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      Synthetic Feedback Loop Model for Increasing Microbial Biofuel Production Using a Biosensor

      research-article
      1 , 1
      Frontiers in Microbiology
      Frontiers Media S.A.
      biosensor, biofuel, feedback, synthetic biology, MexR

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          Abstract

          Current biofuel production methods use engineered bacteria to break down cellulose and convert it to biofuel. A major challenge in microbial fuel production is that increasing biofuel yields can be limited by the toxicity of the biofuel to the organism that is producing it. Previous research has demonstrated that efflux pumps are effective at increasing tolerance to various biofuels. However, when overexpressed, efflux pumps burden cells, which hinders growth and slows biofuel production. Therefore, the toxicity of the biofuel must be balanced with the toxicity of pump overexpression. We have developed a mathematical model for cell growth and biofuel production that implements a synthetic feedback loop using a biosensor to control efflux pump expression. In this way, the production rate will be maximal when the concentration of biofuel is low because the cell does not expend energy expressing efflux pumps when they are not needed. Additionally, the microbe is able to adapt to toxic conditions by triggering the expression of efflux pumps, which allow it to continue biofuel production. Sensitivity analysis indicates that the feedback sensor model is insensitive to many system parameters, but a few key parameters can influence growth and production. In comparison to systems that express efflux pumps at a constant level, the feedback sensor increases overall biofuel production by delaying pump expression until it is needed. This result is more pronounced when model parameters are variable because the system can use feedback to adjust to the actual rate of biofuel production.

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          Most cited references46

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          Stochasticity in gene expression: from theories to phenotypes.

          Genetically identical cells exposed to the same environmental conditions can show significant variation in molecular content and marked differences in phenotypic characteristics. This variability is linked to stochasticity in gene expression, which is generally viewed as having detrimental effects on cellular function with potential implications for disease. However, stochasticity in gene expression can also be advantageous. It can provide the flexibility needed by cells to adapt to fluctuating environments or respond to sudden stresses, and a mechanism by which population heterogeneity can be established during cellular differentiation and development.
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            Tuning genetic control through promoter engineering.

            Gene function is typically evaluated by sampling the continuum of gene expression at only a few discrete points corresponding to gene knockout or overexpression. We argue that this characterization is incomplete and present a library of engineered promoters of varying strengths obtained through mutagenesis of a constitutive promoter. A multifaceted characterization of the library, especially at the single-cell level to ensure homogeneity, permitted quantitative assessment correlating the effect of gene expression levels to improved growth and product formation phenotypes in Escherichia coli. Integration of these promoters into the chromosome can allow for a quantitative accurate assessment of genetic control. To this end, we used the characterized library of promoters to assess the impact of phosphoenolpyruvate carboxylase levels on growth yield and deoxy-xylulose-P synthase levels on lycopene production. The multifaceted characterization of promoter strength enabled identification of optimal expression levels for ppc and dxs, which maximized the desired phenotype. Additionally, in a strain preengineered to produce lycopene, the response to deoxy-xylulose-P synthase levels was linear at all levels tested, indicative of a rate-limiting step, unlike the parental strain, which exhibited an optimum expression level, illustrating that optimal gene expression levels are variable and dependent on the genetic background of the strain. This promoter library concept is illustrated as being generalizable to eukaryotic organisms (Saccharomyces cerevisiae) and thus constitutes an integral platform for functional genomics, synthetic biology, and metabolic engineering endeavors.
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              Challenges in engineering microbes for biofuels production.

              Economic and geopolitical factors (high oil prices, environmental concerns, and supply instability) have been prompting policy-makers to put added emphasis on renewable energy sources. For the scientific community, recent advances, embodied in new insights into basic biology and technology that can be applied to metabolic engineering, are generating considerable excitement. There is justified optimism that the full potential of biofuel production from cellulosic biomass will be obtainable in the next 10 to 15 years.
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                Author and article information

                Journal
                Front Microbiol
                Front Microbiol
                Front. Microbio.
                Frontiers in Microbiology
                Frontiers Media S.A.
                1664-302X
                26 October 2012
                2012
                : 3
                : 360
                Affiliations
                [1] 1School of Engineering, College of Engineering and Mathematical Sciences, University of Vermont VT, USA
                Author notes

                Edited by: Weiwen Zhang, Tianjin University, China

                Reviewed by: Jiangxin Wang, Arizona State University, USA; Gabor Balazsi, The University of Texas MD Anderson Cancer Center, USA

                *Correspondence: Mary J. Dunlop, School of Engineering, College of Engineering and Mathematical Sciences, University of Vermont, 33 Colchester Avenue, 301 Votey Hall, Burlington, VT 05405, USA. e-mail: mjdunlop@ 123456uvm.edu

                This article was submitted to Frontiers in Microbiotechnology, Ecotoxicology and Bioremediation, a specialty of Frontiers in Microbiology.

                Article
                10.3389/fmicb.2012.00360
                3481154
                23112794
                c52eea8a-5bd9-423d-b0df-05588474a0c5
                Copyright © 2012 Harrison and Dunlop.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in other forums, provided the original authors and source are credited and subject to any copyright notices concerning any third-party graphics etc.

                History
                : 20 July 2012
                : 24 September 2012
                Page count
                Figures: 3, Tables: 1, Equations: 5, References: 58, Pages: 9, Words: 6344
                Categories
                Microbiology
                Original Research

                Microbiology & Virology
                biofuel,biosensor,feedback,mexr,synthetic biology
                Microbiology & Virology
                biofuel, biosensor, feedback, mexr, synthetic biology

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