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BOKEI:基于相关扭转的贝叶斯优化和构象生成的预期改进。

BOKEI: Bayesian optimization using knowledge of correlated torsions and expected improvement for conformer generation.

机构信息

Department of Statistics, University of Oxford, 24-29 St Giles, Oxford, OX1 3LB, UK.

Department of Chemistry and Chemical Engineering, University of Pittsburgh, 219 Parkman Avenue, Pittsburgh, PA 15260, USA.

出版信息

Phys Chem Chem Phys. 2020 Mar 4;22(9):5211-5219. doi: 10.1039/c9cp06688h.

Abstract

A key challenge in conformer sampling is finding low-energy conformations with a small number of energy evaluations. We recently demonstrated the Bayesian Optimization Algorithm (BOA) is an effective method for finding the lowest energy conformation of a small molecule. Our approach balances between exploitation and exploration, and is more efficient than exhaustive or random search methods. Here, we extend strategies used on proteins and oligopeptides (e.g. Ramachandran plots of secondary structure) and study correlated torsions in small molecules. We use bivariate von Mises distributions to capture correlations, and use them to constrain the search space. We validate the performance of our new method, Bayesian Optimization with Knowledge-based Expected Improvement (BOKEI), on a dataset consisting of 533 diverse small molecules, using (i) a force field (MMFF94); and (ii) a semi-empirical method (GFN2), as the objective function. We compare the search performance of BOKEI, BOA with Expected Improvement (BOA-EI), and a genetic algorithm (GA), using a fixed number of energy evaluations. In more than 60% of the cases examined, BOKEI finds lower energy conformations than global optimization with BOA-EI or GA. More importantly, we find correlated torsions in up to 15% of small molecules in larger data sets, up to 8 times more often than previously reported. The BOKEI patterns not only describe steric clashes, but also reflect favorable intramolecular interactions such as hydrogen bonds and π-π stacking. Increasing our understanding of the conformational preferences of molecules will help improve our ability to find low energy conformers efficiently, which will have impact in a wide range of computational modeling applications.

摘要

构象采样的一个关键挑战是用少量的能量评估找到低能量构象。我们最近证明了贝叶斯优化算法(BOA)是一种寻找小分子最低能量构象的有效方法。我们的方法在开发和探索之间取得平衡,比穷举或随机搜索方法更有效。在这里,我们扩展了在蛋白质和寡肽上使用的策略(例如二级结构的 Ramachandran 图),并研究小分子中的相关扭转。我们使用双变量 von Mises 分布来捕捉相关性,并将其用于约束搜索空间。我们使用包含 533 种不同小分子的数据集来验证我们的新方法,即基于知识的贝叶斯改进期望优化(BOKEI)的性能,使用(i)力场(MMFF94);和(ii)半经验方法(GFN2)作为目标函数。我们使用固定数量的能量评估来比较 BOKEI、具有改进期望的 BOA(BOA-EI)和遗传算法(GA)的搜索性能。在检查的超过 60%的情况下,BOKEI 找到了比 BOA-EI 或 GA 的全局优化更低能量的构象。更重要的是,我们在更大的数据集中小分子中发现了多达 15%的相关扭转,比以前报道的多 8 倍。BOKEI 模式不仅描述了空间冲突,还反映了有利的分子内相互作用,如氢键和π-π堆积。增加我们对分子构象偏好的理解将有助于提高我们有效地找到低能量构象的能力,这将对广泛的计算建模应用产生影响。

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