Literature DB >> 19692556

TargetMiner: microRNA target prediction with systematic identification of tissue-specific negative examples.

Sanghamitra Bandyopadhyay1, Ramkrishna Mitra.   

Abstract

MOTIVATION: Prediction of microRNA (miRNA) target mRNAs using machine learning approaches is an important area of research. However, most of the methods suffer from either high false positive or false negative rates. One reason for this is the marked deficiency of negative examples or miRNA non-target pairs. Systematic identification of non-target mRNAs is still not addressed properly, and therefore, current machine learning approaches are compelled to rely on artificially generated negative examples for training.
RESULTS: In this article, we have identified approximately 300 tissue-specific negative examples using a novel approach that involves expression profiling of both miRNAs and mRNAs, miRNA-mRNA structural interactions and seed-site conservation. The newly generated negative examples are validated with pSILAC dataset, which elucidate the fact that the identified non-targets are indeed non-targets.These high-throughput tissue-specific negative examples and a set of experimentally verified positive examples are then used to build a system called TargetMiner, a support vector machine (SVM)-based classifier. In addition to assessing the prediction accuracy on cross-validation experiments, TargetMiner has been validated with a completely independent experimental test dataset. Our method outperforms 10 existing target prediction algorithms and provides a good balance between sensitivity and specificity that is not reflected in the existing methods. We achieve a significantly higher sensitivity and specificity of 69% and 67.8% based on a pool of 90 feature set and 76.5% and 66.1% using a set of 30 selected feature set on the completely independent test dataset. In order to establish the effectiveness of the systematically generated negative examples, the SVM is trained using a different set of negative data generated using the method in Yousef et al. A significantly higher false positive rate (70.6%) is observed when tested on the independent set, while all other factors are kept the same. Again, when an existing method (NBmiRTar) is executed with the our proposed negative data, we observe an improvement in its performance. These clearly establish the effectiveness of the proposed approach of selecting the negative examples systematically. AVAILABILITY: TargetMiner is now available as an online tool at www.isical.ac.in/ approximately bioinfo_miu

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Year:  2009        PMID: 19692556     DOI: 10.1093/bioinformatics/btp503

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  82 in total

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Journal:  Nat Rev Genet       Date:  2016-10-31       Impact factor: 53.242

Review 3.  miRNAs target databases: developmental methods and target identification techniques with functional annotations.

Authors:  Nagendra Kumar Singh
Journal:  Cell Mol Life Sci       Date:  2017-02-15       Impact factor: 9.261

4.  Maximum margin classifier working in a set of strings.

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Journal:  Proc Math Phys Eng Sci       Date:  2016-03       Impact factor: 2.704

5.  Prediction of human miRNA target genes using computationally reconstructed ancestral mammalian sequences.

Authors:  Mickael Leclercq; Abdoulaye Baniré Diallo; Mathieu Blanchette
Journal:  Nucleic Acids Res       Date:  2016-11-29       Impact factor: 16.971

6.  TargetSpy: a supervised machine learning approach for microRNA target prediction.

Authors:  Martin Sturm; Michael Hackenberg; David Langenberger; Dmitrij Frishman
Journal:  BMC Bioinformatics       Date:  2010-05-28       Impact factor: 3.169

7.  CircuitsDB: a database of mixed microRNA/transcription factor feed-forward regulatory circuits in human and mouse.

Authors:  Olivier Friard; Angela Re; Daniela Taverna; Michele De Bortoli; Davide Corá
Journal:  BMC Bioinformatics       Date:  2010-08-23       Impact factor: 3.169

8.  A dictionary on microRNAs and their putative target pathways.

Authors:  Christina Backes; Eckart Meese; Hans-Peter Lenhof; Andreas Keller
Journal:  Nucleic Acids Res       Date:  2010-03-18       Impact factor: 16.971

Review 9.  Computational methods to identify miRNA targets.

Authors:  Molly Hammell
Journal:  Semin Cell Dev Biol       Date:  2010-01-15       Impact factor: 7.727

10.  miR-3646 promotes cell proliferation, migration, and invasion via regulating G2/M transition in human breast cancer cells.

Authors:  Shuang Tao; Yao-Bang Liu; Zhi-Wei Zhou; Bin Lian; Hong Li; Jin-Ping Li; Shu-Feng Zhou
Journal:  Am J Transl Res       Date:  2016-04-15       Impact factor: 4.060

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