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Prediction protein structural classes with a hybrid feature

机译:预测具有混合特征的蛋白质结构类别

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摘要

Select the proper feature of protein sequence is a crucial step in protein structural class prediction. In this paper we intend to propose a novel hybrid feature to describe the protein. This hybrid feature is composed of two parts, one is physicochemical composition (PCC), and another is the recurrence quantification analysis (RQA). A new classifier is constructed with the Error Correcting Output Coding (ECOC) which incorporates three binary Artificial Neural Network (ANN) classifiers. We select 1189 data set to verify the efficiency of classify. The accuracy of our method on this data set is 57.3%, higher than some other methods on the same datasets. Furthermore only 33 parameters are used in our method, lower than many other methods. This indicates that the hybrid feature we proposed here is promising to the prediction of protein structural classes.
机译:选择蛋白质序列的适当特征是蛋白质结构类别预测中的关键步骤。在本文中,我们打算提出一种新颖的杂交特征来描述蛋白质。此混合特征由两部分组成,一个是物理化学成分(PCC),另一个是递归定量分析(RQA)。使用带有三个二进制人工神经网络(ANN)分类器的纠错输出编码(ECOC)构建了一个新的分类器。我们选择1189个数据集来验证分类的效率。我们的方法在该数据集上的准确性为57.3%,高于同一数据集上的其他一些方法。此外,我们的方法中仅使用了33个参数,低于许多其他方法。这表明我们在此提出的杂种特征有望用于预测蛋白质结构类别。

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