" of next generation is not relevant. It is suggested that the authors revise their

Discussion to further emphasize these inconsistencies when they describe areas for future research. Another possibility is that the endosymbionts are supplying additional metabolites in small amounts, in addition to oxygen by the ectosymbionts. Because ectosymbionts are used as controls here to fish for the endosymbiosis specific response of the algae, major modifications in those pathways concerned with such metabolites would escape detection. The authors need to discuss this issue as well as consider vitamin or amino acid supply. In this regard, the reviewers wanted an explicit explanation for the simultaneous metabolic shift toward fermentation and oxidative stress conditions, because the former suggests insufficient O2 and the latter, excess. It seems that the salamander's potential to produce ROS described in the paper would fit the scenario but it was not explicitly discussed in the current version.

eLife. 2017 May 2;6:e22054. doi: 10.7554/eLife.22054.049

Author response


Essential revisions:

The authors have convincingly demonstrated that the algae are facing anoxic conditions that cannot be compensated by photosynthetic production of oxygen. In addition to this, the authors provide convincing data that, by virtue of modification in nitrogen and phosphate transport that the "symbiont" is tapping into the glutamine and phosphate cytosolic stores without compensating by supplying oxygen through photosynthesis. Yet oxygen supply to the oxygen hungry salamander cells has been demonstrated to be a major determinant of the Oophila – Ambystoma ectosymbiosis in the egg capsule. In addition, there is no evidence that the endosymbionts are exporting significant amounts of photosynthate, in agreement with the general "fermentative metabolism" status of the alga. Reduced photosynthesis is also backed by reduced PSII and by the fact that light might become limiting within the mass of embryo cells. In Chlamydomonas plastid starch is the major substrate fermented under such anoxic conditions in darkness. It is suggested that staining the embryo cells with iodine solution would allow the authors to easily monitor through microscopy the presence or absence of the polysaccharide. If starch disappears it would strengthen their hypothesis that photosynthesis is either not operating in these algae or operating at a very low level and that carbohydrates or lipids are unlikely to be supplied to the host in significant amounts.

The reviewers’ comment on the use of starch in anoxic fermentation is a terrific insight and one that we have coincidentally analyzed using TEM in our 2011 paper. In our earlier analysis we found that the starch granules do not differ in size when compared between the intracapsular and intracellular algal cells, however starch does make up more of the intracapsular algal cytoplasm:

"Several changes to algal cells were associated with host tissue and cellular invasion. Relative area measurements of starch granules and vacuoles were compared between intracapsular (n = 26), intracellular (n = 24), and extracellular algae found within the embryonic alimentary canal (n = 18). There were no differences in starch granule sizes [one-way ANOVA, F(2,56) = 2.89, P > 0.05]; however, starch granules constituted more cross-sectional area of intracapsular algae (10.5% SD 9.2%) than intracellular (5.9% SD 4.2%) or alimentary canal (3.4% SD 3.2%) algae [one-way ANOVA, F(2,56) = 4.70, P < 0.05]."(Kerney et al. 2011)

Please see the inserted paragraph on page 12, lines 243-255 where we describe these starch granule results and the consistent role of sulfur deprivation in initiating fermentation in other Chlamydomonad algae:

“The occurrence of intracellular fermentation is also supported by decreased starch granules in the intracellular algae and transcriptional changes to algal sulfate transport and sulfur metabolism associated genes. […] The overexpression of a sulfate transporter and taurine catabolic enzymes (Chader, Hacene and Agathos, 2009), along with other transcripts associated with sulfur metabolism (Figure 3; Table 4), indicates that fermentation in intracellular Oophila coincides with sulfur deprivation and closely matches the consumption of starch found in other fermenting algae.”

One reviewer disagreed that secretion of fermentation end products are beneficial to the host, in particular if such products are produced under "heterotrophic" conditions in an anoxic environment. In large amounts, these products, are potentially either cytotoxic by themselves (ethanol) or will impact negatively the osmotic pressure of the cytosol. This leaves us no clues as to what are the beneficial aspects of this endosymbiosis. There is no evidence supporting vertical transmission of the symbiont so maintenance of the alga for "infection" of next generation is not relevant. It is suggested that the authors revise their Discussion to further emphasize these inconsistencies when they describe areas for future research.

We have inserted a new section to the Discussion titled: “The Nature of the Endosymbiosis”. We believe this additional text addresses these concerns raised by our reviewers:

“The Nature of the Endosymbiosis

Whether the alga benefits from this endosymbiotic interaction remains unclear. Similar questions of net “mutualism” persist for the symbiosis between the bobtail squid Eprymna scolopes and the bacterium Allivibrio fischeri (McFall-Ngai, 2014) although in both systems microbial cells exhibit specific taxic responses to a developing host, suggesting an adaptive origin of these behaviors. […] Whether the intracellular algae are on the positive end of a net host benefit remains uncertain, however it is clear that the algae have an unconventional “photosymbiont” role."

