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A Novel Algorithm for Hub Protein Identification in H.Sapiens Using Global Amino Acid Features

机译:使用全球氨基酸特征的H.Sapiens中枢蛋白鉴定的一种新算法

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Identification of hub proteins solely from amino acids in proteome remains an open problem in computational biology that has been getting increasing deliberations with extensive growth in sequence information. In this context, we have chosen to investigate whether hub proteins can be predicted from amino acid sequence information alone. Here, we propose a novel hub identifying algorithm which relies on the use of conformational, physiochemical and pattern characteristics of amino acid sequences. In order to extract the most potential features, two feature selection techniques, CFS (Correlation-based Feature Selection) and ReliefF algorithms were used, which are widely used in data preprocessing for machine learning problems. The performance of two types of neural network classifiers such as RBF network and multilayer perceptron were evaluated with these filtering approaches. Our proposed model led to successful prediction of hub proteins from amino acid sequences alone with 92.98% and 92.61% accuracy for multilayer perceptron and RBF Network respectively with CFS algorithm and 94.69% and 90.89% accuracy for multilayer perceptron and RBF Network respectively using ReliefF algorithm.
机译:仅来自蛋白质组中的氨基酸鉴定中心蛋白仍然是计算生物学中的开放问题,这一直是在序列信息中具有广泛增长的审议。在这种情况下,我们选择研究中心蛋白是否可以单独从氨基酸序列信息预测。在这里,我们提出了一种新的集线器识别算法,其依赖于使用氨基酸序列的构象,生理化学和模式特征。为了提取最潜在的特征,使用两个特征选择技术,CFS(基于相关的特征选择)和Relieff算法,这些算法广泛用于机器学习问题的数据预处理中。通过这些滤波方法评估两种类型的神经网络分类器,例如RBF网络和多层Perceptron的性能。我们所提出的模型LED分别使用CFS算法和RBF网络的多层算法和RBF网络的精度为92.98%和92.61%的精度,分别使用CRIFEFF算法为多层Perceptron和RBF网络的高精度来成功预测。

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