Molecular dynamics is the primary computational method by which modern structural biology explores macromolecule structure and function. Boltzmann generators have been proposed as an alternative to molecular dynamics, by replacing the integration of molecular systems over time with the training of generative neural networks. This neural network approach to MD samples rare events at a higher rate than traditional MD, however critical gaps in the theory and computational feasibility of Boltzmann generators significantly reduce their usability. Here, we develop a mathematical foundation to overcome these barriers; we demonstrate that the Boltzmann generator approach is sufficiently rapid to replace traditional MD for complex macromolecules, such as proteins in specific applications, and we provide a comprehensive toolkit for the exploration of molecular energy landscapes with neural networks.
翻译:分子动态是现代结构生物学探索大型分子结构和功能的主要计算方法。 Boltzmann 生成器被提议作为分子动态的替代方法,通过培训基因神经网络来取代分子系统的长期整合。MD 样本稀有事件的神经网络方法高于传统的MD,尽管Boltzmann 生成器在理论和计算可行性方面存在重大差距,但大大降低了它们的可用性。在这里,我们开发了一个数学基础,以克服这些障碍;我们证明Boltzmann 生成器非常迅速,足以取代用于复杂大型分子(如特定应用中的蛋白质)的传统MD,我们提供了利用神经网络探索分子能源景观的综合工具包。