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Diffsig: Associating Risk Factors With Mutational Signatures

Authors :
Ji-Eun Park
Markia A. Smith
Sarah C. Van Alsten
Andrea Walens
Di Wu
Katherine A. Hoadley
Melissa A. Troester
Michael I. Love
Source :
bioRxiv
Publication Year :
2023
Publisher :
Cold Spring Harbor Laboratory, 2023.

Abstract

Somatic mutational signatures elucidate molecular vulnerabilities to therapy and therefore detecting signatures and classifying tumors with respect to signatures has clinical value. However, identifying the etiology of the mutational signatures remains a statistical challenge, with both small sample sizes and high variability in classification algorithms posing barriers. As a result, few signatures have been strongly linked to particular risk factors. Here we presentDiffsig, a model and R package for estimating the association of risk factors with mutational signatures, suggesting etiologies for the pre-defined mutational signatures.Diffsigis a Bayesian Dirichlet-multinomial hierarchical model that allows testing of any type of risk factor while taking into account the uncertainty associated with samples with a low number of observations. In simulation, we found that our method can accurately estimate risk factor-mutational signal associations. We appliedDiffsigto breast cancer data to assess relationships between five established breast-relevant mutational signatures and etiologic variables, confirming known mechanisms of cancer development.Diffsigis implemented as an R package available at:https://github.com/jennprk/diffsig.

Subjects

Subjects :
Article

Details

Database :
OpenAIRE
Journal :
bioRxiv
Accession number :
edsair.doi.dedup.....5d1e6445c284d9bc9e2c3fee8c72cd98
Full Text :
https://doi.org/10.1101/2023.02.09.527740