Team:British Columbia/Modeling

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<img id="overviewpic" src="https://static.igem.org/mediawiki/2013/b/b2/UBC_Model-PhageControl.png">
 
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=Population Dynamics Modeling=
=Population Dynamics Modeling=
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Mixed cultures are often used in bioprocessing, where the quality of the final product requires optimal strain balance. We realized that mixed cultures harbouring different CRISPR assemblies could be modulated by applying selective pressure against targeted strains via phage addition. This provides a novel opportunity for tuning bacterial consortia, directly applicable to industrial bioprocesses such as yogurt production that rely on mixed culture fermentation. Here, we develop analytical and numerical models to provide a predictive framework for optimizing strain balance within mixed populations. We then extend this model to allow for optimization of product formation, such as flavouring of yogurt.
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<img src="https://static.igem.org/mediawiki/2013/b/b2/UBC_Model-PhageControl.png" width="500px">
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<br/><b>Figure 1:</b> Schematic of the model system where both strains are immunized against common environmental phages and the abundance of one can be modulated by the addition of a control phage.
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Our main objectives were as follows:
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Mixed cultures are often used in bioprocessing, where the quality of the final product requires optimal strain balance. We realized that mixed cultures harbouring different CRISPR assemblies could be modulated by applying selective pressure against targeted strains via phage addition. This provides a novel opportunity for tuning bacterial consortia, directly applicable to industrial bioprocesses such as yogurt production that rely on mixed culture fermentation. Here, we develop deterministic and probabilistic models to provide a predictive framework for optimizing strain balance within mixed populations. We then extend this model to allow for optimization of product formation, such as flavouring of yogurt.
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#Predict the growth of recombinant E. coli cultures under phage predation.
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<br>
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#Predict caffeine production based on initial number of viruses, (ie. multiplicity of infection; MOI).
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Our main objectives were to:
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#Predict the growth of mono- and mixed- recombinant ''E. coli'' cultures under phage predation.
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#Predict vanillin and cinnamaldehyde production based on initial ratio of phage-to-bacteria, (ie. multiplicity of infection; MOI).
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To help conceptualize our model, we first generated the schematic shown in Figure 1. For simplicity, we considered two e.coli strains each harbouring two plasmids: a flavouring plasmid and a CRISPR (or "immunity") plasmid. Here, the flavouring plasmid is responsible for the production of either cinnamaldehyde or vanillin and the CRISPR plasmid contains unique spacer elements, granting the strain immunity against "environmental phage" that may contaminate the bioreactor. Additionally, one strain would be immunized against the "control phage" allowing us to modulate the population with phage targeting the un-immunized strain.
 
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===Modeling bacteria growth under phage predation===
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The schematic for the final model is illustrated in figure 1. We considered two ''E. coli'' strains, each harbouring two plasmids: a flavouring plasmid and a CRISPR (or "immunity") plasmid. Here, the flavouring plasmid is responsible for the production of either cinnamaldehyde or vanillin and the CRISPR plasmid contains unique spacer elements, granting both strains immunity against "environmental phage" that may contaminate the bioreactor. Additionally, one strain would be immunized against the "control phage", where the other strain would remain susceptible. This construction would allow us to tune the susceptible population in order to achieve our desired flavouring proportions, based on the amount of control phage added.
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An analytical model based on Monod kinetics [1] was used to describe bacterial growth. Here, the Poisson distribution was incorporated to model the infected populations based on a starting phage-to-bacteria ratio, or MOI. We trained the model on a set of experimental growth curves and validated it against a separate set. Yield terms were added to account for the production of two different flavours: cinnamaldehyde and vanillin. Next, we extended our basic growth model to include bacterial co-cultures. Using this approach, we demonstrate that by using different virus inoculums, it is possible to achieve different final amounts of compounds from a mixed culture.
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===Simulating virus-mediated population control===
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To simulate the behaviour of cells growing in mixed populations, we numerically modeled the co-cultures of two flavouring product strains using the cell programming language "gro" [2]. The model considers two strains of bacteria on a two-dimensional surface under phage predation. One of the strains is immune to infection, whereas the other is susceptible.
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=Model Formulation=
=Model Formulation=
===Assumptions===
===Assumptions===
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#Bacteria is grown in a batch culture and follows the Monod growth equation.
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#Bacteria are grown in a batch culture and follow the Monod growth equation.
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#Bacteria with the CRISPR are nearly 100% immune to the specific phage infection.
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#Bacteria harbouring the CRISPR assembly are 100% immune to the specific phage infection (based on spacer element).
#Bacteria without CRISPR system are completely susceptible to phage infection.
#Bacteria without CRISPR system are completely susceptible to phage infection.
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#Yield coefficients and phage attachment coefficients are constants.
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#Yield coefficients and phage attachment coefficients are constant.
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#Bacterial phages do not decrease significantly in number during the course of an experiment.
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#Bacteriophage do not decrease significantly in number during the course of an experiment.
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#All considered bacterial phages are lytic.
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#All considered bacteriophages are lytic.
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== Deterministic Model - modeling bacterial growth under phage predation==
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A deterministic model based on Monod kinetics [1] was used to describe bacterial growth. Here, the Poisson distribution was incorporated to model the infected populations based on a starting phage-to-bacteria ratio, or MOI. We trained the model on a set of experimental growth curves and validated it against a separate set. Yield terms were added to account for the production of two different flavours: cinnamaldehyde and vanillin. Next, we extended our basic growth model to include bacterial co-cultures. Using this approach, we demonstrate that by using different virus inoculums, it is possible to achieve different final amounts of compounds from a mixed culture.
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== Analytical Model==
 
