Literature DB >> 21881406

mirExplorer: detecting microRNAs from genome and next generation sequencing data using the AdaBoost method with transition probability matrix and combined features.

Dao-Gang Guan1, Jian-You Liao, Zhen-Hua Qu, Ying Zhang, Liang-Hu Qu.   

Abstract

microRNAs (miRNAs) represent an abundant group of small regulatory non-coding RNAs in eukaryotes. The emergence of Next-generation sequencing (NGS) technologies has allowed the systematic detection of small RNAs (sRNAs) and de novo sequencing of genomes quickly and with low cost. As a result, there is an increased need to develop fast miRNA prediction tools to annotate miRNAs from various organisms with a high level of accuracy, using the genome sequence or the NGS data. Several miRNA predictors have been proposed to achieve this purpose. However, the accuracy and fitness for multiple species of existing predictors needed to be improved. Here, we present a novel prediction tool called mirExplorer, which is based on an integrated adaptive boosting method and contains two modules. The first module named mirExplorer-genome was designed to de novo predict pre-miRNAs from genome, and the second module named mirExplorer-NGS was used to discover miRNAs from NGS data. A set of novel features of pre-miRNA secondary structure and miRNA biogenesis has been extracted to distinguish real pre-miRNAs from pseudo ones. We used outer-ten-fold cross-validation to verify the mirExplorer-genome computation, which obtained a specificity of 95.03% and a sensitivity of 93.71% on human data. This computation was made on test data from 16 species, and it achieved an overall accuracy of 95.53%. Systematic outer-ten-fold cross-validation of the mirExplorer-NGS model achieved a specificity of 98.3% and a sensitivity of 97.72%. We found that the good performance of the mirExplorer-NGS model was upheld across species from vertebrates to plants in test datasets. The mirExplorer is available as both web server and software package at http://biocenter.sysu.edu.cn/mir/.

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Year:  2011        PMID: 21881406     DOI: 10.4161/rna.8.5.16026

Source DB:  PubMed          Journal:  RNA Biol        ISSN: 1547-6286            Impact factor:   4.652


  11 in total

1.  miRBoost: boosting support vector machines for microRNA precursor classification.

Authors:  Van Du T Tran; Sebastien Tempel; Benjamin Zerath; Farida Zehraoui; Fariza Tahi
Journal:  RNA       Date:  2015-03-20       Impact factor: 4.942

2.  Rat mir-155 generated from the lncRNA Bic is 'hidden' in the alternate genomic assembly and reveals the existence of novel mammalian miRNAs and clusters.

Authors:  Paolo Uva; Letizia Da Sacco; Manuela Del Cornò; Antonella Baldassarre; Paola Sestili; Massimiliano Orsini; Alessia Palma; Sandra Gessani; Andrea Masotti
Journal:  RNA       Date:  2013-01-17       Impact factor: 4.942

3.  PTHGRN: unraveling post-translational hierarchical gene regulatory networks using PPI, ChIP-seq and gene expression data.

Authors:  Daogang Guan; Jiaofang Shao; Zhongying Zhao; Panwen Wang; Jing Qin; Youping Deng; Kenneth R Boheler; Junwen Wang; Bin Yan
Journal:  Nucleic Acids Res       Date:  2014-05-29       Impact factor: 16.971

4.  Heterogeneous ensemble approach with discriminative features and modified-SMOTEbagging for pre-miRNA classification.

Authors:  Supatcha Lertampaiporn; Chinae Thammarongtham; Chakarida Nukoolkit; Boonserm Kaewkamnerdpong; Marasri Ruengjitchatchawalya
Journal:  Nucleic Acids Res       Date:  2012-09-24       Impact factor: 16.971

5.  Discovery of novel microRNAs in rat kidney using next generation sequencing and microarray validation.

Authors:  Fanxue Meng; Michael Hackenberg; Zhiguang Li; Jian Yan; Tao Chen
Journal:  PLoS One       Date:  2012-03-28       Impact factor: 3.240

6.  RIP-seq of BmAgo2-associated small RNAs reveal various types of small non-coding RNAs in the silkworm, Bombyx mori.

Authors:  Zuoming Nie; Fang Zhou; Dan Li; Zhengbing Lv; Jian Chen; Yue Liu; Jianhong Shu; Qing Sheng; Wei Yu; Wenping Zhang; Caiying Jiang; Yuhua Yao; Juming Yao; Yongfeng Jin; Yaozhou Zhang
Journal:  BMC Genomics       Date:  2013-09-28       Impact factor: 3.969

7.  MatPred: Computational Identification of Mature MicroRNAs within Novel Pre-MicroRNAs.

Authors:  Jin Li; Ying Wang; Lei Wang; Weixing Feng; Kuan Luan; Xuefeng Dai; Chengzhen Xu; Xianglian Meng; Qiushi Zhang; Hong Liang
Journal:  Biomed Res Int       Date:  2015-11-23       Impact factor: 3.411

8.  Adaboost-SVM-based probability algorithm for the prediction of all mature miRNA sites based on structured-sequence features.

Authors:  Ying Wang; Jidong Ru; Yueqiu Jiang; Jian Zhang
Journal:  Sci Rep       Date:  2019-02-06       Impact factor: 4.379

9.  A contig-based strategy for the genome-wide discovery of microRNAs without complete genome resources.

Authors:  Jun-Zhi Wen; Jian-You Liao; Ling-Ling Zheng; Hui Xu; Jian-Hua Yang; Dao-Gang Guan; Si-Min Zhang; Hui Zhou; Liang-Hu Qu
Journal:  PLoS One       Date:  2014-02-07       Impact factor: 3.240

10.  Improving classification of mature microRNA by solving class imbalance problem.

Authors:  Ying Wang; Xiaoye Li; Bairui Tao
Journal:  Sci Rep       Date:  2016-05-16       Impact factor: 4.379

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