Integrative analyses of single-cell transcriptome and regulome using MAESTRO

Chenfei Wang(Dana-Farber Cancer Institute), Dongqing Sun(Tongji University), Xin Huang(Beijing Radiation Center), Changxin Wan(Tongji University), Ziyi Li(Tongji University), Ya Han(Tongji University), Qian Qin(Tongji University), Jing‐Yu Fan(Tongji University), Xintao Qiu(Harvard University), Yingtian Xie(Harvard University), Clifford A. Meyer(Dana-Farber Cancer Institute), Myles Brown(Harvard University), Ming Tang(Dana-Farber Cancer Institute), Henry W. Long(Harvard University), Tao Liu(Roswell Park Comprehensive Cancer Center), X. Shirley Liu(Dana-Farber Cancer Institute)
Genome biology
August 7, 2020
Cited by 214Open Access
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Abstract

We present Model-based AnalysEs of Transcriptome and RegulOme (MAESTRO), a comprehensive open-source computational workflow ( http://github.com/liulab-dfci/MAESTRO ) for the integrative analyses of single-cell RNA-seq (scRNA-seq) and ATAC-seq (scATAC-seq) data from multiple platforms. MAESTRO provides functions for pre-processing, alignment, quality control, expression and chromatin accessibility quantification, clustering, differential analysis, and annotation. By modeling gene regulatory potential from chromatin accessibilities at the single-cell level, MAESTRO outperforms the existing methods for integrating the cell clusters between scRNA-seq and scATAC-seq. Furthermore, MAESTRO supports automatic cell-type annotation using predefined cell type marker genes and identifies driver regulators from differential scRNA-seq genes and scATAC-seq peaks.


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