Zhou Yiling, Jiang Dejun, Wei Xiao, Yi Jiacai, Wang Yikun, Deng Youchao, Cao Dongsheng
Xiangya School of Pharmaceutical Sciences, Central South University Changsha 410013 Hunan P.R. China
College of Computer, National University of Defense Technology Changsha 410073 Hunan China.
Chem Sci. 2025 Sep 5. doi: 10.1039/d5sc04631a.
Predicting drug metabolism remains a long-standing challenge in pharmacokinetics due to the mechanistic complexity of enzymatic transformations and the fragmented nature of current computational tools. Existing models are typically limited to isolated tasks - substrate recognition, metabolic site identification, or metabolite generation - lacking mechanistic fidelity, holistic integration, and chemical interpretability. Here, we introduce DeepMetab, the first comprehensive and mechanistically informed deep graph learning framework for end-to-end prediction of CYP450-mediated drug metabolism. DeepMetab uniquely integrates three essential prediction tasks - substrate profiling, site-of-metabolism (SOM) localization, and metabolite generation - within a unified multi-task architecture. It employs a dual-labeling strategy that simultaneously captures atom- and bond-level reactivity, and infuses multi-scale features including quantum-informed and topological descriptors into a graph neural network (GNN) backbone. A curated knowledge base of expert-derived reaction rules further ensures mechanistic consistency during metabolite synthesis. DeepMetab consistently outperformed existing models across nine major CYP isoforms in all three prediction tasks. Its strong generalizability was further validated on 18 recently FDA-approved drugs, achieving 100% TOP-2 accuracy for SOM prediction and accurately recovering several experimentally confirmed metabolites absent from the training set. Visualization of learned representations reveals expert-level discernment of electronic characteristics, steric architecture, and regiochemical determinants, underscoring the model's interpretability. Together, DeepMetab represents a next-generation AI system that bridges symbolic reaction rules and deep graph reasoning to deliver accurate, interpretable, and end-to-end metabolism predictions, offering tangible value for both preclinical research and regulatory applications.
由于酶促转化的机制复杂性以及当前计算工具的碎片化性质,预测药物代谢仍然是药代动力学中一个长期存在的挑战。现有模型通常局限于孤立的任务——底物识别、代谢位点鉴定或代谢物生成——缺乏机制保真度、整体整合和化学可解释性。在这里,我们介绍了DeepMetab,这是第一个用于CYP450介导的药物代谢的端到端预测的全面且基于机制的深度图学习框架。DeepMetab在统一的多任务架构中独特地整合了三个基本预测任务——底物分析、代谢位点(SOM)定位和代谢物生成。它采用了一种双标记策略,同时捕获原子和键级的反应性,并将包括量子信息和拓扑描述符在内的多尺度特征注入到图神经网络(GNN)主干中。一个精心策划的、由专家得出的反应规则知识库进一步确保了代谢物合成过程中的机制一致性。在所有三个预测任务中,DeepMetab在九种主要CYP亚型上始终优于现有模型。其强大的通用性在18种最近获得FDA批准的药物上得到了进一步验证,在SOM预测中实现了100%的TOP-2准确率,并准确地找回了训练集中不存在的几种经实验证实的代谢物。对学习表征的可视化揭示了对电子特性、空间结构和区域化学决定因素的专家级辨别,突出了该模型的可解释性。总之,DeepMetab代表了一种下一代人工智能系统,它架起了符号反应规则和深度图推理之间的桥梁,以提供准确、可解释的端到端代谢预测,为临床前研究和监管应用都提供了切实的价值。