Multi‐Omics Factor Analysis—a framework for unsupervised integration of multi‐omics data sets

Ricard Argelaguet(European Bioinformatics Institute), Britta Velten(European Molecular Biology Laboratory), Damien Arnol(European Bioinformatics Institute), Sascha Dietrich(Heidelberg University), Thorsten Zenz(German Cancer Research Center), John C. Marioni(European Bioinformatics Institute), Florian Buettner(European Bioinformatics Institute), Wolfgang Huber(European Molecular Biology Organization), Oliver Stegle(European Bioinformatics Institute)
Molecular Systems Biology
June 1, 2018
Cited by 1,435Open Access
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Abstract

Abstract Multi‐omics studies promise the improved characterization of biological processes across molecular layers. However, methods for the unsupervised integration of the resulting heterogeneous data sets are lacking. We present Multi‐Omics Factor Analysis (MOFA), a computational method for discovering the principal sources of variation in multi‐omics data sets. MOFA infers a set of (hidden) factors that capture biological and technical sources of variability. It disentangles axes of heterogeneity that are shared across multiple modalities and those specific to individual data modalities. The learnt factors enable a variety of downstream analyses, including identification of sample subgroups, data imputation and the detection of outlier samples. We applied MOFA to a cohort of 200 patient samples of chronic lymphocytic leukaemia, profiled for somatic mutations, RNA expression, DNA methylation and ex vivo drug responses. MOFA identified major dimensions of disease heterogeneity, including immunoglobulin heavy‐chain variable region status, trisomy of chromosome 12 and previously underappreciated drivers, such as response to oxidative stress. In a second application, we used MOFA to analyse single‐cell multi‐omics data, identifying coordinated transcriptional and epigenetic changes along cell differentiation.


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