===Bacteria Growth===
===Bacteria Growth===
We begin with a populations balance for a given strain $X$,
We begin with a populations balance for a given strain $X$,
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\end{align}
\end{align}
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Where $\mu_{X}$ is the bacterial growth rate, $\mu_{max, X}$ is the maximum bacterial growth rate, $S$ is the growth limiting substrate and $K_s$ is the amount of substrate remaining when the growth rate is half of maximum. Due to environmental factors, some bacteria will die; the death rate ($k_d$) is assumed to be directly proportional to the bacteria population. A lag phase is modelled by multiplying a dampening term to the growth rate, namely $(1 - e^{-\alpha t})$, where $\alpha$ is defined as a proportionality constant. The slowing of growth from exponential to stationary is modelled with yet another dampening term to be multiplied to the growth: $exp\big[{-\big(\frac{X}{X_c}\big)^m\big]}$. This dampening term is related to the quorom sensing in bacteria, once the bacteria reach some characteristic concentration ($X_c$) the bacteria begin to slow down growth. Thus the uninfected cell growth is described by:
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Where $\mu_{X}$ is the bacterial growth rate, $\mu_{max, X}$ is the maximum bacterial growth rate, $S$ is the growth limiting substrate and $K_s$ is the amount of substrate remaining when the growth rate is half of maximum. Due to environmental factors, some bacteria will die; the death rate ($k_d$) is assumed to be directly proportional to the bacteria population. A lag phase is modelled by multiplying a dampening term to the growth rate, namely $(1 - e^{-\alpha t})$, where $\alpha$ is defined as a proportionality constant. The slowing of growth from exponential to stationary is modelled with yet another dampening term to be multiplied to the growth: $exp\big[{-\big(\frac{X}{X_c}\big)^m\big]}$. This dampening term is related to the quorom sensing in bacteria; once the bacteria reach some characteristic concentration ($X_c$) the bacteria begin to slow down growth. Thus the uninfected cell growth is described by:
\begin{align}
\begin{align}
\frac{dX_u}{dt} = \big( \mu_{X, u}e^{-\big(\frac{X}{X_c}\big)^m} - k_{d_{X,u}} \big) X_u\big(1 - e^{-\alpha t}\big)  
\frac{dX_u}{dt} = \big( \mu_{X, u}e^{-\big(\frac{X}{X_c}\big)^m} - k_{d_{X,u}} \big) X_u\big(1 - e^{-\alpha t}\big)  
\end{align}
\end{align}
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For simplicity, in this model, $m$, $X_c$, and $\alpha$ are all to be empirically determined and assumed constant. In reality, each constant is dependent on many variables, for example: $\alpha(temperature, pressure, [substrate], environmental \ conditions, bacterial \ strain, more)$. Similarly for infected cells:
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For simplicity, in this model, $m$, $X_c$, and $\alpha$ are all to be empirically determined and assumed constant. In reality, each constant is dependent on many variables, for example: temperature, pressure, [substrate], environmental conditions, bacterial  strain, and more. Similarly for infected cells:
\begin{align}
\begin{align}
\frac{dX_i}{dt} = \big( \mu_{X, i}e^{-\big(\frac{X}{X_c}\big)^m} - k_{d_{X,i}} \big) X_i\big(1 - e^{-\alpha t}\big) - \delta
\frac{dX_i}{dt} = \big( \mu_{X, i}e^{-\big(\frac{X}{X_c}\big)^m} - k_{d_{X,i}} \big) X_i\big(1 - e^{-\alpha t}\big) - \delta
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Here $N(\tau)$ is a normal distribution over some time $\tau$, in other words, it is expected that the infected population will lyse according to a normal distribution over the domain $(-\tau, \tau)$.  
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Here, $N(\tau)$ is a normal distribution over some time $\tau$, in other words, it is expected that the infected population will lyse according to a normal distribution over the domain $(-\tau, \tau)$.
===Viral Growth===
===Viral Growth===
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It is now necessary to consider the phage population $V$ as it directly affects the amount of bacteria that are infected at any given time. To describe the phage population it is necessary to consider how many phages are released per cell lysis, this number is referred to as the burst size $(\beta)$.  
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It is now necessary to consider the phage population $V$ as it directly affects the amount of bacteria that are infected at any given time. To describe the phage population it is necessary to consider how many phage are released per cell lysis. This number is referred to as the burst size $(\beta)$.  
\begin{align}
\begin{align}
V = V_0 + X_i \beta ^{\frac{t}{LT}}
V = V_0 + X_i \beta ^{\frac{t}{LT}}
\end{align}
\end{align}
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Where $V_0$ is the initial phage populations and $LT$ is the latency time (they time between infection and lysis). However, since lab techniques are tricky to measure the exact phage at various time points as well as the exact amount of infected bacteria, it is desired to simplify the model. It is reasonable to use a stepwise function that describes the amount of free phage present. Also, since the burst size is large, on the order of $100$ [3], we see that the loss of current phage due to infection of cells is small (roughly 1%), thus to simplify computations we consider this to be negligible. With these deductions we arrive at the following:
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Where $V_0$ is the initial phage populations and $LT$ is the latency time (they time between infection and lysis). However, since it is difficult to measure the exact phage at various time points, as well as the exact amount of infected bacteria, it is desired to simplify the model. It is reasonable to use a stepwise function that describes the amount of free phage present. Also, since the burst size is large, on the order of $100$ [3], we see that the loss of current phage due to infection of cells is small (roughly 1%), thus to simplify computations we consider this to be negligible. With these deductions we arrive at the following:  
\begin{align}
\begin{align}
V = V_0 + E(X_i)\beta^{\big[\frac{t}{LT}\big]}
V = V_0 + E(X_i)\beta^{\big[\frac{t}{LT}\big]}
\end{align}
\end{align}
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Where $E(X_i)$ is the expected infected population and $\big[\frac{t}{LT}\big]$ is the largest integer equal or less than $\frac{t}{LT}$. To find the expected infected population, the Poisson distribution is used based on the MOI. However, there is an efficiency of viral attachment $\epsilon \in (0, 1)$  (in fact the efficiency has been found to be a function of certain proteins) [4,5].
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Where $E(X_i)$ is the expected infected population and $\big[\frac{t}{LT}\big]$ is the largest integer equal or less than $\frac{t}{LT}$. To find the expected infected population, the Poisson distribution is used based on the MOI (multiplicity of infection - defined as the ratio of phage-to-bacteria), with a term for efficiency of viral attachment $\epsilon \in (0, 1)$  (in fact the efficiency has been found to be a function of certain proteins) [4,5].
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\begin{align}
\begin{align}
MOI = \frac{V}{X}
MOI = \frac{V}{X}
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===Substrate Utilization===
===Substrate Utilization===
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The bacteria will need to use a substrate, and the depletion of this substrate is proportional to the growth of the uninfected bacteria and the amount of bacteria. Although the infected bacteria do not multiply when infected, the infected cells may use up substrate to gain the energy needed to replicate the phage. Although it may be the case that the bacteria simply recycle intracellular material, a substrate utilization term ($\gamma$) for the infected cells is utilized (if the bacteria do in fact recycle intracellular material, it follows that this value will be 0). Moreover, when cells lyse, the cell materials can be metabolized by other bacteria and will add to the amount of nutrients available. Thus, the equation for substrate utilization rate is:
