Content area

Abstract

Key challenges for human genetics, precision medicine and evolutionary biology include deciphering the regulatory code of gene expression and understanding the transcriptional effects of genome variation. However, this is extremely difficult because of the enormous scale of the noncoding mutation space. We developed a deep learning-based framework, ExPecto, that can accurately predict, ab initio from a DNA sequence, the tissue-specific transcriptional effects of mutations, including those that are rare or that have not been observed. We prioritized causal variants within disease- or trait-associated loci from all publicly available genome-wide association studies and experimentally validated predictions for four immune-related diseases. By exploiting the scalability of ExPecto, we characterized the regulatory mutation space for human RNA polymerase II-transcribed genes by in silico saturation mutagenesis and profiled > 140 million promoter-proximal mutations. This enables probing of evolutionary constraints on gene expression and ab initio prediction of mutation disease effects, making ExPecto an end-to-end computational framework for the in silico prediction of expression and disease risk.

Details

Title
Deep learning sequence-based ab initio prediction of variant effects on expression and disease risk
Author
Zhou, Jian 1 ; Theesfeld, Chandra L 1 ; Yao, Kevin 2 ; Chen, Kathleen M 2 ; Wong, Aaron K 2 ; Troyanskaya, Olga G

 Lewis-Sigler Institute for Integrative Genomics, Princeton University, Princeton, NJ, USA 
 Flatiron Institute, Simons Foundation, New York, NY, USA 
Pages
1171-1179,1179A-1179D
Section
ARTICLES
Publication year
2018
Publication date
Aug 2018
Publisher
Nature Publishing Group
ISSN
10614036
e-ISSN
15461718
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2111084540
Copyright
Copyright Nature Publishing Group Aug 2018