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PMeS: Prediction of Methylation Sites Based on Enhanced Feature Encoding Scheme

机译:PMeS:基于增强特征编码方案的甲基化位点预测

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摘要

Protein methylation is predominantly found on lysine and arginine residues, and carries many important biological functions, including gene regulation and signal transduction. Given their important involvement in gene expression, protein methylation and their regulatory enzymes are implicated in a variety of human disease states such as cancer, coronary heart disease and neurodegenerative disorders. Thus, identification of methylation sites can be very helpful for the drug designs of various related diseases. In this study, we developed a method called PMeS to improve the prediction of protein methylation sites based on an enhanced feature encoding scheme and support vector machine. The enhanced feature encoding scheme was composed of the sparse property coding, normalized van der Waals volume, position weight amino acid composition and accessible surface area. The PMeS achieved a promising performance with a sensitivity of 92.45%, a specificity of 93.18%, an accuracy of 92.82% and a Matthew’s correlation coefficient of 85.69% for arginine as well as a sensitivity of 84.38%, a specificity of 93.94%, an accuracy of 89.16% and a Matthew’s correlation coefficient of 78.68% for lysine in 10-fold cross validation. Compared with other existing methods, the PMeS provides better predictive performance and greater robustness. It can be anticipated that the PMeS might be useful to guide future experiments needed to identify potential methylation sites in proteins of interest. The online service is available at .
机译:蛋白质甲基化主要存在于赖氨酸和精氨酸残基上,并具有许多重要的生物学功能,包括基因调控和信号转导。考虑到它们在基因表达中的重要参与,蛋白质甲基化及其调节酶与多种人类疾病有关,例如癌症,冠心病和神经退行性疾病。因此,甲基化位点的鉴定对于各种相关疾病的药物设计非常有帮助。在这项研究中,我们开发了一种称为PMeS的方法,以基于增强的特征编码方案和支持向量机来改善蛋白质甲基化位点的预测。增强特征编码方案由稀疏属性编码,归一化范德华体积,位置权重氨基酸组成和可及表面积组成。 PMeS的灵敏度为92.45%,特异度为93.18%,准确度为92.82%,对精氨酸的Matthew相关系数为85.69%,灵敏度为84.38%,特异度为93.94%。在10倍交叉验证中,赖氨酸的准确度为89.16%,马修相关系数为78.68%。与其他现有方法相比,PMeS提供了更好的预测性能和更大的鲁棒性。可以预料,PMeS可能有助于指导未来的实验,以鉴定目标蛋白质中潜在的甲基化位点。可以通过访问在线服务。

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