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Bacteria require a substrate for growth, and the depletion of this substrate is proportional to the growth rate of the uninfected bacteria and the amount of bacteria. Although the infected bacteria do not multiply when infected, the infected cells may consume substrate to generate energy needed to replicate the phage. Although it may be the case that the bacteria simply recycle intracellular material, a substrate utilization term ($\gamma$) for the infected cells is added (if the bacteria do in fact recycle intracellular material, it follows that this value will be 0). Moreover, when cells lyse, the re-solubilized cytoplasmic contents can be metabolized by other bacteria and will add to the amount of nutrients available. Thus, the equation for substrate utilization rate is:
\begin{align}
\begin{align}
\frac{dS}{dt} = - \big[ \frac{\mu_u}{Y_u}X_u + \frac{\gamma}{Y_i}X_i \big] + \phi \delta
\frac{dS}{dt} = - \big[ \frac{\mu_u}{Y_u}X_u + \frac{\gamma}{Y_i}X_i \big] + \phi \delta
\end{align}
\end{align}
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Where $Y_u$ and $Y_i$ are yield constants and $\phi$ is the average amount of substrate released per infected cell during lysis. For clarity, $\delta$ is as described above.
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Where $Y_u$ and $Y_i$ are yield constants and $\phi$ is the average amount of substrate released per infected cell during lysis, $\delta$ has as described above.
===Model Validation===
===Model Validation===
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Although, only limited amounts of growth curves have been able to be analyzed, the initial quantitative results appear promising and the qualitative results have been found to contain information whether or not the quantitative results align. The qualitative curve were especially good at predicting culture collapse (keep in mind that OD measurements will contain "bacterial bones" which will artificially inflate the concentration of bacteria after lysis).
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Although, only limited amounts of growth curves have been able to be analyzed, the quantitative results appear promising and the qualitative results have been found to contain information whether or not the quantitative results align.The model is shown to have powerful predictive capabilities when it comes to a bacteria growth curve not under phage predation.The model also appears to have powerful qualitative predictions for culture collapse under phage predation. However, consistent quantitative predictions for bacteria growing under phage predation has not yet been shown.  Note: as time progresses OD measurements will pick up cellular debris (also referred to as "bacterial bones") which will artificially inflate the concentration of bacteria after lysis - by plating we confirm that the culture does not contain as many viable cells as the OD reads.
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<h4 align = "center"> Figure 1 - Bacteria Growth curves from lag phase to approaching stationary phase. The model was optimized on another set of data and was tested for validity on this set.</h4>
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<h4 align = "center"> Figure 2 - Bacteria growth curves from lag phase to approaching stationary phase. The model was optimized on another set of data and was tested for validity on this set.</h4>
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<h4 align = "center"> Figure 2 - Bacteria Growth under phage predation. In models where the quantitative values differ, there is still qualitative information that can be extracted.</h4>
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<h4 align = "center"> Figure 3 - Bacteria growth under phage predation. In models where the quantitative values differ, there is still qualitative information that can be extracted.</h4>
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<h4 align = "center"> Figure 3 - A better fit for bacteria Growth under phage predation. Also included, the predicted infected and uninfected populations.</h4>
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<h4 align = "center"> Figure 4 - A better fit for bacteria growth under phage predation. Also included are the predicted infected and uninfected populations.</h4>
===Product Formation===
===Product Formation===
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===Extending to Co-culture===
===Extending to Co-culture===
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The end goal of our project is to tune product formation by adding phage to a batch reactor at the same time as having one flavour in constant production. Thus, we must model a two culture system. Let our bacterial cultures be called $X$ and $Z$. Let Z be immunized to the phage with our CRISPR system. Our equations become:
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The end goal of our project is to tune product formation of two or more compounds by adding phage to a batch reactor. Our extension to co-cultures considers the situation where vanillin and cinnamaldehyde strains have both been engineered with "CRISPR immunity" to an environmental phage. Additionally, the vanillin producing strain has been engineered with immunity to a control phage, whereas the cinnamaldehyde is susceptible. Since both strains contain the CRISPR assembly and an engineered metabolic pathway, it is not entirely unreasonable to assume that their growth rates are similar. Let our bacterial cultures be $X$ for cinnamaldehyde and $Z$ for vanillin. Our equations become:
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<br>  
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We used Matlab to solve the system of equations and we plot the resulting product formations over time with different initial MOI's.
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<html><p>We use Matlab to solve this system of equations. This model demonstrates how phage can be used to control product formation. However, to know whether or not the model is representative of our systems behaviour, we must first have a qualitative understanding of our expected results. As the initial MOI increases, the cinnamaldehyde producing strain (susceptible to control phage infection) will collapse faster than at a lower MOI. If we assume that the production rates of vanillin and cinnamaldehyde equal during growth without phage, then we expect the product formation curves to separate with increasing MOI. Figure 5 shows that our model, run at two different MOI's (two orders of magnitude apart), predicts the qualitative trends we were expecting to see.  
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[[File:Theoretical_production.png|600px]]
[[File:Theoretical_production.png|600px]]
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<h4 align = "center"> Figure 4 - Theoretical product formations based on co-culture dynamics. The thicker lines depict a higher MOI than the thinner lines.</h4>
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<h4 align = "center"> Figure 5 - Theoretical product formations based on co-culture dynamics.</h4>
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==Numerical Model==
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==Probabilistic Model==
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For the numerical simulation of co-cultures we utilized the cell programming language gro, developed by the Klavins Lab at the University of Washington [2]. The model considers two strains of bacteria on a two dimensional plane under attack of one virus. One strain has the CRISPR element and is immune to infection whereas the other is susceptible. In the simulation, susceptible bacteria entering regions with high phage concentrations are very likely to become infected and upon lysis increase the phage concentration of that region.
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For the probabilistic simulation of co-cultures we utilized the cell programming language gro, which was developed by the Klavins Lab at the University of Washington [2]. The model considers two strains of bacteria on a two-dimensional plane under attack of one virus. One strain (green) contains a specific spacer element for the "control" phage and is granted immunity, whereas the other strain (yellow) is susceptible to phage infection. In the simulation, susceptible bacteria entering regions with high phage concentrations are very likely to become infected and upon lysis increase the phage concentration of that region. Below is a timeseries illustrating the control of susceptible cells with phage addition over the course of one batch cycle. Here, the amount of viable susceptible cells remaining over time can be controlled by adjusting the starting phage-to-bacteria ratio, allowing for optimal product formation. 
<center>
<center>
[[File:UBC_Model-Gro.png|900px]]
[[File:UBC_Model-Gro.png|900px]]
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The video of the above simulation is presented below:
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===Bioreactor Design===
 
