Difference between revisions of "Team:Technion Israel/Model"

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.model_wrapper {
 
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+
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<!-- ===== One overall container (wrapper) ===== -->
 
<!-- ===== One overall container (wrapper) ===== -->
<div class="model_wrapper">
+
<div class="desk_wrapper">
  
 
+
<!-- ======== Cover photo: ======== -->
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<div class="row">
 
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<li role="presentation" class="col-sm-3 col-xs-6">
 
<li role="presentation" class="col-sm-3 col-xs-6">
<a href="#Peshawar" aria-controls="Peshawar" role="tab" data-toggle="tab">
+
<a href="#111" aria-controls="111" role="tab" data-toggle="tab">
<img src="https://static.igem.org/mediawiki/2016/d/db/T--Technion_Israel--icon_intro.png" class="img-responsive img-center cir_tabs" width="75" height="75">
+
<img src="https://static.igem.org/mediawiki/2016/d/db/T--Technion_Israel--icon_intro.png" class="img-responsive img-center cont_tabs" width="75" height="75">
<br><h4 class="text-center"><b>Introduction</b></h4>
+
<br><h4 class="text-center">Introduction</h4>
 
</a>
 
</a>
 
</li>
 
</li>
  
 
<li role="presentation" class="col-sm-3 col-xs-6">
 
<li role="presentation" class="col-sm-3 col-xs-6">
<a href="#Aachen" aria-controls="Aachen" role="tab" data-toggle="tab">
+
<a href="#222" aria-controls="222" role="tab" data-toggle="tab">
<img src="https://static.igem.org/mediawiki/2016/4/49/T--Technion_Israel--icon_lab.png" class="img-responsive img-center cir_tabs" width="75" height="75">
+
<img src="https://static.igem.org/mediawiki/2016/4/49/T--Technion_Israel--icon_lab.png" class="img-responsive img-center cont_tabs" width="75" height="75">
<br><h4 class="text-center"><b>Chemo-Repellent</b></h4>
+
<br><h4 class="text-center">Chemo-Repellent</h4>
 
</a>
 
</a>
 
</li>
 
</li>
  
 
<li role="presentation" class="col-sm-3 col-xs-6">
 
<li role="presentation" class="col-sm-3 col-xs-6">
<a href="#Results" aria-controls="Results" role="tab" data-toggle="tab">
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<a href="#333" aria-controls="333" role="tab" data-toggle="tab">
<img src="https://static.igem.org/mediawiki/2016/4/45/T--Technion_Israel--icon_results.png" class="img-responsive img-center cir_tabs" width="75" height="75">
+
<img src="https://static.igem.org/mediawiki/2016/4/45/T--Technion_Israel--icon_results.png" class="img-responsive img-center cont_tabs" width="75" height="75">
<br><h4 class="text-center"><b>Results</b></h4>
+
<br><h4 class="text-center">Bacterial Concentration</h4>
 
</a>
 
</a>
 
</li>
 
</li>
  
 
<li role="presentation" class="col-sm-3 col-xs-6">
 
<li role="presentation" class="col-sm-3 col-xs-6">
<a href="#outlook" aria-controls="outlook" role="tab" data-toggle="tab">
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<a href="#444" aria-controls="444" role="tab" data-toggle="tab">
<img src="https://static.igem.org/mediawiki/2016/4/47/T--Technion_Israel--icon_outlook.png" class="img-responsive img-center cir_tabs" width="75" height="75">
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<img src="https://static.igem.org/mediawiki/2016/4/47/T--Technion_Israel--icon_outlook.png" class="img-responsive img-center cont_tabs" width="75" height="75">
<br><h4 class="text-center"><b>Outlook</b></h4>
+
<br><h4 class="text-center">Conclusions</h4>
 
</a>
 
</a>
 
</li>
 
</li>
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</div>
 
</div>
 
<!-- ========== End: Tabs panel ========== -->
 
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<!-- =========== Tabs' content =========== -->
 
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<div class="tab-content">
 
<div class="tab-content">
 
<!-- =========== 1. Intro =========== -->
 
<div role="tabpanel" class="tab-pane fade in active" id="Peshawar">
 
 
  
  
<!-- ========== Content ========== -->
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<div role="tabpanel" class="tab-pane fade in active" id="111">
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<div class="cont_box">
  
  
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<h2 class="">Introduction</h2>
 
<h2 class="">Introduction</h2>
 
<p class="text-justify">
 
<p class="text-justify">
The goal of this model is to describe the processes inside the Flash Lab system:<br>
+
The goal of this model is to describe the processes inside the Flash Lab system:<br>
- Change in the concentration of chemo-repellent.<br>
+
<p style="margin-left: 40px">
- Change in the concentration of bacteria.<br>
+
- Change in the concentration of chemo-repellent.<br>
This model is based on the Keller – Segal equation of chemotaxis <b>(1)</b> in a one dimensional problem (Thin channel).<br>
+
- Change in the concentration of bacteria.<br>
 +
</p>
 +
<p class="text-justify">
 +
This model is based on the Keller – Segal equation of chemotaxis <b>(1)</b> in  
 +
a one dimensional problem (Thin channel).<br>
 +
<br>
 +
It is important to notice that this model can show the overall behavior and not exact
 +
values. The final system is supposed to detect a variety of materials in many different
 +
solvents, each of them has its own diffusion properties. Also, some aspects such
 +
as working conditions (temperature, humidity etc.) might change in widespread commercial
 +
use and affect the results. Taking those into account, further fitting will be necessary.
 +
                                                                                                        <br>
 
