Often, in living cells different molecular species compete for binding to the same molecular target. Typical examples are the competition of genes for the transcription machinery or the competition of mRNAs for the translation machinery. Here we show that such systems have specific regulatory features and how they can be analysed. We derive a theory for molecular competition in parallel reaction networks. Analytical expressions for the response of network fluxes to changes in the total competitor and common target pools indicate the precise conditions for ultrasensitivity and intuitive rules for competitor strength. The calculations are based on measurable concentrations of the competitor-target complexes. We show that kinetic parameters, which are usually tedious to determine, are not required in the calculations. Given their simplicity, the obtained equations are easily applied to networks of any dimension. The new theory is illustrated for competing sigma factors in bacterial transcription and for a genome-wide network of yeast mRNAs competing for ribosomes. We conclude that molecular competition can drastically influence the network fluxes and lead to negative response coefficients and ultrasensitivity. Competitors that bind a large fraction of the target, like bacterial σ(70), tend to influence competing pathways strongly. The less a competitor is saturated by the target, the more sensitive it is to changes in the concentration of the target, as well as to other competitors. As a consequence, most of the mRNAs in yeast turn out to respond ultrasensitively to changes in ribosome concentration. Finally, applying the theory to a genome-wide dataset we observe that high and low response mRNAs exhibit distinct Gene Ontology profiles.
%0 Journal Article
%1 DeVos2011How
%A De Vos, Dirk
%A Bruggeman, Frank J.
%A Westerhoff, Hans V.
%A Bakker, Barbara M.
%D 2011
%I Public Library of Science
%J PloS one
%K bt3240 gene-expression mca regulation
%N 12
%P e28494+
%R 10.1371/journal.pone.0028494
%T How molecular competition influences fluxes in gene expression networks.
%U http://dx.doi.org/10.1371/journal.pone.0028494
%V 6
%X Often, in living cells different molecular species compete for binding to the same molecular target. Typical examples are the competition of genes for the transcription machinery or the competition of mRNAs for the translation machinery. Here we show that such systems have specific regulatory features and how they can be analysed. We derive a theory for molecular competition in parallel reaction networks. Analytical expressions for the response of network fluxes to changes in the total competitor and common target pools indicate the precise conditions for ultrasensitivity and intuitive rules for competitor strength. The calculations are based on measurable concentrations of the competitor-target complexes. We show that kinetic parameters, which are usually tedious to determine, are not required in the calculations. Given their simplicity, the obtained equations are easily applied to networks of any dimension. The new theory is illustrated for competing sigma factors in bacterial transcription and for a genome-wide network of yeast mRNAs competing for ribosomes. We conclude that molecular competition can drastically influence the network fluxes and lead to negative response coefficients and ultrasensitivity. Competitors that bind a large fraction of the target, like bacterial σ(70), tend to influence competing pathways strongly. The less a competitor is saturated by the target, the more sensitive it is to changes in the concentration of the target, as well as to other competitors. As a consequence, most of the mRNAs in yeast turn out to respond ultrasensitively to changes in ribosome concentration. Finally, applying the theory to a genome-wide dataset we observe that high and low response mRNAs exhibit distinct Gene Ontology profiles.
@article{DeVos2011How,
abstract = {
Often, in living cells different molecular species compete for binding to the same molecular target. Typical examples are the competition of genes for the transcription machinery or the competition of {mRNAs} for the translation machinery. Here we show that such systems have specific regulatory features and how they can be analysed. We derive a theory for molecular competition in parallel reaction networks. Analytical expressions for the response of network fluxes to changes in the total competitor and common target pools indicate the precise conditions for ultrasensitivity and intuitive rules for competitor strength. The calculations are based on measurable concentrations of the competitor-target complexes. We show that kinetic parameters, which are usually tedious to determine, are not required in the calculations. Given their simplicity, the obtained equations are easily applied to networks of any dimension. The new theory is illustrated for competing sigma factors in bacterial transcription and for a genome-wide network of yeast {mRNAs} competing for ribosomes. We conclude that molecular competition can drastically influence the network fluxes and lead to negative response coefficients and ultrasensitivity. Competitors that bind a large fraction of the target, like bacterial σ(70), tend to influence competing pathways strongly. The less a competitor is saturated by the target, the more sensitive it is to changes in the concentration of the target, as well as to other competitors. As a consequence, most of the {mRNAs} in yeast turn out to respond ultrasensitively to changes in ribosome concentration. Finally, applying the theory to a genome-wide dataset we observe that high and low response {mRNAs} exhibit distinct Gene Ontology profiles.
},
added-at = {2018-12-02T16:09:07.000+0100},
author = {De Vos, Dirk and Bruggeman, Frank J. and Westerhoff, Hans V. and Bakker, Barbara M.},
biburl = {https://www.bibsonomy.org/bibtex/20e6e1f0fb2692cf693a1279aa2f2e8fb/karthikraman},
citeulike-article-id = {10123165},
citeulike-linkout-0 = {http://dx.doi.org/10.1371/journal.pone.0028494},
citeulike-linkout-1 = {http://view.ncbi.nlm.nih.gov/pubmed/22163025},
citeulike-linkout-2 = {http://www.hubmed.org/display.cgi?uids=22163025},
day = 5,
doi = {10.1371/journal.pone.0028494},
interhash = {50d41ca24955430bc5d81ae5f2e4cb60},
intrahash = {0e6e1f0fb2692cf693a1279aa2f2e8fb},
issn = {1932-6203},
journal = {PloS one},
keywords = {bt3240 gene-expression mca regulation},
month = dec,
number = 12,
pages = {e28494+},
pmid = {22163025},
posted-at = {2011-12-15 11:29:08},
priority = {2},
publisher = {Public Library of Science},
timestamp = {2018-12-02T16:09:07.000+0100},
title = {How molecular competition influences fluxes in gene expression networks.},
url = {http://dx.doi.org/10.1371/journal.pone.0028494},
volume = 6,
year = 2011
}