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A statistical method for detecting differentially expressed SNVs based on next-generation RNA-seq data.


ABSTRACT: In this article, we propose a new statistical method-MutRSeq-for detecting differentially expressed single nucleotide variants (SNVs) based on RNA-seq data. Specifically, we focus on nonsynonymous mutations and employ a hierarchical likelihood approach to jointly model observed mutation events as well as read count measurements from RNA-seq experiments. We then introduce a likelihood ratio-based test statistic, which detects changes not only in overall expression levels, but also in allele-specific expression patterns. In addition, this method can jointly test multiple mutations in one gene/pathway. The simulation studies suggest that the proposed method achieves better power than a few competitors under a range of different settings. In the end, we apply this method to a breast cancer data set and identify genes with nonsynonymous mutations differentially expressed between the triple negative breast cancer tumors and other subtypes of breast cancer tumors.

SUBMITTER: Fu R 

PROVIDER: S-EPMC5151178 | biostudies-literature | 2017 Mar

REPOSITORIES: biostudies-literature

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A statistical method for detecting differentially expressed SNVs based on next-generation RNA-seq data.

Fu Rong R   Wang Pei P   Ma Weiping W   Taguchi Ayumu A   Wong Chee-Hong CH   Zhang Qing Q   Gazdar Adi A   Hanash Samir M SM   Zhou Qinghua Q   Zhong Hua H   Feng Ziding Z  

Biometrics 20160608 1


In this article, we propose a new statistical method-MutRSeq-for detecting differentially expressed single nucleotide variants (SNVs) based on RNA-seq data. Specifically, we focus on nonsynonymous mutations and employ a hierarchical likelihood approach to jointly model observed mutation events as well as read count measurements from RNA-seq experiments. We then introduce a likelihood ratio-based test statistic, which detects changes not only in overall expression levels, but also in allele-speci  ...[more]

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