生物
外显子组测序
遗传学
错义突变
外显子组
基因组
人类基因组
人类遗传学
计算生物学
全基因组测序
突变
1000基因组计划
人口
基因组学
基因
基因型
单核苷酸多态性
人口学
社会学
作者
Laksshman Sundaram,Hong Gao,Samskruthi Reddy Padigepati,Jeremy F. McRae,Yanjun Li,Jack A. Kosmicki,Nondas Fritzilas,Jörg Hakenberg,Anindita Dutta,John Shon,Jinbo Xu,Serafim Batzoglou,Xiaolin Li,Kyle Kai‐How Farh
出处
期刊:Nature Genetics
[Springer Nature]
日期:2018-07-19
卷期号:50 (8): 1161-1170
被引量:349
标识
DOI:10.1038/s41588-018-0167-z
摘要
Millions of human genomes and exomes have been sequenced, but their clinical applications remain limited due to the difficulty of distinguishing disease-causing mutations from benign genetic variation. Here we demonstrate that common missense variants in other primate species are largely clinically benign in human, enabling pathogenic mutations to be systematically identified by the process of elimination. Using hundreds of thousands of common variants from population sequencing of six non-human primate species, we train a deep neural network that identifies pathogenic mutations in rare disease patients with 88% accuracy and enables the discovery of 14 new candidate genes in intellectual disability at genome-wide significance. Cataloging common variation from additional primate species would improve interpretation for millions of variants of uncertain significance, further advancing the clinical utility of human genome sequencing. Using common variants in six non-human primate species, the authors train a deep neural network that identifies pathogenic mutations in patients with rare disease with 88% accuracy and enables the discovery of 14 new candidate genes in intellectual disability.
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