首页> 外文期刊>Journal of Molecular Biology >Co-evolutionary Analysis of Domains in Interacting Proteins Reveals Insights into Domain-Domain Interactions Mediating Protein-Protein Interactions.
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Co-evolutionary Analysis of Domains in Interacting Proteins Reveals Insights into Domain-Domain Interactions Mediating Protein-Protein Interactions.

机译:相互作用蛋白中域的共同进化分析揭示了对介导蛋白-蛋白质相互作用的域-域相互作用的见解。

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Recent advances in functional genomics have helped generate large-scale high-throughput protein interaction data. Such networks, though extremely valuable towards molecular level understanding of cells, do not provide any direct information about the regions (domains) in the proteins that mediate the interaction. Here, we performed co-evolutionary analysis of domains in interacting proteins in order to understand the degree of co-evolution of interacting and non-interacting domains. Using a combination of sequence and structural analysis, we analyzed protein-protein interactions in F1-ATPase, Sec23p/Sec24p, DNA-directed RNA polymerase and nuclear pore complexes, and found that interacting domain pair(s) for a given interaction exhibits higher level of co-evolution than the non-interacting domain pairs. Motivated by this finding, we developed a computational method to test the generality of the observed trend, and to predict large-scale domain-domain interactions. Given a protein-protein interaction, the proposed method predicts the domain pair(s) that is most likely to mediate the protein interaction. We applied this method on the yeast interactome to predict domain-domain interactions, and used known domain-domain interactions found in PDB crystal structures to validate our predictions. Our results show that the prediction accuracy of the proposed method is statistically significant. Comparison of our prediction results with those from two other methods reveals that only a fraction of predictions are shared by all the three methods, indicating that the proposed method can detect known interactions missed by other methods. We believe that the proposed method can be used with other methods to help identify previously unrecognized domain-domain interactions on a genome scale, and could potentially help reduce the search space for identifying interaction sites.
机译:功能基因组学的最新进展已帮助生成大规模的高通量蛋白质相互作用数据。这样的网络,尽管对理解细胞的分子水平极其有价值,但并未提供有关介导相互作用的蛋白质中区域(域)的任何直接信息。在这里,我们进行了相互作用蛋白域的共同进化分析,以了解相互作用域和非相互作用域的共同进化程度。使用序列和结构分析的组合,我们分析了F1-ATPase,Sec23p / Sec24p,DNA定向RNA聚合酶和核孔复合体中的蛋白质-蛋白质相互作用,并发现给定相互作用的相互作用域对表现出更高的水平与非交互作用域对相比,协同进化的作用。受此发现的启发,我们开发了一种计算方法来测试观察到的趋势的普遍性,并预测大规模的域-域交互。给定蛋白质-蛋白质相互作用,所提出的方法预测最可能介导蛋白质相互作用的域对。我们在酵母相互作用组上应用了该方法来预测域-域相互作用,并使用在PDB晶体结构中发现的已知域-域相互作用来验证我们的预测。我们的结果表明,该方法的预测准确性具有统计学意义。将我们的预测结果与其他两种方法的预测结果进行比较,发现这三种方法仅共享一小部分预测,这表明该方法可以检测其他方法遗漏的已知相互作用。我们相信,提出的方法可以与其他方法一起使用,以帮助在基因组规模上识别以前无法识别的域-域相互作用,并且可能有助于减少用于识别相互作用位点的搜索空间。

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