Using kernel SVM for predicting membrane protein types by fusing PseAAC and DipC

Zicheng Cao, Shunfang Wang, Lei Guo
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引用次数: 3

Abstract

In order to predict the types of membrane protein accurately, this paper firstly proposed a fusion feature representation, which contains a more comprehensive information of the original protein sequence by fusing two single feature expressions, pseudo amino acid composition (PseAAC) and dipeptide composition (DipC). Then, we proposed an improved support vector machine (SVM) method by introducing the idea of kernel function to evaluate prediction performance of the new fusion representation. In addition, we have deeply studied the influence of three different kernel functions as well as their kernel parameters on the prediction of membrane protein types. — Through experimental verification, it shows that the proposed integration representation with our improved SVM has a good performance in the prediction of membrane protein types. The final overall prediction accuracy can reach up to 89.64% under the Jackknife test method.
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融合PseAAC和DipC的核支持向量机预测膜蛋白类型
为了准确预测膜蛋白的类型,本文首先提出了一种融合特征表示,通过融合伪氨基酸组成(pseudo amino acid composition, PseAAC)和二肽组成(DipC)两种单一特征表达,使原蛋白序列信息更加全面。然后,我们提出了一种改进的支持向量机(SVM)方法,通过引入核函数的思想来评价新的融合表示的预测性能。此外,我们还深入研究了三种不同核函数及其核参数对膜蛋白类型预测的影响。-通过实验验证,我们改进的支持向量机所提出的积分表示在膜蛋白类型预测方面有很好的性能。在叠刀试验方法下,最终整体预测精度可达89.64%。
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