<br>
 
<br>
It's importent to notice that this model can show the overall behavior and not exact values. The final system is supposed
+
                                                                                                      For PDF version of this model press <a href="https://static.igem.org/mediawiki/igem.org/1/1c/T--Technion_Israel-ModelPDF.pdf">here</a>
to detect a variety of materials in many different unknown solvents, each of which has its own diffusion properties. Also,
+
some aspects of the working conditions might change in wide range commercial use (if, for example, someone will use this
+
system in a hot environment) and affect the results. Taking those into account, this model can accurately predict only
+
controlled and known problems.
+
 
</p>
 
</p>
 
</div>
 
</div>
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<br>
+
 
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</div>
 
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+
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+
<div role="tabpanel" class="tab-pane fade" id="222">
<!-- =========== 2: conection to the project =========== -->
+
<div class="cont_box">
<div role="tabpanel" class="tab-pane fade" id="Aachen">
+
+
<!-- ========== Content ========== -->
+
 
+
 
+
 
<div class="row"><!-- #1 row -->
 
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<div class="col-md-12 col-sm-12">
 
<div class="col-md-12 col-sm-12">
 
<h2 class="">Chemo-Repellent Concentration</h2>
 
<h2 class="">Chemo-Repellent Concentration</h2>
<p class="text-justify">
+
 
The basic assumptions of the model for the chemo-repellent are:<br><br>
+
<div class="col-md-12 col-sm-12">
- There are no forces except diffusion:<br>
+
<h3 class="">Model</h3>
> Chemo-repellent concentration in the sample is relatively low and does not cause osmotic pressure.<br>
+
<p class="text-justify"> </p>
> The changes in pressure due to loading the sample is negligible.<br>
+
> No other significant external forces (for example, moving the chip while in use).<br>
+
- The bacteria do not consume the chemo-repellent and its concentration does not change in time. This is not case with chemo-attractants.<br>
+
- We expect to detect small proteins and molecules (those are the materials bacterial receptors bind to). The diffusion coefficient for such
+
materials is about 10<sup>-9</sup> [m<sup>2</sup>/s].<br>
+
- Because of the geometric properties of the channel and the expected diffusion coefficient, this is approximately a half-infinite one dimensional problem.<br>
+
- The starting conditions: no chemo-repellent in present (a) and in all times, at infinite distance the concentration is also 0 (b).<br>
+
<br>
+
We modelled the change in concentration of chemo-repellent based on "Top Hat Function" for a diffusion problem:
+
</p>
+
 
</div>
 
</div>
  
  
<div class="col-md-12 col-sm-12 new-row no-title-col">
+
<br>
<div class="row">
+
<div class="col-md-12">
+
<p class="text-justify">
<a class="pop">
+
The basic assumptions of the model for the chemo-repellent are:<br>
<img src="https://static.igem.org/mediawiki/2016/a/a0/T--Technion_Israel--model_2.1.PNG" class="img-responsive img-center img-cont" style="cursor: pointer;" width="300"><br>
+
<br>
</a>
+
<p style="margin-left: 40px">
<p class="text-center"><b>Equation 1:</b> "Top Hat"" diffusion problem.</p>
+
<b>-</b>There are no forces except for diffusion:
</div>
+
<p style="margin-left: 40px">
</div>
+
<b>-</b> Chemo-repellent concentration in the sample is relatively low and does not cause osmotic pressure.<br>
</div>
+
<b>-</b> The changes in pressure due to loading the sample is negligible.<br>
 +
<b>-</b> No other significant external forces (for example, moving the chip while using).<br><br>
 +
</p>
 +
<p class="text-justify">
 +
<p style="margin-left: 40px">
 +
<b>-</b> The bacteria do not consume the chemo-repellent and its concentration does not change with time. In contrast, in case of a chemo-attractant this assumption is not valid.
 +
<br>
 +
<br>
 +
<b>-</b> Expect to detect small proteins and molecules (the ligands). The diffusion coefficient for such materials is about 10<sup>-9 </sup>[m<sup>2</sup>/s].
 +
<br>
 +
<br>
 +
<b>-</b> Because of the geometric properties of the channel and the expected diffusion coefficient, this is approximately a semi-infinite one dimensional problem.
 +
<br>
 +
<br>
 +
<b>-</b> Initial condition: no chemo-repellent is present in the chip at time zero (a).
 +
<br>
 +
<br>
 +
 
 +
<b>-</b> Boundary condition: at infinite distance the concentration is zero (b) and the there is conservation of dissolved material mass (c).
 +
<br>
 +
<br>
 +
</p>
 +
<p class="text-justify">
 +
 
 +
We modelled the change in concentration of the chemo-repellent based on a "Top Hat Function" solution for the diffusion problem:
 +
<br>
  
<div class="col-md-12 col-sm-12">
 
<p class="text-justify">
 
v[M] is the chemo-repellent concentration, D[m<sup>2</sup>/s] is the chemo-repellent diffusion coefficient,<br>
 
N[mol] is the number of repellent atoms,<br>
 
A[m<sup>2</sup>] is the cut section of the channel, <br>
 
x[m] is the distance on the channel,<br>
 
t[s] is time.
 
<br>
 
The solution for this problem is:
 
 
</p>
 
</p>
 +
 +
<!--6 text - 6 img div-->
 +
<div class="row">
 +
<div class="col-md-6 col-sm-12 vcenter"><!--6 text-->
 +
<p class="text-justify">
 +
<b>v [M]</b> is the chemo-repellent concentration.<br>
 +
<b>D[m<sup>2</sup>/s]</b> is the chemo-repellent diffusion coefficient.<br>
 +
<b>N [mol]</b> is the number of moles of the repellent .<br>
 +
<b>A [m<sup>2</sup>]</b> is the cross-section area of the channel. <br>
 +
<b>h [m]</b> is length of the sample in the channel.<br>
 +
<b>x [m]</b> is the distance on the channel.<br>
 +
<b>t [s]</b> is time.
 +
<br>
 +
<br>
 +
The solution for this problem is:
 +
</p>
 +
</div><!--
 +
--><div class="col-md-6 col-sm-12 vcenter"><!--6 img div-->
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/f/ff/T--Technion_Israel--Model40.png" class="img-responsive img-center" width="450" style="cursor: pointer;">
 +
</a>
 +
<p class="text-center"><b>Equation 1:</b> Chemo-repellent diffusion problem.</p>
 +
</div>
 
