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Automatic parametrization of non-polar implicit solvent models for the blind prediction of solvation free energies

机译:非极性隐式溶剂模型的自动参数化,用于抑制溶剂化能量的盲预测

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In this work, a systematic protocol is proposed to automatically parametrize the non-polar part of implicit solvent models with polar and non-polar components. The proposed protocol utilizes either the classical Poisson model or the Kohn-Sham density functional theory based polarizable Poisson model for modeling polar solvation free energies. Four sets of radius parameters are combined with four sets of charge force fields to arrive at a total of 16 different parametrizations for the polar component. For the non-polar component, either the standard model of surface area, molecular volume, and van der Waals interactions or a model with atomic surface areas and molecular volume is employed. To automatically parametrize a non-polar model, we develop scoring and ranking algorithms to classify solute molecules. The their non-polar parametrization is obtained based on the assumption that similar molecules have similar parametrizations. A large database with 668 experimental data is collected and employed to validate the proposed protocol. The lowest leave-one-out root mean square (RMS) error for the database is 1.33 kcal/mol. Additionally, five subsets of the database, i.e., SAMPL0-SAMPL4, are employed to further demonstrate that the proposed protocol. The optimal RMS errors are 0.93, 2.82, 1.90, 0.78, and 1.03 kcal/mol, respectively, for SAMPL0, SAMPL1, SAMPL2, SAMPL3, and SAMPL4 test sets. The corresponding RMS errors for the polarizable Poisson model with the Amber Bondi radii are 0.93, 2.89, 1.90, 1.16, and 1.07 kcal/mol, respectively. Published by AIP Publishing.
机译:在这项工作中,提出了一种系统的协议,以自动使用极性和非极性组件自动参加隐式溶剂型号的非极性部分。所提出的协议利用典型的泊松模型或Kohn-Maf密度泛函理论的基于极化泊松模型,用于建模极性溶剂化能量。四组半径参数组合与四组充电力字段,以总共16套用于极性组件的16个不同的参数化。对于非极性成分,使用表面积,分子量和范德瓦尔斯相互作用或具有原子表面积和分子体积的模型的标准模型。为了自动参加非极性模型,我们开发评分和排名算法以分类溶质分子。基于类似分子具有相似的参数化的假设获得它们的非极性参数化。收集具有668个实验数据的大型数据库,并用于验证所提出的协议。数据库的最低休假根均线(RMS)是1.33 kcal / mol。另外,采用数据库,即SAMPL0-SAMPL4的五个子集进一步证明所提出的协议。最佳RMS误差分别为0.93,2.82,1.90,0.78和1.03 kcal / mol,用于SAMPL0,SAMPL1,SAMPL2,SAMPL3和SAMPL4测试集。具有琥珀键半径的极化泊松模型的相应RMS误差分别为0.93,2.89,1.90,1.16和1.07 kcal / mol。通过AIP发布发布。

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