Semi-supervised heterogeneous graph contrastive learning for drug–target interaction prediction
Identification of drug–target interactions (DTIs) is an important step in drug discovery and drug repositioning. In recent years, graph-based methods have attracted great attention and show advantages on predicting potential DTIs. However, these methods face the problem that the known DTIs are very...
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Veröffentlicht in: | Computers in biology and medicine 2023-09, Vol.163, p.107199-107199, Article 107199 |
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Zusammenfassung: | Identification of drug–target interactions (DTIs) is an important step in drug discovery and drug repositioning. In recent years, graph-based methods have attracted great attention and show advantages on predicting potential DTIs. However, these methods face the problem that the known DTIs are very limited and expensive to obtain, which decreases the generalization ability of the methods. Self-supervised contrastive learning is independent of labeled DTIs, which can mitigate the impact of the problem. Therefore, we propose a framework SHGCL-DTI for predicting DTIs, which supplements the classical semi-supervised DTI prediction task with an auxiliary graph contrastive learning module. Specifically, we generate representations for the nodes through the neighbor view and meta-path view, and define positive and negative pairs to maximize the similarity between positive pairs from different views. Subsequently, SHGCL-DTI reconstructs the original heterogeneous network to predict the potential DTIs. The experiments on the public dataset show that SHGCL-DTI has significant improvement in different scenarios, compared with existing state-of-the-art methods. We also demonstrate that the contrastive learning module improves the prediction performance and generalization ability of SHGCL-DTI through ablation study. In addition, we have found several novel predicted DTIs supported by the biological literature. The data and source code are available at: https://github.com/TOJSSE-iData/SHGCL-DTI.
•We design a novel framework called SHGCL-DTI for DTI prediction.•SHGCL-DTI extracts node representations from the biological network with the neighbor view encoder and meta-path view encoder.•We propose an auxiliary graph contrastive learning module to improve the generalization ability.•The results of the experiments on the public dataset show that SHGCL-DTI can outperform the state-of-the-art methods. |
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ISSN: | 0010-4825 1879-0534 |
DOI: | 10.1016/j.compbiomed.2023.107199 |