PLoS Computational Biology (Sep 2009)

Conserved expression patterns predict microRNA targets.

  • William Ritchie,
  • Megha Rajasekhar,
  • Stephane Flamant,
  • John E J Rasko

DOI
https://doi.org/10.1371/journal.pcbi.1000513
Journal volume & issue
Vol. 5, no. 9
p. e1000513

Abstract

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microRNAs (miRNAs) are major regulators of gene expression and thereby modulate many biological processes. Computational methods have been instrumental in understanding how miRNAs bind to mRNAs to induce their repression but have proven inaccurate. Here we describe a novel method that combines expression data from human and mouse to discover conserved patterns of expression between orthologous miRNAs and mRNA genes. This method allowed us to predict thousands of putative miRNA targets. Using the luciferase reporter assay, we confirmed 4 out of 6 of our predictions. In addition, this method predicted many miRNAs that act as expression enhancers. We show that many miRNA enhancer effects are mediated through the repression of negative transcriptional regulators and that this effect could be as common as the widely reported repression activity of miRNAs. Our findings suggest that the indirect enhancement of gene expression by miRNAs could be an important component of miRNA regulation that has been widely neglected to date.