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Three-dimensional cluster analysis identifies interfaces and functional residue clusters in proteins

机译:三维聚类分析可识别蛋白质中的界面和功能性残基簇

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摘要

Three-dimensional cluster analysis offers a method for the prediction of functional residue clusters in proteins. This method requires a representative structure and a multiple sequence alignment as input data. Individual residues are represented in terms of regional alignments that reflect both their structural environment and their evolutionary variation, as defined by the alignment of homologous sequences. From the overall (global) and the residue-specific (regional) alignments, we calculate the global and regional similarity matrices, containing scores for all pairwise sequence comparisons in the respective alignments. Comparing the matrices yields two scores for each residue. The regional conservation score (C-R(x)) defines the conservation of each residue x and its neighbors in 3D space relative to the protein as a whole. The similarity deviation score (S(x)) detects residue clusters with sequence similarities that deviate from the similarities suggested by the full-length sequences. We evaluated 3D cluster analysis on a set of 35 families of proteins with available cocrystal structures, showing small ligand interfaces, nucleic acid interfaces and two types of protein-protein interfaces (transient and stable). We present two examples in detail: fructose-1,6-bisphosphate aldolase and the mitogen-activated protein kinase ERK2. We found that the regional conservation score (C-R(x)) identifies functional residue clusters better than a scoring scheme that does not take 3D information into account. C-R(x) is particularly useful for the prediction of poorly conserved, transient protein-protein interfaces. Many of the proteins studied contained residue clusters with elevated similarity deviation scores. These residue clusters correlate with specificity-conferring regions: 3D cluster analysis therefore represents an easily applied method for the prediction of functionally relevant spatial clusters of residues in proteins. (C) 2001 Academic Press. [References: 49]
机译:三维簇分析提供了一种预测蛋白质中功能残基簇的方法。该方法需要代表性的结构和多序列比对作为输入数据。各个残基以反映其结构环境和进化变异的区域比对来表示,如同源序列的比对所定义。从总体(全局)和残基特异性(区域)比对,我们计算全局和区域相似性矩阵,其中包含各个比对中所有成对序列比较的得分。比较矩阵会为每个残基得到两个分数。区域保守性评分(C-R(x))定义了相对于蛋白质整体而言,每个残基x及其相邻元素在3D空间中的保守性。相似度偏差评分(S(x))检测序列相似度与全长序列建议的相似度有差异的残基簇。我们评估了35种具有可用共晶结构的蛋白质家族的3D聚类分析,显示出小的配体界面,核酸界面和两种类型的蛋白质-蛋白质界面(瞬时和稳定)。我们详细介绍了两个示例:1,6-二磷酸果糖醛缩酶和丝裂原激活的蛋白激酶ERK2。我们发现,与不考虑3D信息的计分方案相比,区域保护分数(C-R(x))更好地识别了功能性残基簇。 C-R(x)对于预测保守性差的瞬时蛋白质-蛋白质界面特别有用。研究的许多蛋白质包含残基簇,其相似度偏差评分较高。这些残基簇与赋予特异性的区域相关:因此3D聚类分析代表了一种易于应用的方法,用于预测蛋白质中残基的功能相关的空间簇。 (C)2001学术出版社。 [参考:49]

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