Literature DB >> 21491369

Genetic algorithm-based efficient feature selection for classification of pre-miRNAs.

P Xuan1, M Z Guo, J Wang, C Y Wang, X Y Liu, Y Liu.   

Abstract

In order to classify the real/pseudo human precursor microRNA (pre-miRNAs) hairpins with ab initio methods, numerous features are extracted from the primary sequence and second structure of pre-miRNAs. However, they include some redundant and useless features. It is essential to select the most representative feature subset; this contributes to improving the classification accuracy. We propose a novel feature selection method based on a genetic algorithm, according to the characteristics of human pre-miRNAs. The information gain of a feature, the feature conservation relative to stem parts of pre-miRNA, and the redundancy among features are all considered. Feature conservation was introduced for the first time. Experimental results were validated by cross-validation using datasets composed of human real/pseudo pre-miRNAs. Compared with microPred, our classifier miPredGA, achieved more reliable sensitivity and specificity. The accuracy was improved nearly 12%. The feature selection algorithm is useful for constructing more efficient classifiers for identification of real human pre-miRNAs from pseudo hairpins.

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Year:  2011        PMID: 21491369     DOI: 10.4238/vol10-2gmr969

Source DB:  PubMed          Journal:  Genet Mol Res        ISSN: 1676-5680


  8 in total

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7.  The impact of feature selection on one and two-class classification performance for plant microRNAs.

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  8 in total

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