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Molecular Substructure-Aware Network for Drug-Drug Interaction Prediction

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Concomitant administration of drugs can cause drug-drug interactions (DDIs). Some drug combinations are beneficial, but other ones may cause negative effects which are previously unrecorded. Previous works on DDI prediction usually rely on hand-engineered domain knowledge, which is laborious to obtain. In this work, we propose a novel model, Molecular Substructure-Aware Network (MSAN), to effectively predict potential DDIs from molecular structures of drug pairs. We adopt a Transformer-like substructure extraction module to acquire a fixed number of representative vectors that are associated with various substructure patterns of the drug molecule. Then, interaction strength between the two drugs' substructures will be captured by a similarity-based interaction module. We also perform a substructure dropping augmentation before graph encoding to alleviate overfitting. Experimental results from a real-world dataset reveal that our proposed model achieves the state-of-the-art performance. We also show that the predictions of our model are highly interpretable through a case study.

Xinyu Zhu, Yongliang Shen, Weiming Lu• 2022

Related benchmarks

TaskDatasetResultRank
Drug-Drug Interaction predictionDrugBank (test)
Accuracy97
11
Multi-class classificationMecDDI (Cold Start Split)
Accuracy42.45
10
Multi-class classificationMecDDI (Random Split)
Accuracy93.53
10
Multi-class classificationMecDDI (Scaffold Split)
Accuracy14.3
10
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