| Literature DB >> 29797051 |
Peter Czuppon1,2, Peter Pfaffelhuber3.
Abstract
Gene expression is influenced by extrinsic noise (involving a fluctuating environment of cellular processes) and intrinsic noise (referring to fluctuations within a cell under constant environment). We study the standard model of gene expression including an (in-)active gene, mRNA and protein. Gene expression is regulated in the sense that the protein feeds back and either represses (negative feedback) or enhances (positive feedback) its production at the stage of transcription. While it is well-known that negative (positive) feedback reduces (increases) intrinsic noise, we give a precise result on the resulting fluctuations in protein numbers. The technique we use is an extension of the Langevin approximation and is an application of a central limit theorem under stochastic averaging for Markov jump processes (Kang et al. in Ann Appl Probab 24:721-759, 2014). We find that (under our scaling and in equilibrium), negative feedback leads to a reduction in the Fano factor of at most 2, while the noise under positive feedback is potentially unbounded. The fit with simulations is very good and improves on known approximations.Entities:
Keywords: Auto-regulated gene expression; Chemical reaction network; Intrinsic noise; Langevin approximation; Quasi-steady-state assumption
Mesh:
Substances:
Year: 2018 PMID: 29797051 PMCID: PMC6153675 DOI: 10.1007/s00285-018-1248-4
Source DB: PubMed Journal: J Math Biol ISSN: 0303-6812 Impact factor: 2.259
We use N as a scaling parameter throughout. Reaction rates either come in unscaled (’s and ’s) or in scaled (’s and ’s) versions
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| Rate of switching genes on |
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| Rate of switching genes off |
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| Rate of mRNA production |
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| Rate of mRNA degradation |
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| Rate of protein production |
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| Rate of protein degradation |
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| Total number of genes |
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Fig. 1Simulations and theoretical results with a fixed mean of proteins, a , b . The gene association and dissociation rates are varied, i.e. in (a) and in (b) . The gene association rate is then chosen such that the protein mean equals 1250 or 60 in each case, respectively. Furthermore, these rates are adjusted in the cases of negative and positive feedback according to and , respectively. The other parameters are given by and in (a). For figure (b) we chose parameters as in (Anderson and Kurtz 2015, Figure 2.1), i.e. . The solid, dotted, dashed lines are the theoretical predictions in the no, positive and negative feedback cases, respectively. Each data point is derived from 1000 Monte Carlo simulations (cf. Gillespie 1977) of the full system given by and
Fig. 2Simulations and theoretical results of gene expression with negative feedback. The mean given on the x-axis is varied and plotted against the Fano factor on the y-axis. The solid line represents (14), the dash-dotted line the result in (18), the dashed line the result from Thattai and Oudenaarden (2001) given in (22) and the dotted line the Fano factor calculated in Swain (2004) given in (23). The parameters for the simulations are chosen as follows: a ; b . The bullets represent the estimated Fano factors of the full system obtained from 1000 Monte Carlo simulations (cf. Gillespie 1977) in (a) and 5000 in (b) for each value of