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MPHGCL-DDI:基于元路径的异构图对比学习的药物-药物相互作用预测。

MPHGCL-DDI: Meta-Path-Based Heterogeneous Graph Contrastive Learning for Drug-Drug Interaction Prediction.

机构信息

School of Data and Computer Science, Shandong Women's University, Jinan 250030, China.

School of Information Science and Engineering, University of Jinan, Jinan 250024, China.

出版信息

Molecules. 2024 May 24;29(11):2483. doi: 10.3390/molecules29112483.

Abstract

The combinatorial therapy with multiple drugs may lead to unexpected drug-drug interactions (DDIs) and result in adverse reactions to patients. Predicting DDI events can mitigate the potential risks of combinatorial therapy and enhance drug safety. In recent years, deep models based on heterogeneous graph representation learning have attracted widespread interest in DDI event prediction and have yielded satisfactory results, but there is still room for improvement in prediction performance. In this study, we proposed a meta-path-based heterogeneous graph contrastive learning model, MPHGCL-DDI, for DDI event prediction. The model constructs two contrastive views based on meta-paths: an average graph view and an augmented graph view. The former represents that there are connections between drugs, while the latter reveals how the drugs connect with each other. We defined three levels of data augmentation schemes in the augmented graph view and adopted a combination of three losses in the model training phase: multi-relation prediction loss, unsupervised contrastive loss and supervised contrastive loss. Furthermore, the model incorporates indirect drug information, protein-protein interactions (PPIs), to reveal latent relations of drugs. We evaluated MPHGCL-DDI on three different tasks of two datasets. Experimental results demonstrate that MPHGCL-DDI surpasses several state-of-the-art methods in performance.

摘要

联合使用多种药物的治疗方法可能会导致意想不到的药物-药物相互作用(DDI),并给患者带来不良反应。预测 DDI 事件可以降低联合治疗的潜在风险,提高药物安全性。近年来,基于异质图表示学习的深度模型在 DDI 事件预测中引起了广泛关注,并取得了令人满意的结果,但在预测性能方面仍有改进的空间。在这项研究中,我们提出了一种基于元路径的异质图对比学习模型 MPHGCL-DDI,用于 DDI 事件预测。该模型基于元路径构建了两个对比视图:平均图视图和增强图视图。前者表示药物之间存在连接,而后者揭示了药物之间的连接方式。我们在增强图视图中定义了三种数据增强方案,并在模型训练阶段采用了三种损失的组合:多关系预测损失、无监督对比损失和监督对比损失。此外,该模型还利用间接药物信息(蛋白质-蛋白质相互作用,PPIs)来揭示药物的潜在关系。我们在两个数据集的三个不同任务上评估了 MPHGCL-DDI。实验结果表明,MPHGCL-DDI 在性能上优于几种最先进的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c4ed/11173658/f550afc8b3ee/molecules-29-02483-g001.jpg

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