Single-cell expression profiling reveals dynamic flux of cardiac stromal, vascular and immune cells in health and injury

  1. Nona Farbehi
  2. Ralph Patrick
  3. Aude Dorison
  4. Munira Xaymardan
  5. Vaibhao Janbandhu
  6. Katharina Wystub-Lis
  7. Joshua WK Ho
  8. Robert E Nordon  Is a corresponding author
  9. Richard P Harvey  Is a corresponding author
  1. Victor Chang Cardiac Research Institute, Australia
  2. University of Melbourne, Australia
  3. Garvan Institute of Medical Research, Australia
  4. UNSW Sydney, Australia
  5. University of Sydney, Westmead Hospital, Australia
9 figures, 1 table and 13 additional files

Figures

Figure 1 with 8 supplements
TIP scRNA-seq.

(A) t-SNE plots showing detected lineages and sub-populations in TIP across conditions. (B) t-SNE plot of aggregate TIP cells with identified sub-populations. (C) Dendrogram of sub-populations according to average RNA expression. (D) Expression of select marker genes across TIP cells as visualized on t-SNE plots. (E) Cell population percentages across conditions determined to be significantly modulated according to Differential Proporation Analysis (DPA) (p<0.01).

https://doi.org/10.7554/eLife.43882.003
Figure 1—figure supplement 1
Experimental procedures, population proportions and gene expression characterstics of sub-populations within TIP scRNA-seq.

(A) Diagram of experimental procedures. (B) Percentage of total cells in each cell-population according to experimental condition. (C) Percentage of total cells in clusters as grouped together according to high-level cell type and as according to experimental condition. (D) Dot plot showing expression of top upregulated genes across TIP populations. (E, F) Box plot showing number of UMIs (E) and genes (F) detected across TIP sub-populations after quality control filtering.

https://doi.org/10.7554/eLife.43882.004
Figure 1—figure supplement 2
Gene expression data for TIP sub-populations.

(A) Distribution of Pdgfra and Pdgfra-GFP expression across cell populations in TIP. (B) Expression of selected endothelial markers as visualized in box and t-SNE plots. (C) Expression of selected cell cycle marker genes on t-SNE plots. (D) Dot plot visualization according to condition of top marker genes for lymphoid lineage populations.

https://doi.org/10.7554/eLife.43882.005
Figure 1—figure supplement 3
Differential proportion analysis (DPA) procedure and evaluation.

(A,B) Procedure for performing DPA. (C) Percentage of cell populations between sham conditions from GFP+ cohort. (D) Comparisons of p-values from Fisher’s exact test and DPA for evaluating proportion changes between sham experiments. (E) Comparisons of specificity for Fisher’s exact test and DPA on control replicate simulation experiment. (F–H) Sensitivity, specificity and precision for simulated control vs condition experiments with comparisons between Fisher’s exact test and DPA.

https://doi.org/10.7554/eLife.43882.006
Figure 1—figure supplement 4
Clustering of TIP scRNA-seq prior to removal of minor hybrid populations.

(A) t-SNE plot of aggregate TIP cells with all identified 29 sub-populations prior to filtering of minor hybrid populations. (B) Dendrogram of all 29 sub-populations according to average RNA expression. (C) Expression of example marker genes that illustrate hybrid populations (F-EC, M2MΦ-EC, EC-L1, EC-L2 and BC-TC) as visualized in box and t-SNE plots. (E) Percentage of total cells in each sub-population according to experimental condition.

https://doi.org/10.7554/eLife.43882.007
Figure 1—figure supplement 5
A typical workflow of sequential gating strategy for doublet exclusion is shown.

(A) Scatter gate, FSC-A vs SSC-A, was plotted to exclude cell debris; the three subsequent ‘doublet discrimination’ gating strategies to exclude doublets are: (B) FSC-H vs FSC-A plot, (C) FSC-H vs FSC-W and (D) SSC-H vs SSC-W. Blue and red gates depict ‘single cell’ and ‘doublet’ events, respectively. Only the cells in the blue gates were sorted and/or analyzed. The scatter profiles of putative doublets (red dots) are also illustrated in panel (C) and (D).

https://doi.org/10.7554/eLife.43882.008
Figure 1—figure supplement 6
FACS data supporting F-EC population.

