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GNDD: A Graph Neural Network-Based Method for Drug-Disease Association Prediction

机译:GNDD:一种基于毒性疾病协会预测的基于图的神经网络方法

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Potential drug-disease association prediction is important to facilitate drug discovery. However, most of existing drug-disease association prediction approaches rely on assembling multiple drug (disease)-related biological information, which is usually not comprehensively available, and they always fail to explore the latent information in drug-disease network. To tackle these challenges, we propose a graph neural network-based method for drug-disease association prediction, dubbed GNDD, with capturing the complex information between drugs and diseases dispense with any side information. Specifically, GNDD introduces the idea of collaborative filtering in recommendation system to avoid the dependency on multi-data. Furthermore, an embedding propagation strategy is exploited to model the high-order relationships in drug-disease network. We conduct experiments on the Comparative Toxicogenomics Database, demonstrating the effectiveness of our method in drug-disease association prediction.
机译:潜在的毒性疾病协会预测对于促进药物发现是重要的。然而,现有的大多数毒性疾病关联预测方法依赖于组装多种药物(疾病) - 繁茂的生物信息,这些方法通常不受全面可用,并且他们总是未能探索毒性疾病网络中的潜在信息。为了解决这些挑战,我们提出了一种基于图形的毒性网络的毒性网络,被称为GNDD的基于毒性网络的方法,捕获了药物和疾病之间的复杂信息,从任何侧面信息都分配。具体而言,GNDD在推荐系统中介绍了协作滤波的概念,以避免对多数据的依赖性。此外,利用嵌入传播策略来模拟毒品疾病网络中的高阶关系。我们对比较有毒科学数据库进行实验,展示了我们在毒性疾病关联预测中的方法的有效性。

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