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Prediction of protein phosphorylation sites by support vector machines

机译:通过支持载体机预测蛋白质磷酸化位点

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Protein phosphorylation is one of the most important post-translational modifications, and revealing its mechanism is an important research topic. In this paper, phosphorylation sites in human proteins are predicted by support vector machine (SVM). First, two types of SVMs are constructed, each for phosphorylation sites in domain and in intrinsically disordered region (IDR). In domain, wide range of information of amino acid sequence is found effective, while it is not effective in IDR. As phosphorylation is abundant in IDR, the second part of the study focuses on the prediction of phosphorylation sites in IDR, especially, the phosphorylation sites with any known function. Then, it is found that the evolutionary conservation of each site is different in IDR, and multiple ortholog sequences which contain the conservation information is effective for the prediction compared with single sequence information.
机译:蛋白质磷酸化是最重要的翻译后修改之一,并揭示其机制是一个重要的研究主题。本文通过支持载体机(SVM)预测人蛋白中的磷酸化位点。首先,构建两种类型的SVM,每个SVMS用于域中的磷酸化位点和本质上无序区域(IDR)。在域中,发现氨基酸序列的广泛信息有效,而在IDR中无效。由于磷酸化在IDR中丰富,研究的第二部分侧重于IDR中磷酸化位点的预测,特别是具有任何已知功能的磷酸化位点。然后,发现每个站点的进化节约在IDR中不同,并且包含节约信息的多个正序序列与单个序列信息相比的预测是有效的。

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