Abstract
The human brain is subdivided into distinct anatomical structures. The neocortex, one of these structures, in turn encompasses dozens of distinct specialized cortical areas. Early morphogenetic gradients are known to establish early brain regions and cortical areas, but how early patterns result in finer and more discrete spatial differences remains poorly understood1. Here, we use single-cell RNA-sequencing to profile ten major brain structures and six neocortical areas during peak neurogenesis and early gliogenesis. Within the neocortex, we find that early in the second trimester a large number of genes are differentially expressed across distinct cortical areas in all cell types, including radial glia, the neural progenitors of the cortex. However, the abundance of areal transcriptomic signatures increases as radial glia differentiate into intermediate progenitor cells and ultimately give rise to excitatory neurons. Using an automated, multiplexed single-molecule fluorescent in situ hybridization (smFISH) approach, we discover that laminar gene expression patterns are highly dynamic across cortical regions. Together, our data suggest that early cortical areal patterning is defined by strong, mutually exclusive frontal and occipital gene expression signatures, with resulting gradients giving rise to the specification of areas between these two poles throughout successive developmental timepoints.
Introduction
Understanding when brain regions acquire their unique features and how this specification occurs has broad implications for the study of human brain evolution, including species-specific developmental differences that may have contributed to the expansion of cortical areas such as the prefrontal cortex (PFC)2. It is also crucial for unraveling the pathology of neurodevelopmental and neuropsychiatric disorders that often preferentially impact specific brain regions and/or neocortical areas3, 4. Early patterning of the developing telencephalon is orchestrated by morphogenetic gradients of growth factors including bone morphogenetic proteins (Bmps), Wnts, Sonic hedgehog (Shh), and, most prominent in the cortex, fibroblast growth factor (FGF)3, 5. However, the molecular patterns that arise as a result of these gradients are less well understood.
Atlas of Human Brain Development
To characterize the emergence of cellular diversity across major regions of the developing human brain and across cortical areas, we sequenced single cell transcriptomes from microdissected regions of developing human brain tissue during the second trimester, which encompasses peak stages of neurogenesis6. We sampled cells from 10 distinct major forebrain, midbrain, and hindbrain regions from 13 individuals (Fig 1A, STable 1, Methods). In addition, we sampled six neocortical areas from the same individuals: prefrontal (PFC), motor, somatosensory, parietal, temporal, and primary visual (V1) cortex, resulting in 698,820 high-quality cells for downstream analysis. In this study, we refer to the subdivisions of the cerebrum and cerebellum as “regions”, and to subdivisions of the cerebral cortex as “areas”. Microdissections were performed carefully to sample target regions. However, it should be noted that these regions are putative during development, and small numbers of cells from neighboring regions may have been included. We found expected cell populations including excitatory neurons, intermediate progenitor cells (IPCs), radial glia, mitotic cells, astrocytes, oligodendrocytes, inhibitory neurons, microglia, and vascular cells (including endothelial cells and pericytes) (Fig 1B, Extended Data Fig 1A).
We found genes that were region-specific across all cell types, as well as genes that were region-specific for individual cell types (STables 2 and 3). We detected previously described markers of brain regions, including FOXG1 (cortex)7, ZIC2 (cerebellum, also observed in the neocortex)8, 9, and NRP1 (allocortex)10 (Extended Data Fig 1B, STable 2). We also identified numerous cell type and structure-specific transcription factors, including OTX2, GATA3, LHX9 and PAX3. Each region contained progenitor and differentiated cell types (Extended Data Fig 1C), leading us to ask whether brain region or cell type is a stronger component of regional identity during the second trimester. At earlier developmental timepoints, we and others have noted that regional signatures are not broadly pervasive and do not yet reflect area-specific identities of unique brain substructures11, 12. As expected, cluster branches were primarily organized by cell type, validating our annotation approach and highlighting the robustness of cell type in driving cluster similarity. However, quantifying the proportion of cells from each region contributing to each cluster showed that the majority (115 of 192) of clusters were strongly enriched for a single or related brain region (Extended Data Fig 1D).
