Evaluation of Protein Backbone Alphabets: Using Predicted Local Structure for Fold Recognition

Kyong Jin Shim
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Abstract

Optimally combining available information is one of the key challenges in knowledge-driven prediction techniques. In this study, we evaluate six Phi and Psi-based backbone alphabets. We show that the addition of predicted backbone conformations to SVM classifiers can improve fold recognition. Our experimental results show that the inclusion of predicted backbone conformations in our feature representation leads to higher overall accuracy compared to when using amino acid residues alone.
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蛋白质主链字母的评价:使用预测的局部结构进行折叠识别
在知识驱动的预测技术中,最优地组合现有信息是一个关键挑战。在本研究中,我们评估了六个基于Phi和psi的骨干字母。我们证明了在SVM分类器中加入预测的主结构可以提高折叠识别。我们的实验结果表明,与单独使用氨基酸残基相比,在我们的特征表示中包含预测的主链构象可以获得更高的整体准确性。
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