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优化 GBMV2 隐式溶剂力场以准确模拟蛋白质构象平衡。

Optimization of the GBMV2 implicit solvent force field for accurate simulation of protein conformational equilibria.

机构信息

Department of Biochemistry and Molecular Biophysics, Kansas State University, Manhattan, Kansas, 66506.

出版信息

J Comput Chem. 2017 Jun 15;38(16):1332-1341. doi: 10.1002/jcc.24734. Epub 2017 Apr 11.

Abstract

Accurate treatment of solvent environment is critical for reliable simulations of protein conformational equilibria. Implicit treatment of solvation, such as using the generalized Born (GB) class of models arguably provides an optimal balance between computational efficiency and physical accuracy. Yet, GB models are frequently plagued by a tendency to generate overly compact structures. The physical origins of this drawback are relatively well understood, and the key to a balanced implicit solvent protein force field is careful optimization of physical parameters to achieve a sufficient level of cancellation of errors. The latter has been hampered by the difficulty of generating converged conformational ensembles of non-trivial model proteins using the popular replica exchange sampling technique. Here, we leverage improved sampling efficiency of a newly developed multi-scale enhanced sampling technique to re-optimize the generalized-Born with molecular volume (GBMV2) implicit solvent model with the CHARMM36 protein force field. Recursive optimization of key GBMV2 parameters (such as input radii) and protein torsion profiles (via the CMAP torsion cross terms) has led to a more balanced GBMV2 protein force field that recapitulates the structures and stabilities of both helical and β-hairpin model peptides. Importantly, this force field appears to be free of the over-compaction bias, and can generate structural ensembles of several intrinsically disordered proteins of various lengths that seem highly consistent with available experimental data. © 2017 Wiley Periodicals, Inc.

摘要

准确处理溶剂环境对于可靠模拟蛋白质构象平衡至关重要。溶剂化的隐式处理,例如使用广义 Born (GB) 类模型,可以在计算效率和物理准确性之间提供最佳平衡。然而,GB 模型经常存在生成过于紧凑结构的趋势。这种缺点的物理起源相对容易理解,平衡隐式溶剂蛋白力场的关键是仔细优化物理参数,以达到足够水平的误差抵消。后者受到使用流行的复制交换采样技术生成非平凡模型蛋白收敛构象系综的困难的阻碍。在这里,我们利用新开发的多尺度增强采样技术的改进采样效率,重新优化了 CHARMM36 蛋白力场的广义 Born 与分子体积(GBMV2)隐式溶剂模型。对关键 GBMV2 参数(如输入半径)和蛋白扭转轮廓(通过 CMAP 扭转交叉项)的递归优化导致了更平衡的 GBMV2 蛋白力场,该力场再现了螺旋和 β-发夹模型肽的结构和稳定性。重要的是,该力场似乎没有过度紧凑的偏差,并且可以生成各种长度的几个固有无序蛋白的结构系综,这些系综似乎与可用的实验数据高度一致。© 2017 威利期刊公司

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