Team:Northwestern/Project/Modeling

From 2010.igem.org

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(Future Considerations)
(Results)
 
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=='''Results'''==
=='''Results'''==
 +
 +
==='''1. IPTG Diffusion'''===
 +
 +
First, in order to determine the diffusion of IPTG when applied (sprayed) at the top layer throughout the biofilm, Fick's Diffusion equation was used to create a finite-time-differential mathematical model, which is graphically displayed below.
[[Image:loopydoops.gif]]
[[Image:loopydoops.gif]]
 +
Once sprayed, the model predicts that the IPTG diffuses down the biofilm and stabilizes throughout the biofilm layer.
 +
 +
 +
==='''2. Effect of Inducer on Product Generation'''===
 +
 +
As inducer levels are easily experimentally adjustable, we wanted to know the effect of the adjustment.
 +
 +
[[Image:NUigemmodeling1.jpg]]
 +
 +
In the figure, the blue line represents product levels when induced and the green line represents product levels when not induced.
 +
 +
As shown above, the model predicts that induction leads to higher product levels.
 +
 +
 +
==='''3. Effect of Repressor on Product Generation'''===
 +
 +
Repressor levels are also experimentally adjustable by changing the repressor producing segment of the part, and so we wanted to know the effect of the adjustment.
 +
 +
[[Image:NUigemmodeling2.jpg]]
 +
 +
In the figure above, the green line represents product levels with the assumed repressor level and the blue line represents product levels when the repressor level is doubled.
 +
 +
The figure is a bit misleading, as a system with different repressor levels will have a different initial steady state. Regardless, the model predicts that more repressor leads to significantly less product.
 +
 +
 +
==='''4. Effect of Promoter on Product Generation'''===
 +
 +
The promoter preceding the gene can be changed to different promoters, and we wanted to know the effect of this adjustment.
 +
 +
[[Image:NUigemmodeling3.jpg]]
 +
 +
In the figure above, the blue line represents product with the assumed rate constant for transcription (which would be affected by the promoter) and the green line represents product when that value is doubled.
 +
 +
As shown above, the model predicts that a more efficient promoter would increase product production.
 +
 +
==='''5. Effect of Ribosome Binding Site on Product Generation'''===
 +
 +
The Ribosome Binding Site preceding the gene can be changed to different Ribosome Binding Sites, and we wanted to know the effect of this adjustment.
 +
 +
[[Image:NUigemmodeling4.jpg]]
 +
 +
In the figure above, the green line represents product with the assumed rate constant for translation (which would be affected by the ribosome binding site) and the blue line represents product when that value is doubled.
 +
 +
As shown above, the model predicts that a more efficient ribosome binding site would increase product production.
 +
 +
==='''6. Effect of DNA Copy Number on Product Generation'''===
 +
 +
The DNA part could be ligated into a different plasmids with varying copy numbers; we wanted to know the effect of this adjustment.
 +
 +
[[Image:NUigemmodeling5.jpg]]
 +
 +
In the figure above, the blue line represents product with the assumed DNA concentration value (which would be affected by the plasmid copy number) and the green line represents product when that value is doubled.
 +
 +
As shown above, the model predicts that varying copy numbers would vary product production.
=='''Future Considerations'''==
=='''Future Considerations'''==
Line 290: Line 348:
*Currently the model only predicts only a 10% increase in product when induced by what is suspected to be a significant concentration of inducer.
*Currently the model only predicts only a 10% increase in product when induced by what is suspected to be a significant concentration of inducer.
*The model assumes constant substrate production rate; this assumption may or may not be accurate.
*The model assumes constant substrate production rate; this assumption may or may not be accurate.
 +
=='''References'''==
=='''References'''==

Latest revision as of 02:58, 28 October 2010


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Modeling Chassis Induction Chitin Apoptosis

Introduction / Objective

The general objective of our experimental system is to perform the following functions:

  • Differentiate protein production between the top and bottom layer of the biofilm based on a diffusion-gradient inducer.
  • Respond to varying Repressor production levels
  • Respond to varying IPTG Induction levels
  • Respond to varying Promoters
  • Respond to varying Ribosome Binding Sites
  • Respond to varying Copy Number Plasmids

The objective of our model is to explore and characterize the system, and the effect of parameter modulation on the system.

