Article ID Journal Published Year Pages File Type
2820528 Genomics 2016 7 Pages PDF
Abstract

•We have developed GLMVC, a freely-available novel mutation caller with improved performance on RNAseq data.•GLMVC has better combination of sensitivity and specificity with faster run-time than comparable programs.•We confirm blood is a better germline reference than adjacent normal tissue.

Traditionally, somatic mutations are detected by examining DNA sequence. The maturity of sequencing technology has allowed researchers to screen for somatic mutations in the whole genome. Increasingly, researchers have become interested in identifying somatic mutations through RNAseq data. With this motivation, we evaluated the practicability of detecting somatic mutations from RNAseq data. Current somatic mutation calling tools were designed for DNA sequencing data. To increase performance on RNAseq data, we developed a somatic mutation caller GLMVC based on bias reduced generalized linear model for both DNA and RNA sequencing data. Through comparison with MuTect and Varscan we showed that GLMVC performed better for somatic mutation detection using exome sequencing or RNAseq data. GLMVC is freely available for download at the following website: https://github.com/shengqh/GLMVC/wiki.

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