Line 108: | Line 108: | ||
<p> | <p> | ||
− | We decided to use Michaelis and Menten kinetics for enzymatic reactions. Thanks to the kinetic model it was possible to estimate the affinity of our genes and the rate of reaction that led us to determine the proper genes. | + | We decided to use Michaelis and Menten kinetics for the modeling of enzymatic reactions. Thanks to the kinetic model it was possible to estimate the affinity of our genes and the rate of reaction that led us to determine the proper genes for our gene circuit. |
+ | |||
</p> | </p> | ||
Line 151: | Line 152: | ||
<p> | <p> | ||
− | Ethanol production rate depends on the cell and substrate concentration. We also considered the mutual inhibition of xylose and glucose fermentation along with the alcohol inhibition. Furthermore, because even when the glucose is consumed completely, the xylose utilization is slower, the phenomenon is shown with | + | Ethanol production rate depends on the cell and substrate concentration. We also considered the mutual inhibition of xylose and glucose fermentation along with the alcohol inhibition. Furthermore, because even when the glucose is consumed completely, the xylose utilization is slower, the phenomenon is shown with a constant (Olsson, Hagerdalt & Zacchi, 1995). Thus, we used the formula developed by Olsson, Hagerdalt & Zacchi (1995) in which the xylose and glucose fermentation was calculated separately and then simultaneously. |
</p> | </p> | ||
Line 380: | Line 381: | ||
</p> | </p> | ||
− | <div class=" | + | <div class="col-md-6" style="text-align:center"> |
− | <img | + | <img width="700" src="https://static.igem.org/mediawiki/2018/c/c2/T--METU_HS_Ankara--mod01.jpg" /> |
+ | <div style="clear:both"></div> | ||
+ | <i class="parts-info"> | ||
+ | Figure 3: | ||
+ | The data were obtained from Kim et al. (2013). According to Kim et al. (2013), inhibitor substances were put individually into the medium in 5g/L and relative cell growths were calculated. In the presence of furfural and HMF, relative growth was lower than in the presence of formic acid, and levulinic acid (Kim et al., 2013). | ||
+ | </i> | ||
</div> | </div> | ||
− | |||
− | |||
− | |||
− | |||
− | |||
− | <h4><b>Toxicity Analysis Results</b></h4> | + | |
+ | <h4><b>Toxicity Analysis Results:</b></h4> | ||
<p> | <p> | ||
Line 397: | Line 399: | ||
</p> | </p> | ||
− | <h4><b>Furans (HMF & Furfural)</b></h4> | + | <h4><b>Furans (HMF & Furfural):</b></h4> |
<p> | <p> | ||
Line 404: | Line 406: | ||
</p> | </p> | ||
− | <h4><b>Reaction Pathways</b></h4> | + | <h4><b>Reaction Pathways:</b></h4> |
<p> | <p> | ||
Line 411: | Line 413: | ||
</p> | </p> | ||
− | < | + | <h4 style="padding: 20px;"><strong>Furfural Reduction Pathway of YqhD</strong></h4> |
<br> | <br> | ||
Line 428: | Line 430: | ||
<h5>HMF + NADPH + Enzyme → NADP+ + Enzyme + 5-Hydroxymethyl-2-furfuryl alcohol</h5> | <h5>HMF + NADPH + Enzyme → NADP+ + Enzyme + 5-Hydroxymethyl-2-furfuryl alcohol</h5> | ||
− | < | + | <h4 style="padding: 20px;"><b>Furfural Reduction Pathway of FucO</b></h4> |
<div class="math"> | <div class="math"> | ||
Line 447: | Line 449: | ||
<p> | <p> | ||
− | + | The comparison between the reaction rate and Km values of furfural and HMF reductions with different oxidoreductases were done by Michaelis-Menten kinetics and Lineweaver-Burk plot with the data obtained from Miller et al. (2009) and Wang et al. (2011). Matlab’s enzkin function was used to evaluate the results. | |
</p> | </p> | ||
− | < | + | <h4><strong>Enzyme Reaction Kinetics of FucO </strong></h4> |
<div class="math"> | <div class="math"> | ||