In terms of our iGEM project, this model was employed to explore the effect of IPTG concentration and diffusion, lacI concentration (determined by the combination part of constitutive promoter, ribosome binding site, lacI gene, double terminator, lac promoter/operon), and the ribosome binding site (of the final product-producing enzyme) on the concentrations of all species involved - described in the following sections - and especially on Chitin Synthase and Chitin concentration and the corresponding rates.

Model Development

The following schematic summarizes the mathematical model we formulated to describe our system.

SuperModeling.jpg


Variables

  • Iex: External Inducer, determined by diffusion through Fick's law (IPTG in our experiment)
  • Iin: Internal Inducer (IPTG)
  • Ii: Inducer bound to Repressor (IPTG bound to lacI)
  • i: Repressor (lacI)
  • Db: Repressor-bound DNA (lacI-bound DNA(CHS3) region in plasmid)
  • Dunb: transcribe-able or Repressor-unbound DNA (lacI-unbound DNA(CHS3))
  • Re: mRNA for Enzyme (CHS3 mRNA)
  • E: Enzyme (CHS3)
  • S: Substrate (N-Acetyl Glucosamine)
  • C: Enzyme Substrate Complex (CHS3-(N-Acetyl-Glucosamine)-Chitin or (NAG)n Complex)
  • P: Protein Product (Chitin or (NAG)n+1)


Constants

Rate Constants:

  • kIin - Inducer diffusion into cell from surrounding environment
  • kIout - Inducer diffusion out of cell to surrounding environment
  • kIif - Inducer and Repressor binding to form Inducer-Repressor Complex
  • kIir - Inducer-Repressor Complex unbinding to form Inducer and Repressor
  • kDbf - Repressor binding to DNA to form DNA-Repressor Complex
  • kDbr - DNA-Repressor Complex unbinding to form free unbound DNA
  • ktcribe - transcription
  • ktlate - translation
  • ksin - endogenous substrate production
  • kCf - Substrate-Enzyme Complex Formation
  • kCr - Substrate-Enzyme Complex unbinding to form Substrate and Enzyme
  • kP - Substrate-Enzyme Complex forming Product and Enzyme
  • kEdeg - Enzyme Degredation
  • kRdeg - RNA Degredation
  • kPdeg - Protein Degredation


Equations

The differential of the variables were found as follows:

  • dIin/dt = kIin*Iex - kIex*Iin + kIir*Ii - kIif*Iin*i
  • dIi/dt = kIif*Iin*i - kIir*Ii
  • di/dt = kIir*Ii - kIif*Iin*i + kDbr*Db - kDbf*i*Dunb
  • dDb/dt = kDbf*i*Dunb - kDbr*Db
  • dDunb/dt = kDbr*Db - kDbf*i*Dunb
  • dRe/dt = ktscribe*Dunb - kRdeg*Re
  • dE/dt = ktslate*Re - kEdeg*E + kCr*CC + kP*CC - kCf*E*Si
  • dSi/dt = ksin*So - kCf*E*Si + kCr*CC
  • dCC/dt = kCf*E*Si - kCr*CC - kP*CC
  • dP/dt = kP*CC - kPdeg*P


Assumptions

In order to determine the initial or steady state concentrations of the involved species and to determine the rate constants, the following assumptions were made:


IPTG Diffusion

First, Fick's Law of Diffusion was modeled through MATLAB. The diffusion constant used was 220um^2/s.[4]

It was assumed that IPTG was not consumed nor degraded

We also assumed that IPTG uptake was minor was compared to the concentration in the biofilm, and so that the external IPTG was determined solely by Fick's Law, not by internalization.


