作者
Bo-Wei Zhao, Zhu-Hong You, Lun Hu, Zhen-Hao Guo, Lei Wang, Zhan-Heng Chen, Leon Wong
发表日期
2021/4/27
期刊
Cancers
卷号
13
期号
9
页码范围
2111
出版商
MDPI
简介
Simple Summary
The traditional process of drug development is lengthy, time-consuming, and costly, whereas very few drugs ever make it to the clinic. The use of computational methods to detect drug side effects greatly reduces the deficiencies in drug clinical trials. Prediction of drug-target interactions is a key step in drug discovery and repositioning. In this article, we proposed a novel method for the prediction of drug-target interactions based on large-scale graph representation learning. This method can be helpful to researchers in clinical trials and drug research and development.
Abstract
Identification of drug-target interactions (DTIs) is a significant step in the drug discovery or repositioning process. Compared with the time-consuming and labor-intensive in vivo experimental methods, the computational models can provide high-quality DTI candidates in an instant. In this study, we propose a novel method called LGDTI to predict DTIs based on large-scale graph representation learning. LGDTI can capture the local and global structural information of the graph. Specifically, the first-order neighbor information of nodes can be aggregated by the graph convolutional network (GCN); on the other hand, the high-order neighbor information of nodes can be learned by the graph embedding method called DeepWalk. Finally, the two kinds of feature are fed into the random forest classifier to train and predict potential DTIs. The results show that our method obtained area under the receiver operating characteristic curve (AUROC) of 0.9455 and area under the precision-recall curve (AUPR) of 0.9491 under 5-fold cross …
引用总数