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Improving Predictions of Protein-Protein Interfaces by Combining Amino Acid-Specific Classifiers Based on Structural and Physicochemical Descriptors with Their Weighted Neighbor Averages

机译:通过将基于结构和物化描述子的氨基酸特定分类器与其加权平均邻域相结合,改善蛋白质-蛋白质界面的预测

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摘要

Protein-protein interactions are involved in nearly all regulatory processes in the cell and are considered one of the most important issues in molecular biology and pharmaceutical sciences but are still not fully understood. Structural and computational biology contributed greatly to the elucidation of the mechanism of protein interactions. In this paper, we present a collection of the physicochemical and structural characteristics that distinguish interface-forming residues (IFR) from free surface residues (FSR). We formulated a linear discriminative analysis (LDA) classifier to assess whether chosen descriptors from the BlueStar STING database (http://www.cbi.cnptia.embrapa.br/SMS/) are suitable for such a task. Receiver operating characteristic (ROC) analysis indicates that the particular physicochemical and structural descriptors used for building the linear classifier perform much better than a random classifier and in fact, successfully outperform some of the previously published procedures, whose performance indicators were recently compared by other research groups. The results presented here show that the selected set of descriptors can be utilized to predict IFRs, even when homologue proteins are missing (particularly important for orphan proteins where no homologue is available for comparative analysis/indication) or, when certain conformational changes accompany interface formation. The development of amino acid type specific classifiers is shown to increase IFR classification performance. Also, we found that the addition of an amino acid conservation attribute did not improve the classification prediction. This result indicates that the increase in predictive power associated with amino acid conservation is exhausted by adequate use of an extensive list of independent physicochemical and structural parameters that, by themselves, fully describe the nano-environment at protein-protein interfaces. The IFR classifier developed in this study is now integrated into the BlueStar STING suite of programs. Consequently, the prediction of protein-protein interfaces for all proteins available in the PDB is possible through STING_interfaces module, accessible at the following website: (http://www.cbi.cnptia.embrapa.br/SMS/predictions/index.html).
机译:蛋白质-蛋白质相互作用几乎参与细胞中的所有调节过程,被认为是分子生物学和药物科学中最重要的问题之一,但仍未被完全理解。结构和计算生物学极大地阐明了蛋白质相互作用的机制。在本文中,我们提出了理化和结构特征的集合,这些特征区别了界面形成残基(IFR)和自由表面残基(FSR)。我们制定了线性判别分析(LDA)分类器,以评估从BlueStar STING数据库(http://www.cbi.cnptia.embrapa.br/SMS/)中选择的描述符是否适合此类任务。接收器工作特性(ROC)分析表明,用于构建线性分类器的特定物理化学和结构描述符比随机分类器的性能要好得多,并且实际上,它的性能指标已经成功地超过了以前发布的程序,其性能指标最近已通过其他研究进行了比较组。此处显示的结果表明,即使缺少同源蛋白(对于没有同源物可用于比较分析/指示的孤儿蛋白特别重要),或者当界面形成时伴随某些构象变化,选择的描述符集也可用于预测IFR 。氨基酸类型特异性分类器的开发表明可以提高IFR分类性能。此外,我们发现添加氨基酸保守性并不能改善分类预测。该结果表明,通过适当使用大量独立的理化和结构参数,可以充分利用蛋白质-蛋白质界面的纳米环境,从而耗尽了与氨基酸保守性相关的预测能力。这项研究中开发的IFR分类器现已集成到BlueStar STING程序套件中。因此,可以通过以下网站上的STING_interfaces模块预测PDB中所有蛋白质的蛋白质-蛋白质界面:(http://www.cbi.cnptia.embrapa.br/SMS/predictions/index.html )。

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