We found that across the whole brain, cell type was the primary source of segregation, as visualized in constellation plots13 (Fig 1C). However, in certain cases, such as the GE, cells of distinct types from a common region are drawn together in UMAP space, suggesting that regional identity can also be a strong source of variation (Fig 1C). A heatmap of area-specific gene score enrichments (Methods) shows that some region-specific genes are present across multiple cell types within a given region. This suggests that some regional gene expression signatures are highly penetrant across cell types. Interestingly, we found that regionalization is stronger in glial populations (Extended Data Fig 1E, STable 3).
The neocortex, allocortex, and proneocortex are evolutionarily closely related and physically proximal14. We sought to identify distinct regional gene expression programs among these three closely related regions by co-clustering these samples independently (Extended Data Fig 2A). Surprisingly, even within these closely related cortical structures, region was still the primary driving force, and again, regional signatures bridged multiple cell types (STable 4, Extended Data Fig 2B–E). These analyses indicate that regional signatures are sufficiently established during the second trimester to distinguish cells across brain structures, with some signatures extending beyond an individual cell type.
Cell Types in the Neocortex
The neocortex comprises dozens of functional areas that specialize in an astounding range of cognitive processes15. Longstanding, juxtaposed hypotheses propose the existence of either a cortical protomap16, where the areal identity of cortical progenitors is cell-intrinsic and genetically predetermined, or a protocortex, where newborn neurons are not areally specified until extrinsic signals, such as those from thalamocortical afferents, reach the developing cortex17. Recent work has shown that while neurons are distinct between V1 and PFC soon after their birth18, other cell types do not show robust area-specific differences. Studies in the adult mouse have additionally shown that while neuronal cell types of the anterior lateral motor cortex (ALM) and V1 are transcriptionally distinct from each other1, denser sampling of areas between the ALM and V1 reveals a gradient-like transition between cell type profiles19. We sought to expand upon these findings by profiling single cells from distinct cortical areas, yielding 387,141 high-quality cells, after filtering (Methods) (Extended Data Fig 3A–B). We found expected cell types, including Cajal-Retzius neurons, dividing cells (expressing division programs in addition to other cell type identities), excitatory neurons, inhibitory neurons, IPCs, microglia, oligodendrocyte precursor cells, radial glia/astrocytes, and vascular cells (Fig 2A, STables 5 and 6). Hierarchical clustering of 138 neocortical clusters grouped cells by cell type (Fig 2B) and revealed that most clusters (104/138) are composed of cells from multiple cortical areas.
We found strong transcriptional proximity between clusters of the same cell type, suggesting that borders between clusters are fluid (Extended Data Fig 3C). To quantify intra-cell type and inter-cell type similarity, we calculated the magnitude of transcriptional proximity between nodes (Methods), and found, not surprisingly, that clusters of each cell type connected most strongly to each other (Extended Data Fig 3D). However, we also found that IPC subclusters connected much more strongly with excitatory neurons than with radial glia subclusters (Extended Data Fig 3D). We then defined gene signatures characteristic of radial glia, IPCs, and excitatory neurons using a differential gene expression approach (Methods). These signatures (STable 7) were scored using a module-eigengene calculation (Methods). We found that radial glia had the highest upregulation of the progenitor signature, but lower down-regulation of the IPC and neuronal signatures (Extended Data Fig 3E).
Dynamic Areal Signatures
To explore areal differences amongst cells in the developing neocortex, we looked for differentially expressed genes for each cell type in the excitatory lineage (RG, IPCs, excitatory neurons) across cortical areas. We validated cortical area sub-dissections by quantifying the expression of NR2F1, which has a posterior-high to anterior-low expression gradient in neocortex19, as well as other previously described area-specific genes (Fig 3A, Extended Data Fig 3F).
