Department of Theoretical and Computational Biophysics , Max-Planck Institute for Biophysical Chemistry , 37077 Göttingen , Germany.
J Chem Theory Comput. 2020 Jan 14;16(1):108-118. doi: 10.1021/acs.jctc.9b00926. Epub 2019 Dec 24.
For a first-principles understanding of macromolecular processes, a quantitative understanding of the underlying free energy landscape and in particular its entropy contribution is crucial. The stability of biomolecules, such as proteins, is governed by the hydrophobic effect, which arises from competing enthalpic and entropic contributions to the free energy of the solvent shell. While the statistical mechanics of liquids, as well as molecular dynamics simulations, have provided much insight, solvation shell entropies remain notoriously difficult to calculate, especially when spatial resolution is required. Here, we present a method that allows for the computation of spatially resolved rotational solvent entropies via a nonparametric -nearest-neighbor density estimator. We validated our method using analytic test distributions and applied it to atomistic simulations of a water box. With an accuracy of better than 9.6%, the obtained spatial resolution should shed new light on the hydrophobic effect and the thermodynamics of solvation in general.
为了从第一性原理理解大分子过程,定量理解潜在的自由能景观,特别是其熵贡献,是至关重要的。生物分子(如蛋白质)的稳定性受疏水性的影响,这是由于溶剂壳层的自由能中存在竞争的焓和熵贡献。尽管液体的统计力学以及分子动力学模拟提供了很多见解,但溶剂壳层的熵仍然难以计算,特别是当需要空间分辨率时。在这里,我们提出了一种方法,通过非参数最近邻密度估计器,可以计算旋转溶剂熵的空间分辨率。我们使用分析测试分布验证了我们的方法,并将其应用于水分子盒的原子模拟。获得的空间分辨率的准确性优于 9.6%,这应该为疏水性和一般溶剂化的热力学提供新的见解。