Team:Tokyo Tech/Project/Artificial Cooperation System/modeling

From 2010.igem.org

(Difference between revisions)
(model development)
 
(33 intermediate revisions not shown)
Line 3: Line 3:
<div id="tf_menu">   
<div id="tf_menu">   
-
menu
+
<font size="5" color="#eb8300"><b><center>Project menu</center></b></font>
 +
 
 +
<center>
 +
<table id="table-01">
 +
<tr>
 +
<td>[[Team:Tokyo_Tech|1 Graphical abstract]]<br>
 +
</td>
 +
</tr>
 +
<td>2 Apple reporter<br>
 +
:[[Team:Tokyo_Tech/Project/Apple_Reporter|2-1 Color]]
 +
:[[Team:Tokyo_Tech/Project/Apple_Reporter2|2-2 Fragrance]]
 +
</td>
 +
<tr>
 +
<th>[[Team:Tokyo_Tech/Project/Artificial_Cooperation_System|3 Artificial Cooperation System]]<br>
 +
:[[Team:Tokyo_Tech/Project/Artificial_Cooperation_System/lux_act_rep|3-1 lux activation/repression promoter]]
 +
:[[Team:Tokyo_Tech/Project/Artificial_Cooperation_System/Cm_assay|3-2 resistance gene activation device]]
 +
:[[Team:Tokyo_Tech/Project/Artificial_Cooperation_System/luxI_assay|3-3 ''lux''I Assay]]
 +
:3-4 modeling  -YOU ARE HERE!-
 +
</th>
 +
</tr>
 +
<tr>
 +
<td>[[Team:Tokyo_Tech/Project/wolf_coli|4 wolfcoli overview]]<br>
 +
:[[Team:Tokyo_Tech/Project/wolf_coli/New_Series_of_PompC|4-1 the new seriesof P''ompC'']]
 +
:[[Team:Tokyo_Tech/Project/wolf_coli/lacIM1|4-2 lacIM1 for band-detect network ]]
 +
:[[Team:Tokyo_Tech/Project/wolf_coli/System|4-3 wolfcoli system]]
 +
</td>
 +
</tr>
 +
</table>
 +
</center>
 +
 
 +
 
</div> <!-- tf_menu -->
</div> <!-- tf_menu -->
-
<div id="tf_SubWrapper">
+
<div id="tf_SubWrapper">
-
<!--ここから書き始めて下さい-->
+
<font size="5"><b>3-4 modeling</b></font>
 +
==Abstract==
 +
In order to confirm the feasibility of the Artificial Cooperation System, we simulated the system under typical four experimental conditions. First, when the system worked and any antibiotics did not exist, cell A and cell B in the system showed no difference of growth (Fig.3-4-1). Second, when the system did not work and chloramphenicol existed, the number of cell A decreased while the number of cell B increased (Fig.3-4-2). Third, when the system worked and chloramphenicol existed, the number of cell A increased after temporal decline (Fig.3-4-3), which means it was rescued by Artificial Cooperation System. Fourth, in the contrast, when the system worked and Kanamycin existed, the number of cell B increased after temporal decline (Fig.3-4-4). From the above results, the feasibility of the Artificial Cooperation System was confirmed.
 +
[[IMAGE: tokyotech_no_anti_sim_result.jpg|300px|left|thumb|Fig3-4-1. When the system worked and any antibiotics did not exist (work done by Shohei Kitano)]]
 +
[[IMAGE: tokyotech_no_system_sim_result.jpg|300px|left|thumb|Fig3-4-2. when the system did not work and chloramphenicol existed (work done by Shohei Kitano)]]
-
==Mathematical modeling==
 
-
=Abstract=
 
-
=model development=
 
-
In order to understand the behavior of our Artificial Cooperation System, a mathematical model with ordinary differential equations (ODEs) is used to simulate the system. The state variables and parameters are described in detail in Table〇〇.
 
