KSGTN-DDI: Key Substructure-aware Graph Transformer Network for Drug-drug Interaction Prediction.

Peiliang Zhang, Yuanjie Liu, Zhishu Shen

2023 IEEE International Conference on Bioinformatics and Biomedicine (BIBM)(2023)

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摘要
Drug substructure plays a crucial role in predicting drug-drug interaction (DDI) with combination drugs for disease therapies. In order to exploit the effect of drug substructure on DDI prediction, we propose a Key Substructure-aware Graph Transformer Network for Drug-drug Interaction Prediction (KSGTN-DDI). First, the substructure-adaptive graph Transformer module adaptively explicit encoding of drug structures information. Then, the key substructure-aware module calculates the importance of different substructures in DDI prediction. Finally, the calculated important substructure aggregation features are used to reconstruct the drug-drug interactions. Relevant experiments indicate that the performance of KSGTN-DDI outperforms other DDI prediction models.
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关键词
DDI,Drug Structures,Self-attention,Transformer,Graph Neural Networks
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