FACS plots showing expression of GFP or CD31 (axis label) in the (A) wild type sample stained with isotype control antibody; (B) wild type sample stained with anti-CD31 antibody; (C) PdfgraGFP/+ sample stained with isotype control antibody; (D, E) PdfgraGFP/+ sample stained with anti-CD31 antibody 7 days after Sham (D) or MI (E) surgery. Numbers indicate percentage of GFP+CD31+ double positive cells in live single cells in respective plot (mean numbers indicated).

https://doi.org/10.7554/eLife.43882.009
Figure 1—figure supplement 7
FACS data supporting the M2 MΦ -EC population.

FACS plots showing expression of indicated antigen (axis label) in the (A) wild type sample stained with isotype control antibodies and PdfgraGFP/+ sample stained with indicated antibodies 7 days after Sham (B) or MI (C) surgery.

Numbers indicate percentage of gated cells in live single cells in respective analyses (mean numbers indicated).

https://doi.org/10.7554/eLife.43882.010
Figure 1—figure supplement 8
Atrial Fibrilation (AF) associated genes in TIP.

Overlap of genes associated with AF from Roselli et al. (2018) and genes upregulated in TIP sub-populations with log2 fold-change >1. Displayed are genes upregulated in EC (top) or mural (bottom) cell sub-populations with expression visualized in box and t-SNE plots. Key indicates the location of sub-populations on the t-SNE plot.

https://doi.org/10.7554/eLife.43882.011
Figure 2 with 1 supplement
Cardiac Mo/MΦ populations.

(A) t-SNE plot showing extracted Mo/MΦ populations. (B) Expression of select immune cell markers as visualized in box-plots and t-SNE plots. Arrows indicate Ccr2low sub-population of M2MΦ. (C) Dot-plot of top upregulated genes for each Mo/MΦ population where color indicates experimental conditions. (D) Heatmap of differentially expressed genes between Mo/MΦ populations with representative significant GO Biological Process terms.

https://doi.org/10.7554/eLife.43882.013
Figure 2—figure supplement 1
Mo and MΦ marker genes and Diffusion Map analysis.

(A) Expression of selected genes marking Mo and MΦ sub-populations visualized using box and t-SNE plots. (B) Expression of H2-Aa (MHC-II) and Igf1 between sub-populations of M2MΦ defined according to Ccr2 expression (Ccr2high and Ccr2low) as visualized in box-plots. (C) Major Mo/MΦ populations visualized on diffusion components 1–3.

https://doi.org/10.7554/eLife.43882.014
Figure 3 with 1 supplement
Cell-cell ligand-receptor network analysis.

(A) Hierarchical network diagram of significant cell-cell interaction pathways. Arrows and edge color indicates direction (ligand:receptor) and edge thickness indicates the sum of weighted paths between populations. (B) Comparison of total incoming path weights vs total outgoing path weights across populations. (C) Summed ligand weights across souce ligand and receptor target paths for top ligands in MYO. (D) Tree plot showing outgoing connections from the Glial cells. Top node refers to source population, second layer to ligands, third layer to receptors and leaf nodes represent target populations.

https://doi.org/10.7554/eLife.43882.015
Figure 3—figure supplement 1
Pdgfra-GFP+ cells localization in healthy and diseased hearts.

(A–B) Representative image of GFP (green) and CD31 (red) co-immunostainings in sham (A) and MI-day 3 (B) hearts. Arrowheads show GFP+ cells in close proximity/contact with CD31+ cells. Scale bar - 20 μm.

https://doi.org/10.7554/eLife.43882.016
Figure 4 with 5 supplements
Pdgfa-GFP+ scRNA-seq.

(A) t-SNE plot of GFP+ cells separated according to experimental condition (sham, MI-day 3, MI-day 7). (B) t-SNE plot showing aggregate of GFP+ cells across conditions. (C) Dendrogram of populations determined by average RNA expression in populations. (D) Percentages of cells in each population according to experimental condition. Stars indicate significant change across conditions according to DPA (p<0.01). (E) Expression of select genes in different populations as visualized in box and t-SNE plots. (F) Dot-plot of top five upregulated genes for each population where color indicates strength of expression and size of dot represents percentage of cells expressing the gene.

https://doi.org/10.7554/eLife.43882.017
Figure 4—source data 1

Source data for quantification of colony counts summarized in Figure 4—figure supplement 2E.

https://doi.org/10.7554/eLife.43882.023
Figure 4—figure supplement 1
FACS profiles and scRNA-seq analysis for GFP+/CD31- cells.

