School of Information Science and Technology, University of Science and Technology of China, Hefei AH230027, China.
Centers for Biomedical Engineering, University of Science and Technology of China, Hefei AH230027, China.
Int J Biol Sci. 2018 May 22;14(8):946-956. doi: 10.7150/ijbs.24121. eCollection 2018.
Protein post-translational modifications (PTMs) are chemical modifications of a protein after its translation. Owing to its play an important role in deep understanding of various biological processes and the development of effective drugs, PTM site prediction have become a hot topic in bioinformatics. Recently, many online tools are developed to prediction various types of PTM sites, most of which are based on local sequence and some biological information. However, few of existing tools consider the relations between different PTMs for their prediction task. Here, we develop a web server called PTM-ssMP to predict PTM site, which adopts site-specific modification profile (ssMP) to efficiently extract and encode the information of both proximal PTMs and local sequence simultaneously. In PTM-ssMP we provide efficient prediction of multiple types of PTM site including phosphorylation, lysine acetylation, ubiquitination, sumoylation, methylation, O-GalNAc, O-GlcNAc, sulfation and proteolytic cleavage. To assess the performance of PTM-ssMP, a large number of experimentally verified PTM sites are collected from several sources and used to train and test the prediction models. Our results suggest that ssMP consistently contributes to remarkable improvement of prediction performance. In addition, results of independent tests demonstrate that PTM-ssMP compares favorably with other existing tools for different PTM types. PTM-ssMP is implemented as an online web server with user-friendly interface, which is freely available at http://bioinformatics.ustc.edu.cn/PTM-ssMP/index/.
蛋白质翻译后修饰(PTMs)是蛋白质翻译后发生的化学修饰。由于其在深入理解各种生物过程和开发有效药物方面发挥着重要作用,PTM 位点预测已成为生物信息学中的一个热门话题。最近,许多在线工具被开发出来以预测各种类型的 PTM 位点,其中大多数基于局部序列和一些生物学信息。然而,现有的工具很少考虑不同 PTM 之间的关系来进行预测任务。在这里,我们开发了一个名为 PTM-ssMP 的网络服务器来预测 PTM 位点,它采用特定于位点的修饰谱(ssMP)来有效地提取和同时编码近端 PTM 和局部序列的信息。在 PTM-ssMP 中,我们提供了多种类型的 PTM 位点的高效预测,包括磷酸化、赖氨酸乙酰化、泛素化、SUMO 化、甲基化、O-GalNAc、O-GlcNAc、硫酸化和蛋白水解切割。为了评估 PTM-ssMP 的性能,我们从多个来源收集了大量经过实验验证的 PTM 位点,用于训练和测试预测模型。我们的结果表明,ssMP 一致有助于显著提高预测性能。此外,独立测试的结果表明,对于不同的 PTM 类型,PTM-ssMP 优于其他现有的工具。PTM-ssMP 作为一个具有用户友好界面的在线网络服务器实现,可免费在 http://bioinformatics.ustc.edu.cn/PTM-ssMP/index/ 上使用。