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SVM-Based Classification of Class C GPCRs from Alignment-Free Physicochemical Transformations of Their Sequences

机译:基于SVM的C类GPCR序列分类的无序列理化转化

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G protein-coupled receptors (GPCRs) have a key function in regulating the function of cells due to their ability to transmit ex-tracelullar signals. Given that the 3D structure and the functionality of most GPCRs is unknown, there is a need to construct robust classification models based on the analysis of their amino acid sequences for protein homo logy detection. In this paper, we describe the supervised classification of the different subtypes of class C GPCRs using support vector machines (SVMs). These models are built on different transformations of the amino acid sequences based on their physicochemical properties. Previous research using semi-supervised methods on the same data has shown the usefulness of such transformations. The obtained classification models show a robust performance, as their Matthews correlation coefficient is close to 0.91 and their prediction accuracy is close to 0.93.
机译:G蛋白偶联受体(GPCR)具有调节细胞功能的关键功能,因为它们具有传递前回肠信号的能力。鉴于大多数GPCR的3D结构和功能尚不清楚,因此需要基于对氨基酸序列的分析来构建鲁棒的分类模型,以进行蛋白质同源性检测。在本文中,我们使用支持向量机(SVM)描述了C类GPCR不同亚型的监督分类。这些模型基于其物理化学性质,基于氨基酸序列的不同转化而建立。先前对相同数据使用半监督方法的研究表明,这种转换非常有用。所获得的分类模型表现出鲁棒的性能,因为它们的马修斯相关系数接近0.91,预测精度接近0.93。

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