Team:Evry/Model3
From 2013.igem.org
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<p> | <p> | ||
- | + | This model aims to simulate the entire pathway of the enterobactin production in our Iron Coli. It includes the synthetic sensing system, and the chemical reactions leading to the enterobactin.<br/> | |
- | This regulation is based on two consecutives inhibitions, which, in the end, is an activator with a certain delay. The model will follow this principle. | + | This model has two goals: |
+ | <ul> | ||
+ | <li>To the delay needed to produce siderophores starting from the iron-sensing</li> | ||
+ | <li>To determine the ideal plasmid configuration</li> | ||
+ | </ul> | ||
+ | The enterobactin production regulation is based on two consecutives inhibitions, which, in the end, is an activator with a certain delay. The model will follow this principle. | ||
</p> | </p> | ||
+ | |||
<h2>Assumptions</h2> | <h2>Assumptions</h2> | ||
- | < | + | <ul> |
- | </ | + | <li>The only limiting reagant in the pathway is the chorismic acid, which we consider being in excess amount</li> |
+ | <li>The FUR is also considered in excess amount</li> | ||
+ | <li>All the enzymes (and the mRNA involved) needed are assimilated to a single variable, since they all play equivalent roles</li> | ||
+ | </ul> | ||
+ | <a id="Description"></a> | ||
<h2>Model Description </h2> | <h2>Model Description </h2> | ||
<p> | <p> | ||
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</ul> | </ul> | ||
All those concentrations are expressed in mmol/L | All those concentrations are expressed in mmol/L | ||
- | |||
- | |||
- | |||
- | |||
- | |||
</p> | </p> | ||
<p> | <p> | ||
- | Fe, FUR and FeFUR:<br/> | + | <u>Fe, FUR and FeFUR:</u><br/> |
The iron-FUR complex is simply formed that way:<br/> | The iron-FUR complex is simply formed that way:<br/> | ||
<img src="https://static.igem.org/mediawiki/2013/7/72/Reg1.png"/><br/> | <img src="https://static.igem.org/mediawiki/2013/7/72/Reg1.png"/><br/> | ||
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<img src="https://static.igem.org/mediawiki/2013/f/fe/Reg3.png"/><br/> | <img src="https://static.igem.org/mediawiki/2013/f/fe/Reg3.png"/><br/> | ||
We chose to model the iron input in the bacteria using a linear function of the external iron concentration <i>Ferext</i>, the factor <i>p</i> being the cell-wall permeability for iron.<br/> | We chose to model the iron input in the bacteria using a linear function of the external iron concentration <i>Ferext</i>, the factor <i>p</i> being the cell-wall permeability for iron.<br/> | ||
- | The FUR on the other hand | + | The FUR on the other hand is produced by the bacteria. Its evolution can also be considered as linear, using a mean production rate <i>Fur0</i>.<br/> |
<img src="https://static.igem.org/mediawiki/2013/5/51/Regfer.png"/><br/> | <img src="https://static.igem.org/mediawiki/2013/5/51/Regfer.png"/><br/> | ||
<img src="https://static.igem.org/mediawiki/2013/6/68/Regfur.png"/><br/> | <img src="https://static.igem.org/mediawiki/2013/6/68/Regfur.png"/><br/> | ||
- | In this model, we only track the free Fe-FUR and not those | + | In this model, we only track the free Fe-FUR complex and not those attached to a FUR Binding Site. As <i>LacI</i> is the number of inhibited LacI, we can use this number to express how much Fe-FUR does bind to a FBS per unit of time.<br/> |
<img src="https://static.igem.org/mediawiki/2013/6/6d/Regfefur.png"/> | <img src="https://static.igem.org/mediawiki/2013/6/6d/Regfefur.png"/> | ||
</p> | </p> | ||
+ | <p> | ||
+ | <u>LacI-LacO system:</u><br/> | ||
+ | To simulate the inhibition phenomenon, we chose to use our <a href="https://2013.igem.org/Team:Evry/LogisticFunctions">logistic function</a> under its differential form. Since it is the Fe-FUR that represses it, the LacI can be expressed as a logistic fuction of the Fe-FUR:<br/> | ||