Consistent with prior observations17, the specificity of neuronal areal markers was significantly higher compared to RG (Extended Data Fig 3G). Surprisingly, however, more genes were differentially expressed in RG across areas than in neurons (Extended Data Fig 3H – I, STable 8). In addition to novel area-specific genes, our dataset also contains area-specific genes that overlap with those found in previous studies (Extended Data Fig 3J). To explore the relationships between cell types from distinct cortical areas, we built constellation plots between nodes corresponding to each area and cell type combination. RG nodes were connected predominantly to each other, while IPCs and excitatory neurons were frequently interconnected, especially within the same neocortical area (Fig 3B–C). Of note, neuronal nodes of different areas show robust area-specific transcriptional proximity to their IPC counterparts, suggesting that some degree of the areal specification seen in neurons may be already present in IPCs (Extended Data Fig 4A–B). We did not find edges between PFC and V1 cell type nodes (Fig 3C, Extended Data Fig 4B), pointing to a model of strong mutual exclusivity between these two gene expression programs. Cell subtypes also followed this pattern; PFC and V1 outer radial glia cells are already mutually exclusive, and newborn neurons connect primarily to more mature neurons from the same area. These patterns persist across broader cell type annotations (RG, excitatory neurons), as well as across individual developmental stages (early, middle, late second trimester) (Extended Data Fig 4A–H). These observations indicate that markers of areal identity are already detectable in RG but become more pronounced as differentiation proceeds: we found that area-specific gene expression signatures change substantially across cell types, with small numbers of areal markers preserved throughout differentiation (Extended Data Fig 3I).
To further investigate the relationship between cell differentiation and areal signature dynamics, we inferred lineage trajectories using RNA velocity20, 21 (Extended Data Fig 5A). For each cortical area, we identified the most dynamic genes across the differentiation cascade as the top-loading RNA velocity genes (Extended Data Fig 5B). We found a large enrichment of genes in excitatory neurons, but not in RG or IPC populations, leading us to question how areal signatures might change as cells differentiate. We defined areal signatures of excitatory neurons as gene networks and evaluated their strength in RG across cortical areas by calculating their module eigengene scores. We found a strong early binary V1 expression, while the PFC signature emerged only later (Extended Data Fig 5C).
Within each set of areal marker genes, we identified TFs that were robustly enriched in cells of a specific area as well as TFs with a broad frontal or caudal enrichment (Fig 3D). A subset of area-specific TFs showed consistent specificity through early, middle, and late second trimester (Extended Data Fig 6A). We detected TFs with known roles in arealization, such as NR2F1, which confers positional identity across the rostro-caudal axis19, and BCL11A, which interacts with NR2F1 and represses motor cortex identity26. Both genes are implicated in neurodevelopmental disease27, 28. Additionally, we detected TFs that have not been implicated in cortical arealization. In V1, these include NFIA, NFIB and NFIX, that are important regulators of brain development implicated in macrocephaly and severe cognitive impairment29. They also include ZBTB18/RP58, a putative driver of brain expansion involved in neuron differentiation and cortical migration.30, 31. In the PFC, area-specific TFs include HMGB2 and HMGB3, which are differentially expressed by neural stem cells at distinct stages of development32 and are thought to be key regulators of differentiation. Of note, HMGB3 mutations can result in severe microcephaly. We also found upregulation of the TFs NEUROG1 and NEUROG2 in PFC neurons. While these PFC-specific genes have been previously described as regulators of neuronal differentiation, they have not been implicated or studied in the process of cortical arealization.
Consistent with proposed models of extensive transcriptional remodeling during the second and third trimesters20, we observed that while area-specific gene signatures are composed of significant and specific marker genes, they also change substantially throughout this period (Extended Data Fig 6B – C). Concordantly, we only found a small overlap of area-specific gene signatures, and low cluster correspondence, between this dataset and that of the adult brain (Extended Data Fig 7A–C). We thus find strong evidence for a partial early cortical protomap, which is then further refined as proposed by the protocortex model.
