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一种预测酵母蛋白质中羰基化位点的计算方法。

A computational method to predict carbonylation sites in yeast proteins.

作者信息

Lv H Q, Liu J, Han J Q, Zheng J G, Liu R L

机构信息

School of Electronic and Information Engineering, Xi'an Jiaotong University, Xi'an, China.

School of Life Science and Technology, Xi'an Jiaotong University, Xi'an, China.

出版信息

Genet Mol Res. 2016 Jun 20;15(2):gmr8006. doi: 10.4238/gmr.15028006.

Abstract

Several post-translational modifications (PTM) have been discussed in literature. Among a variety of oxidative stress-induced PTM, protein carbonylation is considered a biomarker of oxidative stress. Only certain proteins can be carbonylated because only four amino acid residues, namely lysine (K), arginine (R), threonine (T) and proline (P), are susceptible to carbonylation. The yeast proteome is an excellent model to explore oxidative stress, especially protein carbonylation. Current experimental approaches in identifying carbonylation sites are expensive, time-consuming and limited in their abilities to process proteins. Furthermore, there is no bioinformational method to predict carbonylation sites in yeast proteins. Therefore, we propose a computational method to predict yeast carbonylation sites. This method has total accuracies of 86.32, 85.89, 84.80, and 86.80% in predicting the carbonylation sites of K, R, T, and P, respectively. These results were confirmed by 10-fold cross-validation. The ability to identify carbonylation sites in different kinds of features was analyzed and the position-specific composition of the modification site-flanking residues was discussed. Additionally, a software tool has been developed to help with the calculations in this method. Datasets and the software are available at https://sourceforge.net/projects/hqlstudio/ files/CarSpred.Y/.

摘要

文献中已经讨论了几种翻译后修饰(PTM)。在各种氧化应激诱导的PTM中,蛋白质羰基化被认为是氧化应激的生物标志物。只有特定的蛋白质会发生羰基化,因为只有赖氨酸(K)、精氨酸(R)、苏氨酸(T)和脯氨酸(P)这四个氨基酸残基容易发生羰基化。酵母蛋白质组是探索氧化应激,特别是蛋白质羰基化的一个优秀模型。目前用于识别羰基化位点的实验方法昂贵、耗时,且处理蛋白质的能力有限。此外,还没有生物信息学方法来预测酵母蛋白质中的羰基化位点。因此,我们提出了一种计算方法来预测酵母羰基化位点。该方法在预测K、R、T和P的羰基化位点时,总准确率分别为86.32%、85.89%、84.80%和86.80%。这些结果通过10倍交叉验证得到了证实。分析了在不同特征中识别羰基化位点的能力,并讨论了修饰位点侧翼残基的位置特异性组成。此外,还开发了一个软件工具来辅助该方法的计算。数据集和软件可在https://sourceforge.net/projects/hqlstudio/files/CarSpred.Y/获取。

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