(A) FACS plots and gating strategies for sorting GFP+/CD31- population at 7 days post-sham or MI surgery. (B) FACS plots showing SCA1 expression profiles in GFP+/CD31- cells at 7 days post-sham or MI surgery. (C) Boxplot showing number of UMIs detected per-cell across experimental conditions in GFP+/CD31- fraction after quality control filtering. (D) Boxplot showing number of genes detected per-cell across experimental conditions in GFP+/CD31- fraction after quality control filtering. (E) t-SNE visualization of scRNA-seq clusters for all sham and MI time-points in GFP+/CD31- cells. (F) Cell population proportions across all experimental conditions.

https://doi.org/10.7554/eLife.43882.018
Figure 4—figure supplement 2
Comparison of GFP+ populations with FACS-sorted S+P+ cells.

(A) ROC curves showing prediction accuracy of iRF classifier for predicting populations in sham cells. ROC calculated across a 10-fold cross-validation test. (B) Counts of iRF predicted cell identities across two scRNA-seq (Fluidigm) experiments on S+P+ cells. (C) Thy1 expression across conditions. (D) Distribution of Thy1.2 (CD90.2) protein expression by FACS in S+Pdgfra-GFP+cells. (E) Colony counts comparing S+Pdgfra-GFP+ with Thy1.2 fractions (low vs high) isolated by FACS (n = 3). Indicated p-values are derived from Student’s t-test.

https://doi.org/10.7554/eLife.43882.019
Figure 4—figure supplement 3
Expression of selected marker genes across GFP+ populations visualized in box and t-SNE plots.

Circles indicate relevant population for the displayed marker.

https://doi.org/10.7554/eLife.43882.020
Figure 4—figure supplement 4
Population-specific expression of transcription factors marking fibroblast and myofibroblast sub-populations.
https://doi.org/10.7554/eLife.43882.021
Figure 4—figure supplement 5
Comparisons with Skelly et al. (2018) and Gladka et al. (2018) scRNA-seq data-sets.

(A–C) Reanalysis of Skelly et al. scRNA-seq data. (A) t-SNE plot showing main fibroblast populations detected from clustering analysis and identities according to those described in GFP+. (B) iRF predictions of GFP+ sham populations on fibroblasts from Skelly et al. data-set. (C) Expression of representative marker genes according to box plots and as visualized on t-SNE plots. Shows fibroblast markers (Pdgfra, Ddr2, Col1a1) and sub-population-specific markers. (D) Expression of Ckap4 gene, which was identified by Gladka et al. as a novel marker of activated fibroblasts, as visualized in box and t-SNE plots across TIP and GFP+ sub populations.

https://doi.org/10.7554/eLife.43882.022
Figure 5 with 1 supplement
Features of the F-WntX population.

(A) Differentially expressed genes in F-WntX overlaid on Wnt pathway maps. Wnt node includes genes Wnt5a and Wnt16. (B) Detection rate, representing the percentage of cells expressing a gene, across all conditions for cells in F-WntX or all GFP+ cells combined. (C) Example GO BP terms over-represented (FDR < 0.05) in genes upregulated in F-WntX compared to F-SL/F-SH populations. (D) Tree plot showing ligand-receptor connections from F-WntX to EC sub-populations as calculated in TIP. Top node refers to source population, second layer to ligands, third layer to receptors and leaf nodes represent target populations. (E) Examples of F-WntX:EC ligand and corresponding receptor expression as visualised in box and t-SNE plots. For each ligand the corresponding receptor is immediately below.

https://doi.org/10.7554/eLife.43882.024
Figure 5—figure supplement 1
Activation and paracrine signature of F-WntX cells.

(A) Expression of markers of activation visualized on condition-specific t-SNE plots. (B) GO Molecular Function terms over-represented (FDR < 0.05) in genes upregulated in F-WntX compared to F-SL/F-SH. (C, D) Venn diagram of overlap between F-WntX marker genes in ‘Regulation of cell proliferation’ category and MF categories ‘Signaling receptor binding’ (C) and ‘Growth factor binding’ (D). (E) Examples of ligands upregulated in F-WntX and corresponding receptors as expressed in TIP and visualized in box and t-SNE plots. For each ligand the corresponding receptor is immediately below. Circle indicates the location of F-WntX on the t-SNE plot.

https://doi.org/10.7554/eLife.43882.025
Figure 6 with 2 supplements
WIF1 localization and co-expression in injured and uninjured hearts of Pdgfra-GFP+ mice.

