Key Laboratory of Systems Biology, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai, 200031, China.
Protein Cell. 2012 Sep;3(9):675-90. doi: 10.1007/s13238-012-2048-z. Epub 2012 Jul 16.
Protein phosphorylation is a ubiquitous protein post-translational modification, which plays an important role in cellular signaling systems underlying various physiological and pathological processes. Current in silico methods mainly focused on the prediction of phosphorylation sites, but rare methods considered whether a phosphorylation site is functional or not. Since functional phosphorylation sites are more valuable for further experimental research and a proportion of phosphorylation sites have no direct functional effects, the prediction of functional phosphorylation sites is quite necessary for this research area. Previous studies have shown that functional phosphorylation sites are more conserved than non-functional phosphorylation sites in evolution. Thus, in our method, we developed a web server by integrating existing phosphorylation site prediction methods, as well as both absolute and relative evolutionary conservation scores to predict the most likely functional phosphorylation sites. Using our method, we predicted the most likely functional sites of the human, rat and mouse proteomes and built a database for the predicted sites. By the analysis of overall prediction results, we demonstrated that protein phosphorylation plays an important role in all the enriched KEGG pathways. By the analysis of protein-specific prediction results, we demonstrated the usefulness of our method for individual protein studies. Our method would help to characterize the most likely functional phosphorylation sites for further studies in this research area.
蛋白质磷酸化是一种普遍存在的蛋白质翻译后修饰,在各种生理和病理过程的细胞信号系统中发挥着重要作用。目前的计算方法主要集中在磷酸化位点的预测上,但很少有方法考虑磷酸化位点是否具有功能。由于功能性磷酸化位点对于进一步的实验研究更有价值,而且一部分磷酸化位点没有直接的功能效应,因此对于这个研究领域来说,预测功能性磷酸化位点是非常必要的。以前的研究表明,在进化过程中,功能性磷酸化位点比非功能性磷酸化位点更保守。因此,在我们的方法中,我们整合了现有的磷酸化位点预测方法,以及绝对和相对进化保守评分,开发了一个网络服务器,以预测最有可能的功能性磷酸化位点。我们使用该方法预测了人类、大鼠和小鼠蛋白质组中最有可能的功能性位点,并为预测的位点构建了一个数据库。通过对整体预测结果的分析,我们证明了蛋白质磷酸化在所有富集的 KEGG 途径中都起着重要作用。通过对蛋白质特异性预测结果的分析,我们证明了我们的方法对于单个蛋白质研究的有用性。我们的方法将有助于确定最有可能的功能性磷酸化位点,以便在该研究领域进行进一步的研究。