+ | <img src="https://static.igem.org/mediawiki/2013/4/49/Dlaci.png"/><br/> | ||
+ | Ki1 is a non-dimensional parameter that repesents the inhibition power, and Kf is the fixation rate of the Fe-FUR on the FBS. Finally, Nbrpla1 is the number of pasmids containing the LacI.<br/> | ||
+ | In the same way, LacO is modeled with a logistic funtion. LacO is repressed by LacI:<br/> | ||
+ | <img src="https://static.igem.org/mediawiki/2013/f/f2/Dlaco.png"/><br/> | ||
+ | Ki2 is the inhibition power and Nbrpla2 is the number of plasmimds containing LacO.<br/> | ||
+ | LacI and LacO are both ruled by a normal logistic function. If we were to track the number of expressed LacI/LacO, we would be using two inverted logistic fuctions to model a double inverter. The thing is, since <i>LacI</i> represents the number of <b>repressed</b> genes and <i>LacO</i> the number of <b>expressed</b> genes, the double inverter is still there, but the calculations are easier.<br/> | ||
+ | </p> | ||
+ | <p> | ||
+ | <u>mRNA and Enzymes:</u><br/> | ||
+ | The [mRNA] and [Enz] equations are alike. The prodction rates are Kr for the mRNA and Kp for the enzymmes, and both variables have a negative degadation term:<br/> | ||
+ | <img src="https://static.igem.org/mediawiki/2013/3/31/Dmrnadenz.png"/> | ||
+ | </p> | ||
+ | |||
+ | <p> | ||
+ | <u>Finally:</u><br/> | ||
+ | <img src="https://static.igem.org/mediawiki/2013/5/54/SystemeMetabolique.png"/> | ||
+ | </p> | ||
+ | |||
- | < | + | <h2>Parameters</h2> |
<table width="100%" border="1"> | <table width="100%" border="1"> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<th>Unite</th> | <th>Unite</th> | ||
<th>Description</th> | <th>Description</th> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>min^-1</td> | <td>min^-1</td> | ||
<td>Permeability of cell wall</td> | <td>Permeability of cell wall</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>M^-1.s^-1</td> | <td>M^-1.s^-1</td> | ||
<td>Formation constant of FeFur complex</td> | <td>Formation constant of FeFur complex</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>min^-1</td> | <td>min^-1</td> | ||
<td>-</td> | <td>-</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>min^-1</td> | <td>min^-1</td> | ||
<td>translation rate</td> | <td>translation rate</td> | ||
- | + | ||
<tr width="100%"> | <tr width="100%"> | ||
<td>KT</td> | <td>KT</td> | ||
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<td>M.min^-1</td> | <td>M.min^-1</td> | ||
<td>transcription rate</td> | <td>transcription rate</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>mol^-1</td> | <td>mol^-1</td> | ||
<td>Avogadro's constant</td> | <td>Avogadro's constant</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>m^3</td> | <td>m^3</td> | ||
<td>Volume of a call</td> | <td>Volume of a call</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>min^-1</td> | <td>min^-1</td> | ||
<td>mRNA degradation rate</td> | <td>mRNA degradation rate</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>min^-1</td> | <td>min^-1</td> | ||
<td>Enzyme degradation rate</td> | <td>Enzyme degradation rate</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>min^-1</td> | <td>min^-1</td> | ||
<td>fixation rate of FeFUR</td> | <td>fixation rate of FeFUR</td> | ||
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
- | <td> | + | <td>Fur0</td> |
- | <td></td> | + | <td>0.01</td> |
- | <td> | + | <td>mM.min^⁻1</td> |
- | <td> | + | <td>Fur Production</td> |
- | <td> | + | |
+ | </tr> | ||
+ | <tr width="100%"> | ||
+ | <td>vE1</td> | ||
+ | <td>0.01</td> | ||
+ | <td>mM.min^⁻1</td> | ||
+ | <td>Chorismate production</td> | ||
</tr> | </tr> | ||
</table> | </table> | ||
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<td>5550</td> | <td>5550</td> | ||
<td>min^-1</td> | <td>min^-1</td> | ||