Line 457: | Line 459: | ||
</div> | </div> | ||
− | < | + | <h4><strong>Enzyme Reaction Kinetics of YqhD </strong></h4> |
<div class="math"> | <div class="math"> | ||
Line 467: | Line 469: | ||
<p> | <p> | ||
− | + | It was important to find the appropriate NAD(P)H dependent oxidoreductase that would decrease the harmful effects of furans thus resulting in the improvement on rate of cell mass and bioethanol production (Jarboe et al., 2012; Wang et al., 2011). Therefore we analyzed the reaction kinetics of both FucO (NADH dependent) and YqhD (NADP dependent) with the Michaelis and Menten enzyme kinetics and Lineweaver - Burk plot. At first, we looked through the Km values because they indicate the affinity of enzymes which means that if you have a low Km value then the enzyme is more likely to catalyze the reactions faster and properly (Jarboe et al., 2012). YqhD showed a Km of 5.00 +- 3 mM where Km of FucO was 0.4+- 0.2 mM (Wang et al., 2011). It was shown that that FucO has higher affinity to furfural and is more likely to increase the furfural tolerance (Jarboe et al., 2012 ; Wang et al., 2011). Moreover, YqhD has higher Km for NADPH than most of the key metabolic enzymes such as CysJ (80 μM), which is necessary for sulfate assimilation to form cysteine and methionine; ThrA (90 μM), is important for the formation of threonine; and DapB (17 μM), required for lysine formation (Miller et al.,2009; Jarboe et al., 2012). Therefore, the utilization of YqhD inhibits the growth of the bacteria due to the competition with the important biosynthetic enzymes (Miller et al.,2009). Though, YqhD is found in most of the E.coli strains, due to its lower affinity compared to the FucO, it is possible to eliminate the YqhD gene by the overexpression of FucO (Jarboe et al., 2012). Thus we decided to use the FucO gene coding for L-1,2-propanediol oxidoreductase that is responsible for the furanic compound degradation. Moreover, because furans’ high reactiveness eventually leads to the formation of ROS, the GSH gene producing glutathione synthetase was decided to be utilized in order to decrease the harmful effects and raise tolerance to environmental toxicity. | |
+ | |||
</p> | </p> | ||
Line 475: | Line 478: | ||
<p> | <p> | ||
− | + | GSH gene codes for Bifunctional gamma-glutamate-cysteine ligase/glutathione synthetase which is responsible for the mass production of the main antioxidant, glutathione. It is one of the most important antioxidant that works in order to reduce ROSs that are produced during metabolic activities such as furfural reduction and fermentation (Pizzorno, 2014; Forman, 2009). It prevents oxidative stress from building up in the cell metabolism which causes cell damage and eventually, death (Pizzorno, 2014; Forman, 2009). The pathway of glutathione synthetase and glutathione are demonstrated below along with the effects of glutathione on cell mass: | |
+ | |||
</p> | </p> | ||
− | < | + | <h4><strong> Glutathione Synthesis by Glutathione Synthetase </strong></h4> |
<div class="math"> | <div class="math"> | ||
Line 495: | Line 499: | ||
<h5>Glycine + y-glutamyl cysteine + Glutathione Synthetases → Glutathione Synthetase Glutathione</h5> | <h5>Glycine + y-glutamyl cysteine + Glutathione Synthetases → Glutathione Synthetase Glutathione</h5> | ||
− | < | + | <h4> <strong>Glutathione Oxidation and Reduction Pathways </strong></h4> |
<div class="math"> | <div class="math"> | ||
Line 510: | Line 514: | ||
<h5>Glutathione + ROS → Water + Oxidized Glutathione</h5> | <h5>Glutathione + ROS → Water + Oxidized Glutathione</h5> | ||
