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通过势匹配方法对粗粒粒子的 Lennard-Jones 相互作用进行精确高效的估算。

Accurate and Efficient Estimation of Lennard-Jones Interactions for Coarse-Grained Particles via a Potential Matching Method.

机构信息

Collaborative Innovation Center of Chemistry for Energy Materials, Shanghai Key Laboratory of Molecular Catalysis and Innovative Materials, MOE Key Laboratory of Computational Physical Sciences, Departments of Chemistry, Fudan University, Shanghai 200433, China.

LSEC, Institute of Computational Mathematics and Scientific/Engineering Computing, Academy of Mathematics and Systems Science, Chinese Academy of Sciences, Beijing 100190, China.

出版信息

J Chem Theory Comput. 2022 Aug 9;18(8):4879-4890. doi: 10.1021/acs.jctc.2c00513. Epub 2022 Jul 15.

Abstract

The Lennard-Jones (LJ) energy functions are commonly used to describe the nonbonded interactions in bulk coarse-grained (CG) models, which contribute significantly to the stabilization of a local binding configuration or a self-assembly system. In many cases, systematic development of the LJ interaction parameters in a CG model requires a comprehensive sampling of the objective molecules at the all-atom (AA) level, which is therefore extremely time-consuming for large systems. Inspired by the concept of electrostatic potential (ESP), we define the LJ static potential (LJSP), by which the embedding potential energy surface can be constructed analytically. A semianalytic approach, namely, the LJSP matching method, is developed here to derive the CG parameters by minimizing the LJSP difference between the AA and the CG models, which provides a universal way to derive the CG LJ parameters from the AA models without doing presampling. The LJSP matching method is successful not only in deriving the LJ interaction energy landscape in the CG models for proteins, lipids, and DNA but also in reproducing the critical properties such as intermediate structures and enthalpy contributions as exemplified in simulating the self-assembly process of the dipalmitoylphosphatidylcholine (DPPC) lipids.

摘要

伦纳德-琼斯(Lennard-Jones,LJ)能量函数通常用于描述体相粗粒化(coarse-grained,CG)模型中的非键相互作用,这些相互作用对局部结合构型或自组装系统的稳定起着重要作用。在许多情况下,CG 模型中 LJ 相互作用参数的系统开发需要在全原子(all-atom,AA)水平上对目标分子进行全面采样,因此对于大型系统来说,这非常耗时。受静电势能(electrostatic potential,ESP)概念的启发,我们定义了 LJ 静电势(LJ static potential,LJSP),通过该势能可以分析构建嵌入势能表面。这里提出了一种半分析方法,即 LJSP 匹配方法,通过最小化 AA 和 CG 模型之间的 LJSP 差异来推导 CG 参数,这为从 AA 模型中推导 CG LJ 参数提供了一种通用方法,而无需进行预采样。LJSP 匹配方法不仅成功地推导出了 CG 模型中蛋白质、脂质和 DNA 的 LJ 相互作用能景观,而且还成功地再现了中间结构和焓贡献等关键性质,如模拟二棕榈酰磷脂酰胆碱(dipalmitoylphosphatidylcholine,DPPC)脂质自组装过程。

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