图神经网络在现代ai辅助药物发现中的应用

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
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引用次数: 0

摘要

图神经网络(gnn)作为深度学习中的拓扑/结构感知模型,已经成为人工智能辅助药物发现(AIDD)的强大工具。通过直接操作分子图,gnn为学习药物类分子的复杂拓扑和几何特征提供了一个直观和富有表现力的框架,巩固了它们在现代分子建模中的作用。本文综述了gnn的方法学基础和在药物发现中的代表性应用,包括分子性质预测、虚拟筛选、分子生成、生物医学知识图谱构建和合成规划等。特别关注最近的方法学进展,包括几何gnn、可解释模型、不确定性量化、可扩展图架构和图生成框架。我们还讨论了这些模型如何与现代深度学习方法相结合,如自监督学习、多任务学习、元学习和预训练。在这篇综述中,我们强调了在将gnn应用于现实世界的药物发现管道时遇到的实际挑战和方法瓶颈,并讨论了未来的发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Neural Networks in Modern AI-aided Drug Discovery
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, multi-task learning, meta-learning and pre-training. 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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