Robustness of single-cell RNA-seq for identifying differentially expressed genes

被引:0
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作者
Yong Liu
Jing Huang
Rajan Pandey
Pengyuan Liu
Bhavika Therani
Qiongzi Qiu
Sridhar Rao
Aron M. Geurts
Allen W. Cowley
Andrew S. Greene
Mingyu Liang
机构
[1] Medical College of Wisconsin, Department of Physiology, Center of Systems Molecular Medicine
[2] University of Arizona College of Medicine – Tucson,Department of Physiology
[3] Sir Run Run Shaw Hospital,Key Laboratory of Precision Medicine in Diagnosis and Monitoring Research of Zhejiang Province
[4] Zhejiang University School of Medicine,Cancer Center
[5] Zhejiang University,Institute of Translational Medicine
[6] Zhejiang University School of Medicine,Department of Cell Biology, Neurobiology, and Anatomy
[7] Versiti Blood Research Institute,Division of Pediatric Hematology/Oncology/Transplantation
[8] Medical College of Wisconsin,undefined
[9] Medical College of Wisconsin,undefined
[10] The Jackson Laboratory,undefined
来源
BMC Genomics | / 24卷
关键词
RNA-seq; Gene expression; Stem cell; Single cell;
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