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RegSNPs-Intron: A Computational Framework For Prioritizing Intronic Single Nucleotide Variants in Human Genetic Disease

Authors :
Katherine A. Hargreaves
Todd C. Skaar
Matthew Mort
David Neil Cooper
Michael T. Eadon
Hai Lin
Yaoqi Zhou
Rudong Li
M. Eileen Dolan
Joseph Ipe
Jill L. Reiter
Yunlong Liu
Publication Year :
2019
Publisher :
Cold Spring Harbor Laboratory, 2019.

Abstract

A large number of single nucleotide variants (SNVs) in the human genome are known to be responsible for inherited disease. An even larger number of SNVs, particularly those located in introns, have yet to be investigated for their pathogenic potential. Using known pathogenic and neutral intronic SNVs (iSNVs), we developed the regSNPs-intron algorithm based on a random forest classifier that integrates RNA splicing, protein structure and evolutionary conservation features. regSNPs-intron showed high accuracy in computing disease-causing probabilities of iSNVs. Using a high-throughput functional reporter assay called ASSET-seq (ASsay for Splicing using ExonTrap and sequencing), we validated regSNPs-intron predictions by measuring the impact of iSNVs on splicing outcome. Together, regSNPs-intron and ASSET-seq enable effective prioritization of iSNVs for disease pathogenesis. regSNPs-intron is available at https://regsnps-intron.ccbb.iupui.edu.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....e3687841364f9cb4f11287e3c438b199
Full Text :
https://doi.org/10.1101/515171