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<p> | <p> | ||
− | Our main issue was determining the genes that would have a positive effect on bacterial fermentation. Thus, we analyzed the toxicity of different inhibitory molecules and substances produced during pretreatment: Furfural, 5-hydroxymethylfurfural (5-HMF) and aliphatic acids; such as formic acid, and levulinic acid. | + | Our main issue was determining the genes that would have a positive effect on bacterial fermentation. Thus, we analyzed the toxicity of different inhibitory |
− | + | molecules and substances produced during pretreatment: Furfural, 5-hydroxymethylfurfural (5-HMF) and aliphatic acids; such as formic acid, and levulinic acid. | |
</p> | </p> | ||
− | <div class=" | + | <div class="col-md-12"> |
− | <img class="Resim" | + | <img class="Resim" src="https://static.igem.org/mediawiki/2018/c/c2/T--METU_HS_Ankara--mod01.jpg" /> |
+ | <div class="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> | ||
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− | </ | + | <div class="clear: both"></div> |
<h4><b>Toxicity Analysis Results:</b></h4> | <h4><b>Toxicity Analysis Results:</b></h4> | ||
<p> | <p> | ||
− | Formic acid and Levulinic acid were shown to inhibit the growth significantly but furans were worse (Kim et al., 2013). Hence, we chose to focus on furans. When we discard the lag caused by the inhibitors and focus on the last state, it was possible to calculate what percentage the cell growth was inhibited. Furans (Furfural and HMF) showed approximately 80% inhibition which is the highest number among thus we decided to increase the tolerance of E.coli to furans. | + | Formic acid and Levulinic acid were shown to inhibit the growth significantly but furans were worse (Kim et al., 2013). Hence, we chose to focus on furans. |
− | + | When we discard the lag caused by the inhibitors and focus on the last state, it was possible to calculate what percentage the cell growth was inhibited. | |
+ | Furans (Furfural and HMF) showed approximately 80% inhibition which is the highest number among thus we decided to increase the tolerance of E.coli to furans. | ||
</p> | </p> | ||
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<p> | <p> | ||
− | According to the analysis, furans were found to be the most toxic substances when it comes to cell growth (Kim et al., 2013). The most used pretreatment process, dilute acid, gives rise to the formation of furanic aldehydes (Palmqvist and Hahn-Hagerdal, 2000; Larsson et al., 1999; Thomsen et al., 2009; Klinke et al., 2004). They are highly reactive, contributing to the birth of reactive oxygen species (ROS) which damage proteins, nucleic acids and cell organelles (Wierckx et al., 2011). Because of the toxicity provided by furans, cell mass and productivity of fermentation decreases (Almeida et al., 2009; Palmqvist and Hahn-Hagerdal, 2000b; Thomsen et al., 2009). Thus, we examined the pathways of furfural and HMF to find a way to eliminate the setbacks and increase the tolerance. | + | According to the analysis, furans were found to be the most toxic substances when it comes to cell growth (Kim et al., 2013). The most used pretreatment process, |
+ | dilute acid, gives rise to the formation of furanic aldehydes (Palmqvist and Hahn-Hagerdal, 2000; Larsson et al., 1999; Thomsen et al., 2009; Klinke et al., 2004). | ||
+ | They are highly reactive, contributing to the birth of reactive oxygen species (ROS) which damage proteins, nucleic acids and cell organelles (Wierckx et al., 2011). | ||
+ | Because of the toxicity provided by furans, cell mass and productivity of fermentation decreases (Almeida et al., 2009; Palmqvist and Hahn-Hagerdal, 2000b; Thomsen et al., | ||
+ | 2009). Thus, we examined the pathways of furfural and HMF to find a way to eliminate the setbacks and increase the tolerance. | ||
</p> | </p> | ||
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<p> | <p> | ||
− | It was shown that furfural can be reduced to a less toxic form, furfuryl alcohol, by NAD(P)H dependent oxidoreductases which are transcribed by FucO and YqhD genes (Wierckx et al., 2011). The pathways are shown below: | + | It was shown that furfural can be reduced to a less toxic form, furfuryl alcohol, by NAD(P)H dependent oxidoreductases which are transcribed by FucO and YqhD genes |
+ | (Wierckx et al., 2011). The pathways are shown below: | ||
