4.3 Article

Effective Classification of MicroRNA Precursors Using Feature Mining and AdaBoost Algorithms

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OMICS-A JOURNAL OF INTEGRATIVE BIOLOGY
卷 17, 期 9, 页码 486-493

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MARY ANN LIEBERT, INC
DOI: 10.1089/omi.2013.0011

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  1. Intramural Research Program of the NIH, National Cancer Institute, Center for Cancer Research
  2. NATIONAL CANCER INSTITUTE [ZIABC008382] Funding Source: NIH RePORTER

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MicroRNAs play important roles in most biological processes, including cell proliferation, tissue differentiation, and embryonic development, among others. They originate from precursor transcripts (pre-miRNAs), which contain phylogenetically conserved stem-loop structures. An important bioinformatics problem is to distinguish the pre-miRNAs from pseudo pre-miRNAs that have similar stem-loop structures. We present here a novel method for tackling this bioinformatics problem. Our method, named MirID, accepts an RNA sequence as input, and classifies the RNA sequence either as positive (i.e., a real pre-miRNA) or as negative (i.e., a pseudo pre-miRNA). MirID employs a feature mining algorithm for finding combinations of features suitable for building pre-miRNA classification models. These models are implemented using support vector machines, which are combined to construct a classifier ensemble. The accuracy of the classifier ensemble is further enhanced by the utilization of an AdaBoost algorithm. When compared with two closely related tools on twelve species analyzed with these tools, MirID outperforms the existing tools on the majority of the twelve species. MirID was also tested on nine additional species, and the results showed high accuracies on the nine species. The MirID web server is fully operational and freely accessible at http://bioinformatics.njit.edu/MirID/. Potential applications of this software in genomics and medicine are also discussed.

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