RegSNPs-intron: a computational framework for predicting pathogenic impact of intronic single nucleotide variants

Genome Biology(2019)

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摘要
Single nucleotide variants (SNVs) in intronic regions have yet to be systematically investigated for their disease-causing potential. Using known pathogenic and neutral intronic SNVs (iSNVs) as training data, we develop the RegSNPs-intron algorithm based on a random forest classifier that integrates RNA splicing, protein structure, and evolutionary conservation features. RegSNPs-intron showed excellent performance in evaluating the pathogenic impacts of iSNVs. Using a high-throughput functional reporter assay called ASSET-seq (ASsay for Splicing using ExonTrap and sequencing), we evaluate the impact of RegSNPs-intron predictions on splicing outcome. Together, RegSNPs-intron and ASSET-seq enable effective prioritization of iSNVs for disease pathogenesis.
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关键词
Intron,Single nucleotide polymorphism,RNA splicing,Computational biology,Bioinformatics,Disease pathogenesis,Random forest,Prediction model,High-throughput screening assay
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