2011
DOI: 10.1073/pnas.1104318108
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Functional characterization of bacterial sRNAs using a network biology approach

Abstract: Small RNAs (sRNAs) are important components of posttranscriptional regulation. These molecules are prevalent in bacterial and eukaryotic organisms, and involved in a variety of responses to environmental stresses. The functional characterization of sRNAs is challenging and requires highly focused and extensive experimental procedures. Here, using a network biology approach and a compendium of gene expression profiles, we predict functional roles and regulatory interactions for sRNAs in Escherichia coli. We exp… Show more

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Cited by 93 publications
(119 citation statements)
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“…As a comparison, in E. coli, whose genome is about twice as big as that of A. pleuropneumoniae's genome, around 80 sRNAs have already been described (Modi et al 2011). We would therefore expect roughly half the regulatory RNAs in our model microorganism.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…As a comparison, in E. coli, whose genome is about twice as big as that of A. pleuropneumoniae's genome, around 80 sRNAs have already been described (Modi et al 2011). We would therefore expect roughly half the regulatory RNAs in our model microorganism.…”
Section: Discussionmentioning
confidence: 99%
“…Here, we used TargetRNA2 as a target predictor for being the algorithm with the best correlation of targets predicted and actually confirmed, among the programs widely used for this purpose (Kery et al 2014). Because many of the mRNAs predicted are potential targets of more than one sRNA, these regulators may share some of their targets, placing them in a characteristic entangled network of gene regulation (Modi et al 2011). Our predictions are strongly corroborated by the fact that several of the targets predicted for the GcvB (Arrc01) sRNA had been shown for other microorganisms and are consistent with its role (Sharma et al 2011).…”
Section: Discussionmentioning
confidence: 99%
“…Especially noticeable is the pronounced complementarity in the region directly 5 0 of the mRNA AUG (boldface letters and arrow). (Wassarman et al, 2001) and regulates probably more than 20 iron-storage, iron-using and other proteins when iron becomes limiting (Masse and Gottesman, 2002;Modi et al, 2011;Salvail and Masse, 2011). Functional homologs of RyhB were also identified in several non-enterobacteria, among them PrrF1 and PrrF2 in Pseudomonas aeruginosa (Wilderman et al, 2004).…”
Section: Discussionmentioning
confidence: 97%
“…In addition, recent innovative ways of characterizing sRNA have relied on a biology network approach to infer regulatory relationships between sRNAs and mRNAs. 93 A creative approach to bridge the gap between discovery of bacterial regulatory RNAs and functional characterization is to use a holistic whole cell approach. To this end, Modi et al 93 proposed a network biology approach in which a computational algorithm was applied to the study of sRNAs.…”
Section: Experimental and Bioinformatic Strategies For Target Identifmentioning
confidence: 99%
“…93 A creative approach to bridge the gap between discovery of bacterial regulatory RNAs and functional characterization is to use a holistic whole cell approach. To this end, Modi et al 93 proposed a network biology approach in which a computational algorithm was applied to the study of sRNAs. They fed extensive gene expression profiles into the algorithm to infer regulatory relationships between IsrA, GlmZ, GcvB, and their mRNA targets that were experimentally confirmed.…”
Section: Experimental and Bioinformatic Strategies For Target Identifmentioning
confidence: 99%