</div>
 
</div>
 +
  
 
<div class="col-md-12 col-sm-12 new-row no-title-col">
 
<div class="col-md-12 col-sm-12 new-row no-title-col">
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<div class="col-md-12 col-sm-12">
 
<div class="col-md-12 col-sm-12">
 
<p class="text-justify">
 
<p class="text-justify">
In our problem, we want the diffusion to start from . Also, we take into account only the positive distance:
+
If x=0 [m] is defined as the point where the sample is loaded to the chip, then the solution for the diffusion problem is:
 +
 
 
</p>
 
</p>
 
</div>
 
</div>
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<img src="https://static.igem.org/mediawiki/2016/d/de/T--Technion_Israel--model_2.3.PNG" class="img-responsive img-center img-cont" style="cursor: pointer;" width="300"><br>
 
<img src="https://static.igem.org/mediawiki/2016/d/de/T--Technion_Israel--model_2.3.PNG" class="img-responsive img-center img-cont" style="cursor: pointer;" width="300"><br>
 
</a>
 
</a>
<p class="text-center"><b>Equation 3:</b> Chemo-repellent concentration.</p>
+
<p class="text-center"><b>Equation 3:</b> Chemo-repellent concentration.
 +
<br>
 +
</p>
 
</div>
 
</div>
 
</div>
 
</div>
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<div class="col-md-12 col-sm-12">
 
<div class="col-md-12 col-sm-12">
<h3 class="">Model Predictions</h3>
+
<h3 class="">Model Results</h3>
 
<p class="text-justify">
 
<p class="text-justify">
We ran the chemo-repellent concentration equation in matlab (The code is in ap-pendix). The parameters used:
+
We ran the chemo-repellent concentration equation in Matlab - Our code can be found <a href="https://static.igem.org/mediawiki/igem.org/5/5a/T--Technion_Israel--ModelRepCode.zip">here</a>. The parameters used:
 
</p>
 
</p>
</div>
+
  
 
<div class="col-md-12 col-sm-12 new-row no-title-col">
 
<div class="col-md-12 col-sm-12 new-row no-title-col">
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</div>
 
</div>
  
 +
<p class="text-justify">
 +
*This is the diffusion coefficient for potassium permanganate (see "Comparison to Experiment")<br>
 +
** h = (Sample volume)/(Reservoir cross section).<br>
 +
</p>
 +
 +
 +
 
<div class="col-sm-12">
 
<div class="col-sm-12">
 
<div class="col-md-12 col-sm-12">
 
<div class="col-md-12 col-sm-12">
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<div class="col-md-12 col-sm-12">
 
<div class="col-md-12 col-sm-12">
 
<p class="text-justify">
 
<p class="text-justify">
The change in value of the diffusion limit between times 0 to 15 minutes, is relatively big. As the time passes the change lowers.<br>
+
The change in distance of the diffusion limit between 0 to 15 minutes, is relatively big. As the time passes the diffusion limit's speed lowers significantly, and the concentration profile becomes more linear.
* This is the diffusion coefficient for potassium permanganate (see "Comparison to Experiment").<br>
+
<br>
** h = (Sample_volume)/(Reservoir_cut_section).<br>
+
 
<br>
 
<br>
 
</p>
 
</p>
 
<h3 class="">Comparison to Experiment</h3>
 
<h3 class="">Comparison to Experiment</h3>
 
<p class="text-justify">
 
<p class="text-justify">
Most diffusion experiments need a dedicated system that is based on the diffusion of an isotope or a fluorescent  
+
Most diffusion experiments need a dedicated system that is based on the diffusion of an isotope or a fluorescent material that can be detected easily and very precisely. we chose a more basic system since this is only a preliminary testing for showing that the overall system behaves as we expect.  
material that can be detected easily and very pre-cisely. In this case, as explained in the opening, our goal is  
+
<br>
showing that the overall system behaves as we expect.<br>
+
 
<br>
 
<br>
The experiment ran as shown in the "Introduction" section where we replaced the bacterial medium with water and  
+
The experiment ran as the setup shown in the "Overview" section: The channel was filled with bacteria in motility buffer and then the sample was inserted. We replaced the motility buffer with water and the chemo-repellent with potassium permanganate in the following amounts:
the repellent with potassium permanganate in the following amounts:
+
 
</p>
 
</p>
 
</div>
 
</div>
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<div class="col-md-12 col-sm-12">
 
<div class="col-md-12 col-sm-12">
 
<p class="text-justify">
 
<p class="text-justify">
Motility buffer is mostly water (98%) and can be modelled by it. Potassium perman-ganate is a salt with a known diffusion  
+
limit and acts as most of the materials we want detect using our system. Also, it has a very distinct pink color in low  
+
 
concentra-tion, so the diffusion limit can be seen easily.<br>
+
Modeling was done under the assumption that the motility buffer acts as water, due to the fact that it is mostly water (~98%). Potassium permanganate is a salt with a known diffusion limit and acts as most of the materials we want to detect using our system (small molecules). Also, it has an intense pink color in low concentration which makes diffusion limit visible. <br>
 
<br>
 
<br>
We ran the experiment 4 times, with a standard roller to measure the distance of the diffusion limit.
+
We ran the experiment 4 times, with a standard ruler to measure the distance of the diffusion limit.  
 +
 
</p>
 
</p>
 
</div>
 
</div>
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<img src="https://static.igem.org/mediawiki/2016/a/a1/T--Technion_Israel--figure2.1.PNG" class="img-responsive img-center img-cont" width="300" style="cursor: pointer;"><br>
 
