Abstract

The research methods of protein structure prediction mainly focus on finding effective features of protein sequences and developing suitable machine learning algorithms. But few people consider the importance of weights of features in classification. We propose the GASVM algorithm (classification accuracy of support vector machine is regarded as the fitness value of genetic algorithm) to optimize the coefficients of these 16 features (5 features are proposed first time) in the classification, and further develop a new feature vector. Finally, based on the new feature vector, this paper uses support vector machine and 10-fold cross-validation to classify the protein structure of 3 low similarity datasets (25PDB, 1189, FC699). Experimental results show that the overall classification accuracy of the new method is better than other methods.

Highlights

  • For today’s advances in bioinformatics, one of the main tasks is the prediction of protein structure in post-genome era of genomic research [1]

  • We propose the GASVM algorithm to optimize the coefficients of these 16 features (5 features are proposed first time) in the classification, and further develop a new feature vector

  • The former kind of research is mostly based on the amino acid composition [4] and pseudo-amino acid composition [5], which considered that similar sequences have similar protein structures

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Summary

A GASVM Algorithm for Predicting Protein Structure Classes

How to cite this paper: Liu, L.L., Ma, M.J. and Zhao, T.T. (2016) A GASVM Algorithm for Predicting Protein Structure Classes. How to cite this paper: Liu, L.L., Ma, M.J. and Zhao, T.T. (2016) A GASVM Algorithm for Predicting Protein Structure Classes. Journal of Computer and Communications, 4, 46-53. Received: September 26, 2016 Accepted: November 25, 2016 Published: November 28, 2016

Introduction
Materials and Methods
Materials
Construction of Classification Algorithm
GASVM Algorithm
Results and Discussion
Comparison with Other Methods
Method
Full Text
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