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Bioreactors are a specialized type of reactor that use cells to produce products of interest, and have become a ubiquitous tool in the bioprocess industry [1]. We wanted to apply our model to a more industrially applicable situation. The goal of this design is to produce 1,500 kg/year of cinnamaldehyde throughout the course of 320 operational days, operating 24 hours a day and 7 days a week. The growth rate of E.coli Additionally, each fermentation cycle would be composed of 5 phases: lag (no cell growth or product production), batch (constant volume, no inflow of substrate), fed-batch (introduction of glucose feed to keep substrate concentration constant), continuous (equal flow into and out of the reactor keeping volume, and constant substrate concentration), and production phase (product production, with negligible growth rate).
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The fermenter itself was kept at 30 ˚C, pH 6.8 (via alkaline buffer control), and the following assumptions were made: negligible cell death, sterile substrate feed, well-mixed reactor, foam level controlled automatically and does not affect liquid volume, product production only after induction, tank is aluminum oxide, requires added cooling jacket and coil system, and negligible heat loss to the surroundings. Moreover, glucose was used at the substrate of choice (300 g/L feed solution).
 
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At maximum cell density the heat load was 3,684,983 kJ/h, which required an internal cooling coil length of 997 m, with a 12 ˚C water flow rate of 5105.98 and 35388.15 L/hr for the jacket and internal coils respectively. The reactor has a volume of 16.7 m3, a diameter of 1.78 m, and a pressure of 1 atm. 4 Rushton impellers are utilized. The kLa determined for this fermentation process is 1974.36 hr-1.
 
