Wieder, Cecilia and Cooke, Juliette and Frainay, Clement and Poupin, Nathalie and Bowler, Russell and Jourdan, Fabien and Kechris, Katerina J. and Lai, Rachel PJ and Ebbels, Timothy and Ouzounis, Christos A. (2024) PathIntegrate: Multivariate modelling approaches for pathway-based multi-omics data integration. PLOS Computational Biology, 20 (3). e1011814. ISSN 1553-7358
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Abstract
As terabytes of multi-omics data are being generated, there is an ever-increasing need for methods facilitating the integration and interpretation of such data. Current multi-omics integration methods typically output lists, clusters, or subnetworks of molecules related to an outcome. Even with expert domain knowledge, discerning the biological processes involved is a time-consuming activity. Here we propose PathIntegrate, a method for integrating multi-omics datasets based on pathways, designed to exploit knowledge of biological systems and thus provide interpretable models for such studies. PathIntegrate employs single-sample pathway analysis to transform multi-omics datasets from the molecular to the pathway-level, and applies a predictive single-view or multi-view model to integrate the data. Model outputs include multi-omics pathways ranked by their contribution to the outcome prediction, the contribution of each omics layer, and the importance of each molecule in a pathway. Using semi-synthetic data we demonstrate the benefit of grouping molecules into pathways to detect signals in low signal-to-noise scenarios, as well as the ability of PathIntegrate to precisely identify important pathways at low effect sizes. Finally, using COPD and COVID-19 data we showcase how PathIntegrate enables convenient integration and interpretation of complex high-dimensional multi-omics datasets. PathIntegrate is available as an open-source Python package.
Item Type: | Article |
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Subjects: | Opene Prints > Biological Science |
Depositing User: | Managing Editor |
Date Deposited: | 09 Apr 2024 12:42 |
Last Modified: | 09 Apr 2024 12:42 |
URI: | http://geographical.go2journals.com/id/eprint/3561 |