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首页> 外文期刊>Analytical Biochemistry: An International Journal of Analytical and Preparative Methods >Improving discrimination of outer membrane proteins by fusing different forms of pseudo amino acid composition
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Improving discrimination of outer membrane proteins by fusing different forms of pseudo amino acid composition

机译:通过融合不同形式的假氨基酸成分改善外膜蛋白的分辨力

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摘要

Integral membrane proteins are central to many cellular processes and constitute approximately 50% of potential targets for novel drugs. However, the number of outer membrane proteins (OMPs) present in the public structure database is very limited due to the difficulties in determining structure with experimental methods. Therefore, discriminating OMPs from non-OMPs with computational methods is of medical importance as well as genome sequencing necessity. In this study, some sequence-derived structural and physicochemical features of proteins were incorporated with amino acid composition to discriminate OMPs from non-OMPs using support vector machines. The discrimination performance of the proposed method is evaluated on a benchmark dataset of 208 OMPs, 673 globular proteins, and 206 α-helical membrane proteins. A high overall accuracy of 97.8% was observed in the 5-fold cross-validation test. In addition, the current method distinguished OMPs from globular proteins and α-helical membrane proteins with overall accuracies of 98.2 and 96.4%, respectively. The prediction performance is superior to the state-of-the-art methods in the literature. It is anticipated that the current method might be a powerful tool for the discrimination of OMPs.
机译:整体膜蛋白是许多细胞过程的核心,构成新药潜在靶标的约50%。但是,由于难以用实验方法确定结构,公共结构数据库中存在的外膜蛋白(OMP)的数量非常有限。因此,用计算方法将OMP与非OMP区分具有医学重要性和基因组测序的必要性。在这项研究中,蛋白质的一些序列衍生的结构和理化特征与氨基酸组成结合在一起,以使用支持向量机将OMP与非OMP进行区分。在208个OMP,673个球状蛋白和206个α-螺旋膜蛋白的基准数据集上评估了该方法的判别性能。在5倍交叉验证测试中,观察到较高的总准确度,为97.8%。此外,目前的方法将OMPs与球蛋白和α-螺旋膜蛋白区分开来,总准确度分别为98.2%和96.4%。预测性能优于文献中的最新方法。可以预期,当前的方法可能是区分OMP的强大工具。

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