</p> | </p> | ||
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<br> | <br> | ||
− | <div class=" | + | |
− | <img class="Resim" src="https://static.igem.org/mediawiki/2018/e/ee/T--METU_HS_Ankara--mod03.jpg" /> | + | <div class="col-md-12"> |
+ | <img class="Resim" src="https://static.igem.org/mediawiki/2018/e/ee/T--METU_HS_Ankara--mod03.jpg" /> | ||
+ | <div class="clear: both"></div> | ||
+ | <i class="parts-info"> | ||
+ | Figure 4: | ||
+ | Yqhd uses NADPH to reduce furfural and HMF to their less toxic alcohol derivatives. | ||
+ | </i> | ||
</div> | </div> | ||
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<h5>Enzyme = NADPH Dependent Oxidoreductase:</h5> | <h5>Enzyme = NADPH Dependent Oxidoreductase:</h5> | ||
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<h4 style="padding: 20px;"><b>Furfural Reduction Pathway of FucO</b></h4> | <h4 style="padding: 20px;"><b>Furfural Reduction Pathway of FucO</b></h4> | ||
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− | <div class=" | + | <div class="col-md-12"> |
− | <img class="Resim" src="https://static.igem.org/mediawiki/2018/7/7f/T--METU_HS_Ankara--mod02.jpg" /> | + | <img class="Resim" src="https://static.igem.org/mediawiki/2018/7/7f/T--METU_HS_Ankara--mod02.jpg" /> |
+ | <div class="clear: both"></div> | ||
+ | <i class="parts-info"> | ||
+ | Figure 5: | ||
+ | FucO uses NADH to reduce furfural and HMF to their less toxic alcohol derivatives. | ||
+ | </i> | ||
</div> | </div> | ||
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<h5>Enzyme = NADH dependent Oxidoreductase:</h5> | <h5>Enzyme = NADH dependent Oxidoreductase:</h5> | ||
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<h4><strong>Enzyme Reaction Kinetics of FucO </strong></h4> | <h4><strong>Enzyme Reaction Kinetics of FucO </strong></h4> | ||
− | <div class=" | + | <div class="col-md-12"> |
<img class="Resim" src="http://parts.igem.org//wiki/images/thumb/f/f2/METU_HS_Ankara_Lineweaver_FucO.png/800px-METU_HS_Ankara_Lineweaver_FucO.png" /> | <img class="Resim" src="http://parts.igem.org//wiki/images/thumb/f/f2/METU_HS_Ankara_Lineweaver_FucO.png/800px-METU_HS_Ankara_Lineweaver_FucO.png" /> | ||
</div> | </div> | ||
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<h4><strong>Enzyme Reaction Kinetics of YqhD </strong></h4> | <h4><strong>Enzyme Reaction Kinetics of YqhD </strong></h4> | ||
− | <div class=" | + | <div class="col-md-12"> |
<img class="Resim" src="http://parts.igem.org//wiki/images/thumb/b/bf/METU_HS_Ankara_Lineweaver_YqhD.png/800px-METU_HS_Ankara_Lineweaver_YqhD.png" /> | <img class="Resim" src="http://parts.igem.org//wiki/images/thumb/b/bf/METU_HS_Ankara_Lineweaver_YqhD.png/800px-METU_HS_Ankara_Lineweaver_YqhD.png" /> | ||
</div> | </div> | ||
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<h4><strong> Glutathione Synthesis by Glutathione Synthetase </strong></h4> | <h4><strong> Glutathione Synthesis by Glutathione Synthetase </strong></h4> | ||
− | <div class=" | + | <div class="col-md-12"> |
− | + | <img class="Resim" src="https://static.igem.org/mediawiki/2018/b/bf/T--METU_HS_Ankara--mod05.jpg" /> | |
− | <img class="Resim" src="https://static.igem.org/mediawiki/2018/b/bf/T--METU_HS_Ankara--mod05.jpg" /> | + | <div class="clear: both"></div> |
+ | <i class="parts-info"> | ||
+ | Figure 6: | ||
+ | Glutathione Synthetase converts glycine and y-glutamyl cysteine to glutathione. | ||
+ | </i> | ||
</div> | </div> | ||
− | + | <h5>Glycine + y-glutamyl cysteine + Glutathione Synthetases → Glutathione Synthetase Glutathione</h5> | |
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− | + | ||
+ | <h4> <strong>Glutathione Oxidation and Reduction Pathways</strong></h4> | ||
− | + | <div class="col-md-12"> | |
− | + | <img class="Resim" src="https://static.igem.org/mediawiki/2018/3/38/T--METU_HS_Ankara--mod06.jpg" /> | |
− | + | <div class="clear: both"></div> | |
− | + | <i class="parts-info"> | |
− | + | Figure 7: | |
− | + | Glutathione reduces ROS while producing Water and turning into Oxidized Glutathione which is later become glutathione by glutathione peroxidases and during | |
− | <div class=" | + | the process NADPH metabolism is utilized. |
− | <img class="Resim" src="https://static.igem.org/mediawiki/2018/3/38/T--METU_HS_Ankara--mod06.jpg" /> | + | </i> |
</div> | </div> | ||
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<h5>Glutathione + ROS → Water + Oxidized Glutathione</h5> | <h5>Glutathione + ROS → Water + Oxidized Glutathione</h5> | ||
