药物发现
可扩展性
机器学习
生成语法
图形
深度学习
虚拟筛选
人工智能
数据科学
深层神经网络
人工神经网络
生成模型
财产(哲学)
知识抽取
知识图
特征学习
理论计算机科学
图论
图形数据库
计算机科学
作者
Odin Zhang,Haitao Lin,Xujun Zhang,Xiaorui Wang,Zhenxing Wu,Qing Ye,Weibo Zhao,Jike Wang,Kejun Ying,Yu Kang,Chang‐Yu Hsieh,Tingjun Hou
出处
期刊:Chemical Reviews
[American Chemical Society]
日期:2025-09-17
卷期号:125 (20): 10001-10103
被引量:53
标识
DOI:10.1021/acs.chemrev.5c00461
摘要
Graph neural networks (GNNs), as topology/structure-aware models within deep learning, have emerged as powerful tools for AI-aided drug discovery (AIDD). By directly operating on molecular graphs, GNNs offer an intuitive and expressive framework for learning the complex topological and geometric features of drug-like molecules, cementing their role in modern molecular modeling. This review provides a comprehensive overview of the methodological foundations and representative applications of GNNs in drug discovery, spanning tasks such as molecular property prediction, virtual screening, molecular generation, biomedical knowledge graph construction, and synthesis planning. Particular attention is given to recent methodological advances, including geometric GNNs, interpretable models, uncertainty quantification, scalable graph architectures, and graph generative frameworks. We also discuss how these models integrate with modern deep learning approaches, such as self-supervised learning, multitask learning, meta-learning and pretraining. Throughout this review, we highlight the practical challenges and methodological bottlenecks encountered when applying GNNs to real-world drug discovery pipelines, and conclude with a discussion on future directions.
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