首页> 外文期刊>Protein Science: A Publication of the Protein Society >Automated selection of positions determining functional specificity of proteins by comparative analysis of orthologous groups in protein families.
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Automated selection of positions determining functional specificity of proteins by comparative analysis of orthologous groups in protein families.

机译:通过对蛋白质家族直系同源基团的比较分析,自动选择确定蛋白质功能特异性的位置。

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摘要

The increasing volume of genomic data opens new possibilities for analysis of protein function. We introduce a method for automated selection of residues that determine the functional specificity of proteins with a common general function (the specificity-determining positions [SDP] prediction method). Such residues are assumed to be conserved within groups of orthologs (that may be assumed to have the same specificity) and to vary between paralogs. Thus, considering a multiple sequence alignment of a protein family divided into orthologous groups, one can select positions where the distribution of amino acids correlates with this division. Unlike previously published techniques, the introduced method directly takes into account nonuniformity of amino acid substitution frequencies. In addition, it does not require setting arbitrary thresholds. Instead, a formal procedure for threshold selection using the Bernoulli estimator is implemented. We tested the SDP prediction method on the LacI family of bacterial transcription factors and a sample of bacterial water and glycerol transporters belonging to the major intrinsic protein (MIP) family. In both cases, the comparison with available experimental and structural data strongly supported our predictions.
机译:基因组数据的增加为蛋白质功能的分析开辟了新的可能性。我们介绍了一种自动选择残基的方法,该方法可确定具有常见通用功能的蛋白质的功能特异性(特异性确定位置[SDP]预测方法)。假定这些残基在直系同源物组内是保守的(可以假定具有相同的特异性),并且在旁系同源物之间变化。因此,考虑到被分为直系同源基团的蛋白质家族的多序列比对,人们可以选择氨基酸的分布与该分裂相关的位置。与以前发布的技术不同,引入的方法直接考虑了氨基酸替换频率的不均匀性。另外,它不需要设置任意阈值。取而代之的是,使用伯努利估计器执行用于阈值选择的正式过程。我们在细菌转录因子的LacI家族以及属于主要内在蛋白(MIP)家族的细菌水和甘油转运蛋白的样品上测试了SDP预测方法。在这两种情况下,与可用的实验数据和结构数据的比较都强烈支持我们的预测。

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