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<h4> <strong> Improving Effects of Glutathione(GSH)</strong> </h4> | <h4> <strong> Improving Effects of Glutathione(GSH)</strong> </h4> | ||
<p> | <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). | |
− | + | ||
− | 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> | ||
− | <div class=" | + | <div class="col-md-12"> |
<img class="Resim" src="https://static.igem.org/mediawiki/parts/0/08/METU_HS_Ankara_GSH_Effects.jpg" /> | <img class="Resim" src="https://static.igem.org/mediawiki/parts/0/08/METU_HS_Ankara_GSH_Effects.jpg" /> | ||
</div> | </div> | ||
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<h4 style="padding: 20px;"><b> Promoter Analysis </b></h4> | <h4 style="padding: 20px;"><b> Promoter Analysis </b></h4> | ||
− | <div class=" | + | <div class="col-md-12"> |
− | <img class="Resim" | + | <img class="Resim" src="https://static.igem.org/mediawiki/2018/4/48/T--METU_HS_Ankara--mod04.jpg" /> |
+ | <div class="clear: both"></div> | ||
+ | <i class="parts-info"> | ||
+ | Figure 8: (LMU-Munich 2012 iGEM Team) | ||
+ | </i> | ||
</div> | </div> | ||
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<h4 style="padding: 20px;"><b> RBS Analysis </b></h4> | <h4 style="padding: 20px;"><b> RBS Analysis </b></h4> | ||
− | <div class=" | + | <div class="col-md-12"> |
− | + | <img class="Resim" src="http://parts.igem.org//wiki/images/thumb/4/4a/METU_HS_Ankara_RBS_Strength.png/800px-METU_HS_Ankara_RBS_Strength.png" /> | |
− | <img class="Resim" | + | <div class="clear: both"></div> |
+ | <i class="parts-info"> | ||
+ | Figure 9: The Alverno_Ca team. | ||
+ | </i> | ||
</div> | </div> | ||
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<h4><b> Decision </b></h4> | <h4><b> Decision </b></h4> | ||
<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> 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. | + | 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> | ||
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<p> | <p> | ||
− | Because fermentation mainly depends on the cell growth of bacteria, there are no striking differences between cell growth and ethanol production (Luong, 1985). We demonstrated the kinetics of cell growth and fermentation with the alcohol and furans inhibition. We tested four modeles: Un-engineered E.coli strain KO11, with the overexpression of GSH, with the overexpression of FucO and with the overexpression of both GSH and FucO. The equations and results are shown below: | + | Because fermentation mainly depends on the cell growth of bacteria, there are no striking differences between cell growth and ethanol production (Luong, 1985). We demonstrated |
+ | the kinetics of cell growth and fermentation with the alcohol and furans inhibition. We tested four modeles: Un-engineered E.coli strain KO11, with the overexpression of GSH, | ||
+ | with the overexpression of FucO and with the overexpression of both GSH and FucO. The equations and results are shown below: | ||
</p> | </p> | ||
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<p> | <p> | ||
+ | The growth rate of our bacteria is important to determine the effects of our genes because we aimed to increase the toxicity tolerance of E.coli KO11 and consequently leading to | ||
+ | a better cell growth rate and lifespan. The specific growth rate and the substrate concentration data were used to define the maximum specific growth rate and Monod Constant. | ||
+ | </p> | ||
− | + | <p> | |
− | + | In order to obtain the parameters, Monod growth model is linearized by inverting and factoring out umax and we get the Lineweaver-Burk plot (Rorke & Kana, 2017 ). | |
− | + | ||
− | In order to obtain the parameters, Monod growth model is linearized by inverting and factoring out umax and we get the Lineweaver-Burk plot (Rorke & Kana, 2017 ). | + | |
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</p> | </p> | ||
− | |||
− | + | <div class="col-md-12"> | |
− | + | <img class="Resim" src="https://static.igem.org/mediawiki/parts/e/ef/T--METU_HS_Ankara_lineweaver_KO11.jpg" /> | |
− | + | <div class="clear: both"></div> | |
− | + | <i class="parts-info"> | |
+ | Figure 10: Lineweaver-Burk plot of un-engineered KO11. | ||
+ | </i> | ||
+ | </div> | ||
<p> | <p> | ||
