Nan LiZhihao YangJian WangHongfei Lin
The prediction of drug-target interactions (DTIs) is a critical phase in the sustainable drug development process, especially when the research focus is to capitalize on the repositioning of existing drugs. Computational approaches to predicting DTIs can provide important insights into drug mechanisms of action. However, current methods for predicting DTIs based on the structural information of the knowledge graph may suffer from the sparseness and incompleteness of the knowledge graph and neglect the latent type information of the knowledge graph. In this paper, we propose TTModel, a knowledge graph embedding model for DTI prediction. By exploiting biomedical text and type information, TTModel can learn latent text semantics and type information to improve the performance of representation learning. Comprehensive experiments on two public datasets demonstrate that our model outperforms the state-of-the-art methods significantly on the task of DTI prediction.
Maha A. ThafarRawan S. OlayanHaitham AshoorSomayah AlbaradeiVladimir B. BajićXin GaoTakashi GojoboriMagbubah Essack
Jiaxin LiXixin YangYuanlin GuanZhenkuan Pan