Constant Determination

Initially, the following initial concentration values were assumed:

  • Iex: Described in the previous section
  • Iin: Internal IPTG initially assumed to be 0
  • Ii: 0, because no IPTG means IPTG-repressor complex
  • i: Value acquired from [5] as between 10^-5 and 10^-4 and adjusted to 9.973*10^-5
  • Db: Calculated, knowing the expression vector is a 200 copy number plasmid; of the DNA, approximated that 90.08% is bound
  • Dunb: Calculated, knowing the expression vector is a 200 copy number plasmid; of the DNA, approximated that 9.92% is bound
  • Re: Determined to be 1.82735*10^-4 by achieving steady state with the model
  • E: Determined to be 6.08*10^-4 by achieving steady state with the model
  • So: External Substrate calculated by using amount added in enriched media as 33.9
  • Si: Determined from [3] to be 10^-1
  • C: Determined to be 3*10^-5by achieving steady state with the model
  • P: Determined to be 1*10^-4 by achieving steady state with the model

The rate constant values were assumed to be the following:

  • kIin: .05 yielded reasonable diffusion times
  • kIex: .05 since simple diffusion, the internal rate constant must be similar if not identical to the external rate constant
  • kIif: .01 yielded reasonable repressor/Inducer interactions
  • kIir: .01 yielded reasonable repressor/Inducer interactions
  • kDbf: 100 yielded reasonable DNA/repressor interactions
  • kDbr: .0011 yielded reasonable DNA/repressor interactions
  • ktscribe: .01 yielded reasonable production levels
  • ktslate: .01 yielded reasonable production levels
  • kRdeg: .003 yielded reasonable degredation
  • kEdeg: .003 yielded reasonable degredation
  • kPdeg: .003 yielded reasonable degredation
  • ksin: 0.000000009 yielded reasonable internalization of substrate
  • kCf: .01 yielded reasonable production levels
  • kCr: .01 yielded reasonable production levels
  • kP: .01 yielded reasonable production levels

Results

1. IPTG Diffusion

First, in order to determine the diffusion of IPTG when applied (sprayed) at the top layer throughout the biofilm, Fick's Diffusion equation was used to create a finite-time-differential mathematical model, which is graphically displayed below.

Loopydoops.gif

Once sprayed, the model predicts that the IPTG diffuses down the biofilm and stabilizes throughout the biofilm layer.


2. Effect of Inducer on Product Generation

As inducer levels are easily experimentally adjustable, we wanted to know the effect of the adjustment.

NUigemmodeling1.jpg

In the figure, the blue line represents product levels when induced and the green line represents product levels when not induced.

As shown above, the model predicts that induction leads to higher product levels.


3. Effect of Repressor on Product Generation

Repressor levels are also experimentally adjustable by changing the repressor producing segment of the part, and so we wanted to know the effect of the adjustment.

NUigemmodeling2.jpg

In the figure above, the green line represents product levels with the assumed repressor level and the blue line represents product levels when the repressor level is doubled.

The figure is a bit misleading, as a system with different repressor levels will have a different initial steady state. Regardless, the model predicts that more repressor leads to significantly less product.


4. Effect of Promoter on Product Generation

The promoter preceding the gene can be changed to different promoters, and we wanted to know the effect of this adjustment.

NUigemmodeling3.jpg

In the figure above, the blue line represents product with the assumed rate constant for transcription (which would be affected by the promoter) and the green line represents product when that value is doubled.

As shown above, the model predicts that a more efficient promoter would increase product production.

5. Effect of Ribosome Binding Site on Product Generation

The Ribosome Binding Site preceding the gene can be changed to different Ribosome Binding Sites, and we wanted to know the effect of this adjustment.