<img src="https://static.igem.org/mediawiki/2016/a/a1/T--Technion_Israel--figure2.1.PNG" class="img-responsive img-center img-cont" width="300" style="cursor: pointer;"><br>
 
</a>
 
</a>
<p class="text-center"><b>Fig. 1:</b> Diffusion of potassium permanganate in water in different times (enhanced picture).</p>
+
<p class="text-center"><b>Fig. 2:</b> Diffusion of potassium permanganate in water in different times (enhanced picture).</p>
 
</div>
 
</div>
  
 
<div class="col-md-12 col-sm-12">
 
<div class="col-md-12 col-sm-12">
 
<p class="text-justify">
 
<p class="text-justify">
As expected by the mathematical model, the diffusion limit starts moving relatively fast and its speed decreases rapidly.  
+
As expected by the mathematical model, the diffusion limit starts moving relatively fast and its speed decreases rapidly. The difference in distance between the models and the experiment can be explained by:
The difference in distance between the model to the experiment (average of 2.5[mm] fro, T=0) can be explained by:
+
<br> <br>
<br>
+
<p style="margin-left: 40px">
- The actual diffusion limit is in too low concentration of potassium permanganate to be seen in the naked eye.  
+
<b>-</b>The actual diffusion limit is in too low concentration of potassium permanganate to be seen in the naked eye. If the visible concentration is about 1.5&#42;10<sup>-5</sup> [M] the experimental results line up with the model (graph 3). <br>
If the visible con-centration is about 0.000015 [M] the experiments results lines up with the model (Graph 2.2).<br>
+
<br>
- The roller is a crude measuring tool. Its mistake is +/- 0.5 [mm].
+
 
- Difficulties loading the sample in a uniform way, especially in low volumes. Mistakes in loading the sample inside the bacterial fluid and not on, or sticking the  
+
<b>-</b>The ruler is a crude measuring tool. Its mistake is &plusmn; 0.5 [mm].
drop of sample to one of the entry slot walls will cause uneven diffusion.
+
<br>
 +
<br>
 +
 
 +
<b>-</b>Difficulties in loading uniformly the sample, especially in low volumes. Mistakes in loading the sample inside the bacterial fluid and not on, or sticking the drop of sample to one of the entry slot walls will cause uneven diffusion.
 +
<br>
 
</p>
 
</p>
 
</div>
 
</div>
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<img src="https://static.igem.org/mediawiki/2016/b/b1/T--Technion_Israel--graph2.3.PNG" class="img-responsive img-center img-cont" width="496" style="cursor: pointer;"><br>
 
<img src="https://static.igem.org/mediawiki/2016/b/b1/T--Technion_Israel--graph2.3.PNG" class="img-responsive img-center img-cont" width="496" style="cursor: pointer;"><br>
 
</a>
 
</a>
<p class="text-center"><b>Graph 2.3:</b> Comparison of diffusion model to experiment.</p>
+
<p class="text-center"><b>Graph 3:</b> Comparison of diffusion model (c=0.00015[M]) to experiment.</p>
 
</div>
 
</div>
 +
</div>
 
</div>
 
</div>
 
</div>
 
</div>
 
</div>
 
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+
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</div>
+
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+
  
  
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</div>
 +
</div>
 +
<!-- ======================== END: 222 ======================== -->
  
<!-- ==================== 3: Resuls ==================== -->
 
<div role="tabpanel" class="tab-pane fade" id="Results">
 
  
<!-- ========== Content ========== -->
 
  
  
<div class="row"><!-- #1 row -->
+
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<div class="cont_box">
+
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<div class="row">
+
<div class="cont_box">
<div class="col-sm-12">
+
 
<!-- Mini headline -->
+
 
 +
 
 
<div class="row">
 
<div class="row">
 
<div class="col-md-12 col-sm-12">
 
<div class="col-md-12 col-sm-12">
<h2>Results</h2>
+
<h2>Bacterial Concentration</h2>
 
</div>
 
</div>
 
</div>
 
</div>
  
<p class="text-justify">
+
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
The basic mathematical model for bacterial chemotaxis is the Keller-Segal equations (1) of chemotaxis:<br>
  
 +
</p>
 +
</div>
 +
</div>
  
 +
<!-- 12 img div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/4/45/T--Technion_Israel--Model18.png" class="img-responsive img-center img-cont" width="450" style="cursor: pointer;">
 +
</a>
 +
<p class="text-center"><b>Equation 1:</b> Keller-Segal equation</p>
 +
</div>
 +
</div>
  
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
                                                                                where:
 +
                                                                                <br>
 +
                                                                                <br>
 +
                                      <b>u[M]</b> is the bacteria concentration.<br>
 +
                                          <b>v[M]</b> is the chemo-repellent concentration.<br>
 +
                                          <b>k<sub>1</sub>[m<sup>2</sup>/s]</b> is the bacteria diffusion coefficient. <br>
 +
                                          <b>k<sub>2</sub>[m<sup>2</sup>/M &#42; s]</b> is the bacteria chemotactic coefficient. <br>
 +
                                          <b>k<sub>3</sub>[M/s]</b> is bacteria life and death coefficient. <br>
 +
                                          <b>x[m]</b> is the distance in the channel. <br>
 +
                                          <b>t[s]</b> is time. <br>
 +
<br>
 +
The basic assumptions of the chemotaxis model are:
 +
                                      <p style="margin-left: 40px">
 +
<br>
 +
                                        <b>-</b>k<sub>2</sub> describes how sensitive is the bacteria to changes in chemo-repellent concentration.
 +
In other words, as its negative value decreases the bacteria will react more violently to same repellent exposure. 
 +
<br>
 +
<br>
 +
<b>-</b>Because of the geometric properties of the channel, this is approximately a one dimensional problem.
 +
<br>
 +
<br>
  