(A) Representative image of WIF1 (red), GFP (green) and Wheat Germ Agglutinin (WGA, grey) co-immunostaining showing the border zone at MI-day 3. Arrowheads show WIF1+ cells. Scale bar - 50 μm. (B–C) Representative images of WIF1 (red) and GFP (green) co-immunostainings showing left ventricle (sham, (B) or infarcted border zone at MI-day 3 (C). Arrowheads show WIF1+ cells, Asterix shows WIF1+GFP+ cells. Scale bars - 20 μm. (D–G) Representative images of co-immunostainings for WIF1 (red), GFP (green) and markers (gray) for golgi (GM130, D, Arrowheads show WIF1+GM130+ cells), proliferation (Ki67, E, Arrowheads show WIF1+Ki67+ cells), smooth muscle cells and myofibroblasts (α-SMA, F, (F’) showing an example of a WIF1+GFP+α-SMA+ cell from another section), and leukocytes (CD45, G, Arrowheads show WIF1+CD45+ cells, Asterix shows GFP+CD45+ cells). Scale bar - 20 μm. (H) Representative image of co-immunostaining for WIF1 (green), WGA (gray) and endothelial cell marker CD31 (green). Arrowheads show WIF1+ cells in close proximity/contact with CD31+ cells. Scale bar - 20 μm. (I) Quantification of marker-positive cells in the infarcted border zone of MI-day 3 hearts. n = 4.

https://doi.org/10.7554/eLife.43882.026
Figure 6—source data 1

Source data for quantification of marker-positive cells summarized in Figure 6I.

https://doi.org/10.7554/eLife.43882.029
Figure 6—figure supplement 1
WIF1 expression pattern in E14.5 embryos.

Representatives images of sagittal sections of E14.5 embryos immunostained with WIF1 (red) antibody. Scale bar is 50 μm.

https://doi.org/10.7554/eLife.43882.027
Figure 6—figure supplement 2
WIF1 protein expression after sham or MI.

(A–D) Representative images of WIF1 (red) and GFP (green) co-immunostainings in the left ventricle (sham, A) or in the infarcted border zone of hearts, 1 (B), 3 (C) or 7 (D) days after surgery. Arrowheads show WIF1+ cells, Asterix shows WIF1+GFP+ cell. Scale bar - 20 μm.

https://doi.org/10.7554/eLife.43882.028
Diffusion Map analysis of GFP+ cells.

(A) 3D Diffusion Map of main fibroblast/myofibroblast populations with cells colored according to population. (B) 2D Diffusion Map facetted according to experimental condition. (C) Expression of marker genes on main trajectories of diffusion components across conditions. (D) Heatmap of differentially expressed genes with representative GO Biological Process terms.

https://doi.org/10.7554/eLife.43882.030
Figure 8 with 1 supplement
Time-point-specific analysis of GFP+ scRNA-seq.

(A,B) t-SNE visualization of GFP+ populations 3 days post sham/MI (A) and 7 days post sham/MI (B). (C,D) 3D Diffusion Map analysis of day 3 major populations (C) and day 7 major populations (D). (E) Heatmap of upregulated genes in day 3 injury-response populations. (F) Heatmap of differentially expressed genes between myofibroblast sub-populations. (G) Gene expression visualized in box and t-SNE plots for myofibroblast sub-population marker genes.

https://doi.org/10.7554/eLife.43882.031
Figure 8—figure supplement 1
Reanalysis of GFP-day 3 and GFP-day 7 data-sets separately.

(A) Expression of F-CI marker genes on GFP-day 3 dot plot (B) AUC, sensitivity, specificity and precision for iRF classifier trained to predict GFP-day 3 cell populations after 10-fold cross-validation. (C) iRF prediction scores for GFP-day 7 cells as visualized on t-SNE plots. (D) Counts of GFP-day 7 cells predicted to correspond to GFP-day 3 populations as determined by iRF prediction (score >0.5). (E) Percentage of GFP-day 3 F-Cyc cells reassigned to alternative populations after removing cell cycle genes. (F) Percentage of GFP-day 7 F-Cyc cells reassigned to alternative populations after removing cell cycle genes. (G) 2D Diffusion Map plot of F-Act, MYO-1, MYO-2 and MYO-3 from the GFP-day 7 data-set.

https://doi.org/10.7554/eLife.43882.032
Schematic summary of the flux and pseudotime differentiation dynamics of GFP+ populations between sham, MI-day 3 and MI-day 7.