<h5>Oxidized Glutathione + Glutathione Peroxidases + NADPH → NADP+ + Glutathione</h5> | <h5>Oxidized Glutathione + Glutathione Peroxidases + NADPH → NADP+ + Glutathione</h5> | ||
+ | |||
+ | |||
+ | <p> | ||
+ | Then, we looked through the effects of glutathione on cell mass in order to observe the improving features of glutathione with the data obtained from Kim & Hahn (2013). In brief even 2mM difference make 30% increase in cell mass which is demonstrated below(Kim & Hahn, 2013). | ||
+ | |||
+ | </p> | ||
+ | |||
+ | |||
+ | <p> RESİM GELECEK </p> | ||
+ | <div class="math"> | ||
+ | <img class="Resim" src="https://static.igem.org/mediawiki/2018/3/38/T--METU_HS_Ankara--mod06.jpg" /> | ||
+ | </div> | ||
+ | |||
<h4><b> Reaction Kinetics </b></h4> | <h4><b> Reaction Kinetics </b></h4> | ||
Line 515: | Line 532: | ||
<p> | <p> | ||
− | + | Jez, J.M. & Cahoon, R.E (2004) stated that the km values of Glutathione Synthetase(GS) were 39 ± 5 μm for y-glutamyl cysteine and 1510 ± 88 μm for glycine meaning that GS has low affinity to glycine resulting in problematic production of glutathione and low reaction rate. In order to increase the reaction rate and glutathione formation we decided to enhance the gene expression rate by using a strong promoter and RBS. Thus, we looked through the existing promoters and RBS in iGEM database and examined their strengths which were compared by LMU-Munich 2012 iGEM team and the Alverno_Ca team. | |
+ | |||
</p> | </p> | ||
− | < | + | <h4 style="padding: 20px;"><b> Promoter Analysis </b></h4> |
<div class="math"> | <div class="math"> | ||
Line 531: | Line 549: | ||
</i> | </i> | ||
− | < | + | <h4 style="padding: 20px;"><b> RBS Analysis </b></h4> |
<div class="math"> | <div class="math"> | ||
Line 547: | Line 565: | ||
<p> | <p> | ||
− | Thanks to the modeling of different promoter and RBS strengths, we decided to use the promoter <a href="http://parts.igem.org/Part:BBa_J23100">J23100</a> because of it being the most powerful promoter among the Anderson promoter family and <a href="http://parts.igem.org/Part:BBa_B0034">B0034</a> | + | Thanks to the modeling of different promoter and RBS strengths, we decided to use the promoter <a href="http://parts.igem.org/Part:BBa_J23100">J23100</a> because of it being the most powerful promoter among the Anderson promoter family and <a href="http://parts.igem.org/Part:BBa_B0034">B0034</a> as RBS because of it being one of the most strongest RBS and the encouraging comments. Then, we decided to construct three different modules to improve the lifespan and ethanol production of E.coli KO11. Our first module consists of a strong promoter (J23100), an RBS(B0034), FucO gene only and a double terminator (B0015). Our second module consists of a strong promoter (J23100), an RBS(B0034), GSH gene only and a double terminator (B0015). Our last module is named Bio-E because it contains both genes with the same promoter, RBS and double terminator. The modules are tested to observe the lifespan against un-engineered E.coli KO11 then, simulated and compared by Monod equation with the data obtained from our wet lab team. Moreover, we simulated the expected ethanol production results by fermentation kinetics with the estimated parameters. |
+ | |||
</p> | </p> | ||
Line 590: | Line 609: | ||
</i> | </i> | ||
+ | <p> | ||
+ | After determining the parameters, we used Monod equation with the fit data to demonstrate the cell growth. | ||
+ | |||
