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. 2018 Mar 27;131(7):1405–1422. doi: 10.1007/s00122-018-3086-6

Genome-wide association mapping for resistance to leaf rust, stripe rust and tan spot in wheat reveals potential candidate genes

Philomin Juliana 1, Ravi P Singh 2, Pawan K Singh 2, Jesse A Poland 3, Gary C Bergstrom 4, Julio Huerta-Espino 5, Sridhar Bhavani 6, Jose Crossa 2, Mark E Sorrells 1,
PMCID: PMC6004277  PMID: 29589041

Abstract

Key message

Genome-wide association mapping in conjunction with population sequencing map and Ensembl plants was used to identify markers/candidate genes linked to leaf rust, stripe rust and tan spot resistance in wheat.

Abstract

Leaf rust (LR), stripe rust (YR) and tan spot (TS) are some of the important foliar diseases in wheat (Triticum aestivum L.). To identify candidate resistance genes for these diseases in CIMMYT’s (International Maize and Wheat Improvement Center) International bread wheat screening nurseries, we used genome-wide association studies (GWAS) in conjunction with information from the population sequencing map and Ensembl plants. Wheat entries were genotyped using genotyping-by-sequencing and phenotyped in replicated trials. Using a mixed linear model, we observed that seedling resistance to LR was associated with 12 markers on chromosomes 1DS, 2AS, 2BL, 3B, 4AL, 6AS and 6AL, and seedling resistance to TS was associated with 14 markers on chromosomes 1AS, 2AL, 2BL, 3AS, 3AL, 3B, 6AS and 6AL. Seedling and adult plant resistance (APR) to YR were associated with several markers at the distal end of chromosome 2AS. In addition, YR APR was also associated with markers on chromosomes 2DL, 3B and 7DS. The potential candidate genes for these diseases included several resistance genes, receptor-like serine/threonine-protein kinases and defense-related enzymes. However, extensive LD in wheat that decays at about 5 × 107 bps, poses a huge challenge for delineating candidate gene intervals and candidates should be further mapped, functionally characterized and validated. We also explored a segment on chromosome 2AS associated with multiple disease resistance and identified seventeen disease resistance linked genes. We conclude that identifying candidate genes linked to significant markers in GWAS is feasible in wheat, thus creating opportunities for accelerating molecular breeding.

Electronic supplementary material

The online version of this article (10.1007/s00122-018-3086-6) contains supplementary material, which is available to authorized users.

Introduction

Leaf rust or brown rust (LR) caused by Puccinia triticina Eriks., stripe rust or yellow rust (YR) caused by Puccinia striiformis West., and tan spot (TS) caused by Pyrenophora tritici-repentis (Died.) Shoemaker are some of the important foliar diseases in wheat (Triticum aestivum L.). Among these, LR is the most common disease in many wheat-producing areas of the world and can cause substantial yield losses (Marasas et al. 2004), due to reduced kernel number and kernel weight. While the early onset of disease can cause yield losses greater than 50%, losses from 7 to 30% depending on the developmental stage are common (Huerta-Espino et al. 2011). Similarly, YR is a serious disease that is prevalent in the temperate regions and results in yield losses ranging from 10 to 70% (Chen 2005). Besides these rusts, another foliar disease that is globally distributed and economically significant is TS (De Wolf et al. 1998), that can cause yield losses ranging from 18 to 31% under favorable conditions (Bhathal et al. 2003). While fungicides and agronomic practices are available for the management of these diseases, the deployment of resistant cultivars is the most economical and effective strategy.

Plant resistance mechanisms against pathogens are complex. In the first line of defense, conserved molecular signatures of pathogens known as pathogen (or microbe)-associated molecular patterns (PAMPs) are recognized by plant pattern recognition receptors (PRRs) that activate the basal resistance or PAMP-triggered immunity (PTI). Successful pathogens, however, suppress PTI through secreting virulent effector proteins. These effectors activate the second line of defense known as effector-triggered immunity (ETI) mediated by specific disease resistance (R) genes (Jones and Dangl 2006). In a typical gene-for-gene interaction between a biotrophic pathogen and a plant, the effectors produced by avirulent (Avr) genes in the pathogen are recognized by the corresponding R-genes in the plant (Flor 1956) that predominantly encode the nucleotide binding site-leucine rich repeat (NB-LRR) class of proteins (Hammond-Kosack and Jones 1997). Upon this recognition, a hypersensitive response is initiated and leads to localized programmed cell death preventing further colonization by the pathogen. However, selection pressure on the pathogen imposed by large area monoculture and/or long-term deployment of varieties with single R-genes leads to strong selection of mutants with virulence. When the frequency of the pathogen population with virulent mutations increases, it results in the breakdown of resistance genes (McDonald and Linde 2002). This has shifted the breeding focus from race-specific/qualitative resistance conditioned by large effect, single R-genes to race non-specific/quantitative resistance. Quantitative resistance is generally conditioned by many genes of small effect leading to a preferred mechanism to achieve durability (Johnson 1984). In this type of resistance, the spread of the disease is delayed and is only expressed in adult plants (adult plant resistance, APR) in contrast to R-gene resistance that is usually expressed in both seedling and adult plant stages (all stage resistance). To date, more than 74 LR resistance (Lr) and 76 YR resistance (Yr) genes have been identified and most of them are race-specific except for Lr34/Yr18/Sr57, Lr46/Yr29/Sr58, Lr67/Yr46/Sr55, Lr68 and Yr36 (McIntosh et al. 2016). Combinations of R-genes with APR genes are expected to provide good levels of durable rust resistance (Kolmer et al. 2009; Ellis et al. 2014).

The interaction of wheat with necrotrophic fungus, P. tritici repentis does not follow the gene-for-gene model. This pathogen secretes necrotrophic effectors (also known as host-selective toxins) (Friesen et al. 2008) that interact with a corresponding host sensitivity gene and result in a compatible susceptible interaction. This is referred to as effector-triggered susceptibility (ETS) and the interaction is described as an inverse gene-for-gene model (Friesen et al. 2007). Since, susceptible cultivars could rapidly select for pathogen populations carrying the necrotrophic effectors, breeding efforts focus on eliminating the known susceptibility genes. Six TS resistance genes, Tsr1/tsn1 (Faris et al. 1996), Tsr2/tsn2 (Singh et al. 2006), Tsr3/tsn3 (Tadesse et al. 2006a), Tsr4/tsn4 (Tadesse et al. 2006b), Tsr5/tsn5 (Singh et al. 2008) and Tsr6/tsc2 (Friesen and Faris 2004) have been identified.

Genomics-assisted breeding for disease resistance typically involves gene identification, isolation, cloning, functional characterization to elucidate the genetic mechanism of resistance, validation and deployment. Resistance genes can be identified by either linkage mapping or genome-wide association studies (GWAS) that are based on linkage disequilibrium (LD) between a marker and the causal polymorphism. GWAS provides a much finer resolution than linkage mapping because it accounts for greater allelic diversity at a given locus and exploits the ancestral recombination events that have occurred in an existing diversity panel at the population level (Yu and Buckler 2006). It has been successfully used to dissect several complex traits in wheat (Breseghello and Sorrells 2006; Crossa et al. 2007; Yu et al. 2011; Juliana et al. 2015). However, several novel quantitative trait loci (QTL) identified in GWAS studies in wheat have not been validated and functionally characterized which have limited their use in breeding programs. Hence, identifying the potential candidate genes linked to significant markers is important as it can provide better insights into results from GWAS. Although this was not possible with the available genetic maps in wheat, the availability of the population sequencing (POPSEQ) reference map (Chapman et al. 2015) that bridges the genetic and physical maps in wheat has made it feasible. The POPSEQ map was developed by whole-genome shotgun sequencing of wheat cultivars, ‘Synthetic W7984’, ‘Opata’ and their recombinant progenies followed by anchoring of the contigs in an ultra-dense genetic map. The POPSEQ data and the chromosome survey sequence assemblies of T. aestivum cv. Chinese Spring [International Wheat Genome Sequencing Consortium (IWGSC), 2014] available at Ensembl plants (Bolser et al. 2016) (http://archive.plants.Ensembl.org/Triticum_aestivum/Info/Index) provide an excellent platform for identifying genes linked to the significant markers with known physical positions in the genome. Hence, our objective was to conduct a GWAS for seedling resistance to LR, YR and TS and APR to YR in wheat, followed by exploring the genes linked to the significant markers using Ensembl plants.

Materials and methods

Germplasm utilized

The 45th and 46th International Bread Wheat Screening Nursery (IBWSN) entries comprising 333 lines and 313 lines, respectively, were used for this study. The selected bulk breeding scheme was used to develop these lines that were evaluated in cooperating locations globally. Being advanced breeding lines from CIMMYT’s (International Maize and Wheat Improvement Center) bread wheat breeding program, they are expected to have effective and novel resistance genes, which makes them ideal for association mapping.

Phenotypic evaluations for leaf rust, tan spot and stripe rust

Seedling evaluations for LR and TS were conducted in CIMMYT’s greenhouses at El Batan, Mexico for the 45th IBWSN entries. For LR, freshly collected urediniospores (race MBJ/SP) were suspended in light mineral oil, Soltrol (Phillips 66 Co., Bartlesville, OK, USA) and inoculation was done at the two-leaf stage. The plants were placed in a dew chamber overnight and then transferred to the greenhouse where the minimum, maximum, and average temperatures were 16.1, 30.0 and 20.3 °C, respectively. The 0–4 scale described in Roelfs et al. (1992) was used to evaluate the seedling infection types at 10 days post-inoculation. The scores were linearized to a 0–9 scale as follows:; = 0, 0 = 0, 1 − = 1, 1 = 2, 1 + = 3, 2 − = 4, 2 = 5, 2 + = 6, 3 − = 7, 3 = 8, 3 + = 9 and 4 = 9. For TS, the isolate Ptr1 (Race 1) that produces PtrToxA and PtrToxC (Singh et al. 2009) was used. Inoculum preparation was done as described in Singh et al. (2011) and the concentration was adjusted to 4000 conidia/ml for both seedling and field inoculation. Four seedlings were used to represent each entry and checks Erik, Glenlea, 6B-662 and 6B-365 were planted every 20 rows. Seedling response was evaluated 7 days post inoculation on a 1–5 lesion rating scale developed by Lamari and Bernier (1989). Two replications were scored for LR and six replications were scored for TS.

Seedling and APR to YR were evaluated for the 46th IBWSN entries. While seedling evaluation was conducted in CIMMYT’s greenhouses at El Batan, Mexico, APR evaluations were performed at Toluca, Mexico during the 2011 and 2013 crop seasons, at Quito, Ecuador in 2012 season and at the Kenya Agricultural and Livestock Research Organization, Njoro, during the 2011 main season. For seedling evaluation, inoculum preparation and inoculation were similar to that of LR and the P. striiformis race, Mex96.11 was used. The seedlings were incubated in a dew chamber in the dark for 48 h at 7 °C and then transferred to the greenhouse where the minimum, maximum, and average temperatures were 6.3, 30.9 and 17.3 °C, respectively. The YR infection types were recorded at 14 days post-inoculation using a 0–9 scale as described by McNeal et al. (1971). For YR APR evaluation, the lines were sown in 0.7-m long paired rows on top of 30-cm-wide raised beds. The spreaders consisted of a mixture of six susceptible wheat lines derived from an Avocet/Attila cross. The 4-week old spreaders and hills were inoculated three times, at three to 4 days intervals with mixed Pst isolates, Mex96.11 and Mex08.13. While Mex96.11 is virulent to Yr27 and avirulent to Yr31, it is the reverse for Mex08.13. Evaluations were conducted at three time points between early and late dough stages. The first evaluation was done when the severity of susceptible check, Avocet reached 80% followed by two more evaluations at weekly intervals. The modified Cobb Scale (Peterson et al. 1948) was used to score rust severity by determining the percentage of infected tissue (0–100%).

All the phenotyping data were transformed using the Box–Cox transformation (Box and Cox 1964).

Genotyping and linkage disequilibrium analysis

Genome-wide markers were obtained for the lines using genotyping-by-sequencing (GBS) as described by Poland et al. (2012). Markers with missing data greater than 50% and minor allele frequency less than 10% were filtered, which resulted in in 3510 and 8072 markers with known positions for the 45th and 46th IBWSN, respectively. Marker missing data were imputed using the expectation–maximization algorithm implemented in the rrBLUP software package (Endelman 2011). After filtering the lines for missing data greater than 50%, we obtained 267 lines and 305 lines in the 45th and 46th IBWSN, respectively. The pairwise LD between the markers based on their correlations (R2) was calculated using the ‘R’ statistical program and markers with R2 greater than 0.95 were removed for redundancy.

