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Protein Structural Class Determination Using Support Vector Machines

机译:使用支持向量机的蛋白质结构类测定

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Proteins can be classified into four structural classes (all-α, all-β, α/β, α+β) according to their secondary structure composition. In this paper, we predict the structural class of a protein from its Amino Acid Composition (AAC) using Support Vector Machines (SVM). A protein can be represented by a 20 dimensional vector according to its AAC. In addition to the AAC, we have used another feature set, called the Trio Amino Acid Composition (Trio AAC) which takes into account the amino acid neighborhood information. We have tried both of these features, the AAC and the Trio AAC, in each case using a SVM as the classification tool, in predicting the structural class of a protein. According to the Jackknife test results, Trio AAC feature set shows better classification performance than the AAC feature.
机译:根据其二级结构组合物,蛋白质可以分为四种结构类(全-α,全-β,α/β,α+β)。在本文中,我们使用载体载体机(SVM)预测来自其氨基酸组合物(AAC)的蛋白质的结构类。根据其AAC,蛋白质可以由20维载体表示。除了AAC之外,我们还使用了另一种特征集,称为三重组氨基酸组合物(三重组AAC),其考虑了氨基酸邻域信息。在预测蛋白质的结构类别中,我们已经尝试了在每种情况下尝试了这些特征,AAC和三重组AAC,在每种情况下使用SVM作为分类工具。根据jackknife测试结果,Trio AAC功能集比AAC功能显示出更好的分类性能。

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