Department of Applied Physics, Aalto University, 00076AALTO, Finland.
State Key Laboratory of Low Dimensional Quantum Physics and Department of Physics, Tsinghua University, 100084Beijing, China.
J Chem Inf Model. 2023 Feb 13;63(3):745-752. doi: 10.1021/acs.jcim.2c01120. Epub 2023 Jan 15.
Finding low-energy conformers of organic molecules is a complex problem due to the flexibilities of the molecules and the high dimensionality of the search space. When such molecules are on nanoclusters, the search complexity is exacerbated by constraints imposed by the presence of the cluster and other surrounding molecules. To address this challenge, we modified our previously developed active learning molecular conformer search method based on Bayesian optimization and density functional theory. Especially, we have developed and tested strategies to avoid steric clashes between a molecule and a cluster. In this work, we chose a cysteine molecule on a well-studied gold-thiolate cluster as a model system to test and demonstrate our method. We found that cysteine conformers in a cluster inherit the hydrogen bond types from isolated conformers. However, the energy rankings and spacings between the conformers are reordered.
寻找有机分子的低能量构象是一个复杂的问题,这是由于分子的柔韧性和搜索空间的高维度所致。当这些分子存在于纳米团簇上时,由于团簇和其他周围分子的存在所施加的约束,搜索的复杂性会加剧。为了解决这个挑战,我们修改了我们之前开发的基于贝叶斯优化和密度泛函理论的主动学习分子构象搜索方法。特别是,我们开发并测试了避免分子与团簇之间产生空间位阻的策略。在这项工作中,我们选择了一个巯基金团簇上的半胱氨酸分子作为模型系统来测试和展示我们的方法。我们发现,团簇中的半胱氨酸构象继承了来自孤立构象的氢键类型。然而,构象之间的能量排序和间隔被重新排列。