NUigemmodeling4.jpg

In the figure above, the green line represents product with the assumed rate constant for translation (which would be affected by the ribosome binding site) and the blue line represents product when that value is doubled.

As shown above, the model predicts that a more efficient ribosome binding site would increase product production.

6. Effect of DNA Copy Number on Product Generation

The DNA part could be ligated into a different plasmids with varying copy numbers; we wanted to know the effect of this adjustment.

NUigemmodeling5.jpg

In the figure above, the blue line represents product with the assumed DNA concentration value (which would be affected by the plasmid copy number) and the green line represents product when that value is doubled.

As shown above, the model predicts that varying copy numbers would vary product production.

Future Considerations

Although the this model, as shown, captures the topology of our engineered network, its predictive prowess can be improved by obtaining constants and parameters from empirical observations.

In acquiring data, using the actual Chitin vector would be most helpful, but if not viable, then an alternative method is to characterize the system using GFP instead of CHS3 and fluorescence as an indicator of product generation. The resulting data could be used to fit the parameters of the model.

Possible future work:

  • Currently the model predicts the final product expression level between the top layer and bottom layer of a gradient-induced system as only about 0.00001%. Determine if this is primarily due to model inaccuracy or the inefficacy of diffusion-based layer differential induction method.
  • Currently the model only predicts only a 10% increase in product when induced by what is suspected to be a significant concentration of inducer.
  • The model assumes constant substrate production rate; this assumption may or may not be accurate.


References

1. A novel structured kinetic modeling approach for the analysis of plasmid instability in recombinant bacterial cultures

William E. Bentley, Dhinakar S. Kompala Article first published online: 18 FEB 2004 DOI: 10.1002/bit.260330108 http://onlinelibrary.wiley.com/doi/10.1002/bit.260330108/pdf


2. Mathematical modeling of induced foreign protein production by recombinant bacteria

Jongdae Lee, W. Fred Ramirez Article first published online: 19 FEB 2004 DOI: 10.1002/bit.260390608 http://onlinelibrary.wiley.com/doi/10.1002/bit.260390608/pdf


3. Pool Levels of UDP N-Acetylglucosamine and UDP NAcetylglucosamine-Enolpyruvate in Escherichia coli and Correlation with Peptidoglycan Synthesis

DOMINIQUE MENGIN-LECREULX, BERNARD FLOURET, AND JEAN VAN HEIJENOORT* E.R. 245 du C.N.R.S., Institut de Biochimie, Universit' Paris-Sud, Orsay, 91405, France Received 9 February 1983/Accepted 15 March 1983 http://www.ncbi.nlm.nih.gov/pmc/articles/PMC217602/pdf/jbacter00247-0262.pdf


4. Diffusion in Biofilms

Philip S. Stewart Center for Biofilm Engineering and Department of Chemical Engineering, Montana State University–Bozeman, Bozeman, Montana, 59717-3980 http://www.ncbi.nlm.nih.gov/pmc/articles/PMC148055/pdf/0965.pdf


5. Regulation of the Synthesis of the Lactose Repressor

PATRICIA L. EDELMANN' AND GORDON EDLIN Department of Genetics, University of California, Davis, California 95616 Received for publication 21 March 1974 http://www.ncbi.nlm.nih.gov/pmc/articles/PMC245824/pdf/jbacter00335-0105.pdf


MATLAB m-file

%IPTG PREDETERMINATION
%finite difference method
%diffusion equation (Fick's 2nd Law)
%c=c0*(erfc*x/sqrt(2*D*t))
%D*(Ci+1-2C+Ci-1)/dx^2 = Ci/dt
%x goes from 0 (top) to 100 micrometers

%D=IPTG is a modified monosaccharide, so we can estimate from Table 1 that
%its diffusion coefficient in water at 25°C will be ca. 6.5 × 10?6 cm2 s?1.
%Scaling to 37°C and taking De/Daq to be 0.25, De is found to be 2.2 × 10?6 cm2 s?1
%http://www.ncbi.nlm.nih.gov/pmc/articles/PMC148055/

