化学
机制(生物学)
药物发现
人工智能
计算机科学
不信任
代表(政治)
深度学习
多样性(控制论)
感知
机器学习
图形
特征学习
深层神经网络
特征(语言学)
数据科学
理论计算机科学
神经科学
心理学
认识论
政治
哲学
生物化学
法学
心理治疗师
语言学
政治学
作者
Zhaoping Xiong,Dingyan Wang,Xiaohong Liu,Feisheng Zhong,Xiaozhe Wan,Xutong Li,Zhaojun Li,Xiaomin Luo,Kaixian Chen,Hualiang Jiang,Mingyue Zheng
标识
DOI:10.1021/acs.jmedchem.9b00959
摘要
Hunting for chemicals with favorable pharmacological, toxicological, and pharmacokinetic properties remains a formidable challenge for drug discovery. Deep learning provides us with powerful tools to build predictive models that are appropriate for the rising amounts of data, but the gap between what these neural networks learn and what human beings can comprehend is growing. Moreover, this gap may induce distrust and restrict deep learning applications in practice. Here, we introduce a new graph neural network architecture called Attentive FP for molecular representation that uses a graph attention mechanism to learn from relevant drug discovery data sets. We demonstrate that Attentive FP achieves state-of-the-art predictive performances on a variety of data sets and that what it learns is interpretable. The feature visualization for Attentive FP suggests that it automatically learns nonlocal intramolecular interactions from specified tasks, which can help us gain chemical insights directly from data beyond human perception.
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