Drug repositioning based on weighted local information augmented graph neural network

Brief Bioinform. 2023 Nov 22;25(1):bbad431. doi: 10.1093/bib/bbad431.

Abstract

Drug repositioning, the strategy of redirecting existing drugs to new therapeutic purposes, is pivotal in accelerating drug discovery. While many studies have engaged in modeling complex drug-disease associations, they often overlook the relevance between different node embeddings. Consequently, we propose a novel weighted local information augmented graph neural network model, termed DRAGNN, for drug repositioning. Specifically, DRAGNN firstly incorporates a graph attention mechanism to dynamically allocate attention coefficients to drug and disease heterogeneous nodes, enhancing the effectiveness of target node information collection. To prevent excessive embedding of information in a limited vector space, we omit self-node information aggregation, thereby emphasizing valuable heterogeneous and homogeneous information. Additionally, average pooling in neighbor information aggregation is introduced to enhance local information while maintaining simplicity. A multi-layer perceptron is then employed to generate the final association predictions. The model's effectiveness for drug repositioning is supported by a 10-times 10-fold cross-validation on three benchmark datasets. Further validation is provided through analysis of the predicted associations using multiple authoritative data sources, molecular docking experiments and drug-disease network analysis, laying a solid foundation for future drug discovery.

Keywords: drug repositioning; drug–disease association; graph attention mechanism; graph neural network; local information augmentation.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Benchmarking*
  • Drug Discovery
  • Drug Repositioning*
  • Molecular Docking Simulation
  • Neural Networks, Computer