School of Pharmacy, Hangzhou Normal University, Hangzhou 311121, PR China.
Key Laboratory of Elemene Class Anti-Cancer Chinese Medicines; Engineering Laboratory of Development and Application of Traditional Chinese Medicines; Collaborative Innovation Center of Traditional Chinese Medicines of Zhejiang Province, Hangzhou Normal University, Hangzhou 311121, PR China.
J Med Chem. 2024 Jun 27;67(12):10057-10075. doi: 10.1021/acs.jmedchem.4c00184. Epub 2024 Jun 12.
Artificial intelligence (AI) de novo molecular generation provides leads with novel structures for drug discovery. However, the target affinity and synthesizability of the generated molecules present critical challenges for the successful application of AI technology. Therefore, we developed an advanced reinforcement learning model to bridge the gap between the theory of de novo molecular generation and the practical aspects of drug discovery. This model utilizes chemical reaction templates and commercially available building blocks as a starting point and employs forward reaction prediction to generate molecules, while real-time docking and drug-likeness predictions are conducted to ensure synthesizability and drug-likeness. We applied this model to design active molecules targeting the inflammation-related receptor CXCR4 and successfully prepared them according to the AI-proposed synthetic routes. Several molecules exhibited potent anti-CXCR4 and anti-inflammatory activity in subsequent in vitro and in vivo assays. The top-performing compound alleviated symptoms related to inflammatory bowel disease and showed reasonable pharmacokinetic properties.
人工智能(AI)从头分子生成为药物发现提供了具有新颖结构的先导物。然而,生成分子的靶亲和力和可合成性对成功应用 AI 技术提出了重大挑战。因此,我们开发了一种先进的强化学习模型,以弥合从头分子生成理论与药物发现实际方面之间的差距。该模型以化学反应模板和市售构建块为起点,采用正向反应预测生成分子,同时进行实时对接和药物相似性预测,以确保可合成性和药物相似性。我们将该模型应用于设计针对炎症相关受体 CXCR4 的活性分子,并根据 AI 提出的合成路线成功制备了它们。随后的体外和体内实验表明,一些分子表现出强大的抗 CXCR4 和抗炎活性。表现最佳的化合物 缓解了与炎症性肠病相关的症状,并表现出合理的药代动力学特性。