索引
外显子组测序
基因组
基因组学
深度测序
DNA测序
计算生物学
外显子组
深度学习
全基因组测序
卷积神经网络
INDEL突变
人类基因组
生物
计算机科学
单核苷酸多态性
人工智能
遗传学
突变
基因型
基因
作者
Ryan Poplin,Pi-Chuan Chang,David H. Alexander,Scott Schwartz,Thomas Colthurst,Alexander Ku,Dan Newburger,Jojo Dijamco,Nam V. Nguyen,Pegah Tootoonchi Afshar,Sam Gross,Lizzie Dorfman,Cory Y. McLean,Mark A. DePristo
摘要
DeepVariant uses convolutional neural networks to improve the accuracy of variant calling. Despite rapid advances in sequencing technologies, accurately calling genetic variants present in an individual genome from billions of short, errorful sequence reads remains challenging. Here we show that a deep convolutional neural network can call genetic variation in aligned next-generation sequencing read data by learning statistical relationships between images of read pileups around putative variant and true genotype calls. The approach, called DeepVariant, outperforms existing state-of-the-art tools. The learned model generalizes across genome builds and mammalian species, allowing nonhuman sequencing projects to benefit from the wealth of human ground-truth data. We further show that DeepVariant can learn to call variants in a variety of sequencing technologies and experimental designs, including deep whole genomes from 10X Genomics and Ion Ampliseq exomes, highlighting the benefits of using more automated and generalizable techniques for variant calling.
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