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Novel Modeling of Combinatorial miRNA Targeting Identifies SNP with Potential Role in Bone Density
Authors
A Arvey
A Eulalio
+65 more
A Krek
A Muniategui
AA Khan
Abha S. Bais
AJ Enright
AM Eiring
Arshi Arora
BP Lewis
Claudia Coronnello
D Betel
D Betel
DG Monroe
DG Monroe
DG Monroe
DJ Rickard
DP Bartel
DP Kiel
F Campo-Paysaa
F Rivadeneira
FB Gao
Gary D. Stormo
I Lee
J Brennecke
J Lu
JC Huang
JG Ruby
KC Miranda
Kevin Chen
Kusum V. Pandit
L Zhang
Luai Huleihel
M Djordjevic
M Hafner
M Hammell
M Kertesz
M Kertesz
M Maragkakis
M Rehmsmeier
M Yousef
MA Saunders
Michael Butterworth
N Henry
N Ntukidem
Naftali Kaminski
P Sethupathy
Panayiotis V. Benos
R Brower-Sinning
RC Friedman
Ryan Hartmaier
SK Kim
Steffi Oesterreich
SW Chi
T Sing
T Yamada
U Mödder
U Mödder
V Jayaswal
V Rusinov
X Hong
X Robin
XW Wang
Y Jin
Y Jin
Y Zhao
YJ Hua
Publication date
1 January 2012
Publisher
'Public Library of Science (PLoS)'
Doi
View
on
PubMed
Abstract
MicroRNAs (miRNAs) are post-transcriptional regulators that bind to their target mRNAs through base complementarity. Predicting miRNA targets is a challenging task and various studies showed that existing algorithms suffer from high number of false predictions and low to moderate overlap in their predictions. Until recently, very few algorithms considered the dynamic nature of the interactions, including the effect of less specific interactions, the miRNA expression level, and the effect of combinatorial miRNA binding. Addressing these issues can result in a more accurate miRNA:mRNA modeling with many applications, including efficient miRNA-related SNP evaluation. We present a novel thermodynamic model based on the Fermi-Dirac equation that incorporates miRNA expression in the prediction of target occupancy and we show that it improves the performance of two popular single miRNA target finders. Modeling combinatorial miRNA targeting is a natural extension of this model. Two other algorithms show improved prediction efficiency when combinatorial binding models were considered. ComiR (Combinatorial miRNA targeting), a novel algorithm we developed, incorporates the improved predictions of the four target finders into a single probabilistic score using ensemble learning. Combining target scores of multiple miRNAs using ComiR improves predictions over the naïve method for target combination. ComiR scoring scheme can be used for identification of SNPs affecting miRNA binding. As proof of principle, ComiR identified rs17737058 as disruptive to the miR-488-5p:NCOA1 interaction, which we confirmed in vitro. We also found rs17737058 to be significantly associated with decreased bone mineral density (BMD) in two independent cohorts indicating that the miR-488-5p/NCOA1 regulatory axis is likely critical in maintaining BMD in women. With increasing availability of comprehensive high-throughput datasets from patients ComiR is expected to become an essential tool for miRNA-related studies. © 2012 Coronnello et al
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