Populations are ordered in pseudotime from unactivated (top) to most activated/mature (bottom). Arrows connecting populations indicate direction of proposed differentiation/pseudotime trajectory. Colored arrows indicate whether the population appears to expand or diminish relative to the previous time-point.

https://doi.org/10.7554/eLife.43882.033

Tables

Key resources table
Reagent type
(species) or resource
DesignationSource or referenceIdentifiersAdditional information
Gene (Mus musculus)PdgfraNCBINCBI Gene ID: 18595,
MGI:97530
Strain, strain
background
(Musmusculus, C57BL/6J)
Wild type, WTThe Jackson Laboratory,
Stock Number: 000664,
RRID:IMSR:JAX:000664
Strain, strain
background
(Musmusculus, C57BL/6J)
Pdgfratm11(EGFP)Sor; PDGFRaGFP/+The Jackson Laboratory,
Stock Number: 007669,
PMID: 12748302
MGI:2663656
AntibodyAPC-conjugated Rat
monoclonal anti-mouse
PDGFRa (CD140a)
eBioscience17-1401-81,
Clone APA5
(1:200)
AntibodyPE-Cy7-conjugated Rat
monoclonal anti-mouse
CD31 (PECAM-1)
eBioscience25-0311-82,
Clone 390
(1:400)
AntibodyPE-conjugated Rat
monoclonal anti-mouse
Sca1 (Ly6A/E)
BD Pharmingen553108,
Clone D7
(1:400)
AntibodyAPC-Cy7-conjugated Rat
monoclonal anti-mouse
CD45
BD Pharmingen557659,
Clone 30-F11
(1:400)
AntibodyPE-conjugated Rat
monoclonal anti-mouse
F4/80
eBioscience12-4801-82,
Clone BM8
(1:400)
AntibodyAPC-conjugated Rat
monoclonal anti-mouse
CD206 (MMR) Antibody
BioLegend141708,
Clone C068C2
(1:200)
AntibodyChicken polyclonal
anti-GFP
Abcamab13970(1:200)
AntibodyRabbit polyclonal
anti-Wif1
Abcamab186845(1:1000)
AntibodyRat monoclonal
anti-CD31
DianovaDIA-310,
Clone SZ31
(1:100)
AntibodyRat monoclonal
anti-CD45
BD Biosciences553076,
Clone 30-F11
(1:100)
AntibodyMouse monoclonal
anti-aSMA
SigmaA2547,
Clone 1A4
(1:100)
AntibodyRat monoclonal
anti-Ki67
DakoM7249,
Clone TEC-3
(1:100)
AntibodyMouse monoclonal
anti-GM130
BD Biosciences610822,
Clone 35/GM130
(1:400)
AntibodyGoat polyclonal
anti-Chicken Alexa 488
Life TechnologiesA11039(1:500)
AntibodyGoat polyclonal
anti-Rabbit Alexa 555
Life TechnologiesA21429(1:500)
AntibodyGoat polyclonal
anti-Rabbit Alexa 680
Life TechnologiesA21109(1:500)
AntibodyGoat polyclonal
anti-Rat Alexa 555
Life TechnologiesA21434(1:500)
AntibodyDonkey polyclonal
anti-Mouse Alexa 594
Life TechnologiesA21203(1:500)
AntibodyAPC-conjugated Rat
monoclonal
anti-mouse PDGFRa
(CD140a)
eBioscience17-1401-81,
Clone APA5
(1:200)
Commercial
assay or kit
Chromium Single Cell
30 Library and Gel
Bead Kit v2
10x Genomics120237
Commercial
assay or kit
Chromium Single
Cell A Chip Kit
10x Genomics120236
Commercial
assay or kit
Chromium i7 Multiplex Kit10x Genomics120262
Commercial
assay or kit
Nextera XT DNA
Sample Preparation
Kit (96 Samples)
IlluminaFC-131–1096
Commercial
assay or kit
Nextera XT Index Kit v2IlluminaFC-131–2001
Commercial
assay or kit
Fluidigm Single-Cell
Auto Prep IFC chip
(5–10 um)
Fluidigm100–5759
Commercial
assay or kit
SMART-Seq v4 Ultra
Low Input RNA Kit for
the Fluidigm C1 System
Takara635026
Commercial
assay or kit
NextSeq 500/550
High Output Kit v2
IlluminaFC-404–2002
OtherLIVE/DEAD Viability/Cytoxicity
Kit, for mammalian cells
Thermo Fisher
Scientific
L-3224
Software, algorithmCellRanger10x Genomicshttps://support.10xgenomics.com/single-cell-gene-expression/software/downloads/latest
Software, algorithmSTARPMID: 23104886https://github.com/alexdobin/STAR;
RRID: SCR_015899
Software, algorithmBowtie 2PMID: 22388286http://bowtie-bio.sourceforge.net/bowtie2/index.shtml;
RRID:SCR_005476
Software, algorithmfeatureCountsPMID: 24227677http://subread.sourceforge.net;
RRID:SCR_012919
Software, algorithmSeuratPMID: 29608179https://satijalab.org/seurat/;
RRID: SCR_007322
Software, algorithmDestinyPMID: 26668002https://bioconductor.org/packages/release/bioc/html/destiny.html
Software, algorithmPANTHERPMID: 27899595http://www.pantherdb.org;
RRID:SCR_004869
Software, algorithmIterative Random ForestPMID: 29351989https://cran.r-project.org/web/packages/iRF/index.html
Software, algorithmDifferential Proportion
Analysis
This paperSource code 1Materials and methods:
Differential proportion analysis
Software, algorithmCell communication
analysis
This paperSource code 1Materials and methods:
Ligand-receptor networks

