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MGRL:基于多图表示学习预测药物-疾病关联

MGRL: Predicting Drug-Disease Associations Based on Multi-Graph Representation Learning.

作者信息

Zhao Bo-Wei, You Zhu-Hong, Wong Leon, Zhang Ping, Li Hao-Yuan, Wang Lei

机构信息

The Xinjiang Technical Institute of Physics and Chemistry, Chinese Academy of Sciences, Ürümqi, China.

University of Chinese Academy of Sciences, Beijing, China.

出版信息

Front Genet. 2021 Apr 8;12:657182. doi: 10.3389/fgene.2021.657182. eCollection 2021.

Abstract

Drug repositioning is an application-based solution based on mining existing drugs to find new targets, quickly discovering new drug-disease associations, and reducing the risk of drug discovery in traditional medicine and biology. Therefore, it is of great significance to design a computational model with high efficiency and accuracy. In this paper, we propose a novel computational method MGRL to predict drug-disease associations based on multi-graph representation learning. More specifically, MGRL first uses the graph convolution network to learn the graph representation of drugs and diseases from their self-attributes. Then, the graph embedding algorithm is used to represent the relationships between drugs and diseases. Finally, the two kinds of graph representation learning features were put into the random forest classifier for training. To the best of our knowledge, this is the first work to construct a multi-graph to extract the characteristics of drugs and diseases to predict drug-disease associations. The experiments show that the MGRL can achieve a higher AUC of 0.8506 based on five-fold cross-validation, which is significantly better than other existing methods. Case study results show the reliability of the proposed method, which is of great significance for practical applications.

摘要

药物重定位是一种基于应用的解决方案,它通过挖掘现有药物来寻找新靶点,快速发现新的药物-疾病关联,并降低传统医学和生物学中药物发现的风险。因此,设计一个高效且准确的计算模型具有重要意义。在本文中,我们提出了一种新颖的计算方法MGRL,用于基于多图表示学习预测药物-疾病关联。更具体地说,MGRL首先使用图卷积网络从药物和疾病的自身属性中学习它们的图表示。然后,使用图嵌入算法来表示药物和疾病之间的关系。最后,将这两种图表示学习特征放入随机森林分类器中进行训练。据我们所知,这是第一项构建多图以提取药物和疾病特征来预测药物-疾病关联的工作。实验表明,基于五折交叉验证,MGRL可以实现高达0.8506的AUC,这明显优于其他现有方法。案例研究结果表明了所提方法的可靠性,这对实际应用具有重要意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e806/8153989/7c66b08a2dd3/fgene-12-657182-g0001.jpg

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