Another possibility is that the endosymbionts are supplying additional metabolites in small amounts, in addition to oxygen by the ectosymbionts. Because ectosymbionts are used as controls here to fish for the endosymbiosis specific response of the algae, major modifications in those pathways concerned with such metabolites would escape detection. The authors need to discuss this issue as well as consider vitamin or amino acid supply. In this regard, the reviewers wanted an explicit explanation for the simultaneous metabolic shift toward fermentation and oxidative stress conditions, because the former suggests insufficient O2 and the latter, excess. It seems that the salamander's potential to produce ROS described in the paper would fit the scenario but it was not explicitly discussed in the current version.

To address the question about ROS stress and fermentation, we added text about intracellular parasites (primarily Plasmodium) and the ectosymbiont mutualist Aliivibrio fischeri fermenting in the intracellular and light organ environments, respectively, in the section "The Nature of the Endosymbiosis"(see above), and on how ROS can be generated under hypoxia:

“Moreover, we observed under-expression of subunit 6b of cytochrome c oxidase (COX6B1). Reduction of cytochrome c oxidase activity is associated with the generation of ROS through signaling to endoplasmic reticulum NADPH oxidases in yeast (Leadsham et al., 2013). […] Importantly, the generation of ROS does not rely on the presence of high levels of oxygen in vertebrate cells as ROS can be generated in hypoxic as well as normoxic conditions through a variety of mechanisms (Kim et al., 2011; Nathan and Cunningham-Bussel, 2013) although there is no indication that the salamander cells are suffering from hypoxia here.”

We don't intend to suggest the salamander cells are hypoxic, as we don't have evidence for that, and have clarified in the text above. However, we do want to point out that hypoxia does not preclude generation of ROS as the reviewer has suggested above.

Associated Data

    This section collects any data citations, data availability statements, or supplementary materials included in this article.

    Data Citations

    1. Burns JA,Zhang H,Hill E,Kim E,Kerney RK,2016,Mechanisms of Establishing and Maintaining an Algal Endosymbiont in a Vertebrate Host,https://www.ncbi.nlm.nih.gov/bioproject/PRJNA326420,Publicly available at the NCBI BioProject database (accession no: PRJNA326420)

    Supplementary Materials

    Figure 1—source data 1. Raw counts matrix with counts for all reads mapped to the total evidence assembly (the assembly of all salamander and algal reads from wild-collected samples).

    The data in this file (after filtering and normalization) was used to generate the dotplots in Figure 1D and E, Figure 1—figure supplements 24, and Figure 3. This is the raw data that was used for differential expression analysis. Rows are genes. Column names are as follows: S2a-S5a are counts for salamander cells without algae. S2b-S5b are counts for salamander cells with intracellular algae (samples are paired from the same individuals, such that S2a and S2b came from the same salamander). A1-A3 are intracapsular algae samples. RK_* are cultured algal samples.

    DOI: http://dx.doi.org/10.7554/eLife.22054.004

    DOI: 10.7554/eLife.22054.004
    Figure 1—source data 2. List of 6,726 algal gene IDs used in differential expression analysis.

    Use to filter raw counts matrix to get final algal gene list.

    DOI: http://dx.doi.org/10.7554/eLife.22054.005

    DOI: 10.7554/eLife.22054.005
    Figure 1—source data 3. List of 46,549 salamander gene IDs used in differential expression analysis.

    Use to filter raw counts matrix to get final salamander gene list.

    DOI: http://dx.doi.org/10.7554/eLife.22054.006

    DOI: 10.7554/eLife.22054.006
    Table 1—source data 1. Differentially expressed algal transcripts, annotations, functional groupings, and expression statistics.

    DOI: http://dx.doi.org/10.7554/eLife.22054.013

    DOI: 10.7554/eLife.22054.013
    Table 2—source data 1. Differentially expressed salamander transcripts, annotations, functional groupings, and expression statistics.

    DOI: http://dx.doi.org/10.7554/eLife.22054.015

    DOI: 10.7554/eLife.22054.015
    Figure 2—source data 1. Normalized expression levels of algal phosphate transporters.

    DOI: http://dx.doi.org/10.7554/eLife.22054.017

    DOI: 10.7554/eLife.22054.017
    Figure 2—source data 2. Normalized expression levels of algal nitrogen transporters.

    DOI: http://dx.doi.org/10.7554/eLife.22054.018

    DOI: 10.7554/eLife.22054.018
    Figure 3—source data 1. GC content and length of algal genes.

    Use as input for normalizing algal count data based on GC content and gene length for algal libraries prepared by different methods.

    DOI: http://dx.doi.org/10.7554/eLife.22054.020

    DOI: 10.7554/eLife.22054.020
    Supplementary file 1. Differentially expressed stress related genes in O. amblystomatis.

    DOI: http://dx.doi.org/10.7554/eLife.22054.028

    elife-22054-supp1.docx (17.1KB, docx)
    DOI: 10.7554/eLife.22054.028
    Supplementary file 2. Differentially expressed sulfur metabolism genes in O. amblystomatis.