%%
clear
clc
%INITIALIZE
D=220; %um^2/s
c0=14.298; %mg so 3ml spray of 20mM iptg
%in comparison 23.83mg of iptg is in 5ml 20mM
dx=1; %um
xmax=100; %um; 100um total
dt=.002; %s
tmax=10; %s; 1 hour total
C=zeros(xmax/dx,tmax/dt); %rows = same time %also, (x,t) x is row, t is column
C_Rate=zeros(xmax/dt,1);
C(1,1)=c0;
%Time Step
for t=1:1:tmax/dt-1; %s
for x=1:1:(xmax/dx) %um
if x==1%account for x=1 boundary condition
C_Rate(x)=D*(C(x+1,t)-C(x,t))/(dx^2);
elseif x==xmax/dx %account for x=xmax boundary condition
C_Rate(x)=D*(C(x-1,t)-C(x,t))/(dx^2);
else%BULK
C_Rate(x)=D*(C(x-1,t)+C(x+1,t)-2*C(x,t))/(dx^2);
end
C(x,t+1)=C(x,t)+C_Rate(x)*dt;
end
t*.002
end
%%
%Compile into 1s parts
%newC=zeros(100,tmax/dt/500);
counts=1;
for t=1:500:tmax/dt-1 %.002*x=1;
newC(:,counts)=C(:,t);
counts=counts+1;
end
%%
%visualize newC
for t=1:1:tmax/dt/500
XX=0:dx:xmax-dx;
YY=newC(:,t);
plot(XX,YY,'k.');
axis([0 100 0 2])
text(50,1.8,sprintf('Time is: %g s', t*dt));
text(50,1.7,sprintf('IPTG Mass balance is: %g mg', sum(C(:,t))));
xlabel('Distance from surface (um)')
ylabel('IPTG (mg)')
Mov(t)=getframe();
%pause(1);
end
%%

%VISUALIZE
blah=1;
for t=1:7:tmax/dt
XX=xmax-dx-100:-dx:0-100;
YY=C(:,t);
plot(YY,XX,'k.');
axis([0 2 -100 0])
text(1.2,-30,sprintf('Time: %g s', t*dt));
%text(50,1.7,sprintf('IPTG Mass balance is: %g mg', sum(C(:,t))));
ylabel('Distance from surface (um)')
xlabel('IPTG (mg)')
VID(blah)=getframe(gcf);
blah=blah+1;
end


% Updated kinetics model
%{
Iex - external inducer or iptg
Iin - internal inducer or iptg
Ii - lac inhibitor / iptg complex
i - lac inhibitor
Db - DNA bound to inhibitor
Dunb - DNA not bound to inhibitor
R - mRNA
E - Enzyme Chitin Synthase
So - External Substrate - N-Acetyl Glucosamine
Si - Internal Substrate - N-Acetyl Glucosamine
CC - Enzyme Substrate Complex
P - Protein - Chitin
%}
dt=1;
tmax=3600;
dx=1;
xmax=100;
%General Array Structure: (Depth (um), Time (s))
%Depth = 0-100 micrometers
%Time = 0- 3600 seconds
preset=zeros(xmax,tmax);
Iin=preset;Ii=preset;i=preset;Db=preset;Dunb=preset;Re=preset;E=preset;Si=preset;CC=preset;P=preset;

