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3D-PP: A Tool for Discovering Conserved Three-Dimensional Protein Patterns

机译:3D-PP:发现保守的三维蛋白质模式的工具

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摘要

Discovering conserved three-dimensional (3D) patterns among protein structures may provide valuable insights into protein classification, functional annotations or the rational design of multi-target drugs. Thus, several computational tools have been developed to discover and compare protein 3D-patterns. However, most of them only consider previously known 3D-patterns such as orthosteric binding sites or structural motifs. This fact makes necessary the development of new methods for the identification of all possible 3D-patterns that exist in protein structures (allosteric sites, enzyme-cofactor interaction motifs, among others). In this work, we present 3D-PP, a new free access web server for the discovery and recognition all similar 3D amino acid patterns among a set of proteins structures (independent of their sequence similarity). This new tool does not require any previous structural knowledge about ligands, and all data are organized in a high-performance graph database. The input can be a text file with the PDB access codes or a zip file of PDB coordinates regardless of the origin of the structural data: X-ray crystallographic experiments or in silico homology modeling. The results are presented as lists of sequence patterns that can be further analyzed within the web page. We tested the accuracy and suitability of 3D-PP using two sets of proteins coming from the Protein Data Bank: (a) Zinc finger containing and (b) Serotonin target proteins. We also evaluated its usefulness for the discovering of new 3D-patterns, using a set of protein structures coming from in silico homology modeling methodologies, all of which are overexpressed in different types of cancer. Results indicate that 3D-PP is a reliable, flexible and friendly-user tool to identify conserved structural motifs, which could be relevant to improve the knowledge about protein function or classification. The web server can be freely utilized at .
机译:在蛋白质结构中发现保守的三维(3D)模式可以为蛋白质分类,功能注释或多目标药物的合理设计提供有价值的见解。因此,已经开发了几种计算工具来发现和比较蛋白质3D模式。但是,它们中的大多数仅考虑了以前已知的3D模式,例如正构结合位点或结构模体。这一事实使得有必要开发新的方法来鉴定蛋白质结构中存在的所有可能的3D模式(变构位点,酶-辅因子相互作用基序等)。在这项工作中,我们介绍3D-PP,这是一种新的免费访问网络服务器,用于发现和识别一组蛋白质结构中的所有相似3D氨基酸模式(与它们的序列相似性无关)。这个新工具不需要任何有关配体的结构知识,并且所有数据都组织在一个高性能的图形数据库中。输入可以是带有PDB访问代码的文本文件,也可以是PDB坐标的zip文件,而与结构数据的来源无关:X射线晶体学实验或计算机同源性建模。结果显示为可在网页中进一步分析的序列模式列表。我们使用来自蛋白质数据库的两套蛋白质测试了3D-PP的准确性和适用性:(a)含锌指和(b)血清素靶蛋白。我们还使用了计算机同源性建模方法中的一组蛋白质结构,评估了其对于发现新3D模式的有用性,这些蛋白质结构在不同类型的癌症中均过表达。结果表明3D-PP是一种可靠,灵活且友好的用户工具,可以识别保守的结构基序,这可能与提高有关蛋白质功能或分类的知识有关。 Web服务器可以在处免费使用。

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