Genome-wide association mapping

Genome-wide association mapping employed the mixed linear model (MLM) (Yu et al. 2006) accounting for both population structure and kinship, in TASSEL (Trait Analysis by aSSociation Evolution and Linkage) (Bradbury et al. 2007), version 5.2.24. As population structure can result in spurious associations, it was taken into account by using the first two principal components (Price et al. 2006), calculated in TASSEL using the correlation matrix. Since, there were several sibs in both nurseries, the kinship matrix obtained using the centered identity-by-state method (Endelman and Jannink 2012) was used as a random effect to account for the degree of relatedness between sibs. The MLM was run with the optimum level of compression and the ‘population parameters previously determined’ method (Zhang et al. 2010). To correct for multiple testing, the step up procedure of Benjamini and Hochberg (1995) which controls the false discovery rate was used with a cut-off value of 0.2. We have also used only non-redundant markers to facilitate the reduction of the multiple-testing problem. To find the candidate genes linked to significant markers, the physical starting point of the marker preceded by the chromosome name was taken to Ensembl and a few thousand base pairs were added before and after (e.g. if the position of the marker was 944423 on chromosome 2A, we used 2A: 942423–946423). The number of base pairs added varied for each marker depending on its proximity to the genes, but only the genes that were in the same genetic position were considered. The interval was then explored for predicted genes and annotations that were available from the IWGSC were obtained. For several genes, the IWGSC annotations were not available and so we evaluated orthologous genes in related species with known predicted functions using the comparative genomics tool in Ensembl. The closest species, Triticum urartu (A-genome donor) and Aegilops tauschii (D-genome donor) were first considered and when orthologs were not available or annotated in them, more distant species including barley (Hordeum vulgare), Brachypodium (Brachypodium distachyon), rice (Oryza sativa), maize (Zea mays), foxtail millet (Setaria italica), thale cress (Arabidopsis thaliana) and banana (Musa acuminata) were considered. In some cases, when the genes had a less similar disease resistance ortholog (< 70%) in the annotated genomes of related species in Ensembl, the sequence of the T. aestivum gene was taken to NCBI and the nucleotide basic local alignment search tool (BLAST) (http://blast.ncbi.nlm.nih.gov/Blast.cgi) was used where only highly similar sequences (megablast) were considered. This search also included the gene predictions in different species available in GenBank, but not in Ensembl. We also looked at the T. aestivum gene transcripts and their domains that were available in Ensembl (using the show transcript table link). We also used Viroblast (https://triticeaetoolbox.org/wheat/viroblast/viroblast.php) in the Triticeae Toolbox website to perform a nucleotide BLAST (BLAST-n) of the significant marker sequences against the GBS markers in Triticeae Toolbox (T3) database. In addition, the JBrowse tool from T3 and GBrowse from URGI (https://urgi.versailles.inra.fr/gb2/gbrowse/wheat_survey_sequence_annotation) were also used to identify other GBS markers and/or markers from the 90K iSelect assay (Wang et al. 2014) that were synonymous to the significant markers in this study.

Results

Phenotyping and genotyping data analysis

In the 45th IBWSN, the mean LR seedling score was 7.0 ± 2.1 on a 0–9 scale and the mean TS seedling score was 2.6 ± 0.8 on a 1–5 scale. The correlation of the mean LR seedling score with the mean TS seedling score was very low (− 0.11, respectively). In the 46th IBWSN, the mean YR seedling score was 6.2 ± 2.1 on a 0–9 scale. In contrast, the mean YR severities on a 0–100% severity scale were only 5.5 ± 8.8 (Quito 2012), 6.1 ± 6.6 (Njoro 2011), 2 ± 3.2 (Toluca 2011) and 8.7 ± 6.5 (Toluca 2013), despite high disease pressures leading to 100% severity for the susceptible check.

The percentage of missing data and minor allele frequencies for both the nurseries are shown in Supplementary Fig. 1. We analyzed the relative percentage of markers in each chromosome and observed that chromosome 2B had the highest percentage (~ 12.6%) of markers in both the nurseries followed by chromosomes 3B (~ 11%), 5B (~ 8%), 2A (~ 7.4%) and 7A (~ 7%). Chromosomes 1A, 1B, 6A, 7B, 6B, 4A and 3A had about 5% of the markers each. Chromosomes 5A (~ 3%) and 4B (~ 2.5%) had the lowest percentage of markers in the A and B genomes, respectively. Overall, the D-genome had the lowest number of markers. It ranged from 1.3 to 2.2% on chromosomes 7D, 1D, 6D, 2D and 5D in both nurseries, while, chromosomes 3D and 4D had the least number of markers (less than 1%).

Linkage disequilibrium and principal component analysis

Linkage disequilibrium estimated as the allele frequency correlations (R2) between the GBS markers across the chromosomes was plotted against the physical distance in base pairs (bps). Similar trends of LD decay were observed in both the nurseries. Hence, only the LD decay for the 46th IBWSN is shown in Fig. 1 and that for the 45th IBWSN is shown in Supplementary Fig. 2. The average extent of LD considered as the physical distance taken for the decay of R2 to a critical value of 0.10 across the genome was approximately 5 × 107 bps.

Fig. 1.

Fig. 1

Scatter plot showing the linkage disequilibrium (LD) decay across the chromosomes. The physical distance in base pairs is plotted against the LD estimate (R2) for pairs of markers in the 46th International Bread Wheat Screening Nursery

Principal component analysis revealed that there was moderate population structure in both nurseries. We also identified lines with common parents and observed clear grouping of families. The lines that did not have common parents or had less than three sibs per family were classified as ‘others’. In the 45th IBWSN, the first two principal components explained 9.4 and 7% of the variance, respectively (Supplementary Fig. 3). We observed clear clustering of lines with ‘Kachu’ and ‘Saual’ as parents. Lines with ‘Attila and PBW65’ were closely related to lines with ‘Munal’ in the pedigree. A family with ‘Attila, PBW65, Bobwhite, Neelkant and Catbird’ as parents was clearly different from others and clustered separately. In the 46th IBWSN, the first two principal components explained 10.5 and 6% of the variance, respectively (Supplementary Fig. 4). Lines with ‘Kachu’ in the pedigree formed a separate cluster, similar to the 45th IBWSN. Lines with ‘Mutus’ and ‘Kauz, Minivet, Milan and Baviacora 92’ in the pedigree were very similar. Lines with ‘Weebil 1’, ‘Weebil 1 and Brambling’, ‘Weebil 1 and Kukuna’, ‘Becard and Quaiu’ and ‘Chyak’ as parents, clustered together. Sibs from a cross between ‘Becard and Francolin’ clustered separately.

Genome-wide association mapping

The markers significantly associated with LR, TS and YR, their chromosomal locations, p values, closest T. aestivum gene(s), orthologous gene (only the ortholog with the highest identity is reported), the query percent identity (the percentage of the sequence in the T. aestivum gene that matches to the ortholog), predicted function and the domains present in the T. aestivum gene transcripts are reported (Tables 1, 2, 3). The adjusted p values for the markers, R2 values, synonymous/nearest markers and locations of the T. aestivum genes are also reported (Supplementary Tables 1–3). If several genes were in the same genetic position as the significant marker, only the adjacent gene(s) is/are reported. This is because the average LD decay was 5 × 107 base pairs and it is not feasible to report all the genes that lie within this window. Further information on the adjacent genes that lie beyond the marker’s genetic position can be obtained either from Ensembl or from Popseq Ordered Triticum Aestivum Gene Expression (POTAGE), which is a web application integrating POPSEQ map location information with functional annotations and gene expression data (http://130.56.251.241/potage/). Quantile–quantile plots of p values comparing the uniform distribution of the expected − log10 p value to the observed − log10 p value for different traits showed that the MLM fits the data well, except for a few datasets that had low power to detect significant associations (Supplementary Figs. 5 and 6). Manhattan plots showing the − log10 p values of the markers in the different datasets from the 45th and 46th IBWSNs are shown in Supplementary Figs. 7 and 8.

Table 1.

Markers significantly associated with seedling resistance to leaf rust

Marker Chromosome Genetic position p value Adjacent T. aestivum gene Orthologous gene Identity Predicted function
S3_6957300 1DS 25.4 1.40E−09 Traes_1DS_3CC12E215 BRADI3G24960a 95 Armadillo repeat
Traes_1DS_A8BD91E4A F775_28014b 100 PAL
S3_1241625 1DS 2.7 1.20E−08 Traes_1DS_3C6EAAFFD TRIUR3_19829c 86 Putative disease resistance protein RGA4
S16_199359368 6AL 118.5 3.80E−07 Traes_6AL_5A3E5FBBD F775_22846b 92 Pentatricopeptide repeat
S16_50275005 6AS 61 8.50E−06 Traes_6AS_EB7270F83 TRIUR3_12413c 96 LRR receptor-like STPK
S10_147185899 4AL 29 3.30E−05 Traes_4AL_5EC714CAD TRIUR3_02349c 93 Beta-glucosidase
S8_40178495 3B 6.60E−05 TRAES3BF078500390CFD_g LOC100835928a 85 STPK
S16_197872823 6AL 88.2 7.30E−05 Traes_6AL_C41FC1A58 Lipid transporter
S8_13948258 3B 7.60E−05 TRAES3BF060400070CFD_g F775_11633b 89 E3 ubiquitin-protein ligase SINA-like protein 4
S8_1092429 3B 5.90E−04 TRAES3BF035300120CFD_g TRIUR3_01154c 97 Subtilisin-like protease
S8_667573277 3B 6.40E−04 TRAES3BF068900010CFD_g F775_05560b 96 Endoribonuclease Dicer-3a-like protein
S5_344241063 2BL 153.8 6.50E−04 Traes_2BL_48E8EC589 F775_13446b 84 Putative LRR receptor-like STPK
S4_944423 2AS 0 7.80E−04 Traes_2AS_F19BE023F TRIUR3_09185c 92 Putative disease resistance protein RXW24L

LRR leucine rich repeat, PAL phenylalanine ammonia-lyase, RGA resistance gene analog, SINA seven in absentia, STPK serine/threonine-protein kinase

aGene from B. distachyon

bGene from A. tauschii

cGene from T. urartu

Table 2.

Markers significantly associated with seedling resistance to tan spot

Marker Chromosome Genetic position p value Adjacent T. aestivum gene Orthologous gene Identity Predicted function
S1_3589926 1AS 28 2.40E−05 Traes_1AS_BF353B963 LOC100824961a 79 Putative disease resistance protein RPM1
Traes_1AS_F098402B4 TRIUR3_05134c 98 Bowman-Birk type trypsin inhibitor
S7_182028651 3AL 197.4 3.60E−04 Traes_3AL_91749D67D F775_07165b 94 Putative disease resistance protein RGA4
S4_239686345 2AL 113.9 3.60E−04 Traes_2AL_34A3B95BE GSMUA_Achr11G12630_001e 42 Putative disease resistance response protein 206
LOC101765197f 73 Dirigent protein 1-like
Traes_2AL_97FC5264A TRIUR3_01787c 96 Wall-associated receptor kinase-like
S8_12198705 3B 3.80E−04 TRAES 3BF270500020CFD_g OS01G0115750d 76 STPK
S8_13415415 3B 4.30E−04 TRAES 3BF060400190CFD_g OS02G0626100d 80 Phenylalanine ammonia-lyase
S16_4196814 6AS 13.1 4.90E−04 Traes_6AS_3A682BA20 OS02G0106900d 74 STPK
S8_7801088 3B 6.82 5.05E−04 TRAES 3BF060200040CFD_g BRADI3G16550a 87 Hydroxyproline-rich glycoprotein family
TRAES 3BF060200010CFD_g ARM repeat superfamily protein
S8_1092429 3B 8.60E−04 TRAES 3BF035300120CFD_g TRIUR3_01154c 97 Subtilisin-like protease
S7_4804454 3AS 12.6 9.00E−04 Traes_3AS_769E90DDD TRIUR3_11178c 90 Putative cysteine-rich receptor-like kinase
S16_191519837 6AL 67.9 1.40E−03 Traes_6AL_4815187D4 LOC100839119a 78 LRR receptor-like STPK
S1_2331617 1AS 27.2 2.30E−03 Traes_1AS_AAB89883E1 TRIUR3_12921c 99 Disease resistance protein RPM1
Traes_1AS_459048879 F775_18040b 85 Disease resistance protein RPP13
Traes_1AS_3BE2A2127 F775_01616b 76 Putative disease resistance protein
S7_4563676 3AS 12.6 2.30E−03 Traes_3AS_817ECEF75 F775_18635b 78 Wall-associated receptor kinase 1
S5_281016023 2BL 97.4 3.30E−03 Traes_2BL_7C2F474DE TRIUR3_04133c 96 Peroxidase
Traes_2BL_D055B271C LOC100825682a 94 Putative ABC transporter C family member 15
S1_2584791 1AS 28 4.50E−03 Traes_1AS_C8A8A4118 LOC100823561a 90 ABC transporter D family member 1
Traes_1AS_B716E0B0E LOC100831913a 79 Disease resistance protein RPP13
Traes_1AS_8D33AB43B TRIUR3_19998c 91 ABC transporter D family member 1
Traes_1AS_C7A8188D1 LOC100830206a 80 Disease resistance protein RPM1

ABC adenosine triphosphate binding cassette, ARM armadillo, LRR leucine rich repeat, RGA resistance gene analog, RPM1 resistance to Pseudomonas syringae pv. maculicola 1, RPP13 recognition of Peronospora parasitica 13, STPK serine/threonine-protein kinase

aGene from B. distachyon

bGene from A. tauschii

cGene from T. urartu

dGene from O. sativa Japonica

eGene from M. acuminata

fGene from S. italica

Table 3.