%initial concentration
a=load('newC.mat'); %Iex is diff - assume cell intake << exist
Iex=zeros(100,3600);%a.newC();%
Iin(:,1)=0; %initially IPTG inside the cell is 0
Ii(:,1)=0; %no iptg, no Ii
i(:,1)=0.9973*10^-4; %10^-7 to 10^-8 M which is 10^-4 to 10^5 mM http://www.ncbi.nlm.nih.gov/pmc/articles/PMC245824/pdf/jbacter00335-0105.pdf
%DNA - partsregistry - 200 copy number - 200/(6.23*10^-23)/(6*10^-16
%volume)*1000 = 5.53*10^-4mM
dper=0.9008;
Db(:,1)=5.53*dper*10^-4; %say 90% is bound no idea
Dunb(:,1)=5.53*(1-dper)*10^-4; %say 10% unbound no idea
Re(:,1)=1.82735*10^-4; %initially, no RNA
E(:,1)=6.08*10^-4; %initially no enzyme
So=33.9; %1 pill per plate ~ 750mg/100ml /221.21g/mol /1000*1000*1000 is 33.9mM
Si(:,1)=10^-1; %http://www.ncbi.nlm.nih.gov/pmc/articles/PMC217602/pdf/jbacter00247-0262.pdf
CC(:,1)=3*10^-5; %initially 0
P(:,1)=1*10^-4; %initially 0

%rate constants
kIin=.05;%safe to say diffuses within minutes
kIex=.05;%permeability must be similar
kIif=.01;
kIir=.01;
kDbf=100;
kDbr=.0011;
ktscribe=.01;
ktslate=.01;
kRdeg=.003;
kEdeg=.003;
kPdeg=.003;
ksin=0.000000009;
kCf=.01;
kCr=.01;
kP=.01;

%Begin Loop
%FILL IN THE BLANKS
%General Array Structure: (Depth (um), Time (s))
for tt=1:1:tmax/dt-1
for xx=1:1:xmax/dx
%Predetermine diffusion
%dIex=DIF(xx,tt) + kIin*Iin(xx,tt) - kIex*Iex(xx,tt);
dIin=kIin*Iex(xx,tt) -kIex*Iin(xx,tt) +kIir*Ii(xx,tt) -kIif*Iin(xx,tt)*i(xx,tt);
dIi=kIif*Iin(xx,tt)*i(xx,tt) -kIir*Ii(xx,tt);
di=kIir*Ii(xx,tt) -kIif*Iin(xx,tt)*i(xx,tt) +kDbr*Db(xx,tt) -kDbf*i(xx,tt)*Dunb(xx,tt);
dDb=kDbf*i(xx,tt)*Dunb(xx,tt) -kDbr*Db(xx,tt);
dDunb=kDbr*Db(xx,tt) -kDbf*i(xx,tt)*Dunb(xx,tt);
dRe=ktscribe*Dunb(xx,tt) -kRdeg*Re(xx,tt);
dE=ktslate*Re(xx,tt) -kEdeg*E(xx,tt) +kCr*CC(xx,tt) +kP*CC(xx,tt) -kCf*E(xx,tt)*Si(xx,tt);
dSi=ksin*So -kCf*E(xx,tt)*Si(xx,tt) +kCr*CC(xx,tt);
dCC=kCf*E(xx,tt)*Si(xx,tt) -kCr*CC(xx,tt) - kP*CC(xx,tt);
dP=kP*CC(xx,tt) -kPdeg*P(xx,tt);

%Iex(xx,tt+1)=Iex(xx,tt)+dIex*dt;
Iin(xx,tt+1)=Iin(xx,tt)+dIin*dt;
Ii(xx,tt+1)=Ii(xx,tt)+dIi*dt;
i(xx,tt+1)=i(xx,tt)+di*dt;
Db(xx,tt+1)=Db(xx,tt)+dDb*dt;
Dunb(xx,tt+1)=Dunb(xx,tt)+dDunb*dt;
Re(xx,tt+1)=Re(xx,tt)+dRe*dt;
E(xx,tt+1)=E(xx,tt)+dE*dt;
Si(xx,tt+1)=Si(xx,tt)+dSi*dt;
CC(xx,tt+1)=CC(xx,tt)+dCC*dt;
P(xx,tt+1)=P(xx,tt)+dP*dt;

end
tt*dt/tmax*100
end