 +
<b>-</b>We ran our tests in a short time scale (t&#60;30[min]) so we presume that the change in concentration
 +
of bacteria due to life and death is negligible, k<sub>3</sub>=0.
 +
<br>
 +
<br>
 +
<b>-</b>The chemo-repellent concentration is known for every x and t.
 +
<br>
 +
<br>
 +
<b>-</b>There are no changes in the flux of bacterial concentration at the start (a) and at end of the channel (b).
 +
<br>
 +
<br>
 +
<br>
 +
</p>
 +
</div>
 +
</div>
  
</p>
+
<div class="row">
</div>
+
<div class="col-md-12 col-sm-12">
</div>
+
<h3>Mathematical Model</h3>
</div>
+
 
</div>
 
</div>
</div><!-- END: #1 row -->
+
</div>
</div>
+
<!-- ====================END: 3 Resuls ==================== -->
+
  
 +
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<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
Under these assumptions the equation takes the form:
 +
</p>
 +
</div>
 +
</div>
  
  
 +
<!-- 12 img div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/d/d6/T--Technion_Israel--Model11.png" class="img-responsive img-center img-cont" style="cursor: pointer;"><br>
 +
</a>
 +
<p class="text-center"><b>Equation 2:</b> The Bacterial concentration problem.</p>
 +
</div>
 +
</div>
  
<!-- ==================== 4: Outlook ==================== -->
+
<!-- 12 text div -->
<div role="tabpanel" class="tab-pane fade" id="outlook">
+
<div class="row">
<div class="row"> <!--Headline-->
+
<div class="col-md-12 col-sm-12">
<div class="col-sm-12">
+
<p class="text-justify">
<br>
+
The above partial differential equation cannot be solved analytically, so we must turn to
<h1 class="text-center"><u>Outlook</u></h1>
+
numerical analysis tools. The implicit Euler method is one of the most basic numerical
 +
methods for the solution of ordinary and partial differential equations. This method is
 +
guaranteed to be stable and gives us the solution for the entire space in a single point in time.<br>
 +
<br>
 +
Using the following discretization:
 +
</p>
 
</div>
 
</div>
 
</div>
 
</div>
  
<!-- ========== Content ========== -->
+
<!-- 12 img div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/b/ba/T--Technion_Israel--Model8.png" class="img-responsive img-center img-cont" style="cursor: pointer;"><br>
 +
</a>
  
 +
</div>
 +
</div>
 +
 +
<!-- 12 img div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/d/d2/T--Technion_Israel--Model3.png" class="img-responsive img-center img-cont" style="cursor: pointer;"><br>
 +
</a>
 +
<p class="text-center"><b>Equation 3:</b> Bacteria concentration problem – discrete form.</p>
 +
</div>
 +
</div>
  
<div class="row"><!-- #1 row -->
+
<br>
<div class="col-sm-8 col-sm-offset-2"><!-- 8/12 -->
+
<br>
 +
<br>
  
<div class="cont_box">
+
<!-- 12 text div -->
<div class="row">
+
<div class="row">
<div class="col-sm-12">
+
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
And we can write it as follows:
 +
</p>
 +
</div>
 +
</div>
  
<p class="text-justify">
+
<br>
  
 +
<!-- 12 img div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/2/27/T--Technion_Israel--Model4.png" class="img-responsive img-center img-cont" style="cursor: pointer;"><br>
 +
</a>
 +
<p class="text-center"><b>Equation 4:</b> Bacteria concentration problem – Final form</p>
 +
</div>
 +
</div>
  
 +
<br>
  
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
Given the initial condition:
 +
</p>
 +
</div>
 +
</div>
  
</p>
+
<br>
</div>
+
 
</div>
+
<!-- 12 img div -->
</div>
+
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/9/95/T--Technion_Israel--Model32.png" class="img-responsive img-center img-cont" style="cursor: pointer;"><br>
 +
</a>
 +
<p class="text-center"><b>Equation 5:</b> Bacteria concentration problem- initial condition.</p>
 
</div>
 
</div>
</div><!-- END: #1 row -->
+
</div>
</div>
+
<!-- ==================== END: 4 Outlook ==================== -->
+
  
 +
<br>
  
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
And the boundary conditions which are translated to the following discrete conditions:
 +
</p>
 +
</div>
 +
</div>
  
</div><!-- ============ END: Tabs ============ -->
+
<br>
  
 +
<!-- 12 img div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/8/84/T--Technion_Israel--Model21.png" class="img-responsive img-center img-cont" style="cursor: pointer;"><br>
 +
</a>
 +
<p class="text-center"><b>Equation 6:</b> Bacteria concentration problem- boundary conditions</p>
 +
</div>
 +
</div>
  
<!--Code: Click on img to enlarge it-->
+
<br>
<div class="modal fade" id="imagemodal" tabindex="-1" role="dialog" aria-labelledby="myModalLabel" aria-hidden="true">
+
  <div class="modal-dialog">
+
    <div class="modal-content">             
+
      <div class="modal-body">
+
      <button type="button" class="close" data-dismiss="modal"><span aria-hidden="true">&times;</span><span class="sr-only">Close</span></button>
+
        <img src="" class="imagepreview" style="width: 100%;" >
+
      </div>
+
    </div>
+
  
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
With <I>I</I> being the final value of i – index of location.<br>
 +
The above conditions keep the flux of bacteria zero on both sides of the chip as occurs in the actual chip.
 +
Hence, no bacteria enter or exit the chip.
 +
<br>
 +
The above equation was entered into the Thomas-Three-Diagonal algorithm for solving matrix equations,
 +
giving us the solution for the entire space of the problem in a specific point in time. By advancing
 +
in time as we solve the equation at each time point we get the solution for the bacterial concentration
 +
for every x,t.
 +
</p>
 +
</div>
 +
</div>
  