In Situ Validation of Neuronal Markers
Our single-cell data uncovers a large diversity of cell types and transcriptional profiles across six areas of the developing human cortex. We selected candidate markers of excitatory neuron clusters that were enriched in one or more sampled areas for validation by multiplexed single-molecule fluorescent in situ hybridization (smFISH) (Fig 4A). We quantified the expression level of 31 RNA transcripts per tissue section in four cortical regions from a GW20 sample (Fig 4B). We used DAPI staining along with kernel density expression (KDE) plots21 of canonical cell type markers genes (SOX2, SATB2, and BCL11B) to identify the ventricular zone and cortical plate (Fig 4C, Extended Data Fig 8 – 9). We confirmed previously described areal pattern dynamics between the neuronal genes SATB2 and BCL11B, that are co-expressed in frontal regions but mutually exclusive in occipital areas18 (Fig 4C). These spatial datasets are available at kriegsteinlab.ucsf.edu/datasets/arealization (STables 9 – 12).
Across all areas, we explored novel candidate subpopulation markers, including predicted subplate markers NEFL, SERPINI1, and NR4A2. All three markers showed largely equal intensity levels across cells in PFC, somatosensory, temporal, and V1 cortex, but their relative spatial distribution changed substantially (Fig 4D). These genes were co-expressed in PFC, but were mutually exclusive across all other regions. However, in the somatosensory cortex, these markers were expressed in upper cortical layers rather than in the subplate. Similarly, the spatial expression patterns of three frontally enriched marker genes, PPP1R1B, CBLN2, and CPLX3, revealed higher signal in PFC and somatosensory cortex (Fig 4D). Caudally, we observed higher intensities of LOH12CR12, ZFPL1, and PALMD (Fig 4D). We found striking differences in the laminar distribution of gene expression, suggesting that in addition to variable gene expression levels across the rostro-caudal axis, laminar cell type distributions are also spatially dynamic (Extended Data Fig 10A). While this observation may be reflective of differences in maturation states across the developing cortex, cell types may express genes in a different manner across distinct cortical areas.
We calculated co-expression relationships between single cells to generate networks that show the frequency of two genes expressed by the same cell (Extended Data Fig 10B). The resulting networks highlight that the most stringent markers of areal identity are binary, i.e., they are either included or excluded from the gene network. In most cases, however, we found remodeled co-expression patterns across cortical areas rather than elimination or inclusion of single genes from the network. Even when using all 31 genes to construct the networks, we see substantial co-expression remodeling across cortical areas. We replicated our spatial transcriptomics experimental workflow and analysis in a second individual (GW16), with the same results (Extended Data Fig 11–14, STables 13 –16).
Discussion
Our results provide a granular understanding of the gene expression signatures of distinct cell types across neocortical areas throughout the second trimester of development. We find that across major brain structures, regional identity is highly pervasive among distinct cell types. In contrast, areal identity in the neocortex is highly specific and restricted to individual cell types. Furthermore, we find that in addition to cell type identity, the developmental stage of cells (i.e. gestational week) is a strong determinant of gene expression signature composition. Together, these observations suggest that the dynamics of area-specific gene expression signatures are surprisingly fast moving and cell type-specific (Extended Data Fig 15). This contrasts with previous models of areal patterning, where gene expression programs have been generally assumed to be persistent once established.
We find strong evidence for the presence of a partial early cortical protomap between cell populations, including progenitors, at the frontal and occipital poles of the neocortex (Extended Data Fig 15 A – B). We see evidence of transcriptional regulation programs that may prime more differentiated and mature cells to acquire either a rostral or caudal identity. For example, even though progenitor clusters in the neocortex show little molecular diversity reflective of the multiple cortical regions that will eventually emerge, we do observe strong specification of PFC and V1 molecular identity among progenitor cells. In a previous study, we noted that radial glia were characterized by a small number of transcriptional differences that cascade into strong area-specific gene expression in excitatory neurons18. The analysis of a much greater number of cells and more cortical areas reveals a strong difference between PFC and V1 radial glia, while confirming that glutamatergic neurons are even more distinct between cortical areas. Our data suggests that cells located in between the prefrontal and occipital poles are less specified towards a particular areal identity, an observation that is more consistent with the protocortex hypothesis.
