QMLGMLMar 15, 2022

MoReL: Multi-omics Relational Learning

arXiv:2203.08149v17 citationsh-index: 59
Originality Incremental advance
AI Analysis

This addresses the problem of integrating heterogeneous multi-omics data for researchers in bioinformatics and computational biology, representing an incremental improvement over existing methods.

The paper tackled the challenge of analyzing heterogeneous multi-omics data by proposing a deep Bayesian generative model with fused Gromov-Wasserstein regularization, resulting in enhanced performance in inferring meaningful molecular interactions compared to existing baselines.

Multi-omics data analysis has the potential to discover hidden molecular interactions, revealing potential regulatory and/or signal transduction pathways for cellular processes of interest when studying life and disease systems. One of critical challenges when dealing with real-world multi-omics data is that they may manifest heterogeneous structures and data quality as often existing data may be collected from different subjects under different conditions for each type of omics data. We propose a novel deep Bayesian generative model to efficiently infer a multi-partite graph encoding molecular interactions across such heterogeneous views, using a fused Gromov-Wasserstein (FGW) regularization between latent representations of corresponding views for integrative analysis. With such an optimal transport regularization in the deep Bayesian generative model, it not only allows incorporating view-specific side information, either with graph-structured or unstructured data in different views, but also increases the model flexibility with the distribution-based regularization. This allows efficient alignment of heterogeneous latent variable distributions to derive reliable interaction predictions compared to the existing point-based graph embedding methods. Our experiments on several real-world datasets demonstrate enhanced performance of MoReL in inferring meaningful interactions compared to existing baselines.

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