</div>
+
<!--small headline-->
</div>
+
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<h3>Model results</h3>
 +
</div>
 +
</div>
  
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
We ran the chemo-repellent concentration equation in Matlab -
 +
Our code can be found <a href="https://static.igem.org/mediawiki/igem.org/8/8f/T--Technion_Israel--ModelCode.zip">
 +
here</a>.<br>
 +
The parameters used:
 +
</p>
 +
</div>
 +
</div>
  
<br>
+
<!-- 12 img div -->
<br>
+
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/5/57/T--Technion_Israel--Model12.png" class="img-responsive img-center img-cont" style="cursor: pointer;"><br>
 +
</a>
 +
<p class="text-center"><b>Table 1:</b> Parameters for chemotaxis model</p>
 +
</div>
 +
</div>
  
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
Please notice, the results are normalized to enable us to show them on the same scale. <br>
 +
<br>
 +
The results are as follows:
 +
</p>
 +
</div>
 +
</div>
  
 +
<!-- 12 img div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/9/99/T--Technion_Israel--Model9.png" class="img-responsive img-center img-cont" width="450" style="cursor: pointer;"><br>
 +
</a>
 +
<p class="text-center"><b>Graph 1:</b> Results of bacterial chemotaxis model</p>
 +
</div>
 +
</div>
  
<div class="row">
+
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
<b>Model conclusions:</b><br>
 +
                                <p style="margin-left: 40px">
 +
<b>- </b> The peak of bacterial concentration is caused by the bacterial chemotactic
 +
response, moving away from the chemo-repellent, and concentrating.<br>
 +
<b>- </b>The "wave" of bacterial concentration starts moving relatively fast, and slows
 +
down quickly. This is due to the change in repellent concentration. The "wave"
 +
converges to ~7[mm].<br>
 +
<b>- </b>The bacteria react significantly less to a normalized repellent concentration of
 +
less than ~3[mm]. This is approximately where the two graphs intersect. <br>
 +
<b>- </b>As the concentration of repellent goes down, the bacteria are less reactive.
 +
This continues as the bacteria's diffusion speed surpasses the chemotaxis rate. In other
 +
words, more bacteria move away from the concentration peak than into it for t>15[mim].<br>
 +
<b>- </b>Projecting this on the chip color experiment, we can predict there will be three shades
 +
of color: weak where the bacteria moved from (low concentration), strong where the bacteria
 +
moved to (high concentration) and on the far end, unchanged as the bacteria were not exposed
 +
to the repellent.<br>
 +
</p>
 +
</div>
 +
</div>
 +
 
 +
<br>
 +
 
 +
<!--small headline-->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<h3>Comparison to Experiments</h3>
 +
</div>
 +
</div>
 +
 
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
The experiment ran as the setup shown in the "Overview" section: The channel was filled with
 +
bacteria in motility buffer and then the sample was inserted. We used engineered E. coli with a
 +
<a href="https://2016.igem.org/Team:Technion_Israel/S.Tar_intro" target="_blank">S.Tar</a> PctA
 +
receptor taken from a plate and suspended in motility buffer. The chemo-repellent used is TCE.
 +
</p>
 +
</div>
 +
</div>
 +
 
 +
<br>
 +
 
 +
<!-- 12 img div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<a class="pop ocenter">
 +
<img src="https://static.igem.org/mediawiki/igem.org/c/c7/T--Technion_Israel--Model1.png" class="img-responsive img-center img-cont" width="450" style="cursor: pointer;"><br>
 +
</a>
 +
<p class="text-center"><b>Table 2:</b> Substance for chemotaxis experiment</p>
 +
</div>
 +
</div>
 +
 
 +
<br>
 +
 
 +
<div class="row">
 +
<div class="col-sm-8 col-sm-offset-2"><!-- 8/12 -->
 +
<div class="col-md-6 col-sm-12">
 +
<p class="text-justify">a.</p>
 +
<a class="pop">
 +
<img src="https://static.igem.org/mediawiki/igem.org/c/ca/T--Technion_Israel--Model2.png" class="img-responsive img-center img-cont" width="290" style="cursor: pointer;"><br>
 +
</a>
 +
</div>
 +
<div class="col-md-6 col-sm-12">
 +
<p class="text-justify">b.</p>
 +
<a class="pop">
 +
<img src="https://static.igem.org/mediawiki/2016/7/76/T--Technion_Israel--ModelControl.png" class="img-responsive img-center img-cont" width="220" style="cursor: pointer;"><br>
 +
</a>
 +
</div>
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-center"><b>Fig. 1:</b>
 +
<b>a.</b> Chemotaxis of <i>E. coli</i> with a S.Tar PctA receptor due to exposure to TCE (enhanced picture).
 +
<b>b.</b> <i>E. coli</i> with a S.Tar PctA receptor exposed to motility buffer (control).
 +
</p>
 +
</div>
 +
</div>
 +
</div>
 +
 
 +
<br>
 +
 
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
As expected, a visible cluster of strong dark blue has formed next to a lighter shade due to
 +
chemotactic activity. Furthermore, the distance the bacteria passed is only a few millimeter
 +
as the model predicted.<br>
 +
The time scale does not line up: The color darkens as the experiment continues. This will
 +
probably be corrected by using more accurate diffusion and chemotactic coefficients.<br>
 +
Some of the inconsistencies between the model and the experiment (like the uneven cluster
 +
of colored bacteria) can be explained by problems loading the chemo-repellent as shown in
 +
the chemo-repellent concentration experiment.
 +
</p>
 +
</div>
 +
</div>
 +
 
 +
</div>
 +
</div>
 +
</div>
 +
<!--===============-->
 +
<!-- ======================== END: 333 ======================== -->
 +
 
 +
 
 +
<!-- 44444444444444444444444444444444444444444444444444444444444 -->
 +
<div role="tabpanel" class="tab-pane fade" id="444">
 
