Sadeghi Shaghayegh, Lu Jianguo, Ngom Alioune
School of Computer Science, University of Windsor, Windsor, ON, Canada.
Front Pharmacol. 2022 Jul 6;13:908549. doi: 10.3389/fphar.2022.908549. eCollection 2022.
Drug repurposing is the process of discovering new indications (i.e., diseases or conditions) for already approved drugs. Many computational methods have been proposed for predicting new associations between drugs and diseases. In this article, we proposed a new method, called DR-HGNN, an integrative heterogeneous graph neural network-based method for multi-labeled drug repurposing, to discover new indications for existing drugs. For this purpose, we first used the DTINet dataset to construct a heterogeneous drug-protein-disease (DPD) network, which is a graph composed of four types of nodes (drugs, proteins, diseases, and drug side effects) and eight types of edges. Second, we labeled each drug-protein edge, = ( , ), of the DPD network with a set of diseases, { , … , } associated with both and and then devised multi-label ranking approaches which incorporate neural network architecture that operates on the heterogeneous graph-structured data and which leverages both the interaction patterns and the features of drug and protein nodes. We used a derivative of the GraphSAGE algorithm, HinSAGE, on the heterogeneous DPD network to learn low-dimensional vector representation of features of drugs and proteins. Finally, we used the drug-protein network to learn the embeddings of the drug-protein edges and then predict the disease labels that act as bridges between drugs and proteins. The proposed method shows better results than existing methods applied to the DTINet dataset, with an AUC of 0.964.
药物再利用是指为已获批药物发现新适应症(即疾病或病症)的过程。已经提出了许多计算方法来预测药物与疾病之间的新关联。在本文中,我们提出了一种名为DR-HGNN的新方法,这是一种基于异构图神经网络的多标签药物再利用方法,用于发现现有药物的新适应症。为此,我们首先使用DTINet数据集构建了一个异质药物-蛋白质-疾病(DPD)网络,该网络是一个由四种类型的节点(药物、蛋白质、疾病和药物副作用)和八种类型的边组成的图。其次,我们用一组与 和 都相关的疾病{ , … , }标记DPD网络中每条药物-蛋白质边 = ( , ),然后设计了多标签排序方法,该方法结合了在异构图结构数据上运行的神经网络架构,并利用了药物和蛋白质节点的相互作用模式和特征。我们在异质DPD网络上使用GraphSAGE算法的一个变体HinSAGE来学习药物和蛋白质特征的低维向量表示。最后,我们使用药物-蛋白质网络来学习药物-蛋白质边的嵌入,然后预测充当药物和蛋白质之间桥梁的疾病标签。所提出的方法在应用于DTINet数据集时比现有方法显示出更好的结果,AUC为0.964。