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The biomass and substrate utilization equations were derived, using the following overall mass balance equation for the reactor system:
 
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\begin{align}
 
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V \frac{dS}{dt} = FS_0 - FS - V \mu X \frac{1}{Y_{X/S}} - Vq_pX\frac{1}{Y_{X/S}}
 
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\end{align}
 
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Where $V$ is the volume of the bioreactor ($L$), $\frac{dS}{dt} is the substrate utilization rate ($in g L^{-1} s^{-1}$),$F$ is the flow rate in ($L h^{-1}$), $\mu$ is is the growth rate ($h^{-1}$), $Y_{X/S}$ is the yield coefficient of biomass with respect to substrate, $q_p$ is the specific oxygen uptake rate ($hr^{-1}$).
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Using equations in the mono-culture growth section we model start up of the bioreactor in both lag and batch phases. Once the fed batch phase begins we use the growth equation:
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\begin{align}
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\frac{dX}{dt} &= X\big(\mu - \frac{F}{V}\big)\\ \ \\
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\frac{F}{V} &= \frac{\mu X}{Y_{X/S} \Delta S}
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Substituting $\frac{F}{V}$ in to the first equation, and integrating we obtain the following expression for bacterial population:
 
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X(t) = \frac{\big( \Delta S - Y_{X/S}\big)e^{CS + t\mu}} {e^{CY_{X/S}}\big(-e^{CY_{X/S} + t\mu}\big)}
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\end{align}
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Where C is the constant of integration, and determined to be ¬¬–0.0123 at t=0 when X0=7.75 g/L (X at the end of batch phase). Use equation (8) to determine the volume as a function of time.
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\begin{align}
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Model Formulation:
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\frac{dV}{dt} &= F = \frac{V\mu X}{Y_{X/S} \Delta S}\\
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Joel Kumlin, Chris Lawson, Joe Ho
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V(t) &= \frac{C}{\big(39.604 - e^{0.3t}\big)^{2.5}}
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\end{align}
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Where C is the constant of integration, and solved to be ~1.13x108 for an initial working volume of 12,301 L at t=0. Equation (9) was also used for continuous phase, as the dilution factor would be the same whether the total volume was increasing, or the outflow was equal to the inflow (though the continuous phase volume was constant). It is important to note that the time (t) was defined to be the 0 at the start of batch and fed-batch phase; that is to say that t is the time for each phase, not the total fermentation time. These equations produce the following fermentation data:
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[[File:Final fermentation graph.png|900px]]
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Cooling System Design:
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Initially, a cooling jacket system was selected due to the fact that it is both cost effective and does not interfere with reactor cleaning, which could potentially decrease the turnaround time after fermentation. However, it was discovered that a cooling jacket alone was not sufficient to remove the amount of heat produced at peak cell densities, where the heat load was 3,684,983 kJ/h. Therefore, a helical internal cooling coil was added, despite the potential cleaning difficulties, to address the high production rate of heat. The required internal cooling coil was 997 m long, with a 12 ˚C water flow rate of 5105.98 and 35388.15 L/hr for the jacket and internal coils respectively.
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These values were calculated first using the Nussel number for both the jacket and coil, which were then used to calculate the overall thermal conductivity and subsequently the overall rate of heat transfer. From this the heat transfer coefficient U is determined to be 1149.84 W/(Km2).
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It is important to note that although there is resistance to oxygen transport in every step of the above process, it is reasonable to assume that the predominant resistance lies in the stagnant liquid film around the gas bubble. This assumption is valid due to the much smaller surface area to volume ratio when comparing the gas bubble stagnant region with the cell aggregate stagnant region (the cell has a much larger surface area to volume ratio, and thus more area to transport oxygen per unit cell volume) (Kim & Chang, 1989). Using this assumption the following equation can be produced:
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\begin{align}
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OTR=\frac{dC}{dt} =k_L a(C_s-C)
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\end{align}
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Where $OTR$ is the oxygen transfer rate, $C$ is the dissolved oxygen concentration in the bulk liquid, $C_s$ is the oxygen concentration in the liquid film, $k_L$ is the liquid-phase mass transfer coefficient, and a is the specific gas-liquid interfacial area. kL and a are often combined into one coefficient kLa, since they are difficult to measure individually (Shuler & Kargi, 2002).
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The kLa is determined through the following relationship between kLa and kGa, the oxygen mass transfer coefficient through the gas film. H has a value of 2.79 x 10-2 atm m3 g-1. kGa is often 2 orders of magnitude larger than kLa since mass transfer through the liquid film is the slowest part of the transfer of oxygen into the bulk liquid.
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\begin{align}
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k_L = H k_G a
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-
\end{align}
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Meanwhile, kGa was calculated using the following formula:
+
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+
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\begin{align}
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k_L a = \big( 2.0 + 2.8n_i \big)\bigg( \frac{P_g}{V_L}\bigg)^{0.77} u_G^{0.66}
+
-
\end{align}
+
-
 
