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Nam, Dougu
Bioinformatics Lab.
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Biclustering analysis of transcriptome big data analysis identifies condition-specific miRNA targets

Author(s)
Yoon, SoraNguyen, Hai C.T.Nam, Dougu
Issued Date
2019-09-07
URI
https://scholarworks.unist.ac.kr/handle/201301/79292
Citation
CNB-MAC workshop (International Workshop on Computational Network biology: Modeling, Analysis, and Control)
Abstract
We present an approach to identify human microRNA (miRNA) regulatory modules (mRNA targets and relevant cell conditions) by biclustering a large collection of mRNA fold-change data for sequence-specific targets. To this end, a novel algorithm, called PBE (Progressive Bicluster Extension) which progressively extends a bicluster from noisy binary data was developed. Bicluster targets were assessed using validated messenger RNA (mRNA) targets and exhibited on an average 17.0% (median 19.4%) improved gain in certainty (sensitivity + specificity). The net gain was further increased up to 32.0% (median 33.4%) by incorporating functional networks of targets. We analyzed cancer-specific biclusters and found that the PI3K/Akt signaling pathway is strongly enriched with targets of a few miRNAs in breast cancer and diffuse large B-cell lymphoma. Indeed, five independent prognostic miRNAs were identified, and repression of bicluster targets and pathway activity by miR-29 was experimentally validated. In total, 29 898 biclusters for 459 human miRNAs were collected in the BiMIR database where biclusters are searchable for miRNAs, tissues, diseases, keywords and target genes.
Publisher
CNB-MAC workshop

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