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基于图卷积自动编码器和全连接自动编码器的注意力机制方法用于预测药物-疾病关联。

Graph Convolutional Autoencoder and Fully-Connected Autoencoder with Attention Mechanism Based Method for Predicting Drug-Disease Associations.

出版信息

IEEE J Biomed Health Inform. 2021 May;25(5):1793-1804. doi: 10.1109/JBHI.2020.3039502. Epub 2021 May 11.

Abstract

Predicting novel uses for approved drugs helps in reducing the costs of drug development and facilitates the development process. Most of previous methods focused on the multi-source data related to drugs and diseases to predict the candidate associations between drugs and diseases. There are multiple kinds of similarities between drugs, and these similarities reflect how similar two drugs are from the different views, whereas most of the previous methods failed to deeply integrate these similarities. In addition, the topology structures of the multiple drug-disease heterogeneous networks constructed by using the different kinds of drug similarities are not fully exploited. We therefore propose GFPred, a method based on a graph convolutional autoencoder and a fully-connected autoencoder with an attention mechanism, to predict drug-related diseases. GFPred integrates drug-disease associations, disease similarities, three kinds of drug similarities and attributes of the drug nodes. Three drug-disease heterogeneous networks are constructed based on the different kinds of drug similarities. We construct a graph convolutional autoencoder module, and integrate the attributes of the drug and disease nodes in each network to learn the topology representations of each drug node and disease node. As the different kinds of drug attributes contribute differently to the prediction of drug-disease associations, we construct an attribute-level attention mechanism. A fully-connected autoencoder module is established to learn the attribute representations of the drug and disease nodes. Finally, the original features of the drug-disease node pairs are also important auxiliary information for their association prediction. A combined strategy based on a convolutional neural network is proposed to fully integrate the topology representations, the attribute representations, and the original features of the drug-disease pairs. The ablation studies showed the contributions of data related to three types of drug attributes. Comparison with other methods confirmed that GFPred achieved better performance than several state-of-the-art prediction methods. In particular, case studies confirmed that GFPred is able to retrieve more actual drug-disease associations in the top k part of the prediction results. It is helpful for biologists to discover real associations by wet-lab experiments.

摘要

预测已批准药物的新用途有助于降低药物开发成本并加速开发过程。 之前的大多数方法都侧重于与药物和疾病相关的多源数据,以预测药物与疾病之间的候选关联。 药物之间存在多种相似性,这些相似性从不同角度反映了两种药物的相似程度,而之前的大多数方法都未能深入整合这些相似性。 此外,使用不同种类的药物相似性构建的多个药物-疾病异质网络的拓扑结构并未得到充分利用。 因此,我们提出了 GFPred,这是一种基于图卷积自动编码器和具有注意力机制的全连接自动编码器的方法,用于预测与药物相关的疾病。 GFPred 整合了药物-疾病关联、疾病相似性、三种药物相似性和药物节点属性。 基于不同种类的药物相似性构建了三个药物-疾病异质网络。 我们构建了一个图卷积自动编码器模块,并整合了每个网络中药物和疾病节点的属性,以学习每个药物节点和疾病节点的拓扑表示。 由于不同种类的药物属性对药物-疾病关联的预测有不同的贡献,我们构建了属性级注意力机制。 建立了一个全连接自动编码器模块,以学习药物和疾病节点的属性表示。 最后,药物-疾病节点对的原始特征对于它们的关联预测也是重要的辅助信息。 提出了一种基于卷积神经网络的组合策略,以充分整合药物-疾病节点对的拓扑表示、属性表示和原始特征。 消融研究表明了与三种类型的药物属性相关的数据的贡献。 与其他方法的比较证实了 GFPred 比几种最先进的预测方法具有更好的性能。 特别是,案例研究证实 GFPred 能够在预测结果的前 k 位中检索到更多实际的药物-疾病关联。 这有助于生物学家通过湿实验室实验发现真实的关联。

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