Markers significantly associated with seedling and adult plant resistance to stripe rust

Dataset Marker Chromosome Genetic position p value Adjacent T. aestivum gene Orthologous gene Identity Predicted function
Njoro 2011 S4_208035 2AS 0 5.50E−04 Traes_2AS_5EB59FFC0 F775_06675b 92 PAL
Quito 2012 4.60E−04
Seedling 2.80E−09
Toluca 2011 3.90E−08
Toluca 2013 3.30E−08
Njoro 2011 S4_508877 2AS 0 6.10E−04 Traes_2AS_6A15EE669 LOC100842644a 100 ABC transporter B family member 4-like
Quito 2012 7.70E−08
Seedling 5.80E−14
Toluca 2011 3.00E−07
Toluca 2013 2.40E−10
Njoro 2011 S4_944423 2AS 0 2.50E−05 Traes_2AS_F19BE023F TRIUR3_09185c 92 Putative disease resistance protein RXW24L
Quito 2012 5.90E−07
Seedling 7.70E−13
Toluca 2011 2.40E−07
Toluca 2013 6.00E−11
Quito 2012 S4_5007061 2AS 8.9 1.90E−03 Traes_2AS_6BC67DD45 TRIUR3_16539c 97 Putative disease resistance RPP13-like protein
Seedling 1.90E−07
Njoro 2011 S4_5287800 2AS 8.9 6.50E−05 Traes_2AS_A477CDA77 TRIUR3_30356c 71 Putative disease resistance RPP13-like protein
Quito 2012 2.60E−07
Seedling 6.40E−11
Toluca 2011 1.10E−06
Toluca 2013 3.10E−08
Njoro 2011 S4_7117805 2AS 8.9 4.30E−05 Traes_2AS_6CE6AB560 LOC100830175a 79 Putative disease resistance protein RGA3
Quito 2012 3.60E−06
Seedling 3.40E−11
Toluca 2011 8.20E−06
Toluca 2013 1.00E−08
Njoro 2011 S6_132714407 2DL 82.4 1.20E−03 Traes_2DL_4B5D621C1 F775_25858b 100 Wall-associated receptor kinase
Quito 2012 S8_17773150 3B 2.00E−05 TRAES3BF050800140CFD_g TRIUR3_18467c 91 Cysteine-rich receptor-like protein kinase
Toluca 2011 S8_566227604 3B 9.30E−04 TRAES3BF027700080CFD_g F775_04751b 94 Putative LRR receptor-like STPK
Toluca 2013 S21_4853558 7DS 3.7 3.00E−04 Traes_7DS_600B0996B Si017007 m.gd 70 Mlo-like protein

ABC adenosine triphosphate binding cassette, LRR leucine rich repeat, PAL phenylalanine ammonia-lyase, RGA resistance gene analog, RPP13 recognition of Peronospora parasitica 13, STPK serine/threonine-protein kinase

aGene from B. distachyon

bGene from A. tauschii

cGene from T. urartu

dGene from S. italica

Seedling resistance to LR was associated with twelve markers (Table 1). Marker S3_6957300 on chromosome 1DS was the most significant marker explaining 19% of the variation. This was followed by markers S3_1241625 (1DS), S16_199359368 (6AL), S16_5027500 (6AS), S10_147185899 (4AL), S8_40178495 (3B), S16_197872823 (6AL), S8_13948258 (3B), S8_1092429 (3B), S8_667573277 (3B), S5_344241063 (2BL) and S4_944423 (2AS). Seedling resistance to TS was associated with 14 markers (Table 2). The most significant marker was S1_3589926 on chromosome 1AS that explained 10% of the variation. Other significant markers include S7_182028651 (3AL), S4_239686345 (2AL), S8_12198705 (3B), S8_13415415 (3B), S16_4196814 (6AS), S8_7801088 (3B), S8_1092429 (3B), S7_4804454 (3AS), S16_191519837 (6AL), S1_2331617 (1AS), S7_4563676 (3AS), S5_281016023 (2BL) and S1_2584791 (1AS).

Seedling resistance to YR was associated with markers: S4_208035, S4_508877, S4_944423, S4_5007061, S4_5287800, S4_7117805 on chromosome 2AS (Table 3). All these markers except S4_5007061 (that was only significant in Quito 2012), were also associated with APR in all the four datasets. The most significant markers for seedling resistance and APR explained 27 and 14% of the variation. The other markers significantly associated with YR APR include S6_132714407 (2DL) in the Njoro 2011 dataset, S8_17773150 (3B) in the Quito 2012, S8_566227604 (3B) in the Toluca 2011 dataset and S21_4853558 (7DS) in the Toluca 2013 dataset.

Discussion

Seedling resistance to leaf rust

The two most significant markers for seedling resistance to LR were located on chromosome 1DS. This chromosome has the catalogued LR resistance genes, Lr21 (Rowland and Kerber 1974), Lr42 (Cox et al. 1994a) and Lr60 (Hiebert et al. 2008). Considering the Lr42 gene, the marker Xwmc432 that was tightly linked to it (Sun et al. 2010) was at 22.5 cM on the wheat composite map (Somers et al. 2004). As the most significant marker in this study was at 25.4 cM in the POPSEQ map, we believe it to be linked to the Lr42 gene in that region. Simple sequence repeat markers, cfd15 and wmc432 also confirmed the presence of this gene. Lr42 is a moderately effective race-specific resistance gene that is effective against race MBJ/SP. It originated from an A. tauschii introgression line, ‘KS91WGRC11’ (Cox et al. 1994b) and is represented as line Lr42 in CIMMYT pedigrees. This line along with CIMMYT’s spring wheat line ‘Quaiu’ that have the Lr42 gene (Basnet et al. 2013), were used as parents in some of the crosses and are likely the donors for resistance. The second most significant marker was located at 2.7 cM, about 22.7 cM apart from the other marker. This is close to the location of the Lr60 gene, that is 8.4 cM distal to the marker Xbarc149 [13.7 cM in the wheat composite map (Somers et al. 2004)] and approximately 17 cM away from Lr42. The cloned NBS-LRR Lr21 gene (Huang et al. 2003) is also in this location. But the relative position of these genes and the significant marker could not be obtained.

On chromosome 2AS, a marker was significant and the catalogued LR resistance genes in this chromosome are: Lr17 from bread wheat (Dyck and Kerber 1977), Lr37 from Aegilops ventricosum (Bariana and Mcintosh 1993), Lr45 from Secale cereale (McIntosh et al. 1995) and Lr65 from a Swiss spelt wheat (Mohler et al. 2012). While Lr17 and Lr37 are not effective against the race used, it is unlikely that Lr45 and Lr65 are conferring resistance in these lines given their origins. On chromosome 2BL a marker was significant and the catalogued genes in this chromosome are Lr50 from T. timopheevii subsp. armeniacum (Brown-Guedira et al. 2003) and Lr58 from Ae. triuncialis (Kuraparthy et al. 2007). However, alien sources with these genes were not used in the crosses.

On chromosome 3B four markers were significant but their genetic positions on the POPSEQ map could not be obtained. The known LR resistance genes on this chromosome include Lr27 from bread wheat (Singh and McIntosh 1984) and Lr74 that confers APR (Mcintosh et al. 2014), both of which do not confer seedling resistance to the race used. On chromosome 4AL, a marker was significant. But the catalogued LR resistance genes in this region, Lr28 from T. speltoides (McIntosh et al. 1982) and Lr30 from the bread wheat cultivar Terenzio (Dyck and Kerber 1981) are unlikely to be present in this nursery as sources with these genes were not used as parents.

On chromosome 6A, two markers were significant on the long arm and one on the short arm. The known LR resistance genes on this chromosome are Lr56 from Ae. sharonensis (Marais et al. 2006), Lr62 from Ae. neglecta (Marais et al. 2009) and Lr64 from T. dicoccoides (Mcintosh et al. 2009), all of which are located in the long arm. However, it is unlikely that any of these genes are conferring resistance in these lines, given that they were alien introgressions and were not used as parents.

Among the genes adjacent to the significant markers (Table 1), some of them could be potential candidate genes for LR resistance, although they must be validated. This included disease resistance proteins, resistance gene analog 4 (RGA4) and RXW24L. The RGAs are those with sequences having homology to the conserved domains of R-genes like the NBS-LRR, P-loop and serine/threonine-protein kinase (STPK) (Hammond-Kosack and Jones 1997). The disease resistance protein, RXW24L is a NBS-LRR gene with a P-loop, a LRR domain and a NB-ARC (nucleotide binding-APAF-1 (apoptotic protease-activating factor-1), R proteins and CED-4 (Caenorhabditis elegans death-4 protein) domain. In addition to the resistance genes, several STPK receptors that belong to receptor-like kinases (RLKs) were identified as potential candidates. Few LRR receptor-like STPKs are known to be involved in pathogen defense which include the Xa21 gene that confers resistance against bacterial blight in rice (Song et al. 1995) and flagellin-sensitive-2 gene in Arabidopsis that binds bacterial flagellin (Gómez-Gómez and Boller 2000).

Repeats belonging to the armadillo (ARM) family and the pentatricopeptide family were potential candidates. ARM repeats were initially identified in the Drosophila segment polarity gene, armadillo (Nusslein-Volhard and Wieschaus 1980) and are a class of helical repeat proteins involved in protein interactions. The largest class of ARM repeats in Arabidopsis contain the U-box domain and a U-box/ARM protein encoded by the rice Spotted leaf1 gene was suggested to be involved in the basal defense signaling against rice blast (Zeng et al. 2004). Pentatricopeptide repeat-containing proteins are ribonucleic acid (RNA)-binding proteins known to play important roles in post-transcriptional processes within the mitochondria and chloroplasts (Delannoy et al. 2007). While they play several physiological roles, some of them are also known to be involved in defense against necrotrophic fungi (Laluk et al. 2011) and diverse pathogens (Park et al. 2014).

Several genes encoding enzymes like beta-glucosidase, E3 ubiquitin-protein ligases, endoribonuclease Dicer, phenylalanine ammonia-lyase (PAL) and subtilisin-like protease were also identified as potential candidates. Beta-glucosidases belong to the family 1 glycoside hydrolases that are known to activate phytoanticipins and serve as triggers of chemical defense in plants against pathogens (Morant et al. 2008). E3 ubiquitin-protein ligases with specific domains are known to be involved in plant defense (Yang et al. 2006; Craig et al. 2009; Dielen et al. 2010). A SINA ligase, SINA3 was recently found to be involved in defense signaling in tomato, suggesting a negative role in plant defense response (Miao et al. 2016). Endoribonuclease Dicer-like proteins are known to regulate plant immunity against an array of pathogens including fungi via the small RNAs processed by them (Gupta et al. 2012; Li et al. 2014; Weiberg et al. 2014). Phenylalanine ammonia lyase (EC 4.3.1.24) is a key enzyme in the phenylpropanoid pathway of higher plants involved in the production of several compounds like lignins, coumarins and flavonoids that are related to plant defense (La Camera et al. 2004). Several studies have reported the induction of the PAL gene in response to fungal elicitors and its association with enhanced fungal defense (Pellegrini et al. 1994; Shadle et al. 2003; Tonnessen et al. 2015). Interestingly, the wheat PAL gene had highly similar orthologs in several other plants indicating that it is conserved across species as observed by Rawal et al. (2013). Subtilisin-like proteases are serine proteases and some of them are known to activate defense related genes (Jordá and Vera 2000; Pearce et al. 2010).

In addition to the disease resistance genes, STPKs and enzymes, a gene encoding a lipid transporter was also a potential candidate. Lipid transport proteins transfer phospholipids between membranes and one of them has been classified as a PR protein family member (PR-14) (van Loon and van Strien 1999). While they play diverse roles, some of them are also known to be involved in systemic resistance signaling (Maldonado et al. 2002) and inhibition of bacterial and fungal pathogens (Regente et al. 2005; Sarowar et al. 2009).

