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Deep representation learning of protein-protein interaction networks for enhanced pattern discovery

Rui Yan, Md Tauhidul Islam, Lei Xing

2024Science Advances13 citationsDOIOpen Access PDF

Abstract

Protein-protein interaction (PPI) networks, where nodes represent proteins and edges depict myriad interactions among them, are fundamental to understanding the dynamics within biological systems. Despite their pivotal role in modern biology, reliably discerning patterns from these intertwined networks remains a substantial challenge. The essence of the challenge lies in holistically characterizing the relationships of each node with others in the network and effectively using this information for accurate pattern discovery. In this work, we introduce a self-supervised network embedding framework termed discriminative network embedding (DNE). Unlike conventional methods that primarily focus on direct or limited-order node proximity, DNE characterizes a node both locally and globally by harnessing the contrast between representations from neighboring and distant nodes. Our experimental results demonstrate DNE's superior performance over existing techniques across various critical network analyses, including PPI inference and the identification of protein functional modules. DNE emerges as a robust strategy for node representation in PPI networks, offering promising avenues for diverse biomedical applications.

Topics & Concepts

Computer scienceInferenceNode (physics)Representation (politics)Discriminative modelEmbeddingBiological networkIdentification (biology)Artificial intelligenceMachine learningTheoretical computer scienceComputational biologyBiologyPolitical scienceLawStructural engineeringEngineeringPoliticsBotanyBioinformatics and Genomic NetworksProtein Structure and DynamicsComputational Drug Discovery Methods
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