Generation of molecular conformations using generative adversarial neural networks†

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY Digital discovery Pub Date : 2024-11-19 DOI:10.1039/D4DD00179F
Congsheng Xu, Xiaomei Deng, Yi Lu and Peiyuan Yu
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Abstract

The accurate determination of a molecule's accessible conformations is key to the success of studying its properties. Traditional computational methods for exploring the conformational space of molecules such as molecular dynamics simulations, however, require substantial computational resources and time. Recently, deep generative models have made significant progress in various fields, harnessing their powerful learning capabilities for complex data distributions. This makes them highly applicable in molecular conformation generation. In this study, we developed ConfGAN, a conformation generation model based on conditional generative adversarial networks. We designed an efficient molecular-motif graph representation, treating molecules composed of functional groups, capturing interactions between groups, and providing rich chemical prior knowledge for conformation generation. During adversarial training, the generator network takes molecular graphs as input and attempts to generate stable conformations with minimal potential energy. The discriminator provides feedback based on energy differences, guiding the generation of conformations that comply with chemical rules. This model explicitly encodes molecular knowledge, ensuring the physical plausibility of generated conformations. Through extensive evaluation, ConfGAN has demonstrated superior performance compared to existing deep learning-based models. Furthermore, conformations generated by ConfGAN have demonstrated potential applications in related fields such as molecular docking and electronic property calculations.

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使用生成对抗神经网络生成分子构象[j]
准确确定分子的可接近构象是研究其性质成功的关键。然而,传统的计算方法用于探索分子构象空间,如分子动力学模拟,需要大量的计算资源和时间。近年来,深度生成模型在各个领域取得了重大进展,利用其强大的学习能力来处理复杂的数据分布。这使得它们在分子构象生成中非常适用。在这项研究中,我们开发了ConfGAN,一个基于条件生成对抗网络的构象生成模型。我们设计了一个高效的分子-基序图表示,处理由官能团组成的分子,捕获基团之间的相互作用,并为构象生成提供丰富的化学先验知识。在对抗训练中,生成器网络以分子图作为输入,试图以最小的势能生成稳定的构象。鉴别器根据能量差提供反馈,指导生成符合化学规则的构象。该模型明确编码分子知识,确保生成的构象的物理合理性。通过广泛的评估,与现有的基于深度学习的模型相比,ConfGAN表现出了优越的性能。此外,ConfGAN生成的构象在分子对接和电子性质计算等相关领域也有潜在的应用。
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