Seedling resistance to tan spot

For seedling resistance to TS, the most significant marker and two other significant markers were located on chromosome 1AS (27.2 cm and 28 cM), where the catalogued gene is Tsc1 (Effertz et al. 2002). Marker Xgwm136 that was 4.7 cM distal to Tsc1 was at 11 cM in a consensus map (Yu et al. 2014). But it was not possible to determine if the significant markers are linked to this gene. Chromosomes 2AL and 2BL had a significant marker, but no TS resistance gene has been reported in these chromosomes.

On chromosome 3AS, two significant markers were located in the same genetic position (12.6 cM). Tsr4, the catalogued gene in this chromosome was 14.9 cM away from the marker Xgwm2 (Tadesse et al. 2010). Xgwm2 was at 37 cM on the wheat composite map (Somers et al. 2004) which puts Tsr4 at about 52 cM. Hence, the significant markers in this study are unlikely to be in the location of the Tsr4 gene. On the long arm of chromosome 3A, a marker was significant, but no resistance gene has been reported in that location. On chromosome 3B, four markers were significant, but the position of only one marker could be obtained on the POPSEQ map. The known genes on chromosome 3BL are Tsr2/tsn2 that confers resistance to the necrosis induced by a race 3 isolate (Singh et al. 2006) and Tsr5/tsn5 that confers resistance to the necrosis induced by a race 5 isolate (Singh et al. 2008). Faris and Friesen (2005) also identified a race non-specific QTL (QTs.fcu-3BL) on chromosome 3BL. While, the marker whose position was known (6.8 cM) was not in the position of any of the known genes or QTL, it was not possible to determine if the other markers coincide with them. Finally, three markers on chromosome 6A were significant and no TS resistance gene has been identified in this chromosome.

Among the genes adjacent to the markers significantly associated with TS (Table 2), were genes encoding disease resistance proteins, RGA4 (discussed earlier), RPM1 (resistance to Pseudomonas syringae pv maculicola 1), disease resistance response protein 206 and RPP13 (recognition of Peronospora parasitica 13). RPM1 is a coiled coil-NBS-LRR disease resistance protein that functions at the plasma membrane by interacting with another plasma membrane localized protein called RPM1-interacting protein 4 and mediates ETI to P. syringae (Debener et al. 1991; Mackey et al. 2002). The cloned wheat leaf rust resistance gene, Lr10 has been reported to be similar to the RPM1 gene (Feuillet et al. 2003). The disease resistance response protein 206 is known to be involved in non-host disease resistance response (Wang et al. 1999; Wang and Fristensky 2001; Choi et al. 2004). It is related to the dirigent protein that is suggested to play a role in conifer defense by lignan and lignin formation (Ralph et al. 2006). RPP13 is a leucine zipper NBS-LRR gene from Arabidopsis conferring resistance to several different isolates of Perenospora parasitica causing downy mildew (Bittner-Eddy et al. 2000; Bittner-Eddy and Beynon 2001).

In addition to the disease resistance genes, receptor-like STPKs, enzymes like PAL and subtilisin, ARM repeat protein (all of which have been discussed earlier), wall-associated receptor kinases, cysteine-rich receptors, adenosine triphosphate (ATP)-binding cassette (ABC) transporters ABCC15 and ABCD1, peroxidase, Bowman–Birk trypsin inhibitor and hydroxyproline-rich glycoproteins were also identified as potential candidates. Wall-associated receptor kinases are tightly bound to pectin in the cell wall and mediate signals between the plasma membrane and the cell wall (Decreux and Messiaen 2005). WAK1, well-studied among these receptors is a PR protein that is induced by pathogen infection and salicylic acid (He et al. 1998). Cysteine rich receptors are characterized by cysteine residues and repeats of the domain of unknown function 26 on the extracellular domain (Chen 2001). They are known to be induced by pathogen infection and regulate basal plant defense (Ederli et al. 2011; Yeh et al. 2015).

The ABC transporters have two hydrophobic transmembrane domains that form the pathway through which substrates like sugars, amino acids, oligopeptides, inorganic ions, polysaccharides, proteins etc. cross the cell membrane and two nucleotide-binding domains that are located at the cytoplasmic side bind ATP and facilitate the transport process (Higgins 1992). Plant ABC transporters are classified into several sub-families (ABCA–ABCH) and play diverse roles (Verrier et al. 2008). The functions of both the ABCC15 and ABCD1 transporters in plants are unknown.

The enzyme peroxidase (POX, EC 1.11.1.7) is an important component of PTI and its activity leads to the production of reactive oxygen species in response to pathogen attack (Daudi et al. 2012; Mammarella et al. 2015). Increase in POX activity in response to fungal infection has been reported in several studies (Seevers and Daly 1970; Thorpe and Hall 1984; Southerton and Deverall 1990). Bowman–Birk type trypsin inhibitor is a serine protease inhibitor that is known to exhibit antifungal activity (Wissenschafts et al. 2000; Qu et al. 2003; Kuhar et al. 2013). Hydroxyproline-rich glycoproteins are integral components of the primary cell wall of plants that accumulate in defense response to various pathogens (Showalter et al. 1985; Shailasree et al. 2004).

Seedling and adult plant resistance to stripe rust

Both seedling resistance and APR to YR were associated with markers on chromosome 2AS, indicating that they are linked to an all-stage resistance gene, that might be Yr17 or a closely linked gene. The Yr17 gene is located between 0 and 4 cM in the wheat composite map (Somers et al. 2004) which is also the approximate location of our markers (0, 8.9 cM). The gene, Yr17 was introgressed into the French wheat cultivar ‘VPM-1’ as a translocation segment from the D-genome of Ae. ventricosa. Lines with Kachu, Milan and Mutus are expected to have the Yr17 gene and they were used as parents for several crosses. The Ventriup marker that amplifies a region in the 2NS translocation also confirmed the presence of this translocation.

In addition to markers on chromosome 2AS, a marker was significant on chromosome 2DL, two markers on chromosome 3B and one marker on chromosome 7DS. On chromosome 2DL, three genes: Yr37 from Ae. kotschyi (Marais et al. 2005), Yr54 from the common spring wheat line Quaiu (Basnet et al. 2013) and Yr55 (Mcintosh et al. 2014) have been catalogued. It is unlikely that the gene linked to the significant marker is Yr37 because Ae. kotschyi was not used in the crosses. The relative position of the Yr55 gene to the marker could not be obtained. Considering the Yr54 gene, it is unlikely that this marker is linked to it, although it is present in ‘Quaiu’ that was used as a parent in some of the crosses. This is because Xgwm301, the marker linked to Yr54 was at 107 cM in the wheat composite map (Somers et al. 2004) and the significant marker is at 82.4 cM. On chromosome 3B, two markers were significant but their positions could not be obtained. The catalogued rust resistance genes in this chromosome are Yr4 from common wheat (Bansal et al. 2009), Yr30/Sr2 that occurs in a high frequency in CIMMYT germplasm (Singh et al. 2005), Yr57 (Randhawa et al. 2015) and Yr58 (Chhetri et al. 2016). On chromosome 7DS, a marker at 3.7 cM was significant and Yr18/Lr34 is the catalogued gene in this chromosome which is present in a significant frequency in the CIMMYT germplasm. But the position of a gene-specific marker, cssfr5 for the Lr34 gene (Lagudah et al. 2009) at 49.3 cM in the consensus map (Yu et al. 2014) indicates that it is not the gene linked to the significant marker.

The genes adjacent to the markers significantly associated with YR seedling resistance include PAL, ABCB4, disease resistance protein RXW24L, disease resistance RPP13-like protein and disease resistance protein RGA3 all of which have been discussed earlier, except ABCB4. The ABCB sub-family (also known as multi-drug resistance proteins) that includes ABCB4 is known to be involved in auxin transport (Noh et al. 2001; Cho et al. 2012). For YR APR, in addition to these, genes encoding wall-associated receptor kinase, cysteine-rich receptor like protein kinase, LRR receptor-like STPK and Mlo-like protein were also potential candidates. All the candidates except for the Mlo-like protein have been discussed earlier. The Mlo locus in barley has recessive mutations that confer broad spectrum resistance to all known isolates of the powdery mildew fungus (Blumeria graminis f. sp. hordei) (Jørgensen 1992) and could be a potential candidate.

A segment in the distal end of chromosome 2AS is rich in disease resistance genes

Marker S4_944423 on chromosome 2AS, was associated with seedling resistance to LR, YR and also APR to YR. In addition, several markers in this chromosomal region (0, 8.9 cM) were significantly associated with both seedling and APR to YR and also APR to TS (unpublished results). This is interesting because the ‘2NS’ translocation segment from A. ventricosa on the distal end of chromosome 2AS has been previously reported to carry resistance to many diseases: strawbreaker foot rot (eyespot) caused by Pseudocercosporella herpotrichoides (Pch1) (Doussinault et al. 1983), YR (Yr17), stem rust caused by P. graminis (Sr38), LR (Lr37) (Bariana and Mcintosh 1993), cereal cyst caused by Heterodera avenae (Cre5) (Jahier et al. 2001), root knot caused by Meloidogyne spp. (Rkn3) (Williamson et al. 2013) and blast caused by Magnaporthe oryzae (Cruz et al. 2016). So, we further explored the 2AS chromosomal region and looked at all the genes in the interval from 0 to 7,123,325 bps where the significant markers were located.

There were 228 genes in this region, among which seventeen had disease resistance orthologs and NB-ARC, LRR and/or P-loop containing nucleoside triphosphate hydrolase domains in their transcripts. This included seven genes with disease resistance RPP13-like protein orthologs, four genes with disease resistance protein RGA3 orthologs, two genes with disease resistance protein RGA2 orthologs, two genes with disease resistance protein RPM1 orthologs, one gene with disease resistance protein RXW24L ortholog and one gene with disease resistance protein ortholog (Supplementary Table 4). Among the other genes, those with defensin, PAL and ABCG transporter family member orthologs are interesting as they are also known to be involved in disease resistance. Plant defensins are cysteine-rich peptides involved in plant innate immunity that are generally active against a broad spectrum of fungal pathogens and other microbes (Broekaert et al. 1995; de Carvalho and Gomes 2009). While the PAL gene has been discussed earlier, Tonnessen et al. (2015) reported a rice PAL gene (OsPAL4) that was associated with broad spectrum disease resistance. Finally, the ABCG transporter family (also pleiotropic drug resistance family) members are also known to be involved in plant defense (Stukkens et al. 2005; Stein et al. 2006; Krattinger et al. 2009). We hypothesize that either combinations of R-genes or genes that confer broad spectrum resistance are responsible for the multiple disease resistance associated with lines carrying this segment. However, not all the genes in this chromosomal segment might be effective as races MBJ/SP and MCJ/SP are virulent to Lr37 gene and the Ug99 group of races in Kenya are virulent to Sr38 gene, both of which are linked to the Yr17 gene. Among the 228 genes, orthologs were found only for 146 genes. Considering only the orthologs of highest similarity, the species with the most number of genes orthologous to the T. aestivum genes in this chromosomal segment was T. urartu followed by A. tauschii, M. acuminata, B. distachyon, O. sativa Japonica and Z. mays (Supplementary Fig. 9).

In conclusion, we have identified several markers and potential candidate genes associated with seedling resistance to LR, YR, and TS and also APR to YR. However, these results should be taken with caution for two reasons: (1) our ability to identify potential candidate genes is limited by the resolution of the GBS markers and the current reference wheat genome assembly. (2) Given the very high LD in wheat, there could be several hundreds of genes in the location of a significant marker and it is not possible to identify the causal gene with just GWAS. Analyzing the significance and the LD of markers around a significant marker will help to delineate the most likely interval for the causal gene. However, extensive LD in wheat that decays at about 5 × 107 bps, poses a huge challenge for delineating candidate gene intervals. The genes in that interval must be narrowed down using fine mapping and the final candidates must be functionally characterized using gene editing, gene silencing or targeting induced local lesions in genomes (TILLING) populations etc. Nevertheless, GWAS is the first step to identify candidate genes at the population level and can provide valuable information on the genetic architecture of the traits.

Our results support previous findings that plant defense mechanisms against pathogens are multifaceted and complex. While ETI mediated by NBS-LRR genes plays an important role, the defense response genes that govern basal resistance and PTI should not be overlooked. However, some resistance genes that are present in a significant frequency in CIMMYT germplasm were not identified in this study. This might be due to several reasons: (1) the limited phenotypic variability in these advanced breeding lines that were selected for rust resistance, (2) the high frequency of these genes in the lines, (3) the exclusion of several GBS markers (that could be potentially associated), because their positions were not available in the POPSEQ map. We also observed that several genes were associated with resistance in the same genetic position. In this case, the physical map can provide better insight into those genes. The disease resistance gene rich segment on chromosome 2AS is very promising and should be explored further for use in breeding. We conclude that identifying candidate genes linked to significant markers in GWAS is feasible in hexaploid wheat using GBS markers, POPSEQ map and Ensembl plants, thus creating opportunities for accelerating gene cloning and molecular breeding in wheat.