- | <td> | + | <td>PMID:2144454</td> |
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>600</td> | <td>600</td> | ||
<td>min^-1</td> | <td>min^-1</td> | ||
- | <td> | + | <td>PMID:2139796</td> |
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
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<td>173</td> | <td>173</td> | ||
<td>min^-1</td> | <td>min^-1</td> | ||
- | <td> | + | <td></td> |
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
<td>KmA</td> | <td>KmA</td> | ||
<td>300</td> | <td>300</td> | ||
- | <td> | + | <td>μM</td> |
- | + | ||
<td>-</td> | <td>-</td> | ||
+ | |||
+ | |||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
<td>KmB</td> | <td>KmB</td> | ||
<td>14.7</td> | <td>14.7</td> | ||
- | <td> | + | <td>μM</td> |
- | <td> | + | <td>PMID:2139796</td> |
- | + | ||
</tr> | </tr> | ||
<tr width="100%"> | <tr width="100%"> | ||
<td>KmC</td> | <td>KmC</td> | ||
<td>14</td> | <td>14</td> | ||
- | <td> | + | <td>μM</td> |
- | + | ||
<td>-</td> | <td>-</td> | ||
+ | |||
</tr> | </tr> | ||
- | </table> | + | </table><br/> |
+ | <p> | ||
+ | Note that we don't have any informations about the KI1 and KI2 parameters, since they are purely artificial. We thus had to run simulations to study the effects of different sets of values on the model. | ||
+ | </p> | ||
+ | <a id="Results"></a> | ||
<h2>Results</h2> | <h2>Results</h2> | ||
+ | |||
<p> | <p> | ||
+ | <u>High copy?</u><br/> | ||
+ | Here are 9 gaphs pointing out the relevance of different plasmid configurations. The goal of this simulation is to try answering a biological question: "should we increase the number of plLacO plasmids or the LacI plasmids?"<br/>The horizontal axes are the time (minutes) and the iron concentration (logarithmic scale). The vertical axis is the Enzyme production (mmol/L).<br/> | ||
+ | <div align="center"><img src="https://static.igem.org/mediawiki/2013/d/d5/MetabolismResult1.png"/></div> | ||
+ | The graph is clear: the most important plasmid is the one containing the LacI (the direct iron sensor). | ||
</p> | </p> | ||
- | < | + | <p> |
+ | <u>About the KI1/KI2:</u><br/> | ||
+ | Here are 9 other graphs with a set of different values for KI1 and KI2. | ||
+ | <div align="center"><img src="https://static.igem.org/mediawiki/2013/f/fd/MetaTabregki.png"/></div> | ||
+ | </p><br/><br/> | ||
+ | |||
<p> | <p> | ||
- | </p> | + | <u>Temporal answers</u><br/> |
+ | |||
+ | |||
+ | This curve integrates the chemical pathway developped <a href"https://2013.igem.org/Team:Evry/ChemicalTools">here</a>. | ||
+ | <div><img src="https://static.igem.org/mediawiki/2013/3/34/Systemboss.png"/></div> | ||
+ | <div align="center"><img src="https://static.igem.org/mediawiki/2013/5/5e/MetaEntenz.png" width="900px"/></div> | ||
+ | There is a chemical delay in the enterobactin production, which is about the same length as the bacterial delay. | ||
+ | </p><br/> | ||
+ | |||
+ | |||
+ | |||
+ | <br> | ||
+ | <br> | ||
+ | |||
+ | <p id="model_galenic"> | ||
+ | <u>Impact on the galenic formulation</u><br/> | ||
+ | The delay of siderophore production is predicted to be way to long if you choose for the flush strategy. As a consequence, these result directly impacted our chelating strategy. Thus, our final decision is to try to implant the bacteria in the intestins (here in the jejunum) to statically enhance its growth and let it enough time to recover for a dessicated environment. | ||
+ | </p><br/> | ||
- | < | + | <a href="https://static.igem.org/mediawiki/2013/b/be/Metabolicmodel.zip">Download the model</a> |
- | + | ||
- | + | ||
- | |||
- | |||
Latest revision as of 15:55, 22 October 2013
Metabolic model
Overview
This model aims to simulate the entire pathway of the enterobactin production in our Iron Coli. It includes the synthetic sensing system, and the chemical reactions leading to the enterobactin.
