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A holistic in silico approach to predict functional sites in protein structures.

机译:一种整体计算机模拟方法,可预测蛋白质结构中的功能位点。

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MOTIVATION: Proteins execute and coordinate cellular functions by interacting with other biomolecules. Among these interactions, protein-protein (including peptide-mediated), protein-DNA and protein-RNA interactions cover a wide range of critical processes and cellular functions. The functional characterization of proteins requires the description and mapping of functional biomolecular interactions and the identification and characterization of functional sites is an important step towards this end. RESULTS: We have developed a novel computational method, Multi-VORFFIP (MV), a tool to predicts protein-, peptide-, DNA- and RNA-binding sites in proteins. MV utilizes a wide range of structural, evolutionary, experimental and energy-based information that is integrated into a common probabilistic framework by means of a Random Forest ensemble classifier. While remaining competitive when compared with current methods, MV is a centralized resource for the prediction of functional sites and is interfaced by a powerful web application tailored to facilitate the use of the method and analysis of predictions to non-expert end-users. AVAILABILITY: http://www.bioinsilico.org/MVORFFIP SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online. CONTACT: naf4@aber.ac.uk; narcis.fernandez@gmail.com.
机译:动机:蛋白质通过与其他生物分子相互作用来执行和协调细胞功能。在这些相互作用中,蛋白质-蛋白质(包括肽介导的),蛋白质-DNA和蛋白质-RNA的相互作用涵盖了广泛的关键过程和细胞功能。蛋白质的功能表征需要功能性生物分子相互作用的描述和作图,而功能位点的识别和表征是朝这一目标迈出的重要一步。结果:我们开发了一种新颖的计算方法Multi-VORFFIP(MV),该工具可预测蛋白质中的蛋白质,肽,DNA和RNA结合位点。 MV利用了广泛的结构,进化,实验和基于能量的信息,这些信息通过随机森林集成分类器集成到一个常见的概率框架中。与当前方法相比,MV仍然具有竞争力,但它是用于预测功能站点的集中资源,并通过功能强大的Web应用程序进行接口,该Web应用程序经过量身定制,以方便非专家最终用户使用该方法和进行预测分析。可用性:http://www.bioinsilico.org/MVORFFIP补充信息:补充数据可从Bioinformatics在线获得。联系人:naf4@aber.ac.uk; narcis.fernandez@gmail.com。

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