Additional files

Source code 1

R code for processing and clustering of scRNA-seq data-sets, differential proportion analysis and cell communication network analysis.

https://doi.org/10.7554/eLife.43882.034
Supplementary file 1

Differentially expressed genes across TIP sub-populations.

https://doi.org/10.7554/eLife.43882.035
Supplementary file 2

Differential proportion analysis p-value results for TIP and GFP+ sub-populations.

https://doi.org/10.7554/eLife.43882.036
Supplementary file 3

Differentially expressed genes between Mo/MΦ sub-populations in TIP.

https://doi.org/10.7554/eLife.43882.037
Supplementary file 4

Differentially expressed genes across GFP+ sub-populations.

https://doi.org/10.7554/eLife.43882.038
Supplementary file 5

Differentially expressed genes across GFP+ Diffusion Map trajectories.

https://doi.org/10.7554/eLife.43882.039
Supplementary file 6

GO Biological Process terms associated with GFP+ trajectory differentially expressed genes.

https://doi.org/10.7554/eLife.43882.040
Supplementary file 7

Differentially expressed genes from GFP+ day 3 injury response populations.

https://doi.org/10.7554/eLife.43882.041
Supplementary file 8

GO Biological Process terms associated with GFP+ day 3 injury response populations according to Diffusion Map trajectory: F-Act, F-CI and F-Cyc.

https://doi.org/10.7554/eLife.43882.042
Supplementary file 9

Differentially expressed genes between myofibroblast sub-populations in GFP+ day 7 scRNA-seq.

https://doi.org/10.7554/eLife.43882.043
Supplementary file 10

GO Biological Process terms associated with myofibroblast sub-populations in GFP+ day 7 scRNA-seq.

https://doi.org/10.7554/eLife.43882.044
Supplementary file 11

Spearman correlation test comparisons between TGF-β -treated cardiac fibroblast RNA-seq and GFP+ day 7 sub-populations.

https://doi.org/10.7554/eLife.43882.045
Transparent reporting form
https://doi.org/10.7554/eLife.43882.046

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  1. Nona Farbehi
  2. Ralph Patrick
  3. Aude Dorison
  4. Munira Xaymardan
  5. Vaibhao Janbandhu
  6. Katharina Wystub-Lis
  7. Joshua WK Ho
  8. Robert E Nordon
  9. Richard P Harvey
(2019)
Single-cell expression profiling reveals dynamic flux of cardiac stromal, vascular and immune cells in health and injury
eLife 8:e43882.
https://doi.org/10.7554/eLife.43882