Single-Nucleus Sequencing of an Entire Mammalian Heart: Cell Type Composition and Velocity.
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IF: 7.666
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Cited by: 25
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Abstract

: Analyses on the cellular level are indispensable to expand our understanding of complex tissues like the mammalian heart. Single-nucleus sequencing (snRNA-seq) allows for the exploration of cellular composition and cell features without major hurdles of single-cell sequencing. We used snRNA-seq to investigate for the first time an entire adult mammalian heart. Single-nucleus quantification and clustering led to an accurate representation of cell types, revealing 24 distinct clusters with endothelial cells (28.8%), fibroblasts (25.3%), and cardiomyocytes (22.8%) constituting the major cell populations. An additional RNA velocity analysis allowed us to study transcription kinetics and was utilized to visualize the transitions between mature and nascent cellular states of the cell types. We identified subgroups of cardiomyocytes with distinct marker profiles. For example, the expression of Hand2os1 distinguished immature cardiomyocytes from differentiated cardiomyocyte populations. Moreover, we found a cell population that comprises endothelial markers as well as markers clearly related to cardiomyocyte function. Our velocity data support the idea that this population is in a trans-differentiation process from an endothelial cell-like phenotype towards a cardiomyocyte-like phenotype. In summary, we present the first report of sequencing an entire adult mammalian heart, providing realistic cell-type distributions combined with RNA velocity kinetics hinting at interrelations.

Keywords

Seurat
Gene Expression
RNA velocity
cardiomyocytes
cluster analysis
seurat
snRNA-seq

MeSH terms

Animals
Biomarkers
Cell Nucleus
Gene Expression Regulation
Male
Mammals
Mice
Myocardium
Single-Cell Analysis
Transcriptome

Authors

Wolfien, Markus
Galow, Anne-Marie
Müller, Paula
Bartsch, Madeleine
Brunner, Ronald M
Goldammer, Tom
Wolkenhauer, Olaf
Hoeflich, Andreas
David, Robert

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