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PKIS: computational identification of protein kinases for experimentally discovered protein phosphorylation sites

机译:PKIS:实验发现的蛋白质磷酸化位点的蛋白激酶的计算鉴定

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Background Dynamic protein phosphorylation is an essential regulatory mechanism in various organisms. In this capacity, it is involved in a multitude of signal transduction pathways. Kinase-specific phosphorylation data lay the foundation for reconstruction of signal transduction networks. For this reason, precise annotation of phosphorylated proteins is the first step toward simulating cell signaling pathways. However, the vast majority of kinase-specific phosphorylation data remain undiscovered and existing experimental methods and computational phosphorylation site (P-site) prediction tools have various limitations with respect to addressing this problem. Results To address this issue, a novel protein kinase identification web server, PKIS, is here presented for the identification of the protein kinases responsible for experimentally verified P-sites at high specificity, which incorporates the composition of monomer spectrum (CMS) encoding strategy and support vector machines (SVMs). Compared to widely used P-site prediction tools including KinasePhos 2.0, Musite, and GPS2.1, PKIS largely outperformed these tools in identifying protein kinases associated with known P-sites. In addition, PKIS was used on all the P-sites in Phospho.ELM that currently lack kinase information. It successfully identified 14 potential SYK substrates with 36 known P-sites. Further literature search showed that 5 of them were indeed phosphorylated by SYK. Finally, an enrichment analysis was performed and 6 significant SYK-related signal pathways were identified. Conclusions In general, PKIS can identify protein kinases for experimental phosphorylation sites efficiently. It is a valuable bioinformatics tool suitable for the study of protein phosphorylation. The PKIS web server is freely available at http://bioinformatics.ustc.edu.cn/pkis webcite .
机译:背景技术动态蛋白质磷酸化是各种生物体中必不可少的调节机制。以这种能力,它参与多种信号转导途径。激酶特异性磷酸化数据为信号转导网络的重建奠定了基础。由于这个原因,磷酸化蛋白的精确注释是模拟细胞信号通路的第一步。然而,激酶特异性磷酸化数据的绝大多数仍未被发现,并且现有的实验方法和计算磷酸化位点(P-位点)预测工具在解决该问题方面具有各种局限性。结果为了解决这个问题,这里提出了一种新型的蛋白激酶鉴定网络服务器PKIS,用于鉴定负责以高特异性通过实验验证的P位的蛋白激酶,该酶结合了单体光谱(CMS)编码策略和支持向量机(SVM)。与广泛使用的P位点预测工具(包括KinasePhos 2.0,Musite和GPS2.1)相比,在识别与已知P位点相关的蛋白激酶方面,PKIS大大优于这些工具。此外,PKIS用于目前缺乏激酶信息的Phospho.ELM中的所有P位。它成功地鉴定出具有36个已知P位的14种潜在SYK底物。进一步的文献检索表明,其中5个确实被SYK磷酸化。最后,进行了富集分析,并鉴定了6条与SYK相关的重要信号途径。结论总体而言,PKIS可以有效地鉴定用于实验磷酸化位点的蛋白激酶。它是适用于蛋白质磷酸化研究的有价值的生物信息学工具。 PKIS Web服务器可从http://bioinformatics.ustc.edu.cn/pkis webcite免费获得。

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