Single cell RNA-seq and ATAC-seq analysis of cardiac progenitor cell transition states and lineage settlement

Guangshuai Jia(Max Planck Institute for Heart and Lung Research), Jens Preussner(Max Planck Institute for Heart and Lung Research), Xi Chen(Wellcome Sanger Institute), Stefan Günther(Max Planck Institute for Heart and Lung Research), Xuejun Yuan(Max Planck Institute for Heart and Lung Research), Michail Yekelchyk(Max Planck Institute for Heart and Lung Research), Carsten Kuenne(Max Planck Institute for Heart and Lung Research), Mario Looso(Max Planck Institute for Heart and Lung Research), Yonggang Zhou(Max Planck Institute for Heart and Lung Research), Sarah A. Teichmann(European Bioinformatics Institute), Thomas Braun(Max Planck Institute for Heart and Lung Research)
Nature Communications
November 13, 2018
Cited by 227Open Access
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Abstract

Abstract Formation and segregation of cell lineages forming the heart have been studied extensively but the underlying gene regulatory networks and epigenetic changes driving cell fate transitions during early cardiogenesis are still only partially understood. Here, we comprehensively characterize mouse cardiac progenitor cells (CPCs) marked by Nkx2-5 and Isl1 expression from E7.5 to E9.5 using single-cell RNA sequencing and transposase-accessible chromatin profiling (ATAC-seq). By leveraging on cell-to-cell transcriptome and chromatin accessibility heterogeneity, we identify different previously unknown cardiac subpopulations. Reconstruction of developmental trajectories reveal that multipotent Isl1 + CPC pass through an attractor state before separating into different developmental branches, whereas extended expression of Nkx2-5 commits CPC to an unidirectional cardiomyocyte fate. Furthermore, we show that CPC fate transitions are associated with distinct open chromatin states critically depending on Isl1 and Nkx2-5 . Our data provide a model of transcriptional and epigenetic regulations during cardiac progenitor cell fate decisions at single-cell resolution.


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