Zong Nansu, Wong Rachael Sze Nga, Ngo Victoria
Department of Biomedical Informatics, School of Medicine, University of California San Diego, San Diego, CA, USA.
Betty Irene Moore School of Nursing, University of California Davis, Sacramento, CA, USA.
Methods Mol Biol. 2019;1903:317-328. doi: 10.1007/978-1-4939-8955-3_19.
The drug discovery process is conventionally regarded as resource intensive and complex. Therefore, research effort has been put into a process called drug repositioning with the use of computational methods. Similarity-based methods are common in predicting drug-target association or the interaction between drugs and targets based on various features the drugs and targets have. Heterogeneous network topology involving many biomedical entities interactions has yet to be used in drug-target association. Deep learning can disclose features of vertices in a large network, which can be incorporated with heterogeneous network topology in order to assist similarity-based solutions to provide more flexibility for drug-target prediction. Here we describe a similarity-based drug-target prediction method that utilizes a topology-based similarity measure and two inference methods based on the similarities. We used DeepWalk, a deep learning method, to calculate the vertex similarities based on Linked Tripartite Network (LTN), which is a heterogeneous network created from different biomedical-linked datasets. The similarities are further used to feed to the inference methods, drug-based similarity inference (DBSI) and target-based similarity inference (TBSI), to obtain the predicted drug-target associations. Our previous experiments have shown that by utilizing deep learning and heterogeneous network topology, the proposed method can provide more promising results than current topology-based similarity computation methods.
药物发现过程传统上被认为资源密集且复杂。因此,人们利用计算方法将研究精力投入到一个名为药物重新定位的过程中。基于相似性的方法在基于药物和靶点所具有的各种特征预测药物-靶点关联或药物与靶点之间的相互作用方面很常见。涉及许多生物医学实体相互作用的异质网络拓扑结构尚未用于药物-靶点关联。深度学习可以揭示大型网络中顶点的特征,这可以与异质网络拓扑结构相结合,以协助基于相似性的解决方案为药物-靶点预测提供更大的灵活性。在这里,我们描述了一种基于相似性的药物-靶点预测方法,该方法利用基于拓扑的相似性度量和两种基于相似性的推理方法。我们使用深度学习方法DeepWalk,基于链接三方网络(LTN)计算顶点相似性,LTN是一个由不同生物医学链接数据集创建的异质网络。这些相似性进一步用于输入推理方法,即基于药物的相似性推理(DBSI)和基于靶点的相似性推理(TBSI),以获得预测的药物-靶点关联。我们之前的实验表明,通过利用深度学习和异质网络拓扑结构,所提出的方法可以比当前基于拓扑的相似性计算方法提供更有前景的结果。