HiGraphDTI: Hierarchical Graph Representation Learning for Drug-Target Interaction Prediction
Bin Liu, Siqi Wu, Jin Wang, Xin Deng, Ao Zhou

TL;DR
HiGraphDTI is a hierarchical graph learning model that improves drug-target interaction prediction by capturing detailed chemical structures and motifs, offering better interpretability and discovery capabilities.
Contribution
It introduces a hierarchical graph representation learning approach that exploits atom, motif, and molecule information for enhanced DTI prediction and interpretation.
Findings
Outperforms state-of-the-art DTI prediction methods.
Effectively interprets interaction mechanisms.
Demonstrates practical utility in discovering new DTIs.
Abstract
The discovery of drug-target interactions (DTIs) plays a crucial role in pharmaceutical development. The deep learning model achieves more accurate results in DTI prediction due to its ability to extract robust and expressive features from drug and target chemical structures. However, existing deep learning methods typically generate drug features via aggregating molecular atom representations, ignoring the chemical properties carried by motifs, i.e., substructures of the molecular graph. The atom-drug double-level molecular representation learning can not fully exploit structure information and fails to interpret the DTI mechanism from the motif perspective. In addition, sequential model-based target feature extraction either fuses limited contextual information or requires expensive computational resources. To tackle the above issues, we propose a hierarchical graph representation…
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Taxonomy
TopicsComputational Drug Discovery Methods · Chemical Synthesis and Analysis · Biomedical Text Mining and Ontologies
