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Support vector machine based classification of fast Fourier transform spectroscopy of proteins

机译:基于支持向量机的蛋白质快速傅里叶变换光谱分类

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Fast Fourier transform spectroscopy has proved to be a powerful method for study of the secondary structure of proteins since peak positions and their relative amplitude are affected by the number of hydrogen bridges that sustain this secondary structure. However, to our best knowledge, the method has not been used yet for identification of proteins within a complex matrix like a blood sample. The principal reason is the apparent similarity of protein infrared spectra with actual differences usually masked by the solvent contribution and other interactions. In this paper, we propose a novel machine learning based method that uses protein spectra for classification and identification of such proteins within a given sample. The proposed method uses principal component analysis (PCA) to identify most important linear combinations of original spectral components and then employs support vector machine (SVM) classification model applied on such identified combinations to categorize proteins into one of given groups. Our experiments have been performed on the set of four different proteins, namely: Bovine Serum Albumin, Leptin, Insulin-like Growth Factor 2 and Osteopontin. Our proposed method of applying principal component analysis along with support vector machines exhibits excellent classification accuracy when identifying proteins using their infrared spectra.
机译:快速傅里叶变换光谱已被证明是研究蛋白质二级结构的有力方法,因为峰位置及其相对幅度受维持该二级结构的氢桥数量的影响。然而,据我们所知,该方法尚未用于鉴定复杂基质(如血液样本)中的蛋白质。主要原因是蛋白质红外光谱的表观相似性,实际差异通常被溶剂贡献和其他相互作用掩盖。在本文中,我们提出了一种基于机器学习的新颖方法,该方法使用蛋白质光谱对给定样品中的此类蛋白质进行分类和识别。所提出的方法使用主成分分析(PCA)来识别原始光谱成分的最重要的线性组合,然后将支持向量机(SVM)分类模型应用于此类已识别的组合,以将蛋白质分类为给定组之一。我们对四种不同的蛋白质进行了实验,这些蛋白质分别是:牛血清白蛋白,瘦素,胰岛素样生长因子2和骨桥蛋白。当使用蛋白质的红外光谱鉴定蛋白质时,我们提出的将主成分分析与支持向量机一起应用的方法具有出色的分类准确性。

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