Comprehensive analysis of single cell ATAC-seq data with SnapATAC

Rongxin Fang(Harvard University), Sebastian Preißl(University of California San Diego), Yang Li(Ludwig Cancer Research), Xiaomeng Hou(University of California San Diego), Jacinta Lucero(Salk Institute for Biological Studies), Xinxin Wang(University of California San Diego), Amir Motamedi(Ludwig Cancer Research), Andrew K. Shiau(Ludwig Cancer Research), Xinzhu Zhou(University of California San Diego), Fangming Xie(University of California San Diego), Eran A. Mukamel(University of California San Diego), Kai Zhang(Ludwig Cancer Research), Yanxiao Zhang(Ludwig Cancer Research), M. Margarita Behrens(Salk Institute for Biological Studies), Joseph R. Ecker(Salk Institute for Biological Studies), Bing Ren(Ludwig Cancer Research)
Nature Communications
February 26, 2021
Cited by 483Open Access
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Abstract

Identification of the cis-regulatory elements controlling cell-type specific gene expression patterns is essential for understanding the origin of cellular diversity. Conventional assays to map regulatory elements via open chromatin analysis of primary tissues is hindered by sample heterogeneity. Single cell analysis of accessible chromatin (scATAC-seq) can overcome this limitation. However, the high-level noise of each single cell profile and the large volume of data pose unique computational challenges. Here, we introduce SnapATAC, a software package for analyzing scATAC-seq datasets. SnapATAC dissects cellular heterogeneity in an unbiased manner and map the trajectories of cellular states. Using the Nyström method, SnapATAC can process data from up to a million cells. Furthermore, SnapATAC incorporates existing tools into a comprehensive package for analyzing single cell ATAC-seq dataset. As demonstration of its utility, SnapATAC is applied to 55,592 single-nucleus ATAC-seq profiles from the mouse secondary motor cortex. The analysis reveals ~370,000 candidate regulatory elements in 31 distinct cell populations in this brain region and inferred candidate cell-type specific transcriptional regulators.


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