− | Furthermore, instead of just a point estimate of the fit, we wanted study the predictive posterior distribution of the model. By them we calculated the model fit for a randomly selected subset of the chain and calculate the predictive envelope of the model. The grey areas in the plot correspond to 50%, 90%, 95%, and 99% posterior regions with the data obtained from Olsson, Hagerdalt & Zacchi (1995) for un-engineered E.coli KO11. | + | Furthermore, instead of just a point estimate of the fit, we wanted study the predictive posterior distribution of the model. By them we calculated the model fit for a |
− | + | randomly selected subset of the chain and calculate the predictive envelope of the model. The grey areas in the plot correspond to 50%, 90%, 95%, and 99% posterior regions | |
+ | with the data obtained from Olsson, Hagerdalt & Zacchi (1995) for un-engineered E.coli KO11. | ||
</p> | </p> | ||
− | < | + | <div class="col-md-12"> |
− | + | <img class="Resim" src="https://static.igem.org/mediawiki/parts/4/40/T--METU_HS_Ankara_model_garip.jpg" /> | |
− | + | <div class="clear: both"></div> | |
− | + | <i class="parts-info"> | |
− | + | Figure 11: Predictive envelopes of our model. | |
− | + | </i> | |
+ | </div> | ||
<p> | <p> | ||
After determining the parameters, we used Monod equation with the fit data to demonstrate the cell growth. | After determining the parameters, we used Monod equation with the fit data to demonstrate the cell growth. | ||
+ | </p> | ||
− | 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> |
− | + | 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> | </p> | ||
+ | <div class="col-md-12"> | ||
+ | <img class="Resim" src="https://static.igem.org/mediawiki/parts/5/59/T--METU_HS_Ankara_KO11_Monod.jpg" /> | ||
+ | <div class="clear: both"></div> | ||
+ | <i class="parts-info"> | ||
+ | Figure 12: Monod Model constructed with Olsson, Hagerdalt & Zacchi (1995)’s data. | ||
+ | </i> | ||
+ | </div> | ||
− | < | + | <div class="col-md-12"> |
+ | <img class="Resim" src="https://static.igem.org/mediawiki/parts/5/5c/T--METU_HS_Ankara_FucO_Monod_.jpg" /> | ||
+ | <div class="clear: both"></div> | ||
+ | <i class="parts-info"> | ||
+ | Figure 13: Monod equation that is redesigned by our experimental data for E.coli KO11 with FucO gene inserted. | ||
+ | </i> | ||
+ | </div> | ||
− | + | <div class="col-md-12"> | |
− | + | <img class="Resim" src="https://static.igem.org/mediawiki/parts/d/d2/T--METU_HS_Ankara_GSH_Monod.jpg" /> | |
− | + | <div class="clear: both"></div> | |
+ | <i class="parts-info"> | ||
+ | Figure 14: Monod equation that is redesigned by our experimental data for E.coli KO11 with GSH gene inserted. | ||
+ | </i> | ||
+ | </div> | ||
− | < | + | <div class="col-md-12"> |
− | + | <img class="Resim" src="https://static.igem.org/mediawiki/parts/1/14/T--METU_HS_Ankara_FucO_and_GSH_Monod.jpg" /> | |
− | + | <div class="clear: both"></div> | |
− | + | <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> | |
− | + | </div> | |
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− | </ | + | |
<h4> Result </h4> | <h4> Result </h4> | ||
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</p> | </p> | ||
+ | <div class="col-md-12"> | ||
+ | <img class="Resim" src="https://static.igem.org/mediawiki/parts/b/bb/T--METU_HS_Ankara_KO11_Ferm.jpg" /> | ||
+ | <div class="clear: both"></div> | ||
+ | <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> | ||
+ | </div> | ||
− | + | <div class="col-md-12"> | |
+ | <img class="Resim" src="https://static.igem.org/mediawiki/parts/b/b0/T--METU_HS_Ankara_FucO_Ferm.jpg" /> | ||
+ | <div class="clear: both"></div> | ||
+ | <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> | ||
+ | </div> | ||
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+ | <div class="col-md-12"> | ||
+ | <img class="Resim" src="https://static.igem.org/mediawiki/parts/0/05/T--METU_HS_Ankara_GSH_Ferm.jpg" /> | ||
+ | <div class="clear: both"></div> | ||
+ | <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> | ||
+ | </div> | ||
− | + | <div class="col-md-12"> | |
− | + | <img class="Resim" src="https://static.igem.org/mediawiki/parts/f/fe/T--METU_HS_Ankara_GSH_and_FucO_Ferm_.jpg" /> | |
− | + | <div class="clear: both"></div> | |
− | < | + | <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> | |
− | + | </div> | |
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<h4> Result:</h4> | <h4> Result:</h4> |
Revision as of 14:17, 17 October 2018