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通过药效团组合与分子模拟的协同学习进行结构感知双靶点药物设计。

Structure-aware dual-target drug design through collaborative learning of pharmacophore combination and molecular simulation.

作者信息

Chen Sheng, Xie Junjie, Ye Renlong, Xu David Daqiang, Yang Yuedong

机构信息

School of Computer Science and Engineering, Sun Yat-sen University Guangzhou 510006 China.

AixplorerBio Inc. Jiaxing 314031 China

出版信息

Chem Sci. 2024 Jun 13;15(27):10366-10380. doi: 10.1039/d4sc00094c. eCollection 2024 Jul 10.

DOI:10.1039/d4sc00094c
PMID:38994407
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11234869/
Abstract

Dual-target drug design has gained significant attention in the treatment of complex diseases, such as cancers and autoimmune disorders. A widely employed design strategy is combining pharmacophores to leverage the knowledge of structure-activity relationships of both targets. Unfortunately, pharmacophore combination often struggles with long and expensive trial and error, because the protein pockets of the two targets impose complex structural constraints. In this study, we propose AIxFuse, a structure-aware dual-target drug design method that learns pharmacophore fusion patterns to satisfy the dual-target structural constraints simulated by molecular docking. AIxFuse employs two self-play reinforcement learning (RL) agents to learn pharmacophore selection and fusion by comprehensive feedback including dual-target molecular docking scores. Collaboratively, the molecular docking scores are learned by active learning (AL). Through collaborative RL and AL, AIxFuse learns to generate molecules with multiple desired properties. AIxFuse is shown to outperform state-of-the-art methods in generating dual-target drugs against glycogen synthase kinase-3 beta (GSK3β) and c-Jun N-terminal kinase 3 (JNK3). When applied to another task against retinoic acid receptor-related orphan receptor γ-t (RORγt) and dihydroorotate dehydrogenase (DHODH), AIxFuse exhibits consistent performance while compared methods suffer from performance drops, leading to a 5 times higher performance in success rate. Docking studies demonstrate that AIxFuse can generate molecules concurrently satisfying the binding mode required by both targets. Further free energy perturbation calculation indicates that the generated candidates have promising binding free energies against both targets.

摘要

双靶点药物设计在癌症和自身免疫性疾病等复杂疾病的治疗中受到了广泛关注。一种广泛应用的设计策略是结合药效团,以利用两个靶点的构效关系知识。不幸的是,药效团组合常常面临漫长且昂贵的试错过程,因为两个靶点的蛋白质口袋会施加复杂的结构限制。在本研究中,我们提出了AIxFuse,一种结构感知的双靶点药物设计方法,该方法学习药效团融合模式以满足通过分子对接模拟的双靶点结构限制。AIxFuse采用两个自博弈强化学习(RL)智能体,通过包括双靶点分子对接分数在内的综合反馈来学习药效团的选择和融合。协同地,分子对接分数通过主动学习(AL)来学习。通过协作式强化学习和主动学习,AIxFuse学会生成具有多种期望特性的分子。在生成针对糖原合酶激酶-3β(GSK3β)和c-Jun氨基末端激酶3(JNK3)的双靶点药物方面,AIxFuse被证明优于现有方法。当应用于针对维甲酸受体相关孤儿受体γ-t(RORγt)和二氢乳清酸脱氢酶(DHODH)的另一项任务时,AIxFuse表现出一致的性能,而相比之下的方法性能下降,导致成功率提高了5倍。对接研究表明,AIxFuse可以生成同时满足两个靶点所需结合模式的分子。进一步的自由能扰动计算表明,生成的候选物对两个靶点都具有有前景的结合自由能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3af3/11234869/1447c4bc9d88/d4sc00094c-f5.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3af3/11234869/831d292ebdf8/d4sc00094c-f1.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3af3/11234869/1447c4bc9d88/d4sc00094c-f5.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3af3/11234869/831d292ebdf8/d4sc00094c-f1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3af3/11234869/4d17f41e0d4a/d4sc00094c-f2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3af3/11234869/751f9cb95bf1/d4sc00094c-f3.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3af3/11234869/7469316bc4db/d4sc00094c-f4.jpg
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