首页> 外文期刊>Journal of chemical theory and computation: JCTC >Statistically Optimal Continuous Free Energy Surfaces from Biased Simulations and Multistate Reweighting
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Statistically Optimal Continuous Free Energy Surfaces from Biased Simulations and Multistate Reweighting

机译:偏离仿真和多岩重力的统计上最佳的连续无连续能量表面

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Free energies as a function of a selected set of collective variables are commonly computed in molecular simulation and of significant value in understanding and engineering molecular behavior. These free energy surfaces are most commonly estimated using variants of histogramming techniques, but such approaches obscure two important facets of these functions. First, the empirical observations along the collective variable are defined by an ensemble of discrete observations, and the coarsening of these observations into a histogram bin incurs unnecessary loss of information. Second, the free energy surface is itself almost always a continuous function, and its representation by a histogram introduces inherent approximations due to the discretization. In this study, we relate the observed discrete observations from biased simulations to the inferred underlying continuous probability distribution over the collective variables and derive histogram-free techniques for estimating this free energy surface. We reformulate free energy surface estimation as minimization of a Kullback–Leibler divergence between a continuous trial function and the discrete empirical distribution and show that this is equivalent to likelihood maximization of a trial function given a set of sampled data. We then present a fully Bayesian treatment of this formalism, which enables the incorporation of powerful Bayesian tools such as the inclusion of regularizing priors, uncertainty quantification, and model selection techniques. We demonstrate this new formalism in the analysis of umbrella sampling simulations for the χ torsion of a valine side chain in the L99A mutant of T4 lysozyme with benzene bound in the cavity.
机译:作为所选集体变量的功能的自由能量通常在分子模拟和理解和工程分子行为中的重大价值计算。这些自由能源最常见的是使用直方图技术的变型估计,但这种方法模糊了这些功能的两个重要方面。首先,沿着集体变量的经验观察由离散观察的集合来定义,并且这些观察结果的粗化成直方图箱引发了不必要的信息损失。其次,自由能表面本身几乎始终是连续的功能,并且其通过直方图表示由于离散化引起的固有近似。在这项研究中,我们将观察到的离散观测与偏置模拟的观察到的离散观察与集体变量的推断出来,并导出无直方图的技术,用于估计这种自由能表面。我们将自由能表面估计重构为持续试验功能与离散经验分布之间的kullback-leibler分歧,并表明这相当于给定一组采样数据的试用函数的似然最大化。然后,我们提供了一种完全贝叶斯治疗这种形式主义,这使得能够加入强大的贝叶斯工具,例如包含正规化的前瞻,不确定量化和模型选择技术。我们证明了这种新的形式主义在分析了伞形侧链的伞形采样模拟中,在T4溶菌酶L99A突变体中与腔中的苯结合的苯侧链。

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