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组蛋白和非组蛋白上赖氨酸甲基化位点的鉴定与表征。

Identification and characterization of lysine-methylated sites on histones and non-histone proteins.

作者信息

Lee Tzong-Yi, Chang Cheng-Wei, Lu Cheng-Tzung, Cheng Tzu-Hsiu, Chang Tzu-Hao

机构信息

Department of Computer Science and Engineering, Yuan Ze University, Chung-Li, Taiwan.

Department of Information Management, Hsing Wu University, New Taipei City, Taiwan.

出版信息

Comput Biol Chem. 2014 Jun;50:11-8. doi: 10.1016/j.compbiolchem.2014.01.009. Epub 2014 Jan 24.

Abstract

Protein methylation is a kind of post-translational modification (PTM), and typically takes place on lysine and arginine amino acid residues. Protein methylation is involved in many important biological processes, and most recent studies focused on lysine methylation of histones due to its critical roles in regulating transcriptional repression and activation. Histones possess highly conserved sequences and are homologous in most species. However, there is much less sequence conservation among non-histone proteins. Therefore, mechanisms for identifying lysine-methylated sites may greatly differ between histones and non-histone proteins. Nevertheless, this point of view was not considered in previous studies. Here we constructed two support vector machine (SVM) models by using lysine-methylated data from histones and non-histone proteins for predictions of lysine-methylated sites. Numerous features, such as the amino acid composition (AAC) and accessible surface area (ASA), were used in the SVM models, and the predictive performance was evaluated using five-fold cross-validations. For histones, the predictive sensitivity was 85.62% and specificity was 80.32%. For non-histone proteins, the predictive sensitivity was 69.1% and specificity was 88.72%. Results showed that our model significantly improved the predictive accuracy of histones compared to previous approaches. In addition, features of the flanking region of lysine-methylated sites on histones and non-histone proteins were also characterized and are discussed. A gene ontology functional analysis of lysine-methylated proteins and correlations of lysine-methylated sites with other PTMs in histones were also analyzed in detail. Finally, a web server, MethyK, was constructed to identify lysine-methylated sites. MethK now is available at http://csb.cse.yzu.edu.tw/MethK/.

摘要

蛋白质甲基化是一种翻译后修饰(PTM),通常发生在赖氨酸和精氨酸氨基酸残基上。蛋白质甲基化参与许多重要的生物学过程,最近的研究由于其在调节转录抑制和激活中的关键作用而聚焦于组蛋白的赖氨酸甲基化。组蛋白具有高度保守的序列,并且在大多数物种中是同源的。然而,非组蛋白之间的序列保守性要低得多。因此,识别赖氨酸甲基化位点的机制在组蛋白和非组蛋白之间可能有很大差异。尽管如此,以前的研究并未考虑这一点。在这里,我们通过使用来自组蛋白和非组蛋白的赖氨酸甲基化数据构建了两个支持向量机(SVM)模型,用于预测赖氨酸甲基化位点。SVM模型中使用了许多特征,如氨基酸组成(AAC)和可及表面积(ASA),并使用五折交叉验证来评估预测性能。对于组蛋白,预测敏感性为85.62%,特异性为80.32%。对于非组蛋白,预测敏感性为69.1%,特异性为88.72%。结果表明,与以前的方法相比,我们的模型显著提高了组蛋白的预测准确性。此外,还对组蛋白和非组蛋白上赖氨酸甲基化位点侧翼区域的特征进行了表征并进行了讨论。还详细分析了赖氨酸甲基化蛋白的基因本体功能分析以及组蛋白中赖氨酸甲基化位点与其他PTM的相关性。最后,构建了一个网络服务器MethyK来识别赖氨酸甲基化位点。MethK现在可在http://csb.cse.yzu.edu.tw/MethK/上获取。

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