<div class="col-sm-8 col-sm-offset-2"><!-- 8/12 -->
 
<div class="col-sm-8 col-sm-offset-2"><!-- 8/12 -->
 +
<div class="cont_box">
  
<p class="references">
 
References:<br>
 
1. KELLER, Evelyn F.; SEGEL, Lee A. Model for chemotaxis. Journal of theoretical biology, 1971, 30.2: 225-234.‏‬ <br>
 
</p>
 
  
 +
 +
<!-- Mini headline -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<h1>Conclusions</h1>
 +
</div>
 +
</div>
 +
 +
 +
<br>
 +
<br>
 +
 +
 +
<!-- Mini headline -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<h3>Results</h3>
 +
</div>
 +
</div>
 +
 +
<br>
 
 
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
This model predicts the overall behavior of our system. In our experiments we were able to
 +
show that the concentration of the repellent acts as we expected in terms of changes in the
 +
diffusion limit's velocity. When compared to the bacterial concentration, again, the experiments
 +
showed a similar behavior as the numeric solution of Keller-Segal equation.
 +
<br>
 +
<br>
 +
As explained before, this model requires further fitting to get more accurate results. Not only
 +
by using more accurate coefficients, but with improving the system itself.   
 +
</p>
 +
</div>
 +
</div>
 +
 +
 +
<br>
 +
<br>
 +
 +
 +
<!-- Mini headline -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<h3>Future development</h3>
 +
</div>
 +
</div>
 +
 +
<!-- 12 text div -->
 +
<div class="row">
 +
<div class="col-md-12 col-sm-12">
 +
<p class="text-justify">
 +
We would like to improve the model and design new ones based on it. First, develop
 +
models for the different coefficients in the Keller-Segal equation: bacteria diffusion
 +
coefficient, chemotactic coefficient and bacteria life and death. Theoretically,                                        those coefficients can be controlled by changing some parameters like
 +
        the number of flagella
 +
or receptors a cell has, or even manipulating the biological tracks of the bacteria.
 +
This will enable us to get even more accurate results. Secondly, to build a library of
 +
different receptors and ligands. Thirdly, expanding our
 +
model so it could predict movement of bacteria in different geometric constructs such
 +
as funnels or U bends. This research can be the basis of a prototype commercial device.<br>
 +
<br>
 +
        As for the first part, we worked with <a href="https://static.igem.org/mediawiki/igem.org/1/11/T--Technion_Israel-HardModelFrieborg.pdf" target="_blank">iGEM Freiburg</a> (2) in developing a function for the
 +
chemotactic coefficient. Also, we designed a new assay for experimentally measuring it.<br>
 +
<br>
 +
This assay, named Trap & Track, is a novel way to detect chemotaxis on the nanometric level.
 +
By using it we can measure the exact repellent concentration that induces chemotaxis and
 +
calculate the chemotactic coefficient accurately for every material. A detailed explanation
 +
about the assay can be found
 +
<a href="https://2016.igem.org/Team:Technion_Israel/Measurement" target="_blank">here</a>.<br>
 +
<br>
 +
As for the second part, the S.Tar system enables us to change the receptors a bacterium
 +
has and by that, change the materials it repels from. In the future, this system can be
 +
expanded to control the efficiency of these receptors and even control other aspects of
 +
the chemotaxis pathway such as the flagella.<br>
 +
 +
<br>
 +
The third and final part is to improve the device itself. We designed a new fluidic chip
 +
and fabricated it in different <a href="https://2016.igem.org/Team:Technion_Israel/Design" target="_blank">methods</a>.
 +
This new design will give us a more controlled diffusion by cancelling out most of the
 +
flow and fixing the diffusion source. Also, by changing the geometry of the channel,
 +
the bacteria concentration will increase and cause a more noticeable signal. This will improve
 +
the accuracy of the experiments we run, and in turn, our overall model. <br>
 +
<br>
 +
</p>
 +
</div>
 +
</div>
 +
 
</div>
 
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<p class="referances">
 +
References:<br>
 +
 +
1. KELLER, Evelyn F.; SEGEL, Lee A. Model for chemotaxis. Journal of theoretical biology, 1971, 30.2: 225-234.<br>
 +
2. MAZZAG, B. C.; ZHULIN, I. B.; MOGILNER, Alexander. Model of bacterial band formation in aerotaxis. Biophysical journal, 2003, 85.6: 3558-3574..<br>
 +
<br>
 +
</p>
 +
 +
</div>
 +
</div>
 +
 
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Latest revision as of 00:32, 20 October 2016

S.tar, by iGEM Technion 2016

S.tar, by iGEM Technion 2016

Introduction

The goal of this model is to describe the processes inside the Flash Lab system:

- Change in the concentration of chemo-repellent.
- Change in the concentration of bacteria.

This model is based on the Keller – Segal equation of chemotaxis (1) in a one dimensional problem (Thin channel).

It is important to notice that this model can show the overall behavior and not exact values. The final system is supposed to detect a variety of materials in many different solvents, each of them has its own diffusion properties. Also, some aspects such as working conditions (temperature, humidity etc.) might change in widespread commercial use and affect the results. Taking those into account, further fitting will be necessary.

For PDF version of this model press here

Chemo-Repellent Concentration

Model


The basic assumptions of the model for the chemo-repellent are:

-There are no forces except for diffusion:

- Chemo-repellent concentration in the sample is relatively low and does not cause osmotic pressure.
- The changes in pressure due to loading the sample is negligible.
- No other significant external forces (for example, moving the chip while using).

- The bacteria do not consume the chemo-repellent and its concentration does not change with time. In contrast, in case of a chemo-attractant this assumption is not valid.

- Expect to detect small proteins and molecules (the ligands). The diffusion coefficient for such materials is about 10-9 [m2/s].

