利用蛋白质结构网络了解蛋白质的结构变异性

IF 2.7 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Vasam Manjveekar Prabantu , Vasundhara Gadiyaram , Saraswathi Vishveshwara , Narayanaswamy Srinivasan
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引用次数: 3

摘要

蛋白质通过从可用的构象集合中获取合适的构象来发挥其功能。所选蛋白质结构的构象多样性可以通过实验方法在不同条件下得到。一个关键问题是不同构象的准确比较。用于这种比较的黄金标准是两个结构之间的均方根偏差(RMSD)。虽然在主干水平上RMSD评估的广泛改进是可用的,但包括侧链相互作用在内的综合框架尚未得到很好的理解。在这里,我们采用蛋白质结构网络(PSN)的形式,与侧链的非共价相互作用,明确处理。通过图谱方法对构建的psn进行比较,从而在局部和全局结构水平上进行比较。在这项工作中,单链单域蛋白的多晶构象的psn进行了配对分析,以检查其网络拓扑结构的差异性,并确定其天然结构的构象多样性。这些信息被用来将蛋白质的结构域划分为不同的类别。观察到,蛋白质通常倾向于在骨干水平上保留结构和相互作用。然而,其中一些也描述了它们的整体结构或仅在侧链水平上的残基间连通性的变异性,或两者兼而有之。研究了基于溶剂可及性和二级结构的子网络变异性。发现特定相互作用的类型对结构变异性有不同的贡献。通过计算多个构象的边权的数学方差进行集合分析,提供了PSN每条边对总体变异性的贡献信息。在一个案例研究的帮助下,我们确定了高度可变的相互作用,并讨论了它们对结构可变性的影响。基于当前侧链网络研究的分类提供了一个框架来关联蛋白质结构中的结构-功能关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Understanding structural variability in proteins using protein structural networks

Understanding structural variability in proteins using protein structural networks

Proteins perform their function by accessing a suitable conformer from the ensemble of available conformations. The conformational diversity of a chosen protein structure can be obtained by experimental methods under different conditions. A key issue is the accurate comparison of different conformations. A gold standard used for such a comparison is the root mean square deviation (RMSD) between the two structures. While extensive refinements of RMSD evaluation at the backbone level are available, a comprehensive framework including the side chain interaction is not well understood. Here we employ protein structure network (PSN) formalism, with the non-covalent interactions of side chain, explicitly treated. The PSNs thus constructed are compared through graph spectral method, which provides a comparison at the local and at the global structural level. In this work, PSNs of multiple crystal conformers of single-chain, single-domain proteins, are subject to pair-wise analysis to examine the dissimilarity in their network topologies and in order to determine the conformational diversity of their native structures. This information is utilized to classify the structural domains of proteins into different categories. It is observed that proteins typically tend to retain structure and interactions at the backbone level. However, some of them also depict variability in either their overall structure or only in their inter-residue connectivity at the sidechain level, or both. Variability of sub-networks based on solvent accessibility and secondary structure is studied. The types of specific interactions are found to contribute differently to structure variability. An ensemble analysis by computing the mathematical variance of edge-weights across multiple conformers provided information on the contribution to overall variability from each edge of the PSN. Interactions that are highly variable are identified and their impact on structure variability has been discussed with the help of a case study. The classification based on the present side-chain network-based studies provides a framework to correlate the structure-function relationships in protein structures.

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来源期刊
CiteScore
4.60
自引率
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发文量
33
审稿时长
104 days
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