Author contribution statement

PJ drafted the manuscript and performed the research. MS, RPS and PKS planned the study, supervised the analysis and revised the manuscript. JH and SB generated the phenotyping data. JP performed the genotyping. GCB and JC supervised the analysis and critically reviewed the manuscript.

Electronic supplementary material

Below is the link to the electronic supplementary material.

122_2018_3086_MOESM2_ESM.tiff (2.1MB, tiff)

Supplementary material 2 (TIFF 2189 kb) Supplementary Fig. 1: Distribution of missing data and minor allele frequency of markers in the 45th and 46th International Bread Wheat Screening Nursery entries

122_2018_3086_MOESM3_ESM.tiff (51.3MB, tiff)

Supplementary material 3 (TIFF 52505 kb) Supplementary Fig. 2: Scatter plot showing the linkage disequilibrium (LD) decay across the chromosomes. The physical distance in base pairs is plotted against the LD estimate (R2) for pairs of markers in the 45th International Bread Wheat Screening Nursery

122_2018_3086_MOESM4_ESM.tiff (6.1MB, tiff)

Supplementary material 4 (TIFF 6252 kb) Supplementary Fig. 3: Principal component analysis and clustering of families in the 45th International Bread Wheat Screening Nursery

122_2018_3086_MOESM5_ESM.tiff (6.1MB, tiff)

Supplementary material 5 (TIFF 6252 kb) Supplementary Fig. 4: Principal component analysis and clustering of families in the 46th International Bread Wheat Screening Nursery

122_2018_3086_MOESM6_ESM.tiff (1.9MB, tiff)

Supplementary material 6 (TIFF 1955 kb) Supplementary Fig. 5: Quantile–quantile plots of p values comparing the uniform distribution of the expected –log10 p value to the observed –log10 p value for leaf rust and tan spot in the 45th International Bread Wheat Screening Nursery

122_2018_3086_MOESM7_ESM.tiff (9.2MB, tiff)

Supplementary material 7 (TIFF 9377 kb) Supplementary Fig. 6: Quantile–quantile plots of p values comparing the uniform distribution of the expected –log10 p value to the observed –log10 p value for stripe rust seeding and adult plant resistance in the 46th International Bread Wheat Screening Nursery

122_2018_3086_MOESM8_ESM.tiff (4.3MB, tiff)

Supplementary material 8 (TIFF 4377 kb) Supplementary Fig. 7: Manhattan plot showing –log10 p values of the markers for seedling resistance to leaf rust and tan spot in the 45th IBWSN

122_2018_3086_MOESM9_ESM.tiff (5.3MB, tiff)

Supplementary material 9 (TIFF 5471 kb) Supplementary Fig. 8: Manhattan plot showing –log10 p values of the markers for seedling and adult plant resistance to stripe rust in the 46th IBWSN

122_2018_3086_MOESM10_ESM.tiff (4.9MB, tiff)

Supplementary material 10 (TIFF 5002 kb) Supplementary Fig. 9: Pie chart showing the species with orthologs of highest similarity to the T. aestivum genes in a segment on chromosome 2AS

Acknowledgements

We thank Monsanto’s Beachell and Borlaug International Scholars program for providing support to Miss. Juliana and the research. We would also like to thank the durable rust resistance in wheat project (DRRW), Australian Cereal Rust Control Program (ACRCP), United States Agency for International Development (USAID) feed the future innovation lab at Kansas State University and Consultative Group on International Agricultural Research (CGIAR) research program (CRP) wheat for their contributions to the plant materials, phenotyping, and genotyping data. Partial support was also provided by Hatch project 149-430. This work is partially supported by the Agriculture and Food Research Initiative Competitive Grants 2011-68002-30029 (Triticeae-CAP) and 2017-67007-25939 (Wheat-CAP) from the USDA National Institute of Food and Agriculture.

Abbreviations

ABC

Adenosine triphosphate binding cassette

APR

Adult plant resistance

ARM

Armadillo

BLAST

Basic Local Alignment Search Tool

CIMMYT

International Maize and Wheat Improvement Center

ETS

Effector-triggered susceptibility

ETI

Effector-triggered immunity

GBS

Genotyping-by-sequencing

GWAS

Genome-wide association studies

IBWSN

International Bread Wheat Screening Nursery

IWGSC

International Wheat Genome Sequencing Consortium

LD

Linkage disequilibrium

LR

Leaf rust

MLM

Mixed linear model

RNA

Ribonucleic acid

NB-ARC

Nucleotide binding-APAF-1 (apoptotic protease-activating factor-1): R proteins and CED-4 (Caenorhabditis elegans death-4 protein)

NBS-LRR

Nucleotide binding site-leucine rich repeat

PAL

Phenylalanine ammonia-lyase

PAMPs

Pathogen-associated molecular patterns

POPSEQ

Population sequencing

POTAGE

Popseq Ordered Triticum Aestivum Gene Expression

POX

Peroxidase

PR

Pathogenesis-related

PRRs

Pattern recognition receptors

PTI

Pathogen-associated molecular pattern-triggered immunity

QTL

Quantitative trait loci

RGA

Resistance gene analog

RLK

Receptor-like kinase

RPM1

Resistance to Pseudomonas syringae pv. maculicola 1

RPP13

Recognition of Peronospora parasitica 13

SINA

Seven in absentia

STPK

Serine/threonine-protein kinase

TASSEL

Trait Analysis by aSSociation Evolution and Linkage

TILLING

Targeting induced local lesions in genomes

TS

Tan spot

YR

Stripe rust

Compliance with ethical standards

Conflict of interest

The authors have no conflict of interest.

Footnotes

Electronic supplementary material

The online version of this article (10.1007/s00122-018-3086-6) contains supplementary material, which is available to authorized users.

