Chongqing Key Laboratory of Natural Product Synthesis and Drug Research, School of Pharmaceutical Sciences, Chongqing University, Chongqing 401331, China.
J Chem Inf Model. 2024 May 27;64(10):4059-4070. doi: 10.1021/acs.jcim.4c00504. Epub 2024 May 13.
Central nervous system (CNS) drugs have had a significant impact on treating a wide range of neurodegenerative and psychiatric disorders. In recent years, deep learning-based generative models have shown great potential for accelerating drug discovery and improving efficacy. However, specific applications of these techniques in CNS drug discovery have not been widely reported. In this study, we developed the CNSMolGen model, which uses a framework of bidirectional recurrent neural networks (Bi-RNNs) for de novo molecular design of CNS drugs. Results showed that the pretrained model was able to generate more than 90% of completely new molecular structures, which possessed the properties of CNS drug molecules and were synthesizable. In addition, transfer learning was performed on small data sets with specific biological activities to evaluate the potential application of the model for CNS drug optimization. Here, we used drugs against the classical CNS disease target serotonin transporter (SERT) as a fine-tuned data set and generated a focused database against the target protein. The potential biological activities of the generated molecules were verified by using the physics-based induced-fit docking study. The success of this model demonstrates its potential in CNS drug design and optimization, which provides a new impetus for future CNS drug development.
中枢神经系统(CNS)药物在治疗广泛的神经退行性和精神疾病方面产生了重大影响。近年来,基于深度学习的生成模型在加速药物发现和提高疗效方面显示出巨大的潜力。然而,这些技术在中枢神经系统药物发现中的具体应用尚未得到广泛报道。在这项研究中,我们开发了 CNSMolGen 模型,该模型使用双向递归神经网络(Bi-RNN)框架进行中枢神经系统药物的从头分子设计。结果表明,经过预训练的模型能够生成超过 90%的全新分子结构,这些分子具有中枢神经系统药物分子的特性,并且可以合成。此外,我们还对具有特定生物学活性的小数据集进行了迁移学习,以评估该模型在中枢神经系统药物优化中的潜在应用。在这里,我们使用针对经典中枢神经系统疾病靶点 5-羟色胺转运体(SERT)的药物作为微调数据集,并针对目标蛋白生成了一个集中的数据库。通过基于物理的诱导契合对接研究验证了所生成分子的潜在生物学活性。该模型的成功证明了其在中枢神经系统药物设计和优化方面的潜力,为未来的中枢神经系统药物开发提供了新的动力。