Allele biased transcription factor binding across human brain regions gives mechanistic insight into eQTLs

跨人类大脑区域的等位基因偏向转录因子结合为 eQTL 提供了机制见解

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作者:Belle A Moyers, Jacob M Loupe, Stephanie A Felker, James M J Lawlor, Ashlyn G Anderson, Ivan Rodriguez-Nunez, William E Bunney, Blynn G Bunney, Preston M Cartagena, Adolfo Sequeira, Stanley J Watson, Huda Akil, Eric M Mendenhall, Gregory M Cooper, Richard M Myers

Abstract

Transcription Factors (TFs) influence gene expression by facilitating or disrupting the formation of transcription initiation machinery at particular genomic loci. Because genomic localization of TFs is in part driven by TF recognition of DNA sequence, variation in TF binding sites can disrupt TF-DNA associations and affect gene regulation. To identify variants that impact TF binding in human brain tissues, we quantified allele bias for 93 TFs analyzed with ChIP-seq experiments of multiple structural brain regions from two donors. Using graph genomes constructed from phased genomic sequence data, we compared ChIP-seq signal between alleles at heterozygous variants within each tissue sample from each donor. Comparison of results from different brain regions within donors and the same regions between donors provided measures of allele bias reproducibility. We identified thousands of DNA variants that show reproducible bias in ChIP-seq for at least one TF. We found that alleles that are rarer in the general population were more likely than common alleles to exhibit large biases, and more frequently led to reduced TF binding. Combining ChIP-seq with RNA-seq, we identified TF-allele interaction biases with RNA bias in a phased allele linked to 6,709 eQTL variants identified in GTEx data, 3,309 of which were found in neural contexts. Our results provide insights into the effects of both common and rare variation on gene regulation in the brain. These findings can facilitate mechanistic understanding of cis-regulatory variation associated with biological traits, including disease.

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