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Cancer gene identification from RNA variant allelic frequencies using RVdriver.

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posted on 2025-06-16, 11:26 authored by James RM Black, Thomas P Jones, Carlos Martínez-Ruiz, Maria Litovchenko, Clare Puttick, Charles Swanton, Nicholas McGranahan
Existing approaches to identifying cancer genes rely overwhelmingly on DNA sequencing data. Here, we introduce RVdriver, a computational tool that leverages paired bulk genomic and transcriptomic data to classify RNA variant allele frequencies (VAFs) of non-synonymous mutations relative to a synonymous mutation background. We analyze 7882 paired exomes and transcriptomes from 31 cancer types and identify novel, as well as known, cancer genes, complementing other DNA-based approaches. Furthermore, RNA VAFs of individual mutations are able to distinguish "driver" from "passenger" mutations within established cancer genes. This approach highlights the value of multi-omic approaches for cancer gene discovery.

Funding

Crick (Grant ID: CC2041, Grant title: Swanton CC2041) Novo Nordisk UK Research Foundation (Grant ID: NNF15OC0016584, Grant title: NovoNordisk Foundation 16584) European Research Council (Grant ID: 835297 - PROTEUS, Grant title: ERC 835297 - PROTEUS)

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