| Literature DB >> 18427714 |
Z-C Li1, X-B Zhou, Y-R Lin, X-Y Zou.
Abstract
Structural class characterizes the overall folding type of a protein or its domain. Most of the existing methods for determining the structural class of a protein are based on a group of features that only possesses a kind of discriminative information for the prediction of protein structure class. However, different types of discriminative information associated with primary sequence have been completely missed, which undoubtedly has reduced the success rate of prediction. We present a novel method for the prediction of protein structure class by coupling the improved genetic algorithm (GA) with the support vector machine (SVM). This improved GA was applied to the selection of an optimized feature subset and the optimization of SVM parameters. Jackknife tests on the working datasets indicated that the prediction accuracies for the different classes were in the range of 97.8-100% with an overall accuracy of 99.5%. The results indicate that the approach has a high potential to become a useful tool in bioinformatics.Entities:
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Year: 2008 PMID: 18427714 DOI: 10.1007/s00726-008-0084-z
Source DB: PubMed Journal: Amino Acids ISSN: 0939-4451 Impact factor: 3.520