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Prediction of protein structural class using a combined representation of protein-sequence information and support vector machine

机译:使用蛋白质序列信息的组合表示预测蛋白质结构类和支持向量机

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Knowledge of structural classes is useful in understanding of folding patterns in proteins. Although numerous methods were proposed and achieved promising results in structural class prediction, some problems in using protein-sequence information have impeded the development. In this paper, a combined representation of protein-sequence information is proposed for prediction of protein structural class, which combines word frequencies, word position information and physicochemical properties of amino acids. Then the support vector machine classifier is adopted to classify attributes of protein. To check the validity, we use three benchmark datasets and jackknife cross-validation to evaluate the proposed method. Results show that the proposed combined representation of protein-sequence information is more efficient, which indicates that the necessity for protein structural class prediction method to extract more information as possible.
机译:对结构类的知识可用于了解蛋白质中的折叠模式。尽管提出了许多方法,并且在结构类预测方面取得了许多方法,但使用蛋白质序列信息的一些问题阻碍了发展。本文提出了蛋白质序列信息的组合表示,用于预测蛋白质结构类,其结合了氨基酸的单词位置信息和物理化学特性。然后采用支持向量机分类器来分类蛋白质的属性。要检查有效性,我们使用三个基准数据集和jackknife交叉验证来评估所提出的方法。结果表明,蛋白质序列信息的提议组合表示更有效,这表明蛋白质结构类预测方法的必要性尽可能提取更多信息。

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