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Predicting RNA splicing from DNA sequence using Pangolin

Tony Zeng, Yang Li

2022Genome biology280 citationsDOIOpen Access PDF

Abstract

Recent progress in deep learning has greatly improved the prediction of RNA splicing from DNA sequence. Here, we present Pangolin, a deep learning model to predict splice site strength in multiple tissues. Pangolin outperforms state-of-the-art methods for predicting RNA splicing on a variety of prediction tasks. Pangolin improves prediction of the impact of genetic variants on RNA splicing, including common, rare, and lineage-specific genetic variation. In addition, Pangolin identifies loss-of-function mutations with high accuracy and recall, particularly for mutations that are not missense or nonsense, demonstrating remarkable potential for identifying pathogenic variants.

Topics & Concepts

BiologyRNA splicingGeneticsComputational biologyRNADNA sequencingEvolutionary biologyGeneRNA and protein synthesis mechanismsRNA modifications and cancerRNA Research and Splicing