Publication Date:
2016
abstract:
Background: MicroRNAs (miRNAs) are small non-coding RNA sequences with regulatory functions to
post-transcriptional level for several biological processes, such as cell disease progression and metastasis. MiRNAs
interact with target messenger RNA (mRNA) genes by base pairing. Experimental identification of miRNA target is one
of the major challenges in cancer biology because miRNAs can act as tumour suppressors or oncogenes by targeting
different type of targets. The use of machine learning methods for the prediction of the target genes is considered a
valid support to investigate miRNA functions and to guide related wet-lab experiments. In this paper we propose the
miRNA Target Interaction Predictor (miRNATIP) algorithm, a Self-Organizing Map (SOM) based method for the miRNA
target prediction. SOM is trained with the seed region of the miRNA sequences and then the mRNA sequences are
projected into the SOM lattice in order to find putative interactions with miRNAs. These interactions will be filtered
considering the remaining part of the miRNA sequences and estimating the free-energy necessary for duplex stability.
Results: We tested the proposed method by predicting the miRNA target interactions of both the Homo sapiens and
the Caenorhbditis elegans species; then, taking into account validated target (positive) and non-target (negative)
interactions, we compared our results with other target predictors, namely miRanda, PITA, PicTar, mirSOM, TargetScan
and DIANA-microT, in terms of the most used statistical measures. We demonstrate that our method produces the
greatest number of predictions with respect to the other ones, exhibiting good results for both species, reaching the
for example the highest percentage of sensitivity of 31 and 30.5 %, respectively for Homo sapiens and for C. elegans.
All the predicted interaction are freely available at the following url: http://tblab.pa.icar.cnr.it/public/miRNATIP/.
Conclusions: Results state miRNATIP outperforms or is comparable to the other six state-of-the-art methods, in
terms of validated target and non-target interactions, respectively.
Iris type:
01.01 Articolo in rivista
Keywords:
mirna; bioinformatics; target interaction; SOM
List of contributors:
LA PAGLIA, Laura; Rizzo, Riccardo; Urso, Alfonso; Fiannaca, Antonino; LA ROSA, Massimo
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