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首页> 外文期刊>Nucleic acids research >Characterization and prediction of the binding site in DNA-binding proteins: improvement of accuracy by combining residue composition, evolutionary conservation and structural parameters
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Characterization and prediction of the binding site in DNA-binding proteins: improvement of accuracy by combining residue composition, evolutionary conservation and structural parameters

机译:DNA结合蛋白中结合位点的表征和预测:通过结合残基组成,进化保守性和结构参数提高准确性

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摘要

We present a set of four parameters that in combination can predict DNA-binding residues on protein structures to a high degree of accuracy. These are the number of evolutionary conserved residues (Ncons) and their spatial clustering (ρe), hydrogen bond donor capability (Dp) and residue propensity (Rp). We first used these parameters to characterize 130 interfaces in a set of 126 DNA-binding proteins (DBPs). The applicability of these parameters both individually and in combination, to distinguish the true binding region from the rest of the protein surface was then analyzed. Rp shows the best performance identifying the true interface with the top rank in 83% cases. Importantly, we also used the unbound-bound test cases of the protein–DNA docking benchmark to test the efficacy of our method. When applied to the unbound form of the DBPs, Rp can distinguish 86% cases. Finally, we have applied the SVM approach for recognizing the interface region using the above parameters along with the individual amino acid composition as attributes. The accuracy of prediction is 90.5% for the bound structures and 93.6% for the unbound form of the proteins.
机译:我们提出了四个参数的组合,它们可以高度准确地预测蛋白质结构上的DNA结合残基。这些是进化保守残基的数量(N cons )及其空间聚类(ρ e ),氢键供体能力(D p )和残留倾向(R p )。我们首先使用这些参数来表征一组126个DNA结合蛋白(DBP)中的130个界面。然后分析了这些参数的适用性,无论是单独使用还是组合使用,以区分真正的结合区域和其余的蛋白质表面。在83%的情况下,R p 表现出最佳的性能,可确定具有最高排名的真实界面。重要的是,我们还使用了蛋白质-DNA对接基准的未绑定测试用例来测试我们方法的有效性。如果将R p 应用于非绑定形式的DBP,则可以区分86%的情况。最后,我们已使用SVM方法使用上述参数以及各个氨基酸组成作为属性来识别界面区域。结合结构的预测准确性为90.5%,未结合形式的预测准确性为93.6%。

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