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首页> 外文期刊>BMC Bioinformatics >Knowledge-based annotation of small molecule binding sites in proteins
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Knowledge-based annotation of small molecule binding sites in proteins

机译:基于知识的蛋白质中小分子结合位点的注释

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Background The study of protein-small molecule interactions is vital for understanding protein function and for practical applications in drug discovery. To benefit from the rapidly increasing structural data, it is essential to improve the tools that enable large scale binding site prediction with greater emphasis on their biological validity. Results We have developed a new method for the annotation of protein-small molecule binding sites, using inference by homology, which allows us to extend annotation onto protein sequences without experimental data available. To ensure biological relevance of binding sites, our method clusters similar binding sites found in homologous protein structures based on their sequence and structure conservation. Binding sites which appear evolutionarily conserved among non-redundant sets of homologous proteins are given higher priority. After binding sites are clustered, position specific score matrices (PSSMs) are constructed from the corresponding binding site alignments. Together with other measures, the PSSMs are subsequently used to rank binding sites to assess how well they match the query and to better gauge their biological relevance. The method also facilitates a succinct and informative representation of observed and inferred binding sites from homologs with known three-dimensional structures, thereby providing the means to analyze conservation and diversity of binding modes. Furthermore, the chemical properties of small molecules bound to the inferred binding sites can be used as a starting point in small molecule virtual screening. The method was validated by comparison to other binding site prediction methods and to a collection of manually curated binding site annotations. We show that our method achieves a sensitivity of 72% at predicting biologically relevant binding sites and can accurately discriminate those sites that bind biological small molecules from non-biological ones. Conclusions A new algorithm has been developed to predict binding sites with high accuracy in terms of their biological validity. It also provides a common platform for function prediction, knowledge-based docking and for small molecule virtual screening. The method can be applied even for a query sequence without structure. The method is available at http://www.ncbi.nlm.nih.gov/Structure/ibis/ibis.cgi webcite .
机译:背景技术蛋白质-小分子相互作用的研究对于理解蛋白质功能和药物开发中的实际应用至关重要。为了从迅速增加的结构数据中受益,至关重要的是,改进能够进行大规模结合位点预测的工具,并更加强调其生物学有效性。结果我们已经开发出一种通过同源性推论来标注蛋白质-小分子结合位点的新方法,这使我们能够在没有实验数据的情况下将标注扩展到蛋白质序列上。为了确保结合位点的生物学相关性,我们的方法基于其序列和结构保守性,将在同源蛋白质结构中发现的相似结合位点聚类。在非冗余的同源蛋白质组之间表现出进化保守性的结合位点被赋予更高的优先级。在结合位点聚簇后,根据相应的结合位点比对构建位置特异性得分矩阵(PSSM)。 PSSM与其他措施一起,随后用于对结合位点进行排名,以评估它们与查询的匹配程度,并更好地评估其生物学相关性。该方法还促进了从具有已知三维结构的同源物中观察到和推断出的结合位点的简洁和信息丰富的表示,从而提供了分析结合方式的保守性和多样性的手段。此外,结合到推断的结合位点的小分子的化学性质可以用作小分子虚拟筛选的起点。通过与其他结合位点预测方法和手动策划的结合位点注释的集合进行比较,验证了该方法。我们表明,我们的方法在预测生物学相关的结合位点时可达到72%的灵敏度,并且可以准确地区分那些与非生物学结合的小分子结合位点。结论已经开发了一种新的算法来预测结合位点的生物学有效性。它还为功能预测,基于知识的对接和小分子虚拟筛选提供了通用平台。该方法甚至可以应用于没有结构的查询序列。该方法可在http://www.ncbi.nlm.nih.gov/Structure/ibis/ibis.cgi网站上找到。

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