MOTL: enhancing multi-omics matrix factorization with transfer learning

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Date

2025-12-01

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BioMed Central Ltd

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(c) 2025 The Author/s
CC BY-NC-ND 4.0

Abstract

Joint matrix factorization is popular for extracting lower dimensional representations of multi-omics data but loses effectiveness with limited samples. Addressing this limitation, we introduce MOTL (Multi-Omics Transfer Learning), a framework that enhances MOFA (Multi-Omics Factor Analysis) by inferring latent factors for small multi-omics target datasets with respect to those inferred from a large heterogeneous learning dataset. We evaluate MOTL by designing simulated and real data protocols and demonstrate that MOTL improves the factorization of limited-sample multi-omics datasets when compared to factorization without transfer learning. When applied to actual glioblastoma samples, MOTL enhances delineation of cancer status and subtype.

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Keywords

Matrix factorization, Dimensionality reduction, Multi-omics, Data integration, Transfer learning, MOFA

Citation

Hirst DP, Térézol M, Cantini L, Villoutreix P, Vignes M, Baudot A. (2025). MOTL: enhancing multi-omics matrix factorization with transfer learning. Genome Biology. 26. 1.

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Except where otherwised noted, this item's license is described as (c) 2025 The Author/s