Integrated differential analysis of multi-omics data using a joint mixture model: idiffomix
Koyel Majumdar, Florence Jaffr\'ezic, Andrea Rau, Isobel Claire, Gormley, Thomas Brendan Murphy

TL;DR
This paper introduces idiffomix, a joint mixture model that integrates gene expression and DNA methylation data to improve the identification of biologically relevant differential features, capturing their dependencies.
Contribution
The paper presents a novel joint mixture model that simultaneously analyzes gene expression and methylation data, accounting for their dependency structure, which improves differential analysis accuracy.
Findings
idiffomix outperforms independent analysis methods in simulations.
The method identifies additional differentially expressed genes.
Application to breast cancer data demonstrates its practical utility.
Abstract
Gene expression and DNA methylation are two interconnected biological processes and understanding their relationship is important in advancing understanding in diverse areas, including disease pathogenesis, environmental adaptation, developmental biology, and therapeutic responses. Differential analysis, including the identification of differentially methylated cytosine-guanine dinucleotide (CpG) sites (DMCs) and differentially expressed genes (DEGs) between two conditions, such as healthy and affected samples, can aid understanding of biological processes and disease progression. Typically, gene expression and DNA methylation data are analysed independently to identify DMCs and DEGs which are further analysed to explore relationships between them. Such approaches ignore the inherent dependencies and biological structure within these related data. A joint mixture model is proposed…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Gene expression and cancer classification
