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Heterogeneous ensemble approach with discriminative features and modified-SMOTEbagging for pre-miRNA classification
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Metadata
Document Title
Heterogeneous ensemble approach with discriminative features and modified-SMOTEbagging for pre-miRNA classification
Author
Lertampaiporn S, Thammarongtham C, Nukoolkit C, Kaewkamnerdpong B, Ruengjitchatchawalya M
Name from Authors Collection
Affiliations
King Mongkuts University of Technology Thonburi; King Mongkuts University of Technology Thonburi; King Mongkuts University of Technology Thonburi; King Mongkuts University of Technology Thonburi; National Science & Technology Development Agency - Thailand; National Center Genetic Engineering & Biotechnology (BIOTEC); King Mongkuts University of Technology Thonburi
Type
Article
Source Title
NUCLEIC ACIDS RESEARCH
ISSN
0305-1048
Year
2013
Volume
41
Issue
15
Open Access
gold, Green Published, Green Submitted
Publisher
OXFORD UNIV PRESS
DOI
10.1093/nar/gks878
Format
Abstract
An ensemble classifier approach for microRNA precursor (pre-miRNA) classification was proposed based upon combining a set of heterogeneous algorithms including support vector machine (SVM), k-nearest neighbors (kNN) and random forest (RF), then aggregating their prediction through a voting system. Additionally, the proposed algorithm, the classification performance was also improved using discriminative features, self-containment and its derivatives, which have shown unique structural robustness characteristics of pre-miRNAs. These are applicable across different species. By applying preprocessing methods-both a correlation-based feature selection (CFS) with genetic algorithm (GA) search method and a modified-Synthetic Minority Oversampling Technique (SMOTE) bagging re-balancing method-improvement in the performance of this ensemble was observed. The overall prediction accuracies obtained via 10 runs of 5-fold cross validation (CV) was 96.54%, with sensitivity of 94.8% and specificity of 98.3%-this is better in trade-off sensitivity and specificity values than those of other state-of-the-art methods. The ensemble model was applied to animal, plant and virus pre-miRNA and achieved high accuracy, >93%. Exploiting the discriminative set of selected features also suggests that pre-miRNAs possess high intrinsic structural robustness as compared with other stem loops. Our heterogeneous ensemble method gave a relatively more reliable prediction than those using single classifiers. Our program is available at http://ncrna-pred.com/premiRNA.html.
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Funding Sponsor
National Research University Project of Thailand's Office of the Higher Education Commission [54000318]; King Mongkut's University of Technology Thonburi
License
CC BY
Rights
Authors
Publication Source
WOS