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Deep learning of multimodal networks with topological regularization for drug repositioning

Yuto Ohnuki, Manato Akiyama, Yasubumi Sakakibara

2024Journal of Cheminformatics13 citationsDOIOpen Access PDF

Abstract

MOTIVATION: Computational techniques for drug-disease prediction are essential in enhancing drug discovery and repositioning. While many methods utilize multimodal networks from various biological databases, few integrate comprehensive multi-omics data, including transcriptomes, proteomes, and metabolomes. We introduce STRGNN, a novel graph deep learning approach that predicts drug-disease relationships using extensive multimodal networks comprising proteins, RNAs, metabolites, and compounds. We have constructed a detailed dataset incorporating multi-omics data and developed a learning algorithm with topological regularization. This algorithm selectively leverages informative modalities while filtering out redundancies. RESULTS: STRGNN demonstrates superior accuracy compared to existing methods and has identified several novel drug effects, corroborating existing literature. STRGNN emerges as a powerful tool for drug prediction and discovery. The source code for STRGNN, along with the dataset for performance evaluation, is available at https://github.com/yuto-ohnuki/STRGNN.git .

Topics & Concepts

Computer scienceDrug discoveryMachine learningDeep learningArtificial intelligenceRegularization (linguistics)GraphBiological networkSource codeData miningComputational biologyBioinformaticsTheoretical computer scienceBiologyOperating systemComputational Drug Discovery MethodsMachine Learning in BioinformaticsBioinformatics and Genomic Networks
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