An integrative view of the regulatory and transcriptional landscapes in mouse hematopoiesis

Thousands of epigenomic data sets have been generated in the past decade, but it is difficult for researchers to effectively use all the data relevant to their projects. Systematic integrative analysis can help meet this need, and the VISION project was established for al dated ystematic ntegrati of...

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Veröffentlicht in:Genome research 2020-03, Vol.30 (3), p.472-484
Hauptverfasser: Xiang, Guanjue, Keller, Cheryl A, Heuston, Elisabeth, Giardine, Belinda M, An, Lin, Wixom, Alexander Q, Miller, Amber, Cockburn, April, Sauria, Michael E G, Weaver, Kathryn, Lichtenberg, Jens, Göttgens, Berthold, Li, Qunhua, Bodine, David, Mahony, Shaun, Taylor, James, Blobel, Gerd A, Weiss, Mitchell J, Cheng, Yong, Yue, Feng, Hughes, Jim, Higgs, Douglas R, Zhang, Yu, Hardison, Ross C
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Sprache:eng
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Zusammenfassung:Thousands of epigenomic data sets have been generated in the past decade, but it is difficult for researchers to effectively use all the data relevant to their projects. Systematic integrative analysis can help meet this need, and the VISION project was established for al dated ystematic ntegrati of epigenomic data in hematopoiesis. Here, we systematically integrated extensive data recording epigenetic features and transcriptomes from many sources, including individual laboratories and consortia, to produce a comprehensive view of the regulatory landscape of differentiating hematopoietic cell types in mouse. By using IDEAS as our ntegrative and iscriminative pigenome nnotation ystem, we identified and assigned epigenetic states simultaneously along chromosomes and across cell types, precisely and comprehensively. Combining nuclease accessibility and epigenetic states produced a set of more than 200,000 candidate -regulatory elements (cCREs) that efficiently capture enhancers and promoters. The transitions in epigenetic states of these cCREs across cell types provided insights into mechanisms of regulation, including decreases in numbers of active cCREs during differentiation of most lineages, transitions from poised to active or inactive states, and shifts in nuclease accessibility of CTCF-bound elements. Regression modeling of epigenetic states at cCREs and gene expression produced a versatile resource to improve selection of cCREs potentially regulating target genes. These resources are available from our VISION website to aid research in genomics and hematopoiesis.
ISSN:1088-9051
1549-5469
DOI:10.1101/gr.255760.119