Characterizing the dynamic diversity of cell populations during the development of a structure as complex as the brain involves disentangling multiple axes of variation. Transcriptomic data can only provide hypotheses of how arealization occurs; mechanisms of actual specification cannot be tested without the use of model organisms and in vitro systems. This continues to present a challenge in the field because of the increased areal complexity of the human brain compared to rodent counterparts. The data we present here provides a spatially and temporally detailed molecular atlas of human brain and neocortex specification upon which future experimental characterizations can expand.
Methods
Sample Acquisition
De-identified tissue samples were collected with previous patient consent in strict observance of the legal and institutional ethical regulations. Protocols were approved by the Human Gamete, Embryo, and Stem Cell Research Committee (institutional review board) at the University of California, San Francisco. Two sets of samples included twins: GW20_31 and GW20_34; GW22 and GW22T.
Single-cell RNA Sequencing Capture and Processing
Brain dissections were performed under a stereoscope with regards to major sulci to identify cortical regions. Importantly, all dissections were performed by the same individual (T.J.N) to enable reproducibility and comparison between samples. Tissue was incubated in 4 ml of papain/DNAse solution (Worthington) for 20 min at 37C, after which it was carefully triturated with a glass pipette, filtered through a 40um cell strainer and washed with HBSS. The GW22 and GW25 samples were additionally passed through an ovomucoid gradient (Worthington) in order to minimize myelin debris in the captures. The final single-cell suspension was loaded onto a droplet-based library prep platform Chromium (10X Genomics) according to the manufacturer’s instructions. Version 2 was used for all samples except for GW19_2, GW16, and GW18_2 for which version 3 chemistry was utilized. cDNA libraries were quantified using an Agilent 2100 Bioanalyzer, and sequenced with an Illumina NovaSeq S4.
Quality Control and Filtering
We filtered cells using highly stringent QC metrics. Briefly, we discarded potential doublets using the R package scrublet22 for each individual capture lane, then required at least 750 genes per cell and removed cells with high levels (>10%) of mitochondrial gene content. These strict metrics for quality control preserved no more than 40% of cells for downstream analysis, and re-analysis of the data for specific brain structures or cell types may benefit from less stringent QC for additional discovery. Our goal was to obtain clean populations with a high validation rate for a better understanding of arealization signatures. The resulting ~700,000 cells passing all thresholds were used in downstream analyses.
Clustering strategy
We used a recursive clustering workflow to understand the cell types present in our dataset. In order to minimize potential batch effects and to increase detection sensitivity of potential rare cell populations, we performed Louvain-Jaccard clustering on each individual sample first. After initial cell type classification, we sub-clustered all the cells belonging to a cell type to generate the most granular cell subtypes possible. We then correlated subtypes between individuals based upon the gene scores in all marker genes to bridge any batch effects, and iteratively combined clusters across all individuals and cell types. For this study, we combined the clusters within a single cell type across all individuals once, and again with all clusters from all individuals and cell types, resulting in two iterative combinations. The annotations at each step are preserved in the supplementary tables to enable reconstruction at any point in the pipeline.
Hierarchical Clustering of Clusters
Cluster hierarchies are generated from matrices correlating all clusters to one another using Pearson’s correlation in the space of gene scores for all marker genes across all groups. Hierarchical clustering is performed within Morpheus (https://software.broadinstitute.org/morpheus) across all rows and columns using one minus the Pearson correlation for the distance metric.
