PIMO: Pathway-based Interpretable Multi-Omics interactions for multi-omics integration

Journal: bioRxiv
Published Date:

Abstract

Motivation: Modeling inter-omics interactions across multiple molecular levels is critical for deciphering the mechanisms underlying complex diseases. Epigenomic and structural alterations, such as DNA methylation and copy number alterations, modulate gene expression and collectively influence disease progression and patient survival outcomes. Despite advancements in deep learning-based multi-omics analysis, gene-level interactions of inter-omics have been seldom considered, due to combinational complexity and power, which limits interpretability and mechanistic insight. Results: We propose a Pathway-based Interpretable deep learning Multi-Omics interaction model, PIMO, that explicitly captures regulatory effects across omics layers. Experiments on multiple TCGA cancer datasets showed that PIMO consistently outperformed state-of-the-art baselines in survival analysis, up to 13% increase in the C-index. PIMO provides biologically interpretable analyses that identify important pathways, genes, and inter-omics interactions with DNA methylation and copy number alterations. Availability and implementation: The source code and data is available at https://github.com/datax-lab/PIMO.

Authors

  • Parsa
  • S. P.; Kosaraju
  • S. C.; Ko
  • E.; Baek
  • B.; Mersha
  • T.; Kang
  • M.

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