可解释性
计算机科学
图形
人工智能
特征(语言学)
特征学习
时间轴
机器学习
代表(政治)
鉴定(生物学)
深度学习
注意力网络
数据挖掘
交互网络
序列(生物学)
面子(社会学概念)
理论计算机科学
交互信息
药物发现
外部数据表示
基线(sea)
双线性插值
有向图
作者
Yi Wen,Shiyu Yan,Min Chen,Mohamed Amine Moatadid,Juan Yang
标识
DOI:10.1021/acs.jcim.5c02364
摘要
The accurate identification of drug-target interactions is crucial for shortening the timeline and lowering the expenses of pharmaceutical research, as the discovery of novel drugs remains a highly complex, resource-intensive, and lengthy endeavor. Despite progress in the use of deep learning for drug-target interaction prediction, these methods still face substantial challenges in feature representation and model interpretability, especially when dealing with complex, multiscale interaction relationships. To address this, we propose a novel deep learning framework, LGABAN, which jointly models multilevel information from both drugs and proteins by parallelly extracting local and global features through a dual-branch structure. To explicitly model the complex multiscale interactions between drugs and proteins, LGABAN integrates four types of feature pairs─local-local, local-global, global-local, and global-global─using a bilinear attention network (BAN). Additionally, we introduce a multihead graph attention network (GAT) to further enhance the representational capacity of drug graph representations. Experimental results on four publicly available data sets reveal that LGABAN surpasses six state-of-the-art baseline models in overall performance. Furthermore, satisfactory interpretability results are provided for all aspects of drug-target interaction prediction.
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