| Literature DB >> 30865899 |
Zhou Fang1, Chen Weng1, Haiyan Li1, Ran Tao2, Weihua Mai3, Xiaoxiao Liu1, Leina Lu1, Sisi Lai1, Qing Duan4, Carlos Alvarez5, Peter Arvan6, Anthony Wynshaw-Boris1, Yun Li4, Yanxin Pei2, Fulai Jin7, Yan Li8.
Abstract
Identification of human disease signature genes typically requires samples from many donors to achieve statistical significance. Here, we show that single-cell heterogeneity analysis may overcome this hurdle by significantly improving the test sensitivity. We analyzed the transcriptome of 39,905 single islets cells from 9 donors and observed distinct β cell heterogeneity trajectories associated with obesity or type 2 diabetes (T2D). We therefore developed RePACT, a sensitive single-cell analysis algorithm to identify both common and specific signature genes for obesity and T2D. We mapped both β-cell-specific genes and disease signature genes to the insulin regulatory network identified from a genome-wide CRISPR screen. Our integrative analysis discovered the previously unrecognized roles of the cohesin loading complex and the NuA4/Tip60 histone acetyltransferase complex in regulating insulin transcription and release. Our study demonstrated the power of combining single-cell heterogeneity analysis and functional genomics to dissect the etiology of complex diseases.Entities:
Keywords: CRISPR screen; Cellular heterogeneity; Drop-seq; bioinformatics; diabetes; functional genomics; obesity; pancreatic islet; single cell; β cell
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Year: 2019 PMID: 30865899 PMCID: PMC6573026 DOI: 10.1016/j.celrep.2019.02.043
Source DB: PubMed Journal: Cell Rep Impact factor: 9.423