2020
DOI: 10.1038/s41598-020-58327-6
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Systematic Comparison of High-throughput Single-Cell and Single-Nucleus Transcriptomes during Cardiomyocyte Differentiation

Abstract: A comprehensive reference map of all cell types in the human body is necessary for improving our understanding of fundamental biological processes and in diagnosing and treating disease. Highthroughput single-cell RNA sequencing techniques have emerged as powerful tools to identify and characterize cell types in complex and heterogeneous tissues. However, extracting intact cells from tissues and organs is often technically challenging or impossible, for example in heart or brain tissue. Single-nucleus RNA sequ… Show more

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Cited by 95 publications
(103 citation statements)
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“…Cell type heterogeneity has likely affected previous comparative studies of gene regulation that used primary tissue samples, including studies from our own lab. We and others have commented on this property of primary tissue comparisons in the past ( Avila Cobos et al, 2018 ; Blekhman et al, 2008 ; Newman et al, 2015 ; Selewa et al, 2020 ), but without single cell data it was impossible to effectively assess the magnitude of this effect. Our findings further underscore the need for single cell measurements to disentangle sources of variation in bulk RNA-seq data, especially from primary tissues.…”
Section: Discussionmentioning
confidence: 99%
“…Cell type heterogeneity has likely affected previous comparative studies of gene regulation that used primary tissue samples, including studies from our own lab. We and others have commented on this property of primary tissue comparisons in the past ( Avila Cobos et al, 2018 ; Blekhman et al, 2008 ; Newman et al, 2015 ; Selewa et al, 2020 ), but without single cell data it was impossible to effectively assess the magnitude of this effect. Our findings further underscore the need for single cell measurements to disentangle sources of variation in bulk RNA-seq data, especially from primary tissues.…”
Section: Discussionmentioning
confidence: 99%
“…In this context, single-nucleus RNA-seq has emerged as a complementary approach that relies on the unbiased assessment of nuclei from all cells present in a tissue [20,21,36]. The analysis of the nuclear transcriptome has been proven to be very powerful to study cell type diversity in the mouse and human tissues, including brain [21,[23][24][25][26][27]111]; spinal cord [50]; breast cancer [51]; kidney [29][30][31][32]; lung [28]; heart [33,34]; and a variety of human tumor samples [36].…”
Section: Discussionmentioning
confidence: 99%
“…Single-nucleus RNA-seq (snRNA-seq) has emerged as a complementary approach to study complex tissues at a single-cell level [20,21], including brain [21][22][23][24][25][26][27], lung [28], kidney [29][30][31][32] and heart [33,34] in mouse and human frozen samples [35,36]. However, there are no snRNA-seq methods tailored for frozen liver tissues.…”
Section: Introductionmentioning
confidence: 99%
“…Since cardiomyocytes (CM) are too large for many cell sorting approaches, single nucleus RNAseq can be applied, which involves isolating the nucleus rather than the whole cell prior to sequencing. The transcriptional profile of single cell and single nucleus RNAseq has been reported to be comparable during CM differentiation [74]. As the transcriptional profiles of mono-and polynucleated CM were reported to be similar [75], application of single nucleus RNAseq on cardiac tissue is encouraged.…”
Section: Single-cell Rnaseqmentioning
confidence: 99%