Litcius/Paper detail

A sequence-based global map of regulatory activity for deciphering human genetics

Kathleen Chen, Aaron K. Wong, Olga G. Troyanskaya, Jian Zhou

2022Nature Genetics275 citationsDOIOpen Access PDF

Abstract

Epigenomic profiling has enabled large-scale identification of regulatory elements, yet we still lack a systematic mapping from any sequence or variant to regulatory activities. We address this challenge with Sei, a framework for integrating human genetics data with sequence information to discover the regulatory basis of traits and diseases. Sei learns a vocabulary of regulatory activities, called sequence classes, using a deep learning model that predicts 21,907 chromatin profiles across >1,300 cell lines and tissues. Sequence classes provide a global classification and quantification of sequence and variant effects based on diverse regulatory activities, such as cell type-specific enhancer functions. These predictions are supported by tissue-specific expression, expression quantitative trait loci and evolutionary constraint data. Furthermore, sequence classes enable characterization of the tissue-specific, regulatory architecture of complex traits and generate mechanistic hypotheses for individual regulatory pathogenic mutations. We provide Sei as a resource to elucidate the regulatory basis of human health and disease.

Topics & Concepts

BiologyRegulatory sequenceComputational biologyEpigenomicsGeneticsChromatinSequence (biology)EnhancerRegulation of gene expressionGeneTranscription factorGene expressionDNA methylationGenomics and Chromatin DynamicsEpigenetics and DNA MethylationGene expression and cancer classification