Whole-genome deep-learning analysis identifies contribution of noncoding mutations to autism risk

Volume: 51, Issue: 6, Pages: 973 - 980
Published: May 27, 2019
Abstract
We address the challenge of detecting the contribution of noncoding mutations to disease with a deep-learning-based framework that predicts the specific regulatory effects and the deleterious impact of genetic variants. Applying this framework to 1,790 autism spectrum disorder (ASD) simplex families reveals a role in disease for noncoding mutations—ASD probands harbor both transcriptional- and post-transcriptional-regulation-disrupting de novo...
Paper Details
Title
Whole-genome deep-learning analysis identifies contribution of noncoding mutations to autism risk
Published Date
May 27, 2019
Volume
51
Issue
6
Pages
973 - 980
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