| Literature DB >> 35609992 |
Kaixuan Luo1,2,3,4, Jianling Zhong1,2,3, Alexias Safi2,5, Linda K Hong2,5, Alok K Tewari6, Lingyun Song2,5, Timothy E Reddy1,2,7,8,9, Li Ma1,10, Gregory E Crawford1,2,5, Alexander J Hartemink1,2,3,11.
Abstract
Over a thousand different transcription factors (TFs) bind with varying occupancy across the human genome. Chromatin immunoprecipitation (ChIP) can assay occupancy genome-wide, but only one TF at a time, limiting our ability to comprehensively observe the TF occupancy landscape, let alone quantify how it changes across conditions. We developed TF occupancy profiler (TOP), a Bayesian hierarchical regression framework, to profile genome-wide quantitative occupancy of numerous TFs using data from a single chromatin accessibility experiment (DNase- or ATAC-seq). TOP is supervised, and its hierarchical structure allows it to predict the occupancy of any sequence-specific TF, even those never assayed with ChIP. We used TOP to profile the quantitative occupancy of hundreds of sequence-specific TFs at sites throughout the genome and examined how their occupancies changed in multiple contexts: in approximately 200 human cell types, through 12 h of exposure to different hormones, and across the genetic backgrounds of 70 individuals. TOP enables cost-effective exploration of quantitative changes in the landscape of TF binding.Entities:
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Year: 2022 PMID: 35609992 PMCID: PMC9248881 DOI: 10.1101/gr.272203.120
Source DB: PubMed Journal: Genome Res ISSN: 1088-9051 Impact factor: 9.438