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An ensemble method approach to investigate kinase-specific phosphorylation sites

机译:整体方法研究激酶特异性磷酸化位点

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摘要

Protein phosphorylation is one of the most significant and well-studied post-translational modifications, and it plays an important role in various cellular processes. It has made a considerable impact in understanding the protein functions which are involved in revealing signal transductions and various diseases. The identification of kinase-specific phosphorylation sites has an important role in elucidating the mechanism of phosphorylation; however, experimental techniques for identifying phosphorylation sites are labor intensive and expensive. An exponentially increasing number of protein sequences generated by various laboratories across the globe require computer-aided procedures for reliably and quickly identifying the phosphorylation sites, opening a new horizon for in silico analysis. In this regard, we have introduced a novel ensemble method where we have selected three classifiers (least square support vector machine, multilayer perceptron, and k-Nearest Neighbor) and three different feature encoding parameters (dipeptide composition, physicochemical properties of amino acids, and protein–protein similarity score). Each of these classifiers is trained on each of the three different parameter systems. The final results of the ensemble method are obtained by fusing the results of all the classifiers by a weighted voting algorithm. Extensive experiments reveal that our proposed method can successfully predict phosphorylation sites in a kinase-specific manner and performs significantly better when compared with other existing phosphorylation site prediction methods.
机译:蛋白质磷酸化是最重要,研究最深入的翻译后修饰之一,在各种细胞过程中都起着重要作用。它对理解揭示信号转导和各种疾病的蛋白质功能产生了重大影响。激酶特异性磷酸化位点的鉴定在阐明磷酸化机制中具有重要作用。然而,用于鉴定磷酸化位点的实验技术是劳动密集型且昂贵的。全球各个实验室生成的蛋白质序列呈指数级增长,需要计算机辅助程序才能可靠,快速地识别磷酸化位点,从而为计算机分析开辟了新的视野。在这方面,我们引入了一种新颖的集成方法,其中我们选择了三个分类器(最小二乘支持向量机,多层感知器和k最近邻)和三个不同的特征编码参数(二肽组成,氨基酸的理化性质和蛋白质-蛋白质相似性评分)。这些分类器中的每一个都在三个不同参数系统中的每一个上进行训练。通过加权投票算法将所有分类器的结果融合在一起,即可获得集成方法的最终结果。大量实验表明,我们提出的方法可以成功地以激酶特异性方式预测磷酸化位点,并且与其他现有的磷酸化位点预测方法相比,其性能要好得多。

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