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首页> 外文期刊>BMC Bioinformatics >Detection and characterization of 3D-signature phosphorylation site motifs and their contribution towards improved phosphorylation site prediction in proteins
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Detection and characterization of 3D-signature phosphorylation site motifs and their contribution towards improved phosphorylation site prediction in proteins

机译:3D签名磷酸化位点基序的检测和表征及其对蛋白质中磷酸化位点预测的改进的贡献

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Background Phosphorylation of proteins plays a crucial role in the regulation and activation of metabolic and signaling pathways and constitutes an important target for pharmaceutical intervention. Central to the phosphorylation process is the recognition of specific target sites by protein kinases followed by the covalent attachment of phosphate groups to the amino acids serine, threonine, or tyrosine. The experimental identification as well as computational prediction of phosphorylation sites (P-sites) has proved to be a challenging problem. Computational methods have focused primarily on extracting predictive features from the local, one-dimensional sequence information surrounding phosphorylation sites. Results We characterized the spatial context of phosphorylation sites and assessed its usability for improved phosphorylation site predictions. We identified 750 non-redundant, experimentally verified sites with three-dimensional (3D) structural information available in the protein data bank (PDB) and grouped them according to their respective kinase family. We studied the spatial distribution of amino acids around phosphorserines, phosphothreonines, and phosphotyrosines to extract signature 3D-profiles. Characteristic spatial distributions of amino acid residue types around phosphorylation sites were indeed discernable, especially when kinase-family-specific target sites were analyzed. To test the added value of using spatial information for the computational prediction of phosphorylation sites, Support Vector Machines were applied using both sequence as well as structural information. When compared to sequence-only based prediction methods, a small but consistent performance improvement was obtained when the prediction was informed by 3D-context information. Conclusion While local one-dimensional amino acid sequence information was observed to harbor most of the discriminatory power, spatial context information was identified as relevant for the recognition of kinases and their cognate target sites and can be used for an improved prediction of phosphorylation sites. A web-based service (Phos3D) implementing the developed structure-based P-site prediction method has been made available at http://phos3d.mpimp-golm.mpg.de .
机译:背景技术蛋白质的磷酸化在代谢和信号通路的调节和激活中起着至关重要的作用,并构成药物干预的重要目标。磷酸化过程的核心是蛋白激酶识别特定的靶位,然后将磷酸基团共价连接到氨基酸丝氨酸,苏氨酸或酪氨酸上。磷酸化位点(P位)的实验鉴定和计算预测已被证明是一个具有挑战性的问题。计算方法主要集中于从围绕磷酸化位点的局部一维序列信息中提取预测特征。结果我们表征了磷酸化位点的空间背景,并评估了其对改善磷酸化位点的预测的可用性。我们鉴定了750个非冗余的,经过实验验证的位点,这些位点具有蛋白质数据库(PDB)中可用的三维(3D)结构信息,并根据它们各自的激酶家族进行了分组。我们研究了磷酸丝氨酸,磷酸苏氨酸和磷酸酪氨酸周围氨基酸的空间分布,以提取特征性的3D轮廓。确实可以辨别磷酸化位点周围氨基酸残基类型的特征性空间分布,尤其是在分析激酶家族特异性靶位点时。为了测试使用空间信息进行磷酸化位点的计算预测的附加值,同时使用了支持向量机和序列信息以及结构信息。当与仅基于序列的预测方法进行比较时,当通过3D上下文信息通知预测时,可以获得较小但一致的性能改进。结论虽然观察到局部一维氨基酸序列信息具有大多数区分能力,但空间上下文信息被认为与激酶及其同源靶位点的识别有关,可用于改进磷酸化位点的预测。在http://phos3d.mpimp-golm.mpg.de上提供了基于Web的服务(Phos3D),该服务实现了开发的基于结构的P站点预测方法。

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