-
[[IMAGE:Tokyotech_S1-S8.jpg|400px]]
 
-
The major kinetic events in the Artificial Cooperation System that determine the behavior are: cell population growth; resistance gene expression under the control of quorum sensing activation promoters; AHLs synthesis and degradation; I protein synthesis under the control of quorum sensing repressive promoters. The interaction of 8 variables decides the performance of our Artificial Cooperation System. Following sentences describe how dynamic equations are developed.
+
 
 +
 
 +
 
 +
[[IMAGE: tokyotech_cm_sim_result.jpg|300px|left|thumb|Fig3-4-3 when the system worked and chloramphenicol existed (work done by Shohei Kitano)]]
 +
[[IMAGE: tokyotech_kan_sim_result.jpg|300px|left|thumb|Fig3-4-4 when the system worked and Kanamycin existed (work done by Shohei Kitano) ]]
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
 
 +
==Model development==
 +
In order to simulate the Artificial Cooperation System, we developed an ordinary differential equation model. The state variables and parameters used in the model are described in detail in [[Team:Tokyo_Tech/Project/Artificial_Cooperation_System/modeling|Table1]].
 +
 
 +
[[IMAGE:Tokyotech_S1-S8.jpg|600px]]
 +
 
 +
In the Artificial Cooperation System, the major kinetic events are: cell population growth; resistance gene expression under the control of quorum sensing activation promoters; AHLs synthesis and degradation; I protein synthesis under the control of quorum sensing repressive promoters. These kinetic events are contained in the equations. Following sentences describe how the equations are developed.
'''I, Cell Population Growth'''
'''I, Cell Population Growth'''
-
The growth state of individual cell without effect of antibiotics can be described by logistic growth law(S9). N in the equation S9 represents the cell population and Nm represents the maximum allowed number of cells due to nutrient limitation, μ is a constant coefficient.
+
The growth rate of each type of cell without effect of antibiotics can be described by the following logistic growth equation:
-
[[IMAGE:Tokyotech S9.jpg|400px]]
 
-
The growth rate is proportional to cell population and inhibited by themselves due to nutrient limitation. The growth of mixed two types of cell can be described as equation S10 and S11. The growth rate of any kind of cell is proportional to its population but inhibited by total population of two types of cell (1-(N<sub>A</sub>+ N<sub>B</sub>)/ N<sub>m</sub>)
+
[[IMAGE:Tokyotech S9.jpg|400px]],
 +
 
 +
where N denotes the number of cells, Nm denotes the maximum allowed number of cells due to nutrient limitation, and μ is a constant coefficient. The maximum growth rate is proportional to the number of cells and the growth rate is inhibited by the number of cells due to nutrient limitation.  
 +
 
 +
When two types of cell coexist, the growth rates of the both type of cell are described in the following equations:
[[IMAGE:Tokyotech S10S11.jpg|400px]]
[[IMAGE:Tokyotech S10S11.jpg|400px]]
-
The inhibition of antibiotics is represented by equation S12 and S13, where Cm and Kan represent chloramphenicol and kanamycin concentration respectively. And the &gamma; is the rate constant. Antibiotics concentration and the number of cell contribute the decreasing rate.
+
The maximum growth rate of each type of cell is proportional to the number of their type of cells and the growths are inhibited by the total number of the cells in the system (1-(N<sub>A</sub>+ N<sub>B</sub>)/ N<sub>m</sub>)
 +
 
 +
The growth inhibition by antibiotics is represented by the following equations:
[[IMAGE:Tokyotech S12S13.jpg|400px]]
[[IMAGE:Tokyotech S12S13.jpg|400px]]
-
The expression of antibiotics resistance gene can release the antibiotic inhibition to some extent according to the synthesized enzyme concentration. So S12 and S13 are replaced by equation S14 and S15, in which CmR and KanR are the expression level of antibiotics genes and &eta; is constant for specific gene.
+
where Cm and Kan denote chloramphenicol and kanamycin concentration respectively. The rate of decreasing the number of cells is proportional to the product of multiplying antibiotics concentration and the number of cell. Here, &gamma is the rate constant.
 +
 
