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表征肌红蛋白的整体亚状态。

Characterizing global substates of myoglobin.

作者信息

Andrews B K, Romo T, Clarage J B, Pettitt B M, Phillips G N

机构信息

Department of Chemistry, University of Houston, Texas 77204-5641, USA.

出版信息

Structure. 1998 May 15;6(5):587-94. doi: 10.1016/s0969-2126(98)00060-4.

Abstract

BACKGROUND

The massive amount of information generated from current molecular dynamics simulations makes the data difficult to analyze efficiently. Principal component analysis has been used for almost a century to detect and characterize data relationships and to reduce the dimensionality for problems in many fields. Here, we present an adaptation of principal component analysis using a partial singular value decomposition (SVD) for investigating both the localized and global motions of macromolecules.

RESULTS

Configuration space projections from the SVD analysis of a variety of myoglobin simulations are used to characterize the dynamics of the protein. This technique reveals new dynamical motifs, which quantify proposed hierarchical structures of conformational substates for proteins and provide a means by which configuration space sampling efficiency may be probed. The SVD clearly shows that solvent effects facilitate transitions between global conformational substates for myoglobin molecular dynamics simulations. Lyapunov exponents calculated from the configuration space divergence of 15 trajectories agree with previous predictions for the chaotic behavior of complex protein systems.

CONCLUSIONS

Configuration space projections provide invaluable information about protein motions that would be extremely difficult to obtain otherwise. While the configuration space for myoglobin is quite large, it does have structure. Our analysis of this structure shows that the protein hops between a number of distinct global conformational states, much like the local behavior observed for an individual residue.

摘要

背景

当前分子动力学模拟产生的大量信息使得数据难以有效分析。主成分分析已被使用了近一个世纪,用于检测和表征数据关系,并降低许多领域问题的维度。在此,我们提出一种使用部分奇异值分解(SVD)的主成分分析方法,用于研究大分子的局部和全局运动。

结果

通过对多种肌红蛋白模拟进行SVD分析得到的构象空间投影,用于表征蛋白质的动力学。该技术揭示了新的动力学模式,这些模式量化了所提出的蛋白质构象亚态的层次结构,并提供了一种探测构象空间采样效率的方法。SVD清楚地表明,在肌红蛋白分子动力学模拟中,溶剂效应促进了全局构象亚态之间的转变。根据15条轨迹的构象空间发散计算出的李雅普诺夫指数与先前对复杂蛋白质系统混沌行为的预测一致。

结论

构象空间投影提供了有关蛋白质运动的宝贵信息,否则极难获得。虽然肌红蛋白的构象空间相当大,但它确实具有结构。我们对这种结构的分析表明,蛋白质在许多不同的全局构象状态之间跳跃,这与单个残基的局部行为非常相似。

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