Title
Genetic noise control via protein oligomerization.
Abstract
Gene expression in a cell entails random reaction events occurring over disparate time scales. Thus, molecular noise that often results in phenotypic and population-dynamic consequences sets a fundamental limit to biochemical signaling. While there have been numerous studies correlating the architecture of cellular reaction networks with noise tolerance, only a limited effort has been made to understand the dynamic role of protein-protein interactions.We have developed a fully stochastic model for the positive feedback control of a single gene, as well as a pair of genes (toggle switch), integrating quantitative results from previous in vivo and in vitro studies. In particular, we explicitly account for the fast binding-unbinding kinetics among proteins, RNA polymerases, and the promoter/operator sequences of DNA. We find that the overall noise-level is reduced and the frequency content of the noise is dramatically shifted to the physiologically irrelevant high-frequency regime in the presence of protein dimerization. This is independent of the choice of monomer or dimer as transcription factor and persists throughout the multiple model topologies considered. For the toggle switch, we additionally find that the presence of a protein dimer, either homodimer or heterodimer, may significantly reduce its random switching rate. Hence, the dimer promotes the robust function of bistable switches by preventing the uninduced (induced) state from randomly being induced (uninduced).The specific binding between regulatory proteins provides a buffer that may prevent the propagation of fluctuations in genetic activity. The capacity of the buffer is a non-monotonic function of association-dissociation rates. Since the protein oligomerization per se does not require extra protein components to be expressed, it provides a basis for the rapid control of intrinsic or extrinsic noise. The stabilization of regulatory circuits and epigenetic memory in general is of direct implications to organism fitness. Our results also suggest possible avenues for the design of synthetic gene circuits with tunable robustness for a wide range of engineering purposes.
Year
DOI
Venue
2008
10.1186/1752-0509-2-94
BMC systems biology
Keywords
Field
DocType
gene regulatory networks,systems biology,bioinformatics,gene expression regulation,genetics,protein binding,kinetics,monotone function,protein protein interaction,stochastic model,algorithms,stochastic processes,genome,high frequency,gene expression,transcription factor,positive feedback,noise control,population dynamic
Gene,Phenotype,Biology,Noise control,Systems biology,Regulation of gene expression,Bioinformatics,Protein oligomerization,Gene regulatory network,Transcription factor
Journal
Volume
Issue
ISSN
2
1
1752-0509
Citations 
PageRank 
References 
6
0.51
3
Authors
2
Name
Order
Citations
PageRank
Cheol-Min Ghim160.85
Eivind Almaas2508.30