 +
 
 +
The antibiotic resistance enzyme releases the antibiotic growth inhibition dependent on the enzyme concentration. Then, S12 and S13 are replaced by the following equations:
[[IMAGE:Tokyotech S14S15.jpg|400px]]
[[IMAGE:Tokyotech S14S15.jpg|400px]]
-
But, if (Cm-&eta;<sub>Cm</sub>CmR) or (Kan-&eta;<sub>Kan</sub>KanR) is negative, these terms are set to zero during simulation. Therefore, the dynamics of cell population are listed as equation S1 and S2.
+
Where CmR and KanR are the concentration of the chloramphenicol and kanamycin resistance enzyme, respectively, and &eta; is constant for specific gene. Here, if (Cm-&eta;<sub>Cm</sub>CmR) or (Kan-&eta;<sub>Kan</sub>KanR) is negative, these terms are set to zero during simulation. As a consequence, the dynamics of the number of cells are described by equation S1 and S2.
[[IMAGE:Tokyotech S1S2.jpg|400px]]
[[IMAGE:Tokyotech S1S2.jpg|400px]]
Line 45: Line 133:
'''II, Resistance gene expression under the control of AHLs'''
'''II, Resistance gene expression under the control of AHLs'''
-
In our system, the expression level of resistance gene is controlled by a complicated process which includes the combination of AHL to R protein, initialization of transcription and translation. R proteins, LuxR and LasR, are expressed constitutively and the concentration is supposed to be constant. Thus the expression of resistance genes could be generated by Hill function (equation S16 and S17) according to the concentration of AHLs.  
+
In our system, the expression level of resistance gene is regulated by R protein-AHL complex. R proteins, LuxR and LasR, are assumed to be synthesized sufficiently so that the concentration of the complex depends on only the AHL concentration. Thus the synthesis rates of resistance enzyme are described by Hill function dependent on the AHL concentration (equation S16 and S17).  
[[IMAGE:Tokyotech S16S17.jpg|400px]]
[[IMAGE:Tokyotech S16S17.jpg|400px]]
-
Together with leakyCmR and leakyKanR that represent the leaky expression of the resistance genes and the degradation of resistance genes products, equation S3 and S4 are employed to simulate the expression of resistance genes.
+
Together with the leaky production of the resistance enzymes and the degradation of resistance enzymes, equation S3 and S4 are employed to simulate the expression of resistance genes.
 +
 
 +
 
[[IMAGE:Tokyotech S3S4.jpg|400px]]
[[IMAGE:Tokyotech S3S4.jpg|400px]]
-
Here, k<sub>CmR</sub> and k<sub>KanR</sub> are the max expression rate of the promoters. n<sub>1</sub> and n<sub>2</sub> are Hill coefficient. m<sub>Cm</sub> and m<sub>KanR</sub> represent the AHL concentration producing half level of resistance gene products.
+
where leakyCmR and leakyKanR denote the leaky production of chloramphenicol and kanamycin resistance enzyme respectively, k<sub>CmR</sub> and k<sub>KanR</sub> denote the maximum synthesis rate of each enzyme, respectively. n<sub>1</sub> and n<sub>2</sub> are Hill coefficient. m<sub>Cm</sub> and m<sub>KanR</sub> denote the AHL concentration required for producing half level of each enzyme, respectively.
'''III, AHL synthesis and degradation'''
'''III, AHL synthesis and degradation'''
-
AHL is synthesized by I protein and we assume that the concentration of substrates of AHL are constant, so the AHL synthetic rate is assumed to be proportional to the cognate I protein. And AHL synthetic rate is dependent on cell population, so synthetic rate is proportional to cell population. And the degradation rate of AHL is assumed to decay with first-order kinetic. Therefore, the dynamic equation of AHLs concentration are listed in equation S5 and S7.
 
 +
 +
AHL is enzymatically synthesized by I protein from some substrates. For the simplicity, we assumed the amount of substrates is sufficient so that the AHL synthesis rate are estimated to be proportional to the cognate I protein. The degradation rate of AHL is assumed to decay with first-order kinetic. The dynamical behaviors of AHLs concentration are described by the following equations (S5 and S7):
[[IMAGE:Tokyotech S5S7.jpg|400px]]
[[IMAGE:Tokyotech S5S7.jpg|400px]]
-
k<sub>3OC6HSL</sub>, k<sub>3OC12HSL</sub>, d<sub>3OC6HSL</sub> and d<sub>3OC12HSL</sub> are constant coefficients.  
+
where, k<sub>3OC6HSL</sub>, k<sub>3OC12HSL</sub>, d<sub>3OC6HSL</sub> and d<sub>3OC12HSL</sub> denote constant coefficients.  
'''IV, I protein production under the control of AHL dependent promoter'''
'''IV, I protein production under the control of AHL dependent promoter'''
-
The expression of I proteins can be generated by Hill function according to the concentration of AHL like the expression of resistance gene. Though the resistance genes are activated by AHLs, the production of I proteins is repressed by AHLs. So, we employ the following Hill function (equation S18 and S19)
+
The synthesis of I proteins can be generated by Hill function according to the concentration of AHL like the expression of resistance gene. Though the resistance genes are activated by AHLs, the production of I proteins is repressed by AHLs. So, we employ the following Hill function (equation S18 and S19)
 +
 
