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Protein-protein interaction network-based detection of functionally similar proteins within species

机译:基于蛋白质-蛋白质相互作用网络的物种内功能相似蛋白质检测

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摘要

Although functionally similar proteins across species have been widely studied, functionally similar proteins within species showing low sequence similarity have not been examined in detail. Identification of these proteins is of significant importance for understanding biological functions, evolution of protein families, progression of co-evolution, and convergent evolution and others which cannot be obtained by detection of functionally similar proteins across species. Here, we explored a method of detecting functionally similar proteins within species based on graph theory. After denoting protein-protein interaction networks using graphs, we split the graphs into subgraphs using the 1-hop method. Proteins with functional similarities in a species were detected using a method of modified shortest path to compare these subgraphs and to find the eligible optimal results. Using seven protein-protein interaction networks and this method, some functionally similar proteins with low sequence similarity that cannot detected by sequence alignment were identified. By analyzing the results, we found that, sometimes, it is difficult to separate homologous from convergent evolution. Evaluation of the performance of our method by gene ontology term overlap showed that the precision of our method was excellent.
机译:尽管已经广泛研究了物种间功能相似的蛋白质,但尚未详细研究物种内显示低序列相似性的功能相似的蛋白质。这些蛋白质的鉴定对于理解生物学功能,蛋白质家族的进化,共同进化的进展,趋同进化以及其他无法通过跨物种检测功能相似的蛋白质而获得的其他事物具有非常重要的意义。在这里,我们探索了一种基于图论的物种内部功能相似的蛋白质检测方法。使用图表示蛋白质-蛋白质相互作用网络后,我们使用1-hop方法将图分为子图。使用修改的最短路径方法比较物种中的子图并找到合格的最佳结果,从而检测物种中具有功能相似性的蛋白质。使用七个蛋白质-蛋白质相互作用网络和此方法,鉴定了一些功能相似的蛋白质,这些蛋白质具有较低的序列相似性,无法通过序列比对检测。通过分析结果,我们发现有时候很难将同源进化与进化进化分开。通过基因本体术语重叠对本方法的性能进行评估表明,本方法的准确性极佳。

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