RNA剪接
内含子
错义突变
遗传学
生物
基因组
基因
核糖核酸
表型
计算生物学
突变
疾病
医学
病理
作者
Hui Xiong,Babak Alipanahi,Leo J. Lee,Hannes Bretschneider,Daniele Merico,Ryan K. C. Yuen,Yimin Hua,Serge Gueroussov,Hamed S. Najafabadi,Timothy Hughes,Quaid Morris,Yoseph Barash,Adrian R. Krainer,Nebojša Jojić,Stephen W. Scherer,Benjamin J. Blencowe,Brendan J. Frey
出处
期刊:Science
[American Association for the Advancement of Science (AAAS)]
日期:2014-12-19
卷期号:347 (6218)
被引量:1212
标识
DOI:10.1126/science.1254806
摘要
To facilitate precision medicine and whole-genome annotation, we developed a machine-learning technique that scores how strongly genetic variants affect RNA splicing, whose alteration contributes to many diseases. Analysis of more than 650,000 intronic and exonic variants revealed widespread patterns of mutation-driven aberrant splicing. Intronic disease mutations that are more than 30 nucleotides from any splice site alter splicing nine times as often as common variants, and missense exonic disease mutations that have the least impact on protein function are five times as likely as others to alter splicing. We detected tens of thousands of disease-causing mutations, including those involved in cancers and spinal muscular atrophy. Examination of intronic and exonic variants found using whole-genome sequencing of individuals with autism revealed misspliced genes with neurodevelopmental phenotypes. Our approach provides evidence for causal variants and should enable new discoveries in precision medicine.
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