Department of Mathematics, Iowa State University, Ames, IA 50010, USA.
Bull Math Biol. 2013 Jan;75(1):124-60. doi: 10.1007/s11538-012-9797-y. Epub 2013 Jan 8.
We investigate several approaches to coarse grained normal mode analysis on protein residual-level structural fluctuations by choosing different ways of representing the residues and the forces among them. Single-atom representations using the backbone atoms C(α), C, N, and C(β) are considered. Combinations of some of these atoms are also tested. The force constants between the representative atoms are extracted from the Hessian matrix of the energy function and served as the force constants between the corresponding residues. The residue mean-square-fluctuations and their correlations with the experimental B-factors are calculated for a large set of proteins. The results are compared with all-atom normal mode analysis and the residue-level Gaussian Network Model. The coarse-grained methods perform more efficiently than all-atom normal mode analysis, while their B-factor correlations are also higher. Their B-factor correlations are comparable with those estimated by the Gaussian Network Model and in many cases better. The extracted force constants are surveyed for different pairs of residues with different numbers of separation residues in sequence. The statistical averages are used to build a refined Gaussian Network Model, which is able to predict residue-level structural fluctuations significantly better than the conventional Gaussian Network Model in many test cases.
我们研究了几种通过选择不同的残基和残基之间的力表示方式来对蛋白质残基水平结构波动进行粗粒化正则模态分析的方法。考虑了使用骨架原子 C(α)、C、N 和 C(β)表示的单原子表示。还测试了这些原子的一些组合。代表原子之间的力常数是从能量函数的 Hessian 矩阵中提取的,并用作相应残基之间的力常数。为一大组蛋白质计算了残基均方波动及其与实验 B 因子的相关性。将结果与全原子正则模态分析和残基级高斯网络模型进行了比较。粗粒化方法比全原子正则模态分析更有效,而它们的 B 因子相关性也更高。它们的 B 因子相关性与高斯网络模型估计的相关性相当,在许多情况下更好。还调查了不同序列分离残基数的不同残基对之间的提取力常数。使用统计平均值构建了一个改进的高斯网络模型,该模型在许多测试案例中能够比传统的高斯网络模型更好地预测残基水平的结构波动。