References

  1. Bansal UK, Hayden MJ, Gill MB, Bariana HS. Chromosomal location of an uncharacterised stripe rust resistance gene in wheat. Euphytica. 2009;171:121–127. [Google Scholar]
  2. Bariana HS, Mcintosh RA. Cytogenetic studies in wheat. XV. Location of rust resistance genes in VPM1 and their genetic linkage with other disease resistance genes in chromosome 2A. Genome. 1993;36:476–482. doi: 10.1139/g93-065. [DOI] [PubMed] [Google Scholar]
  3. Basnet BR, Singh RP, Herrera-Foessel SA, Ibrahim AMH, Huerta-Espino J, Calvo-Salazar V, Rudd JC. Genetic analysis of adult plant resistance to yellow rust and leaf rust in common spring wheat Quaiu 3. Plant Dis. 2013;97:728–736. doi: 10.1094/PDIS-02-12-0141-RE. [DOI] [PubMed] [Google Scholar]
  4. Benjamini Y, Hochberg Y. Controlling the false discovery rate: a practical and powerful approach to multiple testing. J R Stat Soc. 1995;57:289–300. [Google Scholar]
  5. Bhathal JS, Loughman R, Speijers J. Yield reduction in wheat in relation to leaf disease from yellow (tan) spot and Septoria nodorum blotch. Eur J Plant Pathol. 2003;109:435–443. [Google Scholar]
  6. Bittner-Eddy PD, Beynon JL. The Arabidopsis downy mildew resistance gene, RPP13-Nd, functions independently of NDR1 and EDS1 and does not require the accumulation of salicylic acid. Mol Plant Microbe Interact. 2001;14:416–421. doi: 10.1094/MPMI.2001.14.3.416. [DOI] [PubMed] [Google Scholar]
  7. Bittner-Eddy PD, Crute IR, Holub EB, Beynon JL. RPP13 is a simple locus in Arabidopsis thaliana for alleles that specify downy mildew resistance to different avirulence determinants in Peronospora parasitica. Plant J. 2000;21:177–188. doi: 10.1046/j.1365-313x.2000.00664.x. [DOI] [PubMed] [Google Scholar]
  8. Bolser D, Staines DM, Pritchard E, Kersey P (2016) Ensembl plants: integrating tools for visualizing, mining, and analyzing plant genomics data. In: Edwards D (ed) Plant Bioinformatics. Methods and protocols. Methods in molecular biology. vol 1374, pp 115–140. 10.1007/978-1-4939-3167-5_6 [DOI] [PubMed]
  9. Box GEP, Cox DR. An analysis of transformations. J R Stat Soc Ser B. 1964;26:211–252. [Google Scholar]
  10. Bradbury PJ, Zhang Z, Kroon DE, Casstevens TM, Ramdoss Y, Buckler ES. TASSEL: software for association mapping of complex traits in diverse samples. Bioinformatics. 2007;23:2633–2635. doi: 10.1093/bioinformatics/btm308. [DOI] [PubMed] [Google Scholar]
  11. Breseghello F, Sorrells ME. Association mapping of kernel size and milling quality in wheat (Triticum aestivum L.) cultivars. Genetics. 2006;172:1165–1177. doi: 10.1534/genetics.105.044586. [DOI] [PMC free article] [PubMed] [Google Scholar]
  12. Broekaert WF, Terras FR, Cammue BP, Osborn RW. Plant defensins: novel antimicrobial peptides as components of the host defense system. Plant Physiol. 1995;108:1353–1358. doi: 10.1104/pp.108.4.1353. [DOI] [PMC free article] [PubMed] [Google Scholar]
  13. Brown-Guedira GL, Singh S, Fritz AK. Performance and mapping of leaf rust resistance transferred to wheat from Triticum timopheevii subsp. armeniacum. Phytopathology. 2003;93:784–789. doi: 10.1094/PHYTO.2003.93.7.784. [DOI] [PubMed] [Google Scholar]
  14. Chapman JA, Mascher M, Buluç A, Barry K, Georganas E, Session A, Strnadova V, Jenkins J, Sehgal S, Oliker L, Schmutz J, Yelick KA, Scholz U, Waugh R, Poland JA, Muehlbauer GJ, Stein N, Rokhsar DS. A whole-genome shotgun approach for assembling and anchoring the hexaploid bread wheat genome. Genome Biol. 2015;16:26. doi: 10.1186/s13059-015-0582-8. [DOI] [PMC free article] [PubMed] [Google Scholar]
  15. Chen Z. A superfamily of proteins with novel cysteine-rich repeats. Plant Physiol. 2001;126:473–476. doi: 10.1104/pp.126.2.473. [DOI] [PMC free article] [PubMed] [Google Scholar]
  16. Chen XM. Epidemiology and control of stripe rust [Puccinia striiformis f. sp. tritici] on wheat. Can J Plant Pathol. 2005;27:314–337. [Google Scholar]
  17. Chhetri M, Bariana H, Kandiah P, Bansal U. Yr58: a new stripe rust resistance gene and its interaction with Yr46 for enhanced resistance. Phytopathology PHYTO-04-16-018. 2016 doi: 10.1094/PHYTO-04-16-0182-R. [DOI] [PubMed] [Google Scholar]
  18. Cho M, Lee Z-W, Cho H-T. ATP-binding cassette B4, an auxin-efflux transporter, stably associates with the plasma membrane and shows distinctive intracellular trafficking from that of PIN-FORMED proteins. Plant Physiol. 2012;159:642–654. doi: 10.1104/pp.112.196139. [DOI] [PMC free article] [PubMed] [Google Scholar]
  19. Choi JJ, Klosterman SJ, Hadwiger LA. A promoter from pea gene DRR206 is suitable to regulate an elicitor-coding gene and develop disease resistance. Phytopathology. 2004;94:651–660. doi: 10.1094/PHYTO.2004.94.6.651. [DOI] [PubMed] [Google Scholar]
  20. Cox TS, Raupp WJ, Gill BS. Leaf rust-resistance genes Lr41, Lr42, and Lr43 transferred from Triticum tauschii to common wheat. Crop Sci. 1994;34:339–343. [Google Scholar]
  21. Cox TS, Sears RG, Gill BS, Jellen EN. Registration of KS91WGRC11, KS92WGRC15, and KS92WGRC23 leaf rust-resistant hard red winter wheat germplasms. Crop Sci. 1994;34:546–547. [Google Scholar]
  22. Craig A, Ewan R, Mesmar J, Gudipati V, Sadanandom A. E3 ubiquitin ligases and plant innate immunity. J Exp Bot. 2009;60:1123–1132. doi: 10.1093/jxb/erp059. [DOI] [PubMed] [Google Scholar]
  23. Crossa J, Burgueño J, Dreisigacker S, Vargas M, Herrera-Foessel SA, Lillemo M, Singh RP, Trethowan R, Warburton M, Franco J, Reynolds M, Crouch JH, Ortiz R. Association analysis of historical bread wheat germplasm using additive genetic covariance of relatives and population structure. Genetics. 2007;177:1889–1913. doi: 10.1534/genetics.107.078659. [DOI] [PMC free article] [PubMed] [Google Scholar]
  24. Cruz CD, Peterson GL, Bockus WW, Kankanala P, Dubcovsky J, Jordan KW, Akhunov E, Chumley F, Baldelomar FD, Valent B. The 2NS Translocation from Aegilops ventricosa confers resistance to the Triticum pathotype of Magnaporthe oryzae. Crop Sci. 2016 doi: 10.2135/cropsci2015.07.0410. [DOI] [PMC free article] [PubMed] [Google Scholar]
  25. Daudi A, Cheng Z, Brien JAO, Mammarella N, Khan S, Ausubel FM, Bolwell GP, Daudi A, Cheng Z, Brien JAO, Mammarella N, Khan S, Ausubel FM, Bolwell GP. The apoplastic oxidative burst peroxidase in Arabidopsis is a major component of pattern-triggered immunity. Plant Cell. 2012;24:275–287. doi: 10.1105/tpc.111.093039. [DOI] [PMC free article] [PubMed] [Google Scholar]
  26. de Carvalho AO, Gomes VM. Plant defensins—prospects for the biological functions and biotechnological properties. Peptides. 2009;30:1007–1020. doi: 10.1016/j.peptides.2009.01.018. [DOI] [PubMed] [Google Scholar]
  27. De Wolf ED, Effertz RJ, Ali S, Francl LJ. Vistas of tan spot research. Can J Plant Pathol. 1998;20:349–370. [Google Scholar]
  28. Debener T, Lehnackers H, Arnold M, Dangl JL. Identification and molecular mapping of a single Arabidopsis thaliana locus determining resistance to a phytopathogenic Pseudomonas syringae isolate. Plant J. 1991;1:289–302. doi: 10.1046/j.1365-313X.1991.t01-7-00999.x. [DOI] [PubMed] [Google Scholar]
  29. Decreux A, Messiaen J. Wall-associated kinase WAK1 interacts with cell wall pectins in a calcium-induced conformation. Plant Cell Physiol. 2005;46:268–278. doi: 10.1093/pcp/pci026. [DOI] [PubMed] [Google Scholar]
  30. Delannoy E, Stanley WA, Bond CS, Small ID. Pentatricopeptide repeat (PPR) proteins as sequence-specificity factors in post-transcriptional processes in organelles. Biochem Soc Trans. 2007;35:1643–1647. doi: 10.1042/BST0351643. [DOI] [PubMed] [Google Scholar]
  31. Dielen AS, Badaoui S, Candresse T, German-Retana S. The ubiquitin/26S proteasome system in plant-pathogen interactions: a never-ending hide-and-seek game. Mol Plant Pathol. 2010;11:293–308. doi: 10.1111/j.1364-3703.2009.00596.x. [DOI] [PMC free article] [PubMed] [Google Scholar]
  32. Doussinault G, Delibes A, Sanchez-Monge R, Garcia-Olmedo F. Transfer of a dominant gene for resistance to eyespot disease from a wild grass to hexaploid wheat. Nature. 1983;303:698–700. [Google Scholar]
  33. Dyck PL, Kerber ER. Inheritance of leaf rust resistance in wheat cultivars Rafaela and EAP 26127 and chromosome location of gene Lr17. Can J Genet Cytol. 1977;19:355–358. [Google Scholar]
  34. Dyck PL, Kerber ER. Aneuploid analysis of a gene for leaf rust resistance derived from the common wheat cultivar Terenzio. Can J Genet Cytol. 1981;23:405–409. [Google Scholar]
  35. Ederli L, Madeo L, Calderini O, Gehring C, Moretti C, Buonaurio R, Paolocci F, Pasqualini S. The Arabidopsis thaliana cysteine-rich receptor-like kinase CRK20 modulates host responses to Pseudomonas syringae pv. tomato DC3000 infection. J Plant Physiol. 2011;168:1784–1794. doi: 10.1016/j.jplph.2011.05.018. [DOI] [PubMed] [Google Scholar]
  36. Effertz RJ, Meinhardt SW, Anderson JA, Jordahl JG, Francl LJ. Identification of a chlorosis-inducing toxin from Pyrenophora tritici-repentis and the chromosomal location of an insensitivity locus in wheat. Phytopathology. 2002;92:527–533. doi: 10.1094/PHYTO.2002.92.5.527. [DOI] [PubMed] [Google Scholar]
  37. Ellis JG, Lagudah ES, Spielmeyer W, Dodds PN. The past, present and future of breeding rust resistant wheat. Front Plant Sci. 2014;5:641. doi: 10.3389/fpls.2014.00641. [DOI] [PMC free article] [PubMed] [Google Scholar]
  38. Endelman JB. Ridge regression and other kernels for genomic selection with R package rrBLUP. Plant Genome. 2011;4:250–255. [Google Scholar]
  39. Endelman JB, Jannink J-L. Shrinkage estimation of the realized relationship matrix. G3 Genes Genomes Genet. 2012;2:1405–1413. doi: 10.1534/g3.112.004259. [DOI] [PMC free article] [PubMed] [Google Scholar]
  40. Faris JD, Friesen TL. Identification of quantitative trait loci for race-nonspecific resistance to tan spot in wheat. Theor Appl Genet. 2005;111:386–392. doi: 10.1007/s00122-005-2033-5. [DOI] [PubMed] [Google Scholar]
  41. Faris JD, Anderson JA, Francl LJ, Jordahl JG. Chromosomal location of a gene conditioning insensitivity in wheat to a necrosis-inducing culture filtrate from Pyrenophora tritici-repentis. Phytopathology. 1996;86:459–463. [Google Scholar]
  42. Feuillet C, Travella S, Stein N, Albar L, Nublat A, Keller B. Map-based isolation of the leaf rust disease resistance gene Lr10 from the hexaploid wheat (Triticum aestivum L.) genome. Proc Natl Acad Sci USA. 2003;100:15253–15258. doi: 10.1073/pnas.2435133100. [DOI] [PMC free article] [PubMed] [Google Scholar]
  43. Flor HH. The complementary genic systems in flax and flax rust. Adv Genet. 1956;8:29–54. [Google Scholar]
  44. Friesen TL, Faris JD. Molecular mapping of resistance to Pyrenophora tritici-repentis race 5 and sensitivity to Ptr ToxB in wheat. Theor Appl Genet. 2004;109:464–471. doi: 10.1007/s00122-004-1678-9. [DOI] [PubMed] [Google Scholar]
  45. Friesen TL, Meinhardt SW, Faris JD. The Stagonospora nodorum-wheat pathosystem involves multiple proteinaceous host-selective toxins and corresponding host sensitivity genes that interact in an inverse gene-for-gene manner. Plant J. 2007;51:681–692. doi: 10.1111/j.1365-313X.2007.03166.x. [DOI] [PubMed] [Google Scholar]
  46. Friesen TL, Faris JD, Solomon PS, Oliver RP. Host-specific toxins: effectors of necrotrophic pathogenicity. Cell Microbiol. 2008;10:1421–1428. doi: 10.1111/j.1462-5822.2008.01153.x. [DOI] [PubMed] [Google Scholar]
  47. Gómez-Gómez L, Boller T. FLS2: an LRR receptor–like kinase involved in the perception of the bacterial elicitor flagellin in Arabidopsis. Mol Cell. 2000;5:1003–1011. doi: 10.1016/s1097-2765(00)80265-8. [DOI] [PubMed] [Google Scholar]
  48. Gupta OP, Permar V, Koundal V, Singh UD, Praveen S. MicroRNA regulated defense responses in Triticum aestivum L. during Puccinia graminis f. sp. tritici infection. Mol Biol Rep. 2012;39:817–824. doi: 10.1007/s11033-011-0803-5. [DOI] [PubMed] [Google Scholar]
  49. Hammond-Kosack KE, Jones JDG. Plant disease resistance genes. Annu Rev Plant Physiol Plant Mol Biol. 1997;48:575–607. doi: 10.1146/annurev.arplant.48.1.575. [DOI] [PubMed] [Google Scholar]
  50. He ZH, He D, Kohorn BD. Requirement for the induced expression of a cell wall-associated receptor kinase for survival during the pathogen response. Plant J. 1998;14:55–63. doi: 10.1046/j.1365-313x.1998.00092.x. [DOI] [PubMed] [Google Scholar]
  51. Hiebert CW, Thomas JB, McCallum BD, Somers DJ. Genetic mapping of the wheat leaf rust resistance gene Lr60 (LrW2) Crop Sci. 2008;48:1020–1026. [Google Scholar]
  52. Higgins CF. ABC transporters: from microorganisms to man. Annu Rev Cell Biol. 1992;8:67–113. doi: 10.1146/annurev.cb.08.110192.000435. [DOI] [PubMed] [Google Scholar]
  53. Huang L, Brooks SA, Li W, Fellers JP, Trick HN, Gill BS. Map-based cloning of leaf rust resistance gene Lr21 from the large and polyploid genome of bread wheat. Genetics. 2003;164:655–664. doi: 10.1093/genetics/164.2.655. [DOI] [PMC free article] [PubMed] [Google Scholar]
  54. Huerta-Espino J, Singh RP, Germán S, McCallum BD, Park RF, Chen WQ, Bhardwaj SC, Goyeau H. Global status of wheat leaf rust caused by Puccinia triticina. Euphytica. 2011;179:143–160. [Google Scholar]
  55. International Wheat Genome Sequencing Consortium (IWGSC) A chromosome-based draft sequence of the hexaploid bread wheat (Triticum aestivum) genome. Science. 2014;345:1251788. doi: 10.1126/science.1251788. [DOI] [PubMed] [Google Scholar]
  56. Jahier J, Abelard P, Tanguy AM, Dedryver F, Rivoal R, Khatkar S, Bariana HS. The Aegilops ventricosa segment on chromosome 2AS of the wheat cultivar “VPM1” carries the cereal cyst nematode resistance gene Cre5. Plant Breed. 2001;120:125–128. [Google Scholar]
  57. Johnson R. A critical analysis of durable resistance. Annu Rev Phytopathol. 1984;22:309–330. [Google Scholar]
  58. Jones JDG, Dangl JL. The plant immune system. Nature. 2006;444:323–329. doi: 10.1038/nature05286. [DOI] [PubMed] [Google Scholar]
  59. Jordá L, Vera P. Local and systemic induction of two defense-related subtilisin-like protease promoters in transgenic Arabidopsis plants. Luciferin induction of PR gene expression. Plant Physiol. 2000;124:1049–1058. doi: 10.1104/pp.124.3.1049. [DOI] [PMC free article] [PubMed] [Google Scholar]
  60. Jørgensen JH. Discovery, characterization and exploitation of Mlo powdery mildew resistance in barley. Euphytica. 1992;63:141–152. [Google Scholar]
  61. Juliana P, Rutkoski JE, Poland JA, Singh RP, Murugasamy S, Natesan S, Barbier H, Sorrells ME. Genome-wide association mapping for leaf tip necrosis and pseudo-black chaff in relation to durable rust resistance in wheat. Plant Genome. 2015 doi: 10.3835/plantgenome2015.01.0002. [DOI] [PubMed] [Google Scholar]
  62. Kolmer JA, Chen X, Jin Y. Diseases which challenge global wheat production—the wheat rusts. In: Carver BF, editor. Wheat science and trade. Ames: Wiley-Blackwell; 2009. [Google Scholar]
  63. Krattinger SG, Lagudah ES, Spielmeyer W, Singh RP, Huerta-espino J, Mcfadden H, Bossolini E, Selter LL, Keller B. A putative ABC transporter confers durable resistance to multiple fungal pathogens in wheat. Science. 2009;323:1360–1363. doi: 10.1126/science.1166453. [DOI] [PubMed] [Google Scholar]
  64. Kuhar K, Kansal R, Subrahmanyam B, Koundal KR, Miglani K, Gupta VK. A Bowman–Birk protease inhibitor with antifeedant and antifungal activity from Dolichos biflorus. Acta Physiol Plant. 2013;35:1887–1903. [Google Scholar]
  65. Kuraparthy V, Chhuneja P, Dhaliwal HS, Kaur S, Bowden RL, Gill BS. Characterization and mapping of cryptic alien introgression from Aegilops geniculata with new leaf rust and stripe rust resistance genes Lr57 and Yr40 in wheat. Theor Appl Genet. 2007;114:1379–1389. doi: 10.1007/s00122-007-0524-2. [DOI] [PubMed] [Google Scholar]
  66. La Camera S, Gouzerh G, Dhondt S, Hoffmann L, Fritig B, Legrand M, Heitz T. Metabolic reprogramming in plant innate immunity: the contributions of phenylpropanoid and oxylipin pathways. Immunol Rev. 2004;198:267–284. doi: 10.1111/j.0105-2896.2004.0129.x. [DOI] [PubMed] [Google Scholar]
  67. Lagudah ES, Krattinger SG, Herrera-Foessel S, Singh RP, Huerta-Espino J, Spielmeyer W, Brown-Guedira G, Selter LL, Keller B. Gene-specific markers for the wheat gene Lr34/Yr18/Pm38 which confers resistance to multiple fungal pathogens. Theor Appl Genet. 2009;119:889–898. doi: 10.1007/s00122-009-1097-z. [DOI] [PubMed] [Google Scholar]
  68. Laluk K, AbuQamar S, Mengiste T. The Arabidopsis mitochondria-localized pentatricopeptide repeat protein PGN functions in defense against necrotrophic fungi and abiotic stress tolerance. Plant Physiol. 2011;156:2053–2068. doi: 10.1104/pp.111.177501. [DOI] [PMC free article] [PubMed] [Google Scholar]
  69. Lamari L, Bernier CC. Evaluation of wheat lines and cultivars to tan spot [Pyrenophora tritici-repentis] based on lesion type. Can J Plant Pathol. 1989;11:49–56. [Google Scholar]
  70. Li Y, Lu Y-G, Shi Y, Wu L, Xu Y-J, Huang F, Guo X-Y, Zhang Y, Fan J, Zhao J-Q, Zhang H-Y, Xu P-Z, Zhou J-M, Wu X-J, Wang P-R, Wang W-M. Multiple rice microRNAs are involved in immunity against the blast fungus Magnaporthe oryzae. Plant Physiol. 2014;164:1077–1092. doi: 10.1104/pp.113.230052. [DOI] [PMC free article] [PubMed] [Google Scholar]