    DOI: http://dx.doi.org/10.7554/eLife.22054.029

    elife-22054-supp2.docx (13.2KB, docx)
    DOI: 10.7554/eLife.22054.029
    Supplementary file 3. Differentially expressed genes with roles in fermentation in O. amblystomatis.

    DOI: http://dx.doi.org/10.7554/eLife.22054.030

    elife-22054-supp3.docx (15KB, docx)
    DOI: 10.7554/eLife.22054.030
    Supplementary file 4. Differentially expressed genes in photosynthesis in O. amblystomatis.

    DOI: http://dx.doi.org/10.7554/eLife.22054.031

    elife-22054-supp4.docx (14.4KB, docx)
    DOI: 10.7554/eLife.22054.031
    Supplementary file 5. Differentially expressed genes in mitochondrial electron transport in O. amblystomatis.

    DOI: http://dx.doi.org/10.7554/eLife.22054.032

    elife-22054-supp5.docx (13.6KB, docx)
    DOI: 10.7554/eLife.22054.032
    Supplementary file 6. Differentially expressed nitrogen and phosphorous transport genes in O. amblystomatis.

    DOI: http://dx.doi.org/10.7554/eLife.22054.033

    elife-22054-supp6.docx (13.6KB, docx)
    DOI: 10.7554/eLife.22054.033
    Supplementary file 7. Differentially expressed transposable element genes in A. maculatum.

    DOI: http://dx.doi.org/10.7554/eLife.22054.034

    elife-22054-supp7.docx (29.7KB, docx)
    DOI: 10.7554/eLife.22054.034
    Supplementary file 8. Differentially expressed proliferation genes in A. maculatum.

    DOI: http://dx.doi.org/10.7554/eLife.22054.035

    elife-22054-supp8.docx (13.6KB, docx)
    DOI: 10.7554/eLife.22054.035
    Supplementary file 9. Differentially expressed genes with immune functions in A. maculatum.

    DOI: http://dx.doi.org/10.7554/eLife.22054.036

    elife-22054-supp9.docx (14.1KB, docx)
    DOI: 10.7554/eLife.22054.036
    Supplementary file 10. NF-κB and TLR response gene expression levels in salamander cells with algal endosymbionts.

    DOI: http://dx.doi.org/10.7554/eLife.22054.037

    elife-22054-supp10.xlsx (76.5KB, xlsx)
    DOI: 10.7554/eLife.22054.037
    Supplementary file 11. Differentially expressed genes in metabolism and nutrient sensing in A. maculatum.

    DOI: http://dx.doi.org/10.7554/eLife.22054.038

    elife-22054-supp11.docx (15.5KB, docx)
    DOI: 10.7554/eLife.22054.038
    Supplementary file 12. Differentially expressed genes in motility in A. maculatum.

    DOI: http://dx.doi.org/10.7554/eLife.22054.039

    elife-22054-supp12.docx (13.3KB, docx)
    DOI: 10.7554/eLife.22054.039
    Supplementary file 13. Top 25 biological process GO annotations for differentially Expressed O. amblystomatis genes.

    DOI: http://dx.doi.org/10.7554/eLife.22054.040

    elife-22054-supp13.docx (15.1KB, docx)
    DOI: 10.7554/eLife.22054.040
    Supplementary file 14. Top 25 biological process GO annotations for differentially expressed A. maculatum genes.

    DOI: http://dx.doi.org/10.7554/eLife.22054.041

    elife-22054-supp14.docx (15.3KB, docx)
    DOI: 10.7554/eLife.22054.041
    Supplementary file 15. Top 25 biological process GO annotations from REViGO for differentially expressed O. amblystomatis genes.

    DOI: http://dx.doi.org/10.7554/eLife.22054.042

    elife-22054-supp15.docx (14.9KB, docx)
    DOI: 10.7554/eLife.22054.042
    Supplementary file 16. Functional grouping of O. amblystomatis genes by REViGO.

    DOI: http://dx.doi.org/10.7554/eLife.22054.043

    DOI: 10.7554/eLife.22054.043
    Supplementary file 17. Top 25 biological process GO annotations from REViGO for differentially expressed A. maculatum genes.

    DOI: http://dx.doi.org/10.7554/eLife.22054.044

    elife-22054-supp17.docx (14.9KB, docx)
    DOI: 10.7554/eLife.22054.044
    Supplementary file 18. Functional grouping of A. maculatum genes by REViGO.

    DOI: http://dx.doi.org/10.7554/eLife.22054.045

    elife-22054-supp18.pdf (42.2KB, pdf)
    DOI: 10.7554/eLife.22054.045

    Data Availability Statement

    All transcriptome assemblies and read data are available from the NCBI transcriptome shotgun assembly database under BioProject #PRJNA326420. Other relevant data are within the paper and its additional files.


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