MMSplice: modular modeling improves the predictions of genetic variant effects on splicing

Volume: 20, Issue: 1
Published: Mar 1, 2019
Abstract
Predicting the effects of genetic variants on splicing is highly relevant for human genetics. We describe the framework MMSplice (modular modeling of splicing) with which we built the winning model of the CAGI5 exon skipping prediction challenge. The MMSplice modules are neural networks scoring exon, intron, and splice sites, trained on distinct large-scale genomics datasets. These modules are combined to predict effects of variants on exon...
Paper Details
Title
MMSplice: modular modeling improves the predictions of genetic variant effects on splicing
Published Date
Mar 1, 2019
Volume
20
Issue
1
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