  71. Mackey D, Holt BF, Wiig A, Dangl JL. RIN4 interacts with Pseudomonas syringae type III effector molecules and is required for RPM1-mediated resistance in Arabidopsis. Cell. 2002;108:743–754. doi: 10.1016/s0092-8674(02)00661-x. [DOI] [PubMed] [Google Scholar]
  72. Maldonado AM, Doerner P, Dixon RA, Lamb CJ, Cameron RK. A putative lipid transfer protein involved in systemic resistance signalling in Arabidopsis. Nature. 2002;419:399–403. doi: 10.1038/nature00962. [DOI] [PubMed] [Google Scholar]
  73. Mammarella ND, Cheng Z, Fu ZQ, Daudi A, Bolwell GP, Dong X, Ausubel FM. Apoplastic peroxidases are required for salicylic acid-mediated defense against Pseudomonas syringae. Phytochemistry. 2015;112:110–121. doi: 10.1016/j.phytochem.2014.07.010. [DOI] [PMC free article] [PubMed] [Google Scholar]
  74. Marais GF, Mccallum B, Snyman J, Pretorius ZA, Marais AS. Leaf rust and stripe rust resistance genes Lr54 and Yr37 transferred to wheat from Aegilops kotschyi. Plant Breed. 2005;124:538–541. [Google Scholar]
  75. Marais GF, McCallum B, Marais AS. Leaf rust and stripe rust resistance genes derived from Aegilops sharonensis. Euphytica. 2006;149:373–380. [Google Scholar]
  76. Marais F, Marais A, McCallum B, Pretorius Z. Transfer of leaf rust and stripe rust resistance genes Lr62 and Yr42 from Aegilops neglecta req. ex bertol. to common wheat. Crop Sci. 2009;49:871–879. [Google Scholar]
  77. Marasas CN, Smale M, Singh RP (2004) The economic impact in developing countries of leaf rust resistance breeding in CIMMYT-related spring bread wheat. Economics Program Paper 04-01, CIMMYT, DF, Mexico
  78. McDonald AB, Linde C. Pathogen population genetics, evolutionary potential, and durable resistance. Annu Rev Phytopathol. 2002;40:349–379. doi: 10.1146/annurev.phyto.40.120501.101443. [DOI] [PubMed] [Google Scholar]
  79. McIntosh RA, Miller TE, Chapman V. Cytogenetical studies in wheat XII. Lr28 for resistance to Puccinia recondita and Sr34 for resistance to P. graminis tritici. Z Pflanzenzuchtg. 1982;89:295–306. [Google Scholar]
  80. McIntosh RA, Friebe B, Jiang J, The D, Gill BS. Cytogenetical studies in wheat XVI. Chromosome location of a new gene for resistance to leaf rust in a Japanese wheat-rye translocation line. Euphytica. 1995;82:141–147. [Google Scholar]
  81. Mcintosh RA, Dubcovsky J, Rogers WJ, Morris CF, Appels R, Xia XC (2009) Catalogue of gene symbols for wheat: 2009 supplement. Annual Wheat Newsletter 55:256–278
  82. Mcintosh RA, Dubcovsky J, Rogers WJ, Morris CF, Appels R, Xia XC (2014) Catalogue of gene symbols for wheat: 2013–2014 supplement. Annual Wheat Newsletter 60:153–175
  83. McIntosh RA, Dubcovsky J, Rogers W, Morris C, Appels R, Xia XC (2016) Catalogue of gene symbols for wheat: 2015–2016 supplement
  84. McNeal FH, Konzak CF, Smith EP, Tate WS, Russell TS (1971) A uniform system for recording and processing cereal research data. Agricultural Research Service, United States Department of Agriculture, Beltsville, MD
  85. Miao M, Niu X, Kud J, Du X, Avila J, Devarenne TP, Kuhl JC, Liu Y, Xiao F. The ubiquitin ligase SEVEN IN ABSENTIA (SINA) ubiquitinates a defense-related NAC transcription factor and is involved in defense signaling. New Phytol. 2016;211:138–148. doi: 10.1111/nph.13890. [DOI] [PubMed] [Google Scholar]
  86. Mohler V, Singh D, Singrun C, Park RF. Characterization and mapping of Lr65 in spelt wheat “Altgold Rotkorn”. Plant Breed. 2012;131:252–257. [Google Scholar]
  87. Morant AV, Jørgensen K, Jørgensen C, Paquette SM, Sánchez-Pérez R, Møller BL, Bak S. β-Glucosidases as detonators of plant chemical defense. Phytochemistry. 2008;69:1795–1813. doi: 10.1016/j.phytochem.2008.03.006. [DOI] [PubMed] [Google Scholar]
  88. Noh B, Murphy AS, Spalding EP. Multidrug resistance—like genes of Arabidopsis required for auxin transport and auxin-mediated development. Plant Cell. 2001;13:2441–2454. doi: 10.1105/tpc.010350. [DOI] [PMC free article] [PubMed] [Google Scholar]
  89. Nusslein-Volhard C, Wieschaus E. Mutations affecting segment number and polarity in Drosophila. Nature. 1980;287:795–801. doi: 10.1038/287795a0. [DOI] [PubMed] [Google Scholar]
  90. Park YJ, Lee HJ, Kwak KJ, Lee K, Hong SW, Kang H. MicroRNA400-guided cleavage of pentatricopeptide repeat protein mRNAs renders Arabidopsis thaliana more susceptible to pathogenic bacteria and fungi. Plant Cell Physiol. 2014;55:1660–1668. doi: 10.1093/pcp/pcu096. [DOI] [PubMed] [Google Scholar]
  91. Pearce G, Yamaguchi Y, Barona G, Ryan CA. A subtilisin-like protein from soybean contains an embedded, cryptic signal that activates defense-related genes. Proc Natl Acad Sci USA. 2010;107:14921–14925. doi: 10.1073/pnas.1007568107. [DOI] [PMC free article] [PubMed] [Google Scholar]
  92. Pellegrini L, Rohfritsch O, Fritig B, Legrand M. Phenylalanine ammonia-lyase in tobacco. Plant Physiol. 1994;106:877–886. doi: 10.1104/pp.106.3.877. [DOI] [PMC free article] [PubMed] [Google Scholar]
  93. Peterson RF, Campbell AB, Hannah AE. A diagrammatic scale for estimating rust intensity on leaves and stems of cereals. Can J Res. 1948;26c:496–500. [Google Scholar]
  94. Poland JA, Brown PJ, Sorrells ME, Jannink JL. Development of high-density genetic maps for barley and wheat using a novel two-enzyme genotyping-by-sequencing approach. PLoS One. 2012;7:e32253. doi: 10.1371/journal.pone.0032253. [DOI] [PMC free article] [PubMed] [Google Scholar]
  95. Price AL, Patterson NJ, Plenge RM, Weinblatt ME, Shadick NA, Reich D. Principal components analysis corrects for stratification in genome-wide association studies. Nat Genet. 2006;38:904–909. doi: 10.1038/ng1847. [DOI] [PubMed] [Google Scholar]
  96. Qu L, Chen J, Liu M, Pan N, Okamoto H, Lin Z, Li C, Li D, Wang J, Zhu G, Zhao X, Chen X, Gu H, Chen Z. Molecular cloning and functional analysis of a novel type of Bowman–Birk inhibitor gene family in rice. Plant Physiol. 2003;133:560–570. doi: 10.1104/pp.103.024810. [DOI] [PMC free article] [PubMed] [Google Scholar]
  97. Ralph S, Park JY, Bohlmann J, Mansfield SD. Dirigent proteins in conifer defense: gene discovery, phylogeny, and differential wound- and insect-induced expression of a family of DIR and DIR-like genes in spruce (Picea spp.) Plant Mol Biol. 2006;60:21–40. doi: 10.1007/s11103-005-2226-y. [DOI] [PubMed] [Google Scholar]
  98. Randhawa MS, Bariana HS, Mago R, Bansal UK. Mapping of a new stripe rust resistance locus Yr57 on chromosome 3BS of wheat. Mol Breed. 2015 [Google Scholar]
  99. Rawal HC, Singh NK, Sharma TR. Conservation, divergence, and genome-wide distribution of PAL and POX A gene families in plants. Int J Genom. 2013 doi: 10.1155/2013/678969. [DOI] [PMC free article] [PubMed] [Google Scholar]
  100. Regente MC, Giudici AM, Villalaín J, de la Canal L. The cytotoxic properties of a plant lipid transfer protein involve membrane permeabilization of target cells. Lett Appl Microbiol. 2005;40:183–189. doi: 10.1111/j.1472-765X.2004.01647.x. [DOI] [PubMed] [Google Scholar]
  101. Roelfs AP, Singh RP, Saari EE. Rust diseases of wheat: concepts and methods of disease management. Mexico, DF: CIMMYT; 1992. [Google Scholar]
  102. Rowland GG, Kerber ER. Telocentric mapping in hexaploid wheat of genes for leaf rust resistance and other characters derived from Aegilops squarrosa. Can J Genet Cytol. 1974;16:137–144. [Google Scholar]
  103. Sarowar S, Kim YJ, Kim KD, Hwang BK, Ok SH, Shin JS. Overexpression of lipid transfer protein (LTP) genes enhances resistance to plant pathogens and LTP functions in long-distance systemic signaling in tobacco. Plant Cell Rep. 2009;28:419–427. doi: 10.1007/s00299-008-0653-3. [DOI] [PubMed] [Google Scholar]
  104. Seevers PM, Daly JM. Studies on wheat stem rust resistance controlled at the Sr6 locus. II. Peroxidase activities. Phytopathology. 1970;60:1642–1647. [Google Scholar]
  105. Shadle GL, Wesley SV, Korth KL, Chen F, Lamb C, Dixon RA. Phenylpropanoid compounds and disease resistance in transgenic tobacco with altered expression of l-phenylalanine ammonia-lyase. Phytochemistry. 2003;64:153–161. doi: 10.1016/s0031-9422(03)00151-1. [DOI] [PubMed] [Google Scholar]
  106. Shailasree S, Kini KR, Deepak S, Kumudini BS, Shetty HS. Accumulation of hydroxyproline-rich glycoproteins in pearl millet seedlings in response to Sclerospora graminicola infection. Plant Sci. 2004;167:1227–1234. [Google Scholar]
  107. Showalter AM, Bell JN, Cramer CL, Bailey JA, Varner JE, Lamb CJ. Accumulation of hydroxyproline-rich glycoprotein mRNAs in response to fungal elicitor and infection. Proc Natl Acad Sci. 1985;82:6551–6555. doi: 10.1073/pnas.82.19.6551. [DOI] [PMC free article] [PubMed] [Google Scholar]
  108. Singh RP, McIntosh RA. Complementary genes for resistance to Puccinia recondita tritici in Triticum aestivum II. Cytogenetic studies. Can J Genet Cytol. 1984;26:736–742. [Google Scholar]
  109. Singh RP, Huerta-Espino J, William HM. Genetics and breeding for durable resistance to leaf and stripe rusts in wheat. Turkish J Agric For. 2005;29:121–127. [Google Scholar]
  110. Singh PK, Gonzalez-Hernandez JM, Goodwin SB. Identification and molecular mapping of a gene conferring resistance to Pyrenophora tritici-repentis race 3 in tetraploid wheat. Phytopathology. 2006;96:885–889. doi: 10.1094/PHYTO-96-0885. [DOI] [PubMed] [Google Scholar]
  111. Singh PK, Mergoum M, Gonzalez-Hernandez JL, Ali S, Adhikari TB, Kianian SF, Elias EM, Hughes GR. Genetics and molecular mapping of resistance to necrosis inducing race 5 of Pyrenophora tritici-repentis in tetraploid wheat. Mol Breed. 2008;21:293–304. [Google Scholar]
  112. Singh PK, Singh RP, Duveiller E, Mergoum M, Adhikari TB, Elias EM. Genetics of wheat-Pyrenophora tritici-repentis interactions. Euphytica. 2009;171:1–13. [Google Scholar]
  113. Singh PK, Duveiller E, Singh RP. Evaluation of CIMMYT germplasm for resistance to leaf spotting diseases of wheat. Czech J Genet Plant Breed. 2011;47:S102–S108. [Google Scholar]
  114. Somers DJ, Isaac P, Edwards K. A high-density microsatellite consensus map for bread wheat (Triticum aestivum L.) Theor Appl Genet. 2004;109:1105–1114. doi: 10.1007/s00122-004-1740-7. [DOI] [PubMed] [Google Scholar]
  115. Song WY, Wang GL, Chen LL, Kim HS, Pi LY, Holsten T, Gardner J, Wang B, Zhai WX, Zhu LH, Fauquet C, Ronald P. A receptor kinase-like protein encoded by the rice disease resistance gene, Xa21. Science. 1995;270:1804–1806. doi: 10.1126/science.270.5243.1804. [DOI] [PubMed] [Google Scholar]
  116. Southerton S, Deverall B. Changes in phenylalanine ammonia-lyase and peroxidase activities in wheat cultivars expressing resistance to the leaf-rust fungus. Plant Pathol. 1990;39:223–230. [Google Scholar]
  117. Stein M, Dittgen J, Sanchez-Rodriguez C, Hou B, Molina A, Schulze-lefert P, Lipka V, Somerville S. Arabidopsis PEN3/PDR8, an ATP binding cassette transporter, contributes to nonhost resistance to inappropriate pathogens that enter by direct penetration. Plant Cell. 2006;18:731–746. doi: 10.1105/tpc.105.038372. [DOI] [PMC free article] [PubMed] [Google Scholar]
  118. Stukkens Y, Bultreys A, Trombik T, Vanham D, Boutry M. NpPDR1, a pleiotropic drug resistance-type ATP-binding cassette transporter from Nicotiana plumbaginifolia, plays a major role in plant pathogen defense. Plant Physiol. 2005;139:341–352. doi: 10.1104/pp.105.062372. [DOI] [PMC free article] [PubMed] [Google Scholar]
  119. Sun X, Bai G, Carver BF, Bowden R. Molecular mapping of wheat leaf rust resistance gene Lr42. Crop Sci. 2010;50:59–66. [Google Scholar]
  120. Tadesse W, Hsam SLK, Wenzel G, Zeller FJ. Identification and monosomic analysis of tan spot resistance genes in synthetic wheat lines (Triticum turgidum L. × Aegilops tauschii Coss.) Crop Sci. 2006;46:1212–1217. [Google Scholar]
  121. Tadesse W, Hsam SLK, Zeller FJ. Evaluation of common wheat cultivars for tan spot resistance and chromosomal location of a resistance gene in the cultivar “Salamouni”. Plant Breed. 2006;125:318–322. [Google Scholar]
  122. Tadesse W, Schmolke M, Hsam SLK, Mohler V, Wenzel G, Zeller FJ. Chromosomal location and molecular mapping of a tan spot resistance gene in the winter wheat cultivar Red Chief. J Appl Genet. 2010;51:235–242. doi: 10.1007/BF03208853. [DOI] [PubMed] [Google Scholar]
  123. Thorpe JR, Hall JL. Chronology and elicitation of changes in peroxidase and phenylalanine ammonia-lyase activities in wounded wheat leaves in response to inoculation by Botrytis cinerea. Physiol Plant Pathol. 1984;25:363–379. [Google Scholar]
  124. Tonnessen BW, Manosalva P, Lang JM, Baraoidan M, Bordeos A, Mauleon R, Oard J, Hulbert S, Leung H, Leach JE. Rice phenylalanine ammonia-lyase gene OsPAL4 is associated with broad spectrum disease resistance. Plant Mol Biol. 2015;87:273–286. doi: 10.1007/s11103-014-0275-9. [DOI] [PubMed] [Google Scholar]
  125. van Loon LC, van Strien E. The families of pathogenesis-related proteins, their activities, and comparative analysis of PR-1 type proteins. Physiol Mol Plant Pathol. 1999;55:85–97. [Google Scholar]
  126. Verrier PJ, Bird D, Burla B, Dassa E, Forestier C, Geisler M, Klein M, Kolukisaoglu Ü, Lee Y, Martinoia E, Murphy A, Rea PA, Samuels L, Schulz B, Spalding EJ, Yazaki K, Theodoulou FL. Plant ABC proteins—a unified nomenclature and updated inventory. Trends Plant Sci. 2008;13:151–159. doi: 10.1016/j.tplants.2008.02.001. [DOI] [PubMed] [Google Scholar]
  127. Wang Y, Fristensky B. Transgenic canola lines expressing pea defense gene DRR206 have resistance to aggressive blackleg isolates and to Rhizoctonia solani. Mol Breed. 2001;8:263–271. [Google Scholar]
  128. Wang Y, Nowak G, Culley D, Hadwiger LA, Fristensky B. Constitutive expression of pea defense gene DRR206 confers resistance to blackleg (Leptosphaeria maculans) disease in transgenic canola (Brassica napus) Mol Plant Microbe Interact. 1999;12:410–418. [Google Scholar]
  129. Wang S, Wong D, Forrest K, Allen A, Chao S, Huang BE, Salvi S, Milner SG, Cattivelli L, Mastrangelo AM, Whan A, Stephen S, Dvorak J, Morell M, Dubcovsky J, Ganal M, Tuberosa R, Lawley C. Characterization of polyploid wheat genomic diversity using a high-density 90 000 single nucleotide polymorphism array. Plant Biotechnol J. 2014;12:787–796. doi: 10.1111/pbi.12183. [DOI] [PMC free article] [PubMed] [Google Scholar]
  130. Weiberg A, Wang M, Bellinger M, Jin H. Small RNAs: a new paradigm in plant–microbe interactions. Annu Rev Phytopathol. 2014;52:495–516. doi: 10.1146/annurev-phyto-102313-045933. [DOI] [PubMed] [Google Scholar]
  131. Williamson VM, Thomas V, Ferris H, Dubcovsky J. An translocation confers resistance against root-knot nematodes to common wheat. Crop Sci. 2013;53:1412. doi: 10.2135/cropsci2012.12.0681. [DOI] [PMC free article] [PubMed] [Google Scholar]
  132. Wissenschafts B, Issn B, October R. Antifungal activity of a Bowman–Birk-type trypsin inhibitor from wheat kernel. J Phytopathol. 2000;148:477–481. [Google Scholar]
  133. Yang C-W, Gonzalez-Lamothe R, Ewan RA, Rowland O, Yoshioka H, Shenton M, Ye H, O’Donell E, Jones JDG, Sadanandom A. The E3 ubiquitin ligase activity of Arabidopsis Plant U-BOX17 and its functional tobacco homolog ACRE276 are required for cell death and defense. Plant Cell. 2006;18:1084–1098. doi: 10.1105/tpc.105.039198. [DOI] [PMC free article] [PubMed] [Google Scholar]
  134. Yeh Y-H, Chang Y-H, Huang P-Y, Huang J-B, Zimmerli L. Enhanced Arabidopsis pattern-triggered immunity by overexpression of cysteine-rich receptor-like kinases. Front Plant Sci. 2015;6:322. doi: 10.3389/fpls.2015.00322. [DOI] [PMC free article] [PubMed] [Google Scholar]
  135. Yu J, Buckler ES. Genetic association mapping and genome organization of maize. Curr Opin Biotechnol. 2006;17:155–160. doi: 10.1016/j.copbio.2006.02.003. [DOI] [PubMed] [Google Scholar]
  136. Yu J, Pressoir G, Briggs WH, Vroh Bi I, Yamasaki M, Doebley JF, McMullen MD, Gaut BS, Nielsen DM, Holland JB, Kresovich S, Buckler ES. A unified mixed-model method for association mapping that accounts for multiple levels of relatedness. Nat Genet. 2006;38:203–208. doi: 10.1038/ng1702. [DOI] [PubMed] [Google Scholar]
  137. Yu LX, Lorenz A, Rutkoski J, Singh RP, Bhavani S, Huerta-Espino J, Sorrells ME. Association mapping and gene-gene interaction for stem rust resistance in CIMMYT spring wheat germplasm. Theor Appl Genet. 2011;123:1257–1268. doi: 10.1007/s00122-011-1664-y. [DOI] [PubMed] [Google Scholar]
  138. Yu LX, Barbier H, Rouse MN, Singh S, Singh RP, Bhavani S, Huerta-Espino J, Sorrells ME. A consensus map for Ug99 stem rust resistance loci in wheat. Theor Appl Genet. 2014;127:1561–1581. doi: 10.1007/s00122-014-2326-7. [DOI] [PMC free article] [PubMed] [Google Scholar]
  139. Zeng LR, Qu S, Bordeos A, Yang C, Baraoidan M, Yan H, Xie Q, Nahm BH, Leung H, Wang G. Spotted leaf11, a negative regulator of plant cell death and defense, encodes a U-box/armadillo repeat protein endowed with E3 ubiquitin ligase activity. Plant Cell. 2004;16:2795–2808. doi: 10.1105/tpc.104.025171. [DOI] [PMC free article] [PubMed] [Google Scholar]
  140. Zhang Z, Ersoz E, Lai C-Q, Todhunter RJ, Tiwari HK, Gore MA, Bradbury PJ, Yu J, Arnett DK, Ordovas JM, Buckler ES. Mixed linear model approach adapted for genome-wide association studies. Nat Genet. 2010;42:355–360. doi: 10.1038/ng.546. [DOI] [PMC free article] [PubMed] [Google Scholar]