Constellation plots
To visualize and quantify the global relationships and connectedness between cell types, cell type subclusters, or cell type-area groups, we implemented the constellation plots described in Tasic, 20181, by adapting the code made available at https://github.com/AllenInstitute/scrattch.hicat/. Briefly, we represented each group of cells as a node, whose size is proportional to the number of cells contained within it. Each node is positioned at the centroid of the UMAP coordinates of its cells. Edges represent relationships between nodes, and were calculated by obtaining the 15 nearest neighbors for each cell in PCA space (PCs 1:50), then determining, at each cluster, the fraction of neighbors belonging to a different cluster. An edge is drawn between 2 nodes if >5% of nearest neighbors belong to the opposite cluster in at least one of them. An edge’s width at the node is proportional to the fraction of nearest neighbors belonging to the opposite node, with the maximum fraction of out-of-node neighbors across all clusters represented as an edge width of 100% and equal to node width. The full code adaptation and implementation of this analysis is described in the function buildConstellationPlot in this paper’s Github repository.
Quantification of Constellation Plots
Constellation plots were quantified by using a summary of the input values described above. For each cell type or area connection, the number of edges between two groups was multiplied by the average fraction of cells meeting the threshold for a connection within the group. This resulting number was called the connectivity index.
Module Eigengene Calculations
Module eigengenes were calculated for numerous gene sets using the the R package WGCNA23. Scores were generated for each set of up to 10,000 randomly subsetted cells from the group using the function moduleEigengene function, Scores were calculated based on the intersection of the gene set of interest and genes expressed in the subset of cells. For the area-specific signatures, differential expression was performed as described above, and the gene signatures from late stage neurons across all areas were used to calculate module eigengenes for the radial glia and intermediate progenitor populations.
Area-specific markers / Gene Score Calculations
The expression profiles of cells from each subcluster or cortical area were compared to those of all other cells using the two-sided Wilcoxon rank-sum test for differential gene expression implemented by the function FindAllMarkers in the R package Seurat and selected based on an adjusted p-value cutoff of 0.05. Adjusted p-values were based on Bonferroni correction using all features in the dataset. We performed this step separately for each cell type and each individual, since we observed that gene specificity was highly dynamic throughout the developmental process. We then combined the individual gene lists of each cell type and area, and annotated the stage(s) at which each gene appeared to be specific. We binned individuals into three stages: early (GW14, 16 and 17), middle (GW18, 19, 20), and late (GW22, GW25). We ranked upregulated genes by specificity by calculating their gene score, which we defined as the result of a gene’s average log fold-change x its enrichment ratio, in turn defined as the percentage of cells expressing the gene in the cluster of interest / percentage of cells expressing in the complement of all cells. Dot Plots used to visualize the expression of distinct marker genes across cell types and/or cortical areas were generated the custom function makeDotPlot available in our code repository, which makes use of the Seurat function DotPlot. Briefly, for each gene, the average expression value of all non-zero cells from each group (cortical area) is scaled using the base R function scale(), yielding obtaining z-scores. Scaling is done in order to enable the visualization of genes across vastly different expression ranges on the same color scale.
Transcription Factor Annotation
Areally enriched marker genes obtained as described above were annotated against a comprehensive list of 1,632 human transcription factors described in24 and downloaded from the transcription factor database AnimalTFDB325, available at http://bioinfo.life.hust.edu.cn/static/AnimalTFDB3/download/Homo_sapiens_TF.
Gene signature overlap and Sankey Diagrams
In order to quantify the degree of (dis)similarity of molecular signatures across distinct cell types, cortical areas, and/or developmental stages, we calculated the overlap between all sets of cell type and area-specific gene markers at each stage, and visualized these comparisons using Sankey diagrams using the function ggSankey from the ggvis R package. We then calculated the proportion of genes for each node shared with every other node, and clustered nodes hierarchically by calculating their euclidean distances based on their proportions of shared genes. The code used to construct the overlap matrices, create the plots and quantify the results is described in the functions buildSankey and buildHeatmap in our Github repository.