[[IMAGE:Tokyotech S18S19.jpg|400px]]
[[IMAGE:Tokyotech S18S19.jpg|400px]]
-
k<sub>LuxI</sub> and k<sub>LasI</sub> represent maximum production rate of LuxI and LasI. So when the concentration of AHL is 0nM, the I protein production rate is k. n<sub>3</sub> and n<sub>4</sub> are Hill coefficients. m<sub>LuxI</sub> and m<sub>LasI</sub>represent the AHL concentration producing half level of I proteins. Therefore dynamics equations of I proteins production are listed in equation S6 and S8.
+
Where, k<sub>LuxI</sub> and k<sub>LasI</sub> denote maximum production rate of LuxI and LasI. When the concentration of AHL is 0nM. n<sub>3</sub> and n<sub>4</sub> are Hill coefficients. m<sub>LuxI</sub> and m<sub>LasI</sub>denote the AHL concentration required for producing half level of I proteins. Therefore dynamics equations of I proteins production are listed in equation S6 and S8.
<!--S6 S8-->
<!--S6 S8-->
[[IMAGE:Tokyotech S6S8.jpg|400px]]
[[IMAGE:Tokyotech S6S8.jpg|400px]]
-
d<sub>LuxI</sub>and d<sub>LasI</sub> are constant coefficient.
+
Where d<sub>LuxI</sub>and d<sub>LasI</sub> denote constant coefficient.
 +
 
 +
==Prameters==
 +
The parameters used in equation S1 to S8 are listed in Table1. Many parameter values are taken from references. However, quantitative information is not sufficient for some parameters; therefore we use educated guesses that are biologically feasible.
 +
[[IMAGE:tokyotech_parameter_table.jpg|550px|left|thumb|Table1 Variables and Parameters]]
 +
 
 +
==References==
 +
1, Bo Hu, Jin Du, Rui-yang Zou, Ying-jin Yuan, An Environment-Sensitive Synthetic Microbial Ecosystem, PLoS ONE, volume 5 issue 5, 2010<br>
 +
2, Balagadde FK, Song H, Ozaki J, Collins CH, Barnet M, et al. (2008) A synthetic Escherichia coli predator-prey ecosystem. Mol Syst Biol 4: 187.<br>
 +
3, Gardner TS, Cantor CR, Collins JJ (2000) Construction of a genetic toggle switch in Escherichia coli. Nature 403: 339–342.<br>
 +
4, Brenner K, Karig DK, Weiss R, Arnold FH (2007) Engineered bidirectional
 +
communication mediates a consensus in a microbial biofilm consortium. Proc
 +
Natl Acad Sci USA 104: 17300–17304.<br>
 +
 

Latest revision as of 03:58, 28 October 2010

iGEM Tokyo Tech 2010 "E.coli with Humanity"

3-4 modeling

Contents

Abstract

In order to confirm the feasibility of the Artificial Cooperation System, we simulated the system under typical four experimental conditions. First, when the system worked and any antibiotics did not exist, cell A and cell B in the system showed no difference of growth (Fig.3-4-1). Second, when the system did not work and chloramphenicol existed, the number of cell A decreased while the number of cell B increased (Fig.3-4-2). Third, when the system worked and chloramphenicol existed, the number of cell A increased after temporal decline (Fig.3-4-3), which means it was rescued by Artificial Cooperation System. Fourth, in the contrast, when the system worked and Kanamycin existed, the number of cell B increased after temporal decline (Fig.3-4-4). From the above results, the feasibility of the Artificial Cooperation System was confirmed.

Fig3-4-1. When the system worked and any antibiotics did not exist (work done by Shohei Kitano)
Fig3-4-2. when the system did not work and chloramphenicol existed (work done by Shohei Kitano)




Fig3-4-3 when the system worked and chloramphenicol existed (work done by Shohei Kitano)
Fig3-4-4 when the system worked and Kanamycin existed (work done by Shohei Kitano)





















Model development

In order to simulate the Artificial Cooperation System, we developed an ordinary differential equation model. The state variables and parameters used in the model are described in detail in Table1.

Tokyotech S1-S8.jpg

In the Artificial Cooperation System, the major kinetic events are: cell population growth; resistance gene expression under the control of quorum sensing activation promoters; AHLs synthesis and degradation; I protein synthesis under the control of quorum sensing repressive promoters. These kinetic events are contained in the equations. Following sentences describe how the equations are developed.


I, Cell Population Growth The growth rate of each type of cell without effect of antibiotics can be described by the following logistic growth equation:


Tokyotech S9.jpg,

where N denotes the number of cells, Nm denotes the maximum allowed number of cells due to nutrient limitation, and μ is a constant coefficient. The maximum growth rate is proportional to the number of cells and the growth rate is inhibited by the number of cells due to nutrient limitation.

