MRGCDDI: Multi-Relation Graph Contrastive Learning without Data Augmentation for Drug-Drug Interaction Events Prediction.

IF 6.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS IEEE Journal of Biomedical and Health Informatics Pub Date : 2024-10-21 DOI:10.1109/JBHI.2024.3483812
Yu Li, Lin-Xuan Hou, Zhu-Hong You, Yang Yuan, Cheng-Gang Mi, Yu-An Huang, Hai-Cheng Yi
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Abstract

Predicting drug-drug interactions (DDIs) is a significant concern in the field of deep learning. It can effectively reduce potential adverse consequences and improve therapeutic safety. Graph neural network (GNN)-based models have made satisfactory progress in DDI event prediction. However, most existing models overlook crucial drug structure and interaction information, which is necessary for accurate DDI event prediction. To tackle this issue, we introduce a new method called MRGCDDI. This approach employs contrastive learning, but unlike conventional methods, it does not require data augmentation, thereby avoiding additional noise. MRGCDDI maintains the semantics of the graphical data during encoder perturbation through a simple yet effective contrastive learning approach, without the need for manual trial and error, tedious searching, or expensive domain knowledge to select enhancements. The approach presented in this study effectively integrates drug features extracted from drug molecular graphs and information from multi-relational drug-drug interaction (DDI) networks. Extensive experimental results demonstrate that MRGCDDI outperforms state-of-the-art methods on both datasets. Specifically, on Deng's dataset, MRGCDDI achieves an average increase of 4.33% in accuracy, 11.57% in Macro-F1, 10.97% in Macro-Recall, and 10.64% in Macro-Precision. Similarly, on Ryu's dataset, the model shows improvements with an average increase of 2.42% in accuracy, 3.86% in Macro-F1, 3.49% in Macro-Recall, and 2.75% in Macro-Precision. All the data and codes of this work are available at https://github.com/Nokeli/MRGCDDI.

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MRGCDDI:用于药物相互作用事件预测的无数据增强多关系图对比学习。
预测药物间相互作用(DDIs)是深度学习领域的一个重要问题。它可以有效减少潜在的不良后果,提高治疗安全性。基于图神经网络(GNN)的模型在 DDI 事件预测方面取得了令人满意的进展。然而,大多数现有模型都忽略了关键的药物结构和相互作用信息,而这正是准确预测 DDI 事件所必需的。为了解决这个问题,我们引入了一种名为 MRGCDDI 的新方法。这种方法采用对比学习,但与传统方法不同的是,它不需要数据扩增,从而避免了额外的噪音。MRGCDDI 通过一种简单而有效的对比学习方法,在编码器扰动期间保持图形数据的语义,而无需人工试错、繁琐的搜索或昂贵的领域知识来选择增强。本研究提出的方法有效地整合了从药物分子图中提取的药物特征和从多关系药物相互作用(DDI)网络中提取的信息。广泛的实验结果表明,MRGCDDI 在这两个数据集上的表现都优于最先进的方法。具体来说,在 Deng 的数据集上,MRGCDDI 的准确率平均提高了 4.33%,宏 F1 提高了 11.57%,宏调用提高了 10.97%,宏精度提高了 10.64%。同样,在 Ryu 的数据集上,该模型的准确率平均提高了 2.42%,Macro-F1 提高了 3.86%,Macro-Recall 提高了 3.49%,Macro-Precision 提高了 2.75%。这项工作的所有数据和代码可在 https://github.com/Nokeli/MRGCDDI 网站上查阅。
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来源期刊
IEEE Journal of Biomedical and Health Informatics
IEEE Journal of Biomedical and Health Informatics COMPUTER SCIENCE, INFORMATION SYSTEMS-COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
CiteScore
13.60
自引率
6.50%
发文量
1151
期刊介绍: IEEE Journal of Biomedical and Health Informatics publishes original papers presenting recent advances where information and communication technologies intersect with health, healthcare, life sciences, and biomedicine. Topics include acquisition, transmission, storage, retrieval, management, and analysis of biomedical and health information. The journal covers applications of information technologies in healthcare, patient monitoring, preventive care, early disease diagnosis, therapy discovery, and personalized treatment protocols. It explores electronic medical and health records, clinical information systems, decision support systems, medical and biological imaging informatics, wearable systems, body area/sensor networks, and more. Integration-related topics like interoperability, evidence-based medicine, and secure patient data are also addressed.
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