+
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Where Pg/VL is the gassed power per unit volume of liquid and ni is the number of impellers, 6 in this case.
+
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As mentioned in the design specifications, the following equation was used to calculate oxygen requirements per unit biomass.
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Equation (4) is a macroscopic approximation of cellular metabolism, neglecting the complex microscopic material balance. Nonetheless, it provides a good approximation of the E. coli cellular metabolism of glucose (C6H12O6) used in this design. For complete derivation of oxygen consumption requirements, including derivation of oxygen consumption rate as a function of time, please refer to appendix A.
+
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Heating System:
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A cooling system consisting of internal cooling coils and a cooling jacket was added to this system to keep the reactor at near 30 C.
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\begin{align}
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Q_tot = Q_met + Q_mech
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\end{align}
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Where Qmet is the heat generated to metabolic activity and has units of J/s:
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\begin{align}
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Q_met = 17400 V_l N_o
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\end{align}
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The volume of the culture broth is represented by Vl in units of m^3 and NO2 represents the oxygen uptake rate in units of g/m^3/s. Meanwhile, Qmech is heat generated due to the mechanical agitation system, which has all of its gassed mixing power (PG) dissipated as heat into the culture fluid (Andersen & von Meyenburg, 1980).
+
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+
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\begin{align}
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Q_mech = P_G
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\end{align}
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The cooling jacket and internal coil have nearly identical equations when calculating the heat transfer coefficients however the thermal conductivities (hhot) are calculated using different correlations. Since the thermal conductivity is related to the Nusselt number, two different Nusselt number correlations are used, one for heat transfer between the broth and the vessel jacket and one for heat transfer between the broth and the helical coil in the vessel:
+
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\begin{align}
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Nu = 0.36 Re_i^{0.67}Pr^{0.33}\bigg(\frac{\mu_b}{\mu_w}\bigg)^{0.14}
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\end{align}
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== References==
== References==

Latest revision as of 12:49, 7 August 2014

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Contents

Population Dynamics Modeling



Figure 1: Schematic of the model system where both strains are immunized against common environmental phages and the abundance of one can be modulated by the addition of a control phage.

Mixed cultures are often used in bioprocessing, where the quality of the final product requires optimal strain balance. We realized that mixed cultures harbouring different CRISPR assemblies could be modulated by applying selective pressure against targeted strains via phage addition. This provides a novel opportunity for tuning bacterial consortia, directly applicable to industrial bioprocesses such as yogurt production that rely on mixed culture fermentation. Here, we develop deterministic and probabilistic models to provide a predictive framework for optimizing strain balance within mixed populations. We then extend this model to allow for optimization of product formation, such as flavouring of yogurt.

Our main objectives were to:

  1. Predict the growth of mono- and mixed- recombinant E. coli cultures under phage predation.
  2. Predict vanillin and cinnamaldehyde production based on initial ratio of phage-to-bacteria, (ie. multiplicity of infection; MOI).


The schematic for the final model is illustrated in figure 1. We considered two E. coli strains, each harbouring two plasmids: a flavouring plasmid and a CRISPR (or "immunity") plasmid. Here, the flavouring plasmid is responsible for the production of either cinnamaldehyde or vanillin and the CRISPR plasmid contains unique spacer elements, granting both strains immunity against "environmental phage" that may contaminate the bioreactor. Additionally, one strain would be immunized against the "control phage", where the other strain would remain susceptible. This construction would allow us to tune the susceptible population in order to achieve our desired flavouring proportions, based on the amount of control phage added.



Model Formulation

Assumptions

  1. Bacteria are grown in a batch culture and follow the Monod growth equation.
  2. Bacteria harbouring the CRISPR assembly are 100% immune to the specific phage infection (based on spacer element).
  3. Bacteria without CRISPR system are completely susceptible to phage infection.
  4. Yield coefficients and phage attachment coefficients are constant.
  5. Bacteriophage do not decrease significantly in number during the course of an experiment.
  6. All considered bacteriophages are lytic.




Deterministic Model - modeling bacterial growth under phage predation

A deterministic model based on Monod kinetics [1] was used to describe bacterial growth. Here, the Poisson distribution was incorporated to model the infected populations based on a starting phage-to-bacteria ratio, or MOI. We trained the model on a set of experimental growth curves and validated it against a separate set. Yield terms were added to account for the production of two different flavours: cinnamaldehyde and vanillin. Next, we extended our basic growth model to include bacterial co-cultures. Using this approach, we demonstrate that by using different virus inoculums, it is possible to achieve different final amounts of compounds from a mixed culture.

Bacteria Growth

We begin with a populations balance for a given strain $X$, \begin{align} \frac{dX}{dt} = \frac{dX_i}{dt} + \frac{dX_u}{dt} \end{align} The infected bacteria is represented by $X_i$, uninfected bacteria by $X_u$ and $X = X_i + X_u$. We use the Monod equation to model the substrate limited bacterial growth. \begin{align} \mu_{X} = \mu_{max, X} \frac{S}{K_{S, X} + S} \end{align}

