机器学习
药物重新定位
计算机科学
药物靶点
人工智能
交互网络
计算生物学
秩(图论)
任务(项目管理)
药品
药物发现
生物
生物信息学
药理学
工程类
经济
组合数学
管理
系统工程
基因
生物化学
数学
作者
Xiaoqing Ru,Xiucai Ye,Tetsuya Sakurai,Quan Zou,Lei Xu,Chen Lin
摘要
Drug-target interaction prediction is important for drug development and drug repurposing. Many computational methods have been proposed for drug-target interaction prediction due to their potential to the time and cost reduction. In this review, we introduce the molecular docking and machine learning-based methods, which have been widely applied to drug-target interaction prediction. Particularly, machine learning-based methods are divided into different types according to the data processing form and task type. For each type of method, we provide a specific description and propose some solutions to improve its capability. The knowledge of heterogeneous network and learning to rank are also summarized in this review. As far as we know, this is the first comprehensive review that summarizes the knowledge of heterogeneous network and learning to rank in the drug-target interaction prediction. Moreover, we propose three aspects that can be explored in depth for future research.
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