4.2 Article

SVM-BASED METHOD FOR PROTEIN STRUCTURAL CLASS PREDICTION USING SECONDARY STRUCTURAL CONTENT AND STRUCTURAL INFORMATION OF AMINO ACIDS

Journal

Publisher

WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0219720011005422

Keywords

Protein structural class prediction; SVM; structural information of amino acids

Funding

  1. CDFD
  2. Council of Scientific and Industrial Research (CSIR)

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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-alpha, all-beta, alpha/beta and alpha broken vertical bar beta . 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 similar to 81% which is comparable to the best accuracy reported in the literature so far.

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