Removal of AU bias from microarray mRNA expression data enhances computational identification of active microRNAs.

Elucidation of regulatory roles played by microRNAs (miRs) in various biological networks is one of the greatest challenges of present molecular and computational biology. The integrated analysis of gene expression data and 3'-UTR sequences holds great promise for being an effective means to sy...

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Main Authors: Ran Elkon, Reuven Agami
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2008-10-01
Series:PLoS Computational Biology
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/18833292/pdf/?tool=EBI
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spelling doaj-b9a548a078564d9ebf74048372c0e8872021-04-21T15:20:20ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582008-10-01410e100018910.1371/journal.pcbi.1000189Removal of AU bias from microarray mRNA expression data enhances computational identification of active microRNAs.Ran ElkonReuven AgamiElucidation of regulatory roles played by microRNAs (miRs) in various biological networks is one of the greatest challenges of present molecular and computational biology. The integrated analysis of gene expression data and 3'-UTR sequences holds great promise for being an effective means to systematically delineate active miRs in different biological processes. Applying such an integrated analysis, we uncovered a striking relationship between 3'-UTR AU content and gene response in numerous microarray datasets. We show that this relationship is secondary to a general bias that links gene response and probe AU content and reflects the fact that in the majority of current arrays probes are selected from target transcript 3'-UTRs. Therefore, removal of this bias, which is in order in any analysis of microarray datasets, is of crucial importance when integrating expression data and 3'-UTR sequences to identify regulatory elements embedded in this region. We developed visualization and normalization schemes for the detection and removal of such AU biases and demonstrate that their application to microarray data significantly enhances the computational identification of active miRs. Our results substantiate that, after removal of AU biases, mRNA expression profiles contain ample information which allows in silico detection of miRs that are active in physiological conditions.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/18833292/pdf/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Ran Elkon
Reuven Agami
spellingShingle Ran Elkon
Reuven Agami
Removal of AU bias from microarray mRNA expression data enhances computational identification of active microRNAs.
PLoS Computational Biology
author_facet Ran Elkon
Reuven Agami
author_sort Ran Elkon
title Removal of AU bias from microarray mRNA expression data enhances computational identification of active microRNAs.
title_short Removal of AU bias from microarray mRNA expression data enhances computational identification of active microRNAs.
title_full Removal of AU bias from microarray mRNA expression data enhances computational identification of active microRNAs.
title_fullStr Removal of AU bias from microarray mRNA expression data enhances computational identification of active microRNAs.
title_full_unstemmed Removal of AU bias from microarray mRNA expression data enhances computational identification of active microRNAs.
title_sort removal of au bias from microarray mrna expression data enhances computational identification of active micrornas.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2008-10-01
description Elucidation of regulatory roles played by microRNAs (miRs) in various biological networks is one of the greatest challenges of present molecular and computational biology. The integrated analysis of gene expression data and 3'-UTR sequences holds great promise for being an effective means to systematically delineate active miRs in different biological processes. Applying such an integrated analysis, we uncovered a striking relationship between 3'-UTR AU content and gene response in numerous microarray datasets. We show that this relationship is secondary to a general bias that links gene response and probe AU content and reflects the fact that in the majority of current arrays probes are selected from target transcript 3'-UTRs. Therefore, removal of this bias, which is in order in any analysis of microarray datasets, is of crucial importance when integrating expression data and 3'-UTR sequences to identify regulatory elements embedded in this region. We developed visualization and normalization schemes for the detection and removal of such AU biases and demonstrate that their application to microarray data significantly enhances the computational identification of active miRs. Our results substantiate that, after removal of AU biases, mRNA expression profiles contain ample information which allows in silico detection of miRs that are active in physiological conditions.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/18833292/pdf/?tool=EBI
work_keys_str_mv AT ranelkon removalofaubiasfrommicroarraymrnaexpressiondataenhancescomputationalidentificationofactivemicrornas
AT reuvenagami removalofaubiasfrommicroarraymrnaexpressiondataenhancescomputationalidentificationofactivemicrornas
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