POEMS: Product of Experts for Interpretable Multi-omic Integration using Sparse Decoding

arXiv — cs.LGThursday, November 6, 2025 at 5:00:00 AM

POEMS: Product of Experts for Interpretable Multi-omic Integration using Sparse Decoding

The introduction of POEMS, or Product Of Experts for Interpretable Multiomics Integration, marks a significant advancement in the field of disease research. This innovative approach addresses the challenge of integrating various molecular layers without sacrificing interpretability or predictive performance. By overcoming the limitations of traditional deep generative models, POEMS enhances our ability to understand complex diseases, which could lead to better diagnostics and treatments. This development is crucial as it paves the way for more effective healthcare solutions.
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