School of computer science and engineering, Central South University, Changsha, China.
Department of computer science and engineering, University of South Carolina, Columbia, South Carolina, United States of America.
PLoS Comput Biol. 2024 Jun 26;20(6):e1012229. doi: 10.1371/journal.pcbi.1012229. eCollection 2024 Jun.
De novo drug design is crucial in advancing drug discovery, which aims to generate new drugs with specific pharmacological properties. Recently, deep generative models have achieved inspiring progress in generating drug-like compounds. However, the models prioritize a single target drug generation for pharmacological intervention, neglecting the complicated inherent mechanisms of diseases, and influenced by multiple factors. Consequently, developing novel multi-target drugs that simultaneously target specific targets can enhance anti-tumor efficacy and address issues related to resistance mechanisms. To address this issue and inspired by Generative Pre-trained Transformers (GPT) models, we propose an upgraded GPT model with generative adversarial imitation learning for multi-target molecular generation called MTMol-GPT. The multi-target molecular generator employs a dual discriminator model using the Inverse Reinforcement Learning (IRL) method for a concurrently multi-target molecular generation. Extensive results show that MTMol-GPT generates various valid, novel, and effective multi-target molecules for various complex diseases, demonstrating robustness and generalization capability. In addition, molecular docking and pharmacophore mapping experiments demonstrate the drug-likeness properties and effectiveness of generated molecules potentially improve neuropsychiatric interventions. Furthermore, our model's generalizability is exemplified by a case study focusing on the multi-targeted drug design for breast cancer. As a broadly applicable solution for multiple targets, MTMol-GPT provides new insight into future directions to enhance potential complex disease therapeutics by generating high-quality multi-target molecules in drug discovery.
从头药物设计在推进药物发现中至关重要,其旨在生成具有特定药理特性的新药。最近,深度生成模型在生成类药物化合物方面取得了令人鼓舞的进展。然而,这些模型优先考虑单一目标药物生成以进行药理干预,忽略了疾病的复杂内在机制,并受到多种因素的影响。因此,开发同时针对特定靶点的新型多靶点药物可以提高抗肿瘤疗效,并解决与耐药机制相关的问题。为了解决这个问题,受生成式预训练转换器 (GPT) 模型的启发,我们提出了一种名为 MTMol-GPT 的具有生成对抗模仿学习的升级 GPT 模型,用于多靶点分子生成。多靶点分子生成器采用双判别器模型,使用反向强化学习 (IRL) 方法同时进行多靶点分子生成。大量结果表明,MTMol-GPT 为各种复杂疾病生成了各种有效、新颖和有效的多靶点分子,具有鲁棒性和泛化能力。此外,分子对接和药效团映射实验表明生成分子具有潜在的改善神经精神干预的药物样性质和有效性。此外,通过对乳腺癌的多靶点药物设计进行案例研究,展示了我们模型的通用性。作为针对多个靶点的广泛适用的解决方案,MTMol-GPT 通过在药物发现中生成高质量的多靶点分子,为增强潜在复杂疾病治疗方法提供了新的思路。