计算机科学
图形
自编码
化学信息学
异构网络
水准点(测量)
药品
机器学习
人工智能
药物发现
人工神经网络
数据挖掘
理论计算机科学
生物信息学
地理
无线
精神科
大地测量学
无线网络
生物
电信
心理学
作者
Yuhui Li,Wei Liang,Peng Li,Dafang Zhang,Yang Cheng,Kuan‐Ching Li
标识
DOI:10.1109/tcbb.2022.3204188
摘要
Drug target interaction prediction is a crucial stage in drug discovery. However, brute-force search over a compound database is financially infeasible. We have witnessed the increasing measured drug-target interactions records in recent years, and the rich drug/protein-related information allows the usage of graph machine learning. Despite the advances in deep learning-enabled drug-target interaction, there are still open challenges: (1) rich and complex relationship between drugs and proteins can be explored; (2) the intermediate node is not calibrated in the heterogeneous graph. To tackle with above issues, this paper proposed a framework named DSG-DTI. Specifically, DSG-DTI has the heterogeneous graph autoencoder and heterogeneous attention network-based Matrix Completion. Our framework ensures that the known types of nodes (e.g., drug, target, side effects, diseases) are precisely embedded into high-dimensional space with our pretraining skills. Also, the attention-based heterogeneous graph-based matrix completion achieves highly competitive results via effective long-range dependencies extraction. We verify our model on two public benchmarks. The result of two publicly available benchmark application programs show that the proposed scheme effectively predicts drug-target interactions and can generalize to newly registered drugs and targets with slight performance degradation, outperforming the best accuracy compared with other baselines.
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