Bottaro Sandro, Lindorff-Larsen Kresten, Best Robert B
Department of Biology, University of Copenhagen, Copenhagen, Denmark ; Laboratory of Chemical Physics, National Institute of Diabetes and Digestive and Kidney Diseases, National Institutes of Health, 9000 Rockville Pike, U.S.A. ; SISSA-Scuola Internazionale Superiore di Studi Avanzati,Trieste, Italy.
Department of Biology, University of Copenhagen, Copenhagen, Denmark ; Laboratory of Chemical Physics, National Institute of Diabetes and Digestive and Kidney Diseases, National Institutes of Health, 9000 Rockville Pike, U.S.A.
J Chem Theory Comput. 2013 Dec 10;9(12):5641-5652. doi: 10.1021/ct400730n.
The development of accurate implicit solvation models with low computational cost is essential for addressing many large-scale biophysical problems. Here, we present an efficient solvation term based on a Gaussian solvent-exclusion model (EEF1) for simulations of proteins in aqueous environment, with the primary aim of having a good overlap with explicit solvent simulations, particularly for unfolded and disordered states - as would be needed for multiscale applications. In order to achieve this, we have used a recently proposed coarse-graining procedure based on minimization of an entropy-related objective function to train the model to reproduce the equilibrium distribution obtained from explicit water simulations. Via this methodology, we have optimized both a charge screening parameter and a backbone torsion term against explicit solvent simulations of an -helical and a -stranded peptide. The performance of the resulting effective energy function, termed EEF1-SB, is tested with respect to the properties of folded proteins, the folding of small peptides or fast-folding proteins, and NMR data for intrinsically disordered proteins. The results show that EEF1-SB provides a reasonable description of a wide range of systems, but its key advantage over other methods tested is that it captures very well the structure and dimension of disordered or weakly structured peptides. EEF1-SB is thus a computationally inexpensive (~ 10 times faster than Generalized-Born methods) and transferable approximation for treating solvent effects.
开发具有低计算成本的精确隐式溶剂化模型对于解决许多大规模生物物理问题至关重要。在此,我们提出一种基于高斯溶剂排斥模型(EEF1)的高效溶剂化项,用于模拟水环境中的蛋白质,其主要目标是与显式溶剂模拟有良好的重叠,特别是对于未折叠和无序状态——这是多尺度应用所需要的。为了实现这一点,我们使用了最近提出的基于熵相关目标函数最小化的粗粒化程序来训练模型,以重现从显式水模拟获得的平衡分布。通过这种方法,我们针对α螺旋和β链肽的显式溶剂模拟优化了电荷筛选参数和主链扭转项。所得有效能量函数EEF1-SB的性能针对折叠蛋白的性质、小肽或快速折叠蛋白的折叠以及内在无序蛋白的核磁共振数据进行了测试。结果表明,EEF1-SB对广泛的系统提供了合理的描述,但其相对于其他测试方法的关键优势在于它能很好地捕捉无序或弱结构化肽的结构和尺寸。因此,EEF1-SB是一种计算成本低(比广义玻恩方法快约10倍)且可转移的处理溶剂效应的近似方法。