Associated Data

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

Supplementary Materials

122_2018_3086_MOESM2_ESM.tiff (2.1MB, tiff)

Supplementary material 2 (TIFF 2189 kb) Supplementary Fig. 1: Distribution of missing data and minor allele frequency of markers in the 45th and 46th International Bread Wheat Screening Nursery entries

122_2018_3086_MOESM3_ESM.tiff (51.3MB, tiff)

Supplementary material 3 (TIFF 52505 kb) Supplementary Fig. 2: Scatter plot showing the linkage disequilibrium (LD) decay across the chromosomes. The physical distance in base pairs is plotted against the LD estimate (R2) for pairs of markers in the 45th International Bread Wheat Screening Nursery

122_2018_3086_MOESM4_ESM.tiff (6.1MB, tiff)

Supplementary material 4 (TIFF 6252 kb) Supplementary Fig. 3: Principal component analysis and clustering of families in the 45th International Bread Wheat Screening Nursery

122_2018_3086_MOESM5_ESM.tiff (6.1MB, tiff)

Supplementary material 5 (TIFF 6252 kb) Supplementary Fig. 4: Principal component analysis and clustering of families in the 46th International Bread Wheat Screening Nursery

122_2018_3086_MOESM6_ESM.tiff (1.9MB, tiff)

Supplementary material 6 (TIFF 1955 kb) Supplementary Fig. 5: Quantile–quantile plots of p values comparing the uniform distribution of the expected –log10 p value to the observed –log10 p value for leaf rust and tan spot in the 45th International Bread Wheat Screening Nursery

122_2018_3086_MOESM7_ESM.tiff (9.2MB, tiff)

Supplementary material 7 (TIFF 9377 kb) Supplementary Fig. 6: Quantile–quantile plots of p values comparing the uniform distribution of the expected –log10 p value to the observed –log10 p value for stripe rust seeding and adult plant resistance in the 46th International Bread Wheat Screening Nursery

122_2018_3086_MOESM8_ESM.tiff (4.3MB, tiff)

Supplementary material 8 (TIFF 4377 kb) Supplementary Fig. 7: Manhattan plot showing –log10 p values of the markers for seedling resistance to leaf rust and tan spot in the 45th IBWSN

122_2018_3086_MOESM9_ESM.tiff (5.3MB, tiff)

Supplementary material 9 (TIFF 5471 kb) Supplementary Fig. 8: Manhattan plot showing –log10 p values of the markers for seedling and adult plant resistance to stripe rust in the 46th IBWSN

122_2018_3086_MOESM10_ESM.tiff (4.9MB, tiff)

Supplementary material 10 (TIFF 5002 kb) Supplementary Fig. 9: Pie chart showing the species with orthologs of highest similarity to the T. aestivum genes in a segment on chromosome 2AS


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