An encyclopedia of enhancer-gene regulatory interactions in the human genome

Author:

Gschwind Andreas R.ORCID,Mualim Kristy S.,Karbalayghareh Alireza,Sheth Maya U.,Dey Kushal K.,Jagoda Evelyn,Nurtdinov Ramil N.,Xi Wang,Tan Anthony S.,Jones HankORCID,Ma X. Rosa,Yao DavidORCID,Nasser JosephORCID,Avsec ŽigaORCID,James Benjamin T.ORCID,Shamim Muhammad S.ORCID,Durand Neva C.ORCID,Rao Suhas S. P.,Mahajan Ragini,Doughty Benjamin R.ORCID,Andreeva KalinaORCID,Ulirsch Jacob C.,Fan KailiORCID,Perez Elizabeth M.,Nguyen Tri C.ORCID,Kelley David R.ORCID,Finucane Hilary K.,Moore Jill E.,Weng ZhipingORCID,Kellis ManolisORCID,Bassik Michael C.,Price Alkes L.,Beer Michael A.ORCID,Guigó RodericORCID,Stamatoyannopoulos John A.,Aiden Erez Lieberman,Greenleaf William J.ORCID,Leslie Christina S.ORCID,Steinmetz Lars M.ORCID,Kundaje AnshulORCID,Engreitz Jesse M.ORCID

Abstract

AbstractIdentifying transcriptional enhancers and their target genes is essential for understanding gene regulation and the impact of human genetic variation on disease1–6. Here we create and evaluate a resource of >13 million enhancer-gene regulatory interactions across 352 cell types and tissues, by integrating predictive models, measurements of chromatin state and 3D contacts, and large-scale genetic perturbations generated by the ENCODE Consortium7. We first create a systematic benchmarking pipeline to compare predictive models, assembling a dataset of 10,411 element-gene pairs measured in CRISPR perturbation experiments, >30,000 fine-mapped eQTLs, and 569 fine-mapped GWAS variants linked to a likely causal gene. Using this framework, we develop a new predictive model, ENCODE-rE2G, that achieves state-of-the-art performance across multiple prediction tasks, demonstrating a strategy involving iterative perturbations and supervised machine learning to build increasingly accurate predictive models of enhancer regulation. Using the ENCODE-rE2G model, we build an encyclopedia of enhancer-gene regulatory interactions in the human genome, which reveals global properties of enhancer networks, identifies differences in the functions of genes that have more or less complex regulatory landscapes, and improves analyses to link noncoding variants to target genes and cell types for common, complex diseases. By interpreting the model, we find evidence that, beyond enhancer activity and 3D enhancer-promoter contacts, additional features guide enhancer-promoter communication including promoter class and enhancer-enhancer synergy. Altogether, these genome-wide maps of enhancer-gene regulatory interactions, benchmarking software, predictive models, and insights about enhancer function provide a valuable resource for future studies of gene regulation and human genetics.

Publisher

Cold Spring Harbor Laboratory

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