Where $\mu_{X}$ is the bacterial growth rate, $\mu_{max, X}$ is the maximum bacterial growth rate, $S$ is the growth limiting substrate and $K_s$ is the amount of substrate remaining when the growth rate is half of maximum. Due to environmental factors, some bacteria will die; the death rate ($k_d$) is assumed to be directly proportional to the bacteria population. A lag phase is modelled by multiplying a dampening term to the growth rate, namely $(1 - e^{-\alpha t})$, where $\alpha$ is defined as a proportionality constant. The slowing of growth from exponential to stationary is modelled with yet another dampening term to be multiplied to the growth: $exp\big[{-\big(\frac{X}{X_c}\big)^m\big]}$. This dampening term is related to the quorom sensing in bacteria; once the bacteria reach some characteristic concentration ($X_c$) the bacteria begin to slow down growth. Thus the uninfected cell growth is described by: \begin{align} \frac{dX_u}{dt} = \big( \mu_{X, u}e^{-\big(\frac{X}{X_c}\big)^m} - k_{d_{X,u}} \big) X_u\big(1 - e^{-\alpha t}\big) \end{align} For simplicity, in this model, $m$, $X_c$, and $\alpha$ are all to be empirically determined and assumed constant. In reality, each constant is dependent on many variables, for example: temperature, pressure, [substrate], environmental conditions, bacterial strain, and more. Similarly for infected cells: \begin{align} \frac{dX_i}{dt} = \big( \mu_{X, i}e^{-\big(\frac{X}{X_c}\big)^m} - k_{d_{X,i}} \big) X_i\big(1 - e^{-\alpha t}\big) - \delta \end{align}

However, a major difference is that the decay rate for the infected cells is dependent on the latency time of the virus and thus we introduce $\delta$. The function $\delta$ is defined as follows,

$ \delta = \left\{ \begin{array}{l l} &N(\tau)X_i , \ \ during \ lysis\\ & 0, \ \ \ \ \ \ \ \ \ \ \ \ \ otherwise \end{array} \right. $

Here, $N(\tau)$ is a normal distribution over some time $\tau$, in other words, it is expected that the infected population will lyse according to a normal distribution over the domain $(-\tau, \tau)$.

Viral Growth

It is now necessary to consider the phage population $V$ as it directly affects the amount of bacteria that are infected at any given time. To describe the phage population it is necessary to consider how many phage are released per cell lysis. This number is referred to as the burst size $(\beta)$. \begin{align} V = V_0 + X_i \beta ^{\frac{t}{LT}} \end{align} Where $V_0$ is the initial phage populations and $LT$ is the latency time (they time between infection and lysis). However, since it is difficult to measure the exact phage at various time points, as well as the exact amount of infected bacteria, it is desired to simplify the model. It is reasonable to use a stepwise function that describes the amount of free phage present. Also, since the burst size is large, on the order of $100$ [3], we see that the loss of current phage due to infection of cells is small (roughly 1%), thus to simplify computations we consider this to be negligible. With these deductions we arrive at the following: \begin{align} V = V_0 + E(X_i)\beta^{\big[\frac{t}{LT}\big]} \end{align} Where $E(X_i)$ is the expected infected population and $\big[\frac{t}{LT}\big]$ is the largest integer equal or less than $\frac{t}{LT}$. To find the expected infected population, the Poisson distribution is used based on the MOI (multiplicity of infection - defined as the ratio of phage-to-bacteria), with a term for efficiency of viral attachment $\epsilon \in (0, 1)$ (in fact the efficiency has been found to be a function of certain proteins) [4,5].

\begin{align} MOI = \frac{V}{X} \end{align}

\begin{align} E(X_i) = \epsilon X(1 - e^{-MOI}) \end{align}

Substrate Utilization

Bacteria require a substrate for growth, and the depletion of this substrate is proportional to the growth rate of the uninfected bacteria and the amount of bacteria. Although the infected bacteria do not multiply when infected, the infected cells may consume substrate to generate energy needed to replicate the phage. Although it may be the case that the bacteria simply recycle intracellular material, a substrate utilization term ($\gamma$) for the infected cells is added (if the bacteria do in fact recycle intracellular material, it follows that this value will be 0). Moreover, when cells lyse, the re-solubilized cytoplasmic contents can be metabolized by other bacteria and will add to the amount of nutrients available. Thus, the equation for substrate utilization rate is:

\begin{align} \frac{dS}{dt} = - \big[ \frac{\mu_u}{Y_u}X_u + \frac{\gamma}{Y_i}X_i \big] + \phi \delta \end{align} Where $Y_u$ and $Y_i$ are yield constants and $\phi$ is the average amount of substrate released per infected cell during lysis, $\delta$ has as described above.

Model Validation

Although, only limited amounts of growth curves have been able to be analyzed, the quantitative results appear promising and the qualitative results have been found to contain information whether or not the quantitative results align.The model is shown to have powerful predictive capabilities when it comes to a bacteria growth curve not under phage predation.The model also appears to have powerful qualitative predictions for culture collapse under phage predation. However, consistent quantitative predictions for bacteria growing under phage predation has not yet been shown. Note: as time progresses OD measurements will pick up cellular debris (also referred to as "bacterial bones") which will artificially inflate the concentration of bacteria after lysis - by plating we confirm that the culture does not contain as many viable cells as the OD reads.

Bacteria growth.png

Figure 2 - Bacteria growth curves from lag phase to approaching stationary phase. The model was optimized on another set of data and was tested for validity on this set.

Growth3.png

Figure 3 - Bacteria growth under phage predation. In models where the quantitative values differ, there is still qualitative information that can be extracted.

Model2.png

Figure 4 - A better fit for bacteria growth under phage predation. Also included are the predicted infected and uninfected populations.

Product Formation

For a given uninfected bacteria $X_u$ that can produce the product $P$, we will first expect the production rate to be first order equation: \begin{align} \frac{d[P]}{dt} = \frac{\mu_{X_u}}{Y_P}X_u \end{align} Where $Y_P$ is the yield coefficient of the product. For infected bacteria we expect the product formation rate to be negligibly small.