+ | Because our experiments were incomplete and we were not able to measure the change in substrate concentration, only the specific growth rate of our bacteria were calculated with the data obtained from our wet lab team: KO11, KO11 with FucO, KO11 with GSH, KO11 with GSH and FucO. They measured the change in cell concentration with OD600 in 10mM furfural. Then the change in the specific growth rate were compared in percent. The results were used to redesign the Monod model that are shown below. | ||
+ | |||
+ | </p> | ||
+ | |||
+ | |||
+ | <img style="padding-bottom: 20px; height: 50%; width: 100%; " src="https://static.igem.org/mediawiki/parts/5/59/T--METU_HS_Ankara_KO11_Monod.jpg"> | ||
+ | |||
+ | <i class="parts-info"> | ||
+ | Figure 12: | ||
+ | Monod Model constructed with Olsson, Hagerdalt & Zacchi (1995)’s data. | ||
+ | |||
+ | </i> | ||
+ | |||
+ | |||
+ | <img style="padding-bottom: 20px; height: 50%; width: 100%; " src="https://static.igem.org/mediawiki/parts/5/5c/T--METU_HS_Ankara_FucO_Monod_.jpg"> | ||
+ | |||
+ | <i class="parts-info"> | ||
+ | Figure 13: | ||
+ | Monod equation that is redesigned by our experimental data for E.coli KO11 with FucO gene inserted. | ||
+ | |||
+ | |||
+ | </i> | ||
+ | |||
+ | <img style="padding-bottom: 20px; height: 50%; width: 100%; " src="https://static.igem.org/mediawiki/parts/d/d2/T--METU_HS_Ankara_GSH_Monod.jpg"> | ||
+ | |||
+ | <i class="parts-info"> | ||
+ | Figure 14: | ||
+ | Monod equation that is redesigned by our experimental data for E.coli KO11 with GSH gene inserted. | ||
+ | |||
+ | |||
+ | </i> | ||
+ | |||
+ | |||
+ | <img style="padding-bottom: 20px; height: 50%; width: 100%; " src="https://static.igem.org/mediawiki/parts/1/14/T--METU_HS_Ankara_FucO_and_GSH_Monod.jpg"> | ||
+ | |||
+ | <i class="parts-info"> | ||
+ | Figure 15: | ||
+ | Monod equation that is redesigned by our experimental data for E.coli KO11 with both GSH and FucO gene inserted. | ||
+ | |||
+ | |||
+ | |||
+ | |||
+ | </i> | ||
+ | |||
+ | <h4> Result </h4> | ||
+ | |||
+ | <p> | ||
+ | Insertion of FucO gene increased the cell growth rate by 10 %. Insertion GSH gene increased the cell growth rate by 18% percent. Insertion of GSH and FucO gene increased the growth rate by 120 %. Thus, the best improvement was observed with the dual expression of FucO and GSH gene and demonstrated by Monod equation. | ||
+ | |||
+ | </p> | ||
<h4><b>Fermentation </b></h4> | <h4><b>Fermentation </b></h4> | ||
<p> | <p> | ||
− | + | Ethanol production rate depends on the cell mass, sugar concentration and the inhibitor substances (Olsson, Hagerdalt & Zacchi, 1995). In our project, the improvement of ethanol production was decided to be accomplished by increasing the tolerance of bacteria to inhibitors. Thus, the kinetic module developed by Olsson, Hagerdalt & Zacchi (1995) was used to emphasize the expected ethanol production rate of normal and improved E.coli KO11. Because we couldn’t construct a fermentation experiment, we used the parameters’ value from Olsson, Hagerdalt & Zacchi (1995) which were obtained from the utilization of KO11 in toxic substances. The Monod equation which was redesigned by our experimental data, was integrated into the fermentation kinetic model. The kinetic model were constructed by Matlab and shown below. | |
+ | |||
</p> | </p> | ||
+ | |||
+ | |||
+ | <img style="padding-bottom: 20px; height: 50%; width: 100%; " src="https://static.igem.org/mediawiki/parts/b/bb/T--METU_HS_Ankara_KO11_Ferm.jpg"> | ||
+ | |||
+ | <i class="parts-info"> | ||
+ | Figure 16: | ||
+ | Fermentation kinetic model that is redesigned with the Olsson, Hagerdalt & Zacchi (1995)’ s experimental data for E.coli KO11. | ||
+ | |||
+ | |||
+ | |||
+ | |||
+ | |||