RNA Velocity
Velocity estimates were calculated using the Python 3 packages Velocyto v0.1726 and scVelo v0.2.227. Reads that passed quality control after clustering were used as input for the Velocyto command line implementation. The human expressed repeat annotation file was retrieved from the UCSC genome browser. The genome annotation file used was provided by CellRanger. The output loom files were merged and used in scVelo to estimate velocity. For the combined cortical analysis, cells underwent randomized subsampling (fraction=0.5), and were filtered based on the following parameters: minimum total counts = 200, minimum spliced counts = 20 and minimum unspliced counts = 10. The final processed object generated a new UMI count matrix of 18,970 genes across 195,775 cells, for which the velocity embedding was estimated using the stochastic model. The embedding was visualized using Uniform Manifold and Approximation and Projection of dimension reduction. The velocity genes were matched by cortical area and were estimated using the rank velocity genes function in scVelo. Computational analysis of the transcriptomic data described in detail above were performed using R 4.028 and Python 3, the R packages Seurat (version 2 and version 3)29, 30, googleVis31, dplyr and ggplot232, the Python packages Velocyto v0.1726 and scVelo v0.2.227 as well as the custom-built R functions described. Our reproducible code is available in the Github repository associated with this manuscript.
Validation Marker Gene Selection
Marker genes for validation with the spatial omics platform were chosen first by identify useful cell type markers within the dataset. SOX2 was chosen to mark radial glia, EOMES was chosen to mark IPCs, and BCL11B and SATB2 were chosen to marker excitatory neuronal populations with previously validated changing co-expression patterns. POLR2A was used as a positive control for the technology. The remaining genes were selected based upon their status as a specific marker gene for excitatory neuron clusters of interest.
Rebus Esper Spatial Omics Platform
Samples for spatial transcriptomics were dissected from primary tissue as described above. Samples were flash frozen in OCT following the protocol described in the osmFISH protocol33. Samples were then mounted to APS coated coverslips, and fixed for 10 minutes in 4% PFA. Samples were then washed with PBS, and processed for spatial analysis. The spatially resolved, multiplexed in situ RNA detection and analysis was performed using the automated Rebus Esper spatial omics platform (Rebus Biosystems, Inc., Santa Clara, CA). The system integrates synthetic aperture optics (SAO) microscopy34, fluidics and image processing software and was used in conjunction with single-molecule fluorescence in situ hybridization (smFISH) chemistry. Individual transcripts from target genes were automatically detected, counted, and assigned to individual cells, generating a Cell x Feature matrix that contains gene expression and spatial location data for each individual cell, as well as registered imaging data, as follows:
Rebus Biosystems proprietary software was used to design primary target probes (22–96 oligos) and corresponding unique readout probes (assigned and labeled with Atto dyes) for each gene. The oligos were purchased from Integrated DNA Technologies and resuspended at 100μM in TE buffer. Coverslips (24 × 60 mm, No. 1.5, Cat. # 1152460, Azer Scientific) were functionalized as previously published33. Fresh frozen brain tissue sections (10 μm) were cut on a cryostat, mounted on the treated coverslips and fixed for 10 min with 4% paraformaldehyde (Alfa Aesar, Cat#43368) in PBS at room temperature, rinsed twice with PBS at room temperature and stored in 70% ethanol at 4°C before use. The sample section on the coverslip was assembled into a flow cell, which was then loaded onto the instrument. The hybridization cycles and imaging were done automatically under the instrumental control software. Briefly, primary probes for all target genes were initially hybridized for 6 hours and probes not specifically bound were washed away. Readout probes labeled with Atto532, Atto594 and Atto647N dyes for the first 3 genes were then hybridized, washed, counterstained with DAPI and then imaged with an Andor sCMOS camera (Zyla 4.2 Plus, Oxford Instruments) through 20×C, 0.45NA dry lens (CFI S Plan Fluor ELWD, Nikon) with 365nm LED for DAPI and 532nm, 595nm and 647nm lasers configured for SAO imaging. Multiple fields of view (FOVs) were imaged for each channel within the region of interest (ROI). Single Z-planes with 2.8μm depth of field were acquired for each field of view. After imaging, the first 3 readout probes were stripped and the readout probes for the next 3 genes were then hybridized, imaged, and stripped. This process was repeated until readout was completed for all genes.
