Team:Braunschweig/Modeling-content
From 2014.igem.org
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In this project beads were manually produced using transfer pipettes, thus the diameter was 7 mm in average with 4×10<sup>9</sup> cells. Consequently, a total of 750 beads is needed to reduce the methane emission to a minimum, which have a retention time of 4 days in the cows rumen. For the reduction of the costs, the bead composition can be optimized. It has been reported that small amounts of paraffin increase the solubility of methane in the liquid phase vastly [12]. However, the health effects of paraffin has to be evaluated.<br><br> | In this project beads were manually produced using transfer pipettes, thus the diameter was 7 mm in average with 4×10<sup>9</sup> cells. Consequently, a total of 750 beads is needed to reduce the methane emission to a minimum, which have a retention time of 4 days in the cows rumen. For the reduction of the costs, the bead composition can be optimized. It has been reported that small amounts of paraffin increase the solubility of methane in the liquid phase vastly [12]. However, the health effects of paraffin has to be evaluated.<br><br> | ||
Our costs for the production were 50 cent per ratio, which consists of 750 beads. Hence, a total of 50 $ per year is needed to reduce the annual methane emission by 110 kg per cow. Ideally the worldwide methane emission is reduced by 164 million tons, based on a total number of 1.5 billion cows [13]. This is the ideal case. Nevertheless in case only 1% percent of the sMMO is active if immobilized and introduced into the rumen, the methane emission is reduced by 164 ×10<sup>4</sup> tons.<br><br> | Our costs for the production were 50 cent per ratio, which consists of 750 beads. Hence, a total of 50 $ per year is needed to reduce the annual methane emission by 110 kg per cow. Ideally the worldwide methane emission is reduced by 164 million tons, based on a total number of 1.5 billion cows [13]. This is the ideal case. Nevertheless in case only 1% percent of the sMMO is active if immobilized and introduced into the rumen, the methane emission is reduced by 164 ×10<sup>4</sup> tons.<br><br> | ||
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Considering the 25 times greater impact on global warming of methane in comparison to carbon dioxide, a comparative statistical analysis of cows with average emission values of cars is possible. <br></p> | Considering the 25 times greater impact on global warming of methane in comparison to carbon dioxide, a comparative statistical analysis of cows with average emission values of cars is possible. <br></p> | ||
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Assuming that a cow releases a maximum of 500 L of methane and a minimum of 300 L per day, the annual emissions of carbon dioxide equivalents range from 2.737 to 4.562 t. An average car, consuming a maximum of 150 g and a minimum of 90 g of carbon dioxide per kilometer, covers in average a distance of 15.000 km per year. Hence, the annual emission rates range from 1,350 to 2,250 tons CO<sub>2</sub>. Consequently, the cow’s impact on global warming is twice as great as the impact of a car.<br><br> | Assuming that a cow releases a maximum of 500 L of methane and a minimum of 300 L per day, the annual emissions of carbon dioxide equivalents range from 2.737 to 4.562 t. An average car, consuming a maximum of 150 g and a minimum of 90 g of carbon dioxide per kilometer, covers in average a distance of 15.000 km per year. Hence, the annual emission rates range from 1,350 to 2,250 tons CO<sub>2</sub>. Consequently, the cow’s impact on global warming is twice as great as the impact of a car.<br><br> | ||
Industrial application of this years iGEM project is able to reduce the annual methane emission by 110 kg methane per cow corresponding to 2750 kg CO<sub>2</sub>-equivalent emissions. <br><br> | Industrial application of this years iGEM project is able to reduce the annual methane emission by 110 kg methane per cow corresponding to 2750 kg CO<sub>2</sub>-equivalent emissions. <br><br> | ||
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Revision as of 14:08, 17 October 2014
Modeling Approach
Due to the increasing consumption of Beef and dairy products cattle are nowadays a major contributor to the emission of greenhouse gases, thus vastly affecting global warming. In this year’s project the iGEM Team Braunschweig is aiming at reducing the cows’ share of the cake by designing a methane degrading bacterium – E. cowli.
However, due to safety and ethical concerns it is not easily manageable to test our system in vivo. Nonetheless, the effects of E. cowli on methane emissions by cattle need to be evaluated. Therefore, we created a mathematical model simulation based on data experimentally obtained in this project and previously published literature. The model was used to evaluate eventual costs and a theoretical scale-up of the system.
Mathematical Model
In this year’s iGEM project, our objective is to decrease the amount of methane produced through enteric fermentation inside the cows’ rumen without affecting the internal microbiota. Produced methane is subsequently released from the digestive tract through the mouth by eructation or burping. To inhibit the emission, thus reducing the atmospheric methane levels, we established a methane degrading bacterium – E. cowli
Our mathematical model, based on laboratory and literature data, provides an overview of the efficiency and impact of our system.
E. cowli is capable of utilizing methane for the production of methanol. Methanol is subsequently excreted and metabolized by other organisms of the cows’ microbiota [1]. To degrade methane E. cowli uses the well-characterized enzyme complex soluble methane monooxygenase (sMMO) from M. capsulatus catalyzing the conversion of methane to methanol with simultaneous consumption of oxygen and the cofactor NADH+H+ (see eq. 1 and eq. 2).
According to literature data the reaction kinetics can be described using Michaelis-Menten kinetics [2]. Kinetic parameters varied from 3 to 23 µM for the Michaelis-Menten constant (KM), thus the most confident values shown in table 1 were selected for modeling.