Literature DB >> 24564296

Integrating microRNA target predictions for the discovery of gene regulatory networks: a semi-supervised ensemble learning approach.

Gianvito Pio, Donato Malerba, Domenica D'Elia, Michelangelo Ceci.   

Abstract

BACKGROUND: MicroRNAs (miRNAs) are small non-coding RNAs which play a key role in the post-transcriptional regulation of many genes. Elucidating miRNA-regulated gene networks is crucial for the understanding of mechanisms and functions of miRNAs in many biological processes, such as cell proliferation, development, differentiation and cell homeostasis, as well as in many types of human tumors. To this aim, we have recently presented the biclustering method HOCCLUS2, for the discovery of miRNA regulatory networks. Experiments on predicted interactions revealed that the statistical and biological consistency of the obtained networks is negatively affected by the poor reliability of the output of miRNA target prediction algorithms. Recently, some learning approaches have been proposed to learn to combine the outputs of distinct prediction algorithms and improve their accuracy. However, the application of classical supervised learning algorithms presents two challenges: i) the presence of only positive examples in datasets of experimentally verified interactions and ii) unbalanced number of labeled and unlabeled examples.
RESULTS: We present a learning algorithm that learns to combine the score returned by several prediction algorithms, by exploiting information conveyed by (only positively labeled/) validated and unlabeled examples of interactions. To face the two related challenges, we resort to a semi-supervised ensemble learning setting. Results obtained using miRTarBase as the set of labeled (positive) interactions and mirDIP as the set of unlabeled interactions show a significant improvement, over competitive approaches, in the quality of the predictions. This solution also improves the effectiveness of HOCCLUS2 in discovering biologically realistic miRNA:mRNA regulatory networks from large-scale prediction data. Using the miR-17-92 gene cluster family as a reference system and comparing results with previous experiments, we find a large increase in the number of significantly enriched biclusters in pathways, consistent with miR-17-92 functions.
CONCLUSION: The proposed approach proves to be fundamental for the computational discovery of miRNA regulatory networks from large-scale predictions. This paves the way to the systematic application of HOCCLUS2 for a comprehensive reconstruction of all the possible multiple interactions established by miRNAs in regulating the expression of gene networks, which would be otherwise impossible to reconstruct by considering only experimentally validated interactions.

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Year:  2014        PMID: 24564296      PMCID: PMC4015287          DOI: 10.1186/1471-2105-15-S1-S4

Source DB:  PubMed          Journal:  BMC Bioinformatics        ISSN: 1471-2105            Impact factor:   3.169


  38 in total

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6.  Characterization of microRNA-regulated protein-protein interaction network.

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8.  A novel biclustering algorithm for the discovery of meaningful biological correlations between microRNAs and their target genes.

Authors:  Gianvito Pio; Michelangelo Ceci; Domenica D'Elia; Corrado Loglisci; Donato Malerba
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9.  starBase: a database for exploring microRNA-mRNA interaction maps from Argonaute CLIP-Seq and Degradome-Seq data.

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10.  microRNA target predictions across seven Drosophila species and comparison to mammalian targets.

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  20 in total

Review 1.  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

2.  Expression quantitative trait loci (eQTLs) in microRNA genes are enriched for schizophrenia and bipolar disorder association signals.

Authors:  V S Williamson; M Mamdani; G O McMichael; A H Kim; D Lee; S Bacanu; V I Vladimirov
Journal:  Psychol Med       Date:  2015-03-30       Impact factor: 7.723

3.  Combinatorial ensemble miRNA target prediction of co-regulation networks with non-prediction data.

Authors:  Jason A Davis; Sita J Saunders; Martin Mann; Rolf Backofen
Journal:  Nucleic Acids Res       Date:  2017-09-06       Impact factor: 16.971

4.  Systematic prediction of target genes and pathways in cervical cancer from microRNA expression data.

Authors:  Rui Chen; Yong-Hua Shi; Hong Zhang; Jian-Yun Hu; Yi Luo
Journal:  Oncol Lett       Date:  2018-04-25       Impact factor: 2.967

5.  Hsa-microRNA-181a is a regulator of a number of cancer genes and a biomarker for endometrial carcinoma in patients: a bioinformatic and clinical study and the therapeutic implication.

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Journal:  Parasitol Res       Date:  2014-11-26       Impact factor: 2.289

7.  Semi-Supervised Multi-View Learning for Gene Network Reconstruction.

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8.  Upregulation of gingival tissue miR-200b in obese periodontitis subjects.

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9.  ComiRNet: a web-based system for the analysis of miRNA-gene regulatory networks.

Authors:  Gianvito Pio; Michelangelo Ceci; Donato Malerba; Domenica D'Elia
Journal:  BMC Bioinformatics       Date:  2015-06-01       Impact factor: 3.169

10.  Integrated microRNA, mRNA, and protein expression profiling reveals microRNA regulatory networks in rat kidney treated with a carcinogenic dose of aristolochic acid.

Authors:  Zhiguang Li; Taichun Qin; Kejian Wang; Michael Hackenberg; Jian Yan; Yuan Gao; Li-Rong Yu; Leming Shi; Zhenqiang Su; Tao Chen
Journal:  BMC Genomics       Date:  2015-05-08       Impact factor: 3.969

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