生物
RNA剪接
剪接
遗传学
选择性拼接
序列(生物学)
基因
核糖核酸
突变
计算生物学
信使核糖核酸
作者
Kishore Jaganathan,Sofia Kyriazopoulou Panagiotopoulou,Jeremy F. McRae,Siavash Fazel Darbandi,David A. Knowles,Yang Li,Jack A. Kosmicki,Juan David Arbelaez,Wenwu Cui,Grace Schwartz,Eric D. Chow,Efstathios Kanterakis,Hong Gao,Amirali Kia,Serafim Batzoglou,Stephan Sanders,Kyle Kai‐How Farh
出处
期刊:Cell
[Cell Press]
日期:2019-01-01
卷期号:176 (3): 535-548.e24
被引量:2674
标识
DOI:10.1016/j.cell.2018.12.015
摘要
The splicing of pre-mRNAs into mature transcripts is remarkable for its precision, but the mechanisms by which the cellular machinery achieves such specificity are incompletely understood. Here, we describe a deep neural network that accurately predicts splice junctions from an arbitrary pre-mRNA transcript sequence, enabling precise prediction of noncoding genetic variants that cause cryptic splicing. Synonymous and intronic mutations with predicted splice-altering consequence validate at a high rate on RNA-seq and are strongly deleterious in the human population. De novo mutations with predicted splice-altering consequence are significantly enriched in patients with autism and intellectual disability compared to healthy controls and validate against RNA-seq in 21 out of 28 of these patients. We estimate that 9%-11% of pathogenic mutations in patients with rare genetic disorders are caused by this previously underappreciated class of disease variation.
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