Xu Jialin, He Yun, Qiang Boqin, Yuan Jiangang, Peng Xiaozhong, Pan Xian-Ming
The Key Laboratory of Bioinformatics, Ministry of Education, China, Department of Biological Sciences and Biotechnology, Tsinghua University, Beijing, 100084, China.
BMC Bioinformatics. 2008 Jan 8;9:8. doi: 10.1186/1471-2105-9-8.
Protein sumoylation is an essential dynamic, reversible post translational modification that plays a role in dozens of cellular activities, especially the regulation of gene expression and the maintenance of genomic stability. Currently, the complexities of sumoylation mechanism can not be perfectly solved by experimental approaches. In this regard, computational approaches might represent a promising method to direct experimental identification of sumoylation sites and shed light on the understanding of the reaction mechanism.
Here we presented a statistical method for sumoylation site prediction. A 5-fold cross validation test over the experimentally identified sumoylation sites yielded excellent prediction performance with correlation coefficient, specificity, sensitivity and accuracy equal to 0.6364, 97.67%, 73.96% and 96.71% respectively. Additionally, the predictor performance is maintained when high level homologs are removed.
By using a statistical method, we have developed a new SUMO site prediction method - SUMOpre, which has shown its great accuracy with correlation coefficient, specificity, sensitivity and accuracy.
蛋白质SUMO化是一种重要的动态、可逆的翻译后修饰,在数十种细胞活动中发挥作用,尤其是在基因表达调控和基因组稳定性维持方面。目前,SUMO化机制的复杂性无法通过实验方法得到完美解决。在这方面,计算方法可能是一种有前途的方法,可指导SUMO化位点的实验鉴定,并有助于深入了解反应机制。
在此,我们提出了一种用于SUMO化位点预测的统计方法。对实验鉴定的SUMO化位点进行5折交叉验证测试,得到了优异的预测性能,相关系数、特异性、敏感性和准确性分别为0.6364、97.67%、73.96%和96.71%。此外,去除高度同源物后,预测器性能保持不变。
通过使用统计方法,我们开发了一种新的SUMO位点预测方法——SUMOpre,其在相关系数、特异性、敏感性和准确性方面显示出很高的准确性。