Using the Rebus Esper image processing software, the raw images were reconstructed to generate high-resolution images (equivalent or better than images obtained with a 100x oil immersion lens). RNA spots were automatically detected to generate high fidelity RNA spot tables containing xy positions and signal intensities. Nuclei segmentation software based on StarDist35 identified individual cells by finding nuclear boundaries from DAPI images. The detected RNA spots were then assigned to each cell using maximum distance thresholds. The resulting CellxFeature matrix contains gene counts per cell along with annotations for cell location and nuclear size.
Kernel Density Estimation Plots
Kernel density estimation plots were created from individual gene spot location maps retrieved from the spatial transcriptomics pipeline. They were created using the seaborn kdeplot function in Python with shading and cmap coloring. They were merged together for Figure 4 with Adobe Illustrator’s overlay and darken features, using 50% opacity.
Spatial Co-expression Analysis
Using the cell by feature matrices, we eliminated all spots with less than 10 counts for signal. Pearson’s correlations were then performed across the genes within each dataset and filtered for self-correlation. Positive control (POL2RA) and non-excitatory neuron cell type markers (SOX2, EOMES, DLX6) were removed from the analysis. Interactions of 0.05 or more were preserved and visualized with Cytoscape v3.8.2 using a force-directed biolayout. Individual nodes were colored by their color in the merged image file in Figure 4B.
Extended Data
Supplementary Material
Acknowledgements
The authors thank Shaohui Wang, William Walantus, Madeline G. Andrews, Lakshmi Subramanian, and members of the A.R.K. laboratory for providing resources, technical help, and valuable discussions. We also thank Brian M. Filarsky for providing extensive computational guidance and support, and Pablo E. García and the Single-Cell Genomics Program at the Chan Zuckerberg Initiative (CZI) for their assistance in building and hosting the single-cell browsers that accompany this manuscript. Single-cell RNA sequencing data has been deposited at the NeMO archive under dbGAP restricted access. Some primary human tissue was obtained from the Human Developmental Biology Resource (HDBR), with special thanks to S. Lisgo and M. Crosier. This study was supported by NIH award U01MH114825 to A.R.K., F31NS118934 to C.S.E., and F32NS103266, K99NS111731, and L’Oreal For Women in Science Award through the AAAS to A.B.
Footnotes
Competing Interest
A.R.K. is a co-founder, consultant, and director of Neurona Therapeutics. The remaining authors have no competing financial and non-financial interests to declare.
Code Availability
All code and datasets used in this study, along with single-cell and spatial transcriptomics browsers are available at kriegsteinlab.ucsf.edu/datasets/arealization and https://github.com/carmensandoval/singlecell-neocortex-arealization.
Data Availability
The data analyzed in this study were produced through the Brain Initiative Cell Census Network (BICCN: RRID:SCR_015820) and deposited in the NeMO Archive (RRID:SCR_002001). All counts matrices are freely available at https://data.nemoarchive.org/biccn/grant/u01_devhu/kriegstein/transcriptome/scell/10x_v2/human/processed/counts/.
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Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Supplementary Materials
Data Availability Statement
The data analyzed in this study were produced through the Brain Initiative Cell Census Network (BICCN: RRID:SCR_015820) and deposited in the NeMO Archive (RRID:SCR_002001). All counts matrices are freely available at https://data.nemoarchive.org/biccn/grant/u01_devhu/kriegstein/transcriptome/scell/10x_v2/human/processed/counts/.