This model has two goals:
- To the delay needed to produce siderophores starting from the iron-sensing
- To determine the ideal plasmid configuration
Assumptions
- The only limiting reagant in the pathway is the chorismic acid, which we consider being in excess amount
- The FUR is also considered in excess amount
- All the enzymes (and the mRNA involved) needed are assimilated to a single variable, since they all play equivalent roles
Model Description
Variables:
- [Fe] : Iron concentration inside the bacteria
- [Fur] : FUR concentration inside the bacteria
- [FeFur] : Iron-FUR complex concentration inside the bacteria
- LacI : Number of inhibited LacI
- LacO : Number of non-inhibited LacO
- [mRNA]: mRNA (from LacO) concentration
- [Enz] : Enzyme concentration : EntA,-B,-C,-D,-E,-F
Fe, FUR and FeFUR:
The iron-FUR complex is simply formed that way:
We reduced this equation to:
Which is not annoying, since we just have to divide our [FeFur] by to to get the real complex concentration.
We can easily write down both the formation (v) and the dissociation (v') speed:
We chose to model the iron input in the bacteria using a linear function of the external iron concentration Ferext, the factor p being the cell-wall permeability for iron.
The FUR on the other hand is produced by the bacteria. Its evolution can also be considered as linear, using a mean production rate Fur0.
In this model, we only track the free Fe-FUR complex and not those attached to a FUR Binding Site. As LacI is the number of inhibited LacI, we can use this number to express how much Fe-FUR does bind to a FBS per unit of time.
LacI-LacO system:
To simulate the inhibition phenomenon, we chose to use our logistic function under its differential form. Since it is the Fe-FUR that represses it, the LacI can be expressed as a logistic fuction of the Fe-FUR:
Ki1 is a non-dimensional parameter that repesents the inhibition power, and Kf is the fixation rate of the Fe-FUR on the FBS. Finally, Nbrpla1 is the number of pasmids containing the LacI.
In the same way, LacO is modeled with a logistic funtion. LacO is repressed by LacI:
Ki2 is the inhibition power and Nbrpla2 is the number of plasmimds containing LacO.
LacI and LacO are both ruled by a normal logistic function. If we were to track the number of expressed LacI/LacO, we would be using two inverted logistic fuctions to model a double inverter. The thing is, since LacI represents the number of repressed genes and LacO the number of expressed genes, the double inverter is still there, but the calculations are easier.
mRNA and Enzymes:
The [mRNA] and [Enz] equations are alike. The prodction rates are Kr for the mRNA and Kp for the enzymmes, and both variables have a negative degadation term:
Finally:
Parameters
Name | Value | Unite | Description |
---|---|---|---|
p | 0.1 | min^-1 | Permeability of cell wall |
KfeFUR | 0.01 | M^-1.s^-1 | Formation constant of FeFur complex |
Dff | 0.001 | min^-1 | - |
Kp | 0.5 | min^-1 | translation rate |
KT | 2.0 | M.min^-1 | transcription rate |
milliNa | 6.02.10^20 | mol^-1 | Avogadro's constant |
V | 6.5.10^-16 | m^3 | Volume of a call |
Dmrna | 0.001 | min^-1 | mRNA degradation rate |
Denz | 0.001 | min^-1 | Enzyme degradation rate |
Kf | 10^-4 | min^-1 | fixation rate of FeFUR |
Fur0 | 0.01 | mM.min^⁻1 | Fur Production |
vE1 | 0.01 | mM.min^⁻1 | Chorismate production |
KcatA | 5550 | min^-1 | PMID:2144454 |
KcatB | 600 | min^-1 | PMID:2139796 |
KcatC | 173 | min^-1 | |
KmA | 300 | μM | - |
KmB | 14.7 | μM | PMID:2139796 |
KmC | 14 | μM | - |
Note that we don't have any informations about the KI1 and KI2 parameters, since they are purely artificial. We thus had to run simulations to study the effects of different sets of values on the model.
Results
High copy?
Here are 9 gaphs pointing out the relevance of different plasmid configurations. The goal of this simulation is to try answering a biological question: "should we increase the number of plLacO plasmids or the LacI plasmids?"
The horizontal axes are the time (minutes) and the iron concentration (logarithmic scale). The vertical axis is the Enzyme production (mmol/L).
About the KI1/KI2:
Here are 9 other graphs with a set of different values for KI1 and KI2.
Temporal answers
This curve integrates the chemical pathway developped here.
Impact on the galenic formulation
The delay of siderophore production is predicted to be way to long if you choose for the flush strategy. As a consequence, these result directly impacted our chelating strategy. Thus, our final decision is to try to implant the bacteria in the intestins (here in the jejunum) to statically enhance its growth and let it enough time to recover for a dessicated environment.
Download the model