生物
染色质
电池类型
计算生物学
遗传学
转录因子
SMARCA4型
骨骼肌
转录组
细胞
基因
基因表达
解剖
染色质重塑
作者
Peter Orchard,Nandini Manickam,Christa Ventresca,Swarooparani Vadlamudi,Arushi Varshney,Vivek Rai,Jeremy Kaplan,Claudia Lalancette,Karen L. Mohlke,Katherine Gallagher,Charles Burant,Stephen C. J. Parker
出处
期刊:Genome Research
[Cold Spring Harbor Laboratory Press]
日期:2021-11-23
卷期号:31 (12): 2258-2275
被引量:50
标识
DOI:10.1101/gr.268482.120
摘要
Skeletal muscle accounts for the largest proportion of human body mass, on average, and is a key tissue in complex diseases and mobility. It is composed of several different cell and muscle fiber types. Here, we optimize single-nucleus ATAC-seq (snATAC-seq) to map skeletal muscle cell-specific chromatin accessibility landscapes in frozen human and rat samples, and single-nucleus RNA-seq (snRNA-seq) to map cell-specific transcriptomes in human. We additionally perform multi-omics profiling (gene expression and chromatin accessibility) on human and rat muscle samples. We capture type I and type II muscle fiber signatures, which are generally missed by existing single-cell RNA-seq methods. We perform cross-modality and cross-species integrative analyses on 33,862 nuclei and identify seven cell types ranging in abundance from 59.6% to 1.0% of all nuclei. We introduce a regression-based approach to infer cell types by comparing transcription start site-distal ATAC-seq peaks to reference enhancer maps and show consistency with RNA-based marker gene cell type assignments. We find heterogeneity in enrichment of genetic variants linked to complex phenotypes from the UK Biobank and diabetes genome-wide association studies in cell-specific ATAC-seq peaks, with the most striking enrichment patterns in muscle mesenchymal stem cells (∼3.5% of nuclei). Finally, we overlay these chromatin accessibility maps on GWAS data to nominate causal cell types, SNPs, transcription factor motifs, and target genes for type 2 diabetes signals. These chromatin accessibility profiles for human and rat skeletal muscle cell types are a useful resource for nominating causal GWAS SNPs and cell types.
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