Liu Chuan-Su, Yan Bing-Chao, Sun Han-Dong, Lu Jin-Cai, Puno Pema-Tenzin
School of Traditional Chinese Materia Medica, Shenyang Pharmaceutical University, Shenyang, 110016, Liaoning, China.
State Key Laboratory of Phytochemistry and Natural Medicines, Kunming Institute of Botany, Chinese Academy of Sciences, Kunming, 650201, Yunnan, China.
Nat Prod Bioprospect. 2025 Jun 6;15(1):37. doi: 10.1007/s13659-025-00521-y.
Natural products (NPs) are invaluable resources for drug discovery, characterized by their intricate scaffolds and diverse bioactivities. AI drug discovery & design (AIDD) has emerged as a transformative approach for the rational structural modification of NPs. This review examines a variety of molecular generation models since 2020, focusing on their potential applications in two primary scenarios of NPs structure modification: modifications when the target is identified and when it remains unidentified. Most of the molecular generative models discussed herein are open-source, and their applicability across different domains and technical feasibility have been evaluated. This evaluation was accomplished by integrating a limited number of research cases and successful practices observed in the molecular optimization of synthetic compounds. Furthermore, the challenges and prospects of employing molecular generation modeling for the structural modification of NPs are discussed.
天然产物(NPs)是药物发现的宝贵资源,其特点是具有复杂的骨架和多样的生物活性。人工智能药物发现与设计(AIDD)已成为一种对天然产物进行合理结构修饰的变革性方法。本综述考察了自2020年以来的各种分子生成模型,重点关注它们在天然产物结构修饰的两种主要情形中的潜在应用:目标明确时和目标未明确时的修饰。本文讨论的大多数分子生成模型都是开源的,并且已经评估了它们在不同领域的适用性和技术可行性。这种评估是通过整合在合成化合物分子优化中观察到的有限数量的研究案例和成功实践来完成的。此外,还讨论了将分子生成建模用于天然产物结构修饰的挑战和前景。