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SVM-based method for protein structural class prediction using secondary structural content and structural information of amino acids

机译:基于二级支持量和氨基酸结构信息的基于SVM的蛋白质结构分类预测方法

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The knowledge collated from the known protein structures has revealed that the proteins are usually folded into the four structural classes: all-α, all-β, α/β and α + β. A number of methods have been proposed to predict the protein's structural class from its primary structure; however, it has been observed that these methods fail or perform poorly in the cases of distantly related sequences. In this paper, we propose a new method for protein structural class prediction using low homology (twilight-zone) protein sequences dataset. Since protein structural class prediction is a typical classification problem, we have developed a Support Vector Machine (SVM)-based method for protein structural class prediction that uses features derived from the predicted secondary structure and predicted burial information of amino acid residues. The examination of different individual as well as feature combinations revealed that the combination of secondary structural content, secondary structural and solvent accessibility state frequencies of amino acids gave rise to the best leave-one-out cross-validation accuracy of ~81% which is comparable to the best accuracy reported in the literature so far.
机译:从已知蛋白质结构整理的知识表明,蛋白质通常被折叠为四个结构类别:全α,全β,α/β和α+β。已经提出了许多方法来从蛋白质的一级结构预测蛋白质的结构类别。然而,已经观察到这些方法在远相关序列的情况下失败或表现不佳。在本文中,我们提出了一种使用低同源性(暮光区)蛋白质序列数据集进行蛋白质结构类别预测的新方法。由于蛋白质结构类别预测是一个典型的分类问题,因此,我们已经开发了基于支持向量机(SVM)的蛋白质结构类别预测方法,该方法使用了从预测的二级结构和预测的氨基酸残基掩埋信息衍生而来的特征。对不同个体和特征组合的检查表明,氨基酸的二级结构含量,二级结构和溶剂可及性状态频率的组合产生了约81%的最佳留一法交叉验证准确性,这是可比的达到迄今为止文献报道的最佳准确性。

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