Jin Hongni, Merz Kenneth M
Department of Chemistry, Michigan State University, East Lansing, Michigan 48824, United States.
Department of Biochemistry and Molecular Biology, Michigan State University, East Lansing, Michigan 48824, United States.
J Chem Inf Model. 2024 Apr 22;64(8):3140-3148. doi: 10.1021/acs.jcim.4c00095. Epub 2024 Apr 8.
Understanding the energetic landscapes of large molecules is necessary for the study of chemical and biological systems. Recently, deep learning has greatly accelerated the development of models based on quantum chemistry, making it possible to build potential energy surfaces and explore chemical space. However, most of this work has focused on organic molecules due to the simplicity of their electronic structures as well as the availability of data sets. In this work, we build a deep learning architecture to model the energetics of zinc organometallic complexes. To achieve this, we have compiled a configurationally and conformationally diverse data set of zinc complexes using metadynamics to overcome the limitations of traditional sampling methods. In terms of the neural network potentials, our results indicate that for zinc complexes, partial charges play an important role in modeling the long-range interactions with a neural network. Our developed model outperforms semiempirical methods in predicting the relative energy of zinc conformers, yielding a mean absolute error (MAE) of 1.32 kcal/mol with reference to the double-hybrid PWPB95 method.
理解大分子的能量景观对于化学和生物系统的研究至关重要。最近,深度学习极大地加速了基于量子化学的模型开发,使得构建势能面和探索化学空间成为可能。然而,由于有机分子电子结构的简单性以及数据集的可得性,大部分此类工作都集中在有机分子上。在这项工作中,我们构建了一个深度学习架构来模拟有机金属锌配合物的能量学。为实现这一目标,我们使用元动力学编制了一个构型和构象多样的锌配合物数据集,以克服传统采样方法的局限性。在神经网络势方面,我们的结果表明,对于锌配合物,部分电荷在利用神经网络模拟长程相互作用中起着重要作用。我们开发的模型在预测锌构象体的相对能量方面优于半经验方法,相对于双杂化PWPB95方法,平均绝对误差(MAE)为1.32千卡/摩尔。