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Deep-learning augmented RNA-seq analysis of transcript splicing.

Zijun ZhangZhicheng PanYi YingZhijie XieSamir AdhikariJohn PhillipsRuss P CarstensDouglas L BlackYingnian WuYi Xing
Published in: Nature methods (2019)
A major limitation of RNA sequencing (RNA-seq) analysis of alternative splicing is its reliance on high sequencing coverage. We report DARTS (https://github.com/Xinglab/DARTS), a computational framework that integrates deep-learning-based predictions with empirical RNA-seq evidence to infer differential alternative splicing between biological samples. DARTS leverages public RNA-seq big data to provide a knowledge base of splicing regulation via deep learning, thereby helping researchers better characterize alternative splicing using RNA-seq datasets even with modest coverage.
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