iScience (Jun 2024)

Graph reasoning method enhanced by relational transformers and knowledge distillation for drug-related side effect prediction

  • Honglei Bai,
  • Siyuan Lu,
  • Tiangang Zhang,
  • Hui Cui,
  • Toshiya Nakaguchi,
  • Ping Xuan

Journal volume & issue
Vol. 27, no. 6
p. 109571

Abstract

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Summary: Identifying the side effects related to drugs is beneficial for reducing the risk of drug development failure and saving the drug development cost. We proposed a graph reasoning method, RKDSP, to fuse the semantics of multiple connection relationships, the local knowledge within each meta-path, the global knowledge among multiple meta-paths, and the attributes of the drug and side effect node pairs. We constructed drug-side effect heterogeneous graphs consisting of the drugs, side effects, and their similarity and association connections. Multiple relational transformers were established to learn node features from diverse meta-path semantic perspectives. A knowledge distillation module was constructed to learn local and global knowledge of multiple meta-paths. Finally, an adaptive convolutional neural network-based strategy was presented to adaptively encode the attributes of each drug-side effect node pair. The experimental results demonstrated that RKDSP outperforms the compared state-of-the-art prediction approaches.

Keywords