Extending to Co-culture

The end goal of our project is to tune product formation of two or more compounds by adding phage to a batch reactor. Our extension to co-cultures considers the situation where vanillin and cinnamaldehyde strains have both been engineered with "CRISPR immunity" to an environmental phage. Additionally, the vanillin producing strain has been engineered with immunity to a control phage, whereas the cinnamaldehyde is susceptible. Since both strains contain the CRISPR assembly and an engineered metabolic pathway, it is not entirely unreasonable to assume that their growth rates are similar. Let our bacterial cultures be $X$ for cinnamaldehyde and $Z$ for vanillin. Our equations become:

$ \left\{ \begin{array}{l l} &\frac{dX}{dt} = \frac{dX_i}{dt} + \frac{dX_u}{dt} \\ &\frac{dZ}{dt} = \frac{dZ_i}{dt} + \frac{dZ_u}{dt} \\ &\frac{dX_u}{dt} = \big( \mu_{X, u}e^{-\big(\frac{X}{X_c}\big)^m} - k_{d_{X,u}} \big) X_u\big(1 - e^{-\alpha t}\big) \\ &\frac{dZ_u}{dt} = \big( \mu_{Z, u}e^{-\big(\frac{Z}{Z_c}\big)^m} - k_{d_{Z,u}} \big) Z_u\big(1 - e^{-\alpha t}\big) \\ &\frac{dX_i}{dt} = \big( \mu_{X, i}e^{-\big(\frac{X}{X_c}\big)^m} - k_{d_{X,i}} \big) X_i\big(1 - e^{-\alpha t}\big) - \delta\\ &\frac{dZ_i}{dt} = 0\\ &\frac{dS}{dt} = - \big[ \frac{\mu_{X_u}}{Y_u}X_u + \frac{\gamma_X}{Y_i}X_i + \frac{\mu_Z}{Y_Z}Z\big] + \phi \delta \\ &\frac{dP_X}{dt} = \frac{\mu_X}{Y_{P_X}}X_u\\ &\frac{dP_Z}{dt} = \frac{\mu_Z}{Y_{P_Z}}Z_u \end{array} \right. $


Subject to initial and boundary conditions:

$ \left\{ \begin{array}{l l} &X(0) = X_0\\ &Z(0) = Z_0\\ &Z_i(t) = 0\\ &S(0) = S_0\\ &S(t) = S_t\\ &P_X(0) = 0\\ &P_Z(0) = 0\\ &X = X_i + X_u\\ &X_i = E(X_i) = \epsilon X(1 - e^{-MOI})\\ &OD(t) = OD_Z(t) + OD_X(t) \end{array} \right. $

We use Matlab to solve this system of equations. This model demonstrates how phage can be used to control product formation. However, to know whether or not the model is representative of our systems behaviour, we must first have a qualitative understanding of our expected results. As the initial MOI increases, the cinnamaldehyde producing strain (susceptible to control phage infection) will collapse faster than at a lower MOI. If we assume that the production rates of vanillin and cinnamaldehyde equal during growth without phage, then we expect the product formation curves to separate with increasing MOI. Figure 5 shows that our model, run at two different MOI's (two orders of magnitude apart), predicts the qualitative trends we were expecting to see.

Theoretical production.png

Figure 5 - Theoretical product formations based on co-culture dynamics.



Probabilistic Model

For the probabilistic simulation of co-cultures we utilized the cell programming language gro, which was developed by the Klavins Lab at the University of Washington [2]. The model considers two strains of bacteria on a two-dimensional plane under attack of one virus. One strain (green) contains a specific spacer element for the "control" phage and is granted immunity, whereas the other strain (yellow) is susceptible to phage infection. In the simulation, susceptible bacteria entering regions with high phage concentrations are very likely to become infected and upon lysis increase the phage concentration of that region. Below is a timeseries illustrating the control of susceptible cells with phage addition over the course of one batch cycle. Here, the amount of viable susceptible cells remaining over time can be controlled by adjusting the starting phage-to-bacteria ratio, allowing for optimal product formation.

UBC Model-Gro.png

The video of the above simulation is presented below:






Model Formulation: Joel Kumlin, Chris Lawson, Joe Ho

References

[1] Shuler, M.L. & Kargi, F. (2002). Bioprocess Engineering: Basic Concepts (2nd ed.). Prentice Hall, Upper Saddle River, NJ.

[2] Jang, S.S., Oishi, K.T., Egbert, R.G., & Klavins, E. (2012). Specification and simulation of multicelled behaviors. ACS Synthetic Biology 1 (8), pp 365–374.

[3] Simon, E. H., Tessman, I. (1963). Thymidine-requiring Mutants of Phage T4. PNAS, 50, 526–532.

[4] Storms, Z. J., Arsenault, E., Sauvageau, D., & Cooper, D. G. (2010). Bacteriophage adsorption efficiency and its effect on amplification. Bioprocess and Biosystems Engineering, 33(7), 823–31.

[5] Storms, Z. J., Smith, L., Sauvageau, D., & Cooper, D. G. (2012). Modeling bacteriophage attachment using adsorption efficiency. Biochemical Engineering Journal, 64, 22–29.