When two types of cell coexist, the growth rates of the both type of cell are described in the following equations:

Tokyotech S10S11.jpg

The maximum growth rate of each type of cell is proportional to the number of their type of cells and the growths are inhibited by the total number of the cells in the system (1-(NA+ NB)/ Nm)

The growth inhibition by antibiotics is represented by the following equations:

Tokyotech S12S13.jpg

where Cm and Kan denote chloramphenicol and kanamycin concentration respectively. The rate of decreasing the number of cells is proportional to the product of multiplying antibiotics concentration and the number of cell. Here, &gamma is the rate constant.


The antibiotic resistance enzyme releases the antibiotic growth inhibition dependent on the enzyme concentration. Then, S12 and S13 are replaced by the following equations:

Tokyotech S14S15.jpg

Where CmR and KanR are the concentration of the chloramphenicol and kanamycin resistance enzyme, respectively, and η is constant for specific gene. Here, if (Cm-ηCmCmR) or (Kan-ηKanKanR) is negative, these terms are set to zero during simulation. As a consequence, the dynamics of the number of cells are described by equation S1 and S2.

Tokyotech S1S2.jpg


II, Resistance gene expression under the control of AHLs In our system, the expression level of resistance gene is regulated by R protein-AHL complex. R proteins, LuxR and LasR, are assumed to be synthesized sufficiently so that the concentration of the complex depends on only the AHL concentration. Thus the synthesis rates of resistance enzyme are described by Hill function dependent on the AHL concentration (equation S16 and S17).

Tokyotech S16S17.jpg

Together with the leaky production of the resistance enzymes and the degradation of resistance enzymes, equation S3 and S4 are employed to simulate the expression of resistance genes.


Tokyotech S3S4.jpg

where leakyCmR and leakyKanR denote the leaky production of chloramphenicol and kanamycin resistance enzyme respectively, kCmR and kKanR denote the maximum synthesis rate of each enzyme, respectively. n1 and n2 are Hill coefficient. mCm and mKanR denote the AHL concentration required for producing half level of each enzyme, respectively.


III, AHL synthesis and degradation


AHL is enzymatically synthesized by I protein from some substrates. For the simplicity, we assumed the amount of substrates is sufficient so that the AHL synthesis rate are estimated to be proportional to the cognate I protein. The degradation rate of AHL is assumed to decay with first-order kinetic. The dynamical behaviors of AHLs concentration are described by the following equations (S5 and S7):

Tokyotech S5S7.jpg

where, k3OC6HSL, k3OC12HSL, d3OC6HSL and d3OC12HSL denote constant coefficients.


IV, I protein production under the control of AHL dependent promoter The synthesis of I proteins can be generated by Hill function according to the concentration of AHL like the expression of resistance gene. Though the resistance genes are activated by AHLs, the production of I proteins is repressed by AHLs. So, we employ the following Hill function (equation S18 and S19)


Tokyotech S18S19.jpg

Where, kLuxI and kLasI denote maximum production rate of LuxI and LasI. When the concentration of AHL is 0nM. n3 and n4 are Hill coefficients. mLuxI and mLasIdenote the AHL concentration required for producing half level of I proteins. Therefore dynamics equations of I proteins production are listed in equation S6 and S8.

Tokyotech S6S8.jpg

Where dLuxIand dLasI denote constant coefficient.

Prameters

The parameters used in equation S1 to S8 are listed in Table1. Many parameter values are taken from references. However, quantitative information is not sufficient for some parameters; therefore we use educated guesses that are biologically feasible.

Table1 Variables and Parameters

References

1, Bo Hu, Jin Du, Rui-yang Zou, Ying-jin Yuan, An Environment-Sensitive Synthetic Microbial Ecosystem, PLoS ONE, volume 5 issue 5, 2010
2, Balagadde FK, Song H, Ozaki J, Collins CH, Barnet M, et al. (2008) A synthetic Escherichia coli predator-prey ecosystem. Mol Syst Biol 4: 187.
3, Gardner TS, Cantor CR, Collins JJ (2000) Construction of a genetic toggle switch in Escherichia coli. Nature 403: 339–342.
4, Brenner K, Karig DK, Weiss R, Arnold FH (2007) Engineered bidirectional communication mediates a consensus in a microbial biofilm consortium. Proc Natl Acad Sci USA 104: 17300–17304.