+ | </i> | ||
+ | |||
+ | <img style="padding-bottom: 20px; height: 50%; width: 100%; " src="https://static.igem.org/mediawiki/parts/b/b0/T--METU_HS_Ankara_FucO_Ferm.jpg"> | ||
+ | |||
+ | <i class="parts-info"> | ||
+ | Figure 17: | ||
+ | Fermentation kinetic model that is redesigned by our experimental data for E.coli KO11 with FucO gene inserted. | ||
+ | |||
+ | </i> | ||
+ | |||
+ | <img style="padding-bottom: 20px; height: 50%; width: 100%; " src="https://static.igem.org/mediawiki/parts/0/05/T--METU_HS_Ankara_GSH_Ferm.jpg"> | ||
+ | |||
+ | <i class="parts-info"> | ||
+ | Figure 18: | ||
+ | Fermentation kinetic model that is redesigned by our experimental data for E.coli KO11 with GSH gene inserted. | ||
+ | |||
+ | </i> | ||
+ | |||
+ | <img style="padding-bottom: 20px; height: 50%; width: 100%; " src="https://static.igem.org/mediawiki/parts/f/fe/T--METU_HS_Ankara_GSH_and_FucO_Ferm_.jpg"> | ||
+ | |||
+ | <i class="parts-info"> | ||
+ | Figure 18: | ||
+ | Fermentation kinetic model that is redesigned by our experimental data for E.coli KO11 with both GSH and FucO gene inserted. | ||
+ | |||
+ | </i> | ||
+ | |||
+ | <h4> Result:</h4> | ||
<p> | <p> | ||
− | + | According to our kinetic models, the best ethanol yield was shown with the dual expression of FucO and GSH gene and demonstrated by fermentation model while portraying the expected results. | |
+ | |||
</p> | </p> | ||
+ | |||
+ | |||
+ | |||
<style type="text/css"> | <style type="text/css"> | ||
Line 701: | Line 817: | ||
<a href="https://doi.org/10.3390/fermentation3020019">https://doi.org/10.3390/fermentation3020019</a> | <a href="https://doi.org/10.3390/fermentation3020019">https://doi.org/10.3390/fermentation3020019</a> | ||
</li> | </li> | ||
− | + | ||
− | + | ||
− | + | ||
− | + | ||
− | + | ||
<li> | <li> | ||
Wierckx, N., Koopman, F., Ruijssenaars, H. J., & de Winde, J. H. (2011). Microbial degradation of furanic compounds: | Wierckx, N., Koopman, F., Ruijssenaars, H. J., & de Winde, J. H. (2011). Microbial degradation of furanic compounds: | ||
Line 722: | Line 834: | ||
<i>Bioprocess Biosyst Eng</i>. 36(6), 659-666. doi: | <i>Bioprocess Biosyst Eng</i>. 36(6), 659-666. doi: | ||
<a href="https://doi.org/10.1007/s00449-013-0888-4">10.1007/s00449-013-0888-4</a> | <a href="https://doi.org/10.1007/s00449-013-0888-4">10.1007/s00449-013-0888-4</a> | ||
+ | </li> | ||
+ | |||
+ | <li> | ||
+ | Jez, J.M., Cahoon, R.E. (2004). Kinetic mechanism of glutathione synthetase from Arabidopsis thaliana. J Biol Chem. 279(41), 42726-42731. doi: 10.1074/jbc.M407961200 | ||
+ | |||
+ | </li> | ||
+ | |||
+ | <li> | ||
+ | Jarboe, L. R., Liu, P., Kautharapu, K. B., & Ingram, L. O. (2012). Optimization of enzyme parameters for fermentative production of biorenewable fuels and chemicals. Computational and Structural Biotechnology Journal, 3, e201210005. http://doi.org/10.5936/csbj.201210005 | ||
+ | </li> | ||
+ | |||
+ | <li> | ||
+ | Kim, D., & Hahn, J.,S. (2013). Roles of the Yap1 Transcription Factor and Antioxidants in Saccharomyces cerevisiae’s Tolerance to Furfural and 5-Hydroxymethylfurfural, Which Function as Thiol-Reactive Electrophiles Generating Oxidative Stress. Applied and Environmental Microbiology, 79(16), 5069–5077. http://doi.org/10.1128/AEM.00643-13 | ||
+ | |||
+ | </li> | ||
+ | |||
+ | <li> | ||
+ | Olsson, L., Hagerdalt, B. & Zacchi, G. (1995). Kinetics of ethanol production by recombinant Escherichia coli KO11. Biotechnol Bioeng, 20;45(4) ,356-65. doi: 10.1002/bit.260450410 | ||
+ | |||
</li> | </li> | ||
</ul> | </ul> |
Revision as of 09:08, 17 October 2018