Liu Zexian, Cao Jun, Ma Qian, Gao Xinjiao, Ren Jian, Xue Yu
Life Sciences School, Sun Yat-sen University, Guangzhou 510275, China.
Mol Biosyst. 2011 Apr;7(4):1197-204. doi: 10.1039/c0mb00279h. Epub 2011 Jan 21.
The last decade has witnessed rapid progress in the identification of protein tyrosine nitration (PTN), which is an essential and ubiquitous post-translational modification (PTM) that plays a variety of important roles in both physiological and pathological processes, such as the immune response, cell death, aging and neurodegeneration. Identification of site-specific nitrated substrates is fundamental for understanding the molecular mechanisms and biological functions of PTN. In contrast with labor-intensive and time-consuming experimental approaches, here we report the development of the novel software package GPS-YNO2 to predict PTN sites. The software demonstrated a promising accuracy of 76.51%, a sensitivity of 50.09% and a specificity of 80.18% from the leave-one-out validation. As an example application, we predicted potential PTN sites for hundreds of nitrated substrates which had been experimentally detected in small-scale or large-scale studies, even though the actual nitration sites had still not been determined. Through a statistical functional comparison with the nitric oxide (NO) dependent reversible modification of S-nitrosylation, we observed that PTN prefers to attack certain fundamental biological processes and functions. These prediction and analysis results might be helpful for further experimental investigation. Finally, the online service and local packages of GPS-YNO2 1.0 were implemented in JAVA and freely available at: .
过去十年见证了蛋白质酪氨酸硝化(PTN)鉴定方面的快速进展,PTN是一种重要且普遍存在的翻译后修饰(PTM),在生理和病理过程中发挥着多种重要作用,如免疫反应、细胞死亡、衰老和神经退行性变。鉴定位点特异性硝化底物对于理解PTN的分子机制和生物学功能至关重要。与劳动强度大且耗时的实验方法不同,在此我们报告了用于预测PTN位点的新型软件包GPS-YNO2的开发。该软件在留一法验证中的准确率达76.51%,灵敏度为50.09%,特异性为80.18%,表现出良好的前景。作为一个示例应用,我们为数百种在小规模或大规模研究中通过实验检测到的硝化底物预测了潜在的PTN位点,尽管实际的硝化位点仍未确定。通过与一氧化氮(NO)依赖的S-亚硝基化可逆修饰进行统计功能比较,我们观察到PTN倾向于作用于某些基本的生物学过程和功能。这些预测和分析结果可能有助于进一步的实验研究。最后,GPS-YNO2 1.0的在线服务和本地程序包用JAVA实现,并可在以下网址免费获取: 。