- Because of the geometric properties of the channel and the expected diffusion coefficient, this is approximately a semi-infinite one dimensional problem.

- Initial condition: no chemo-repellent is present in the chip at time zero (a).

- Boundary condition: at infinite distance the concentration is zero (b) and the there is conservation of dissolved material mass (c).

We modelled the change in concentration of the chemo-repellent based on a "Top Hat Function" solution for the diffusion problem:

v [M] is the chemo-repellent concentration.
D[m2/s] is the chemo-repellent diffusion coefficient.
N [mol] is the number of moles of the repellent .
A [m2] is the cross-section area of the channel.
h [m] is length of the sample in the channel.
x [m] is the distance on the channel.
t [s] is time.

The solution for this problem is:

Equation 1: Chemo-repellent diffusion problem.


Equation 2: General solution for chemo-repellent diffusion problem.


Graph 1: Chemo-repellent concentration: top hat diffusion.


If x=0 [m] is defined as the point where the sample is loaded to the chip, then the solution for the diffusion problem is:


Equation 3: Chemo-repellent concentration.

Model Results

We ran the chemo-repellent concentration equation in Matlab - Our code can be found here. The parameters used:


Table 1: Parameters for diffusion model.

*This is the diffusion coefficient for potassium permanganate (see "Comparison to Experiment")
** h = (Sample volume)/(Reservoir cross section).

The output for different times:


Graph 2: Model for repellent concentration.

The change in distance of the diffusion limit between 0 to 15 minutes, is relatively big. As the time passes the diffusion limit's speed lowers significantly, and the concentration profile becomes more linear.

Comparison to Experiment

Most diffusion experiments need a dedicated system that is based on the diffusion of an isotope or a fluorescent material that can be detected easily and very precisely. we chose a more basic system since this is only a preliminary testing for showing that the overall system behaves as we expect.

The experiment ran as the setup shown in the "Overview" section: The channel was filled with bacteria in motility buffer and then the sample was inserted. We replaced the motility buffer with water and the chemo-repellent with potassium permanganate in the following amounts:


Table 2: Substance for diffusion experiment.

Modeling was done under the assumption that the motility buffer acts as water, due to the fact that it is mostly water (~98%). Potassium permanganate is a salt with a known diffusion limit and acts as most of the materials we want to detect using our system (small molecules). Also, it has an intense pink color in low concentration which makes diffusion limit visible.

We ran the experiment 4 times, with a standard ruler to measure the distance of the diffusion limit.


Fig. 2: Diffusion of potassium permanganate in water in different times (enhanced picture).

As expected by the mathematical model, the diffusion limit starts moving relatively fast and its speed decreases rapidly. The difference in distance between the models and the experiment can be explained by:

-The actual diffusion limit is in too low concentration of potassium permanganate to be seen in the naked eye. If the visible concentration is about 1.5*10-5 [M] the experimental results line up with the model (graph 3).

-The ruler is a crude measuring tool. Its mistake is ± 0.5 [mm].

-Difficulties in loading uniformly the sample, especially in low volumes. Mistakes in loading the sample inside the bacterial fluid and not on, or sticking the drop of sample to one of the entry slot walls will cause uneven diffusion.


Graph 3: Comparison of diffusion model (c=0.00015[M]) to experiment.

Bacterial Concentration

The basic mathematical model for bacterial chemotaxis is the Keller-Segal equations (1) of chemotaxis:

Equation 1: Keller-Segal equation

where:

u[M] is the bacteria concentration.
v[M] is the chemo-repellent concentration.
k1[m2/s] is the bacteria diffusion coefficient.
k2[m2/M * s] is the bacteria chemotactic coefficient.
k3[M/s] is bacteria life and death coefficient.
x[m] is the distance in the channel.
t[s] is time.

The basic assumptions of the chemotaxis model are:


-k2 describes how sensitive is the bacteria to changes in chemo-repellent concentration. In other words, as its negative value decreases the bacteria will react more violently to same repellent exposure.

-Because of the geometric properties of the channel, this is approximately a one dimensional problem.

-We ran our tests in a short time scale (t<30[min]) so we presume that the change in concentration of bacteria due to life and death is negligible, k3=0.

-The chemo-repellent concentration is known for every x and t.

-There are no changes in the flux of bacterial concentration at the start (a) and at end of the channel (b).


Mathematical Model

Under these assumptions the equation takes the form:


Equation 2: The Bacterial concentration problem.

The above partial differential equation cannot be solved analytically, so we must turn to numerical analysis tools. The implicit Euler method is one of the most basic numerical methods for the solution of ordinary and partial differential equations. This method is guaranteed to be stable and gives us the solution for the entire space in a single point in time.

Using the following discretization:


Equation 3: Bacteria concentration problem – discrete form.




And we can write it as follows:



Equation 4: Bacteria concentration problem – Final form


Given the initial condition:



Equation 5: Bacteria concentration problem- initial condition.


And the boundary conditions which are translated to the following discrete conditions:



Equation 6: Bacteria concentration problem- boundary conditions


With I being the final value of i – index of location.
The above conditions keep the flux of bacteria zero on both sides of the chip as occurs in the actual chip. Hence, no bacteria enter or exit the chip.
The above equation was entered into the Thomas-Three-Diagonal algorithm for solving matrix equations, giving us the solution for the entire space of the problem in a specific point in time. By advancing in time as we solve the equation at each time point we get the solution for the bacterial concentration for every x,t.

Model results

We ran the chemo-repellent concentration equation in Matlab - Our code can be found here.
The parameters used:


Table 1: Parameters for chemotaxis model

Please notice, the results are normalized to enable us to show them on the same scale.

The results are as follows:


Graph 1: Results of bacterial chemotaxis model

Model conclusions:

- The peak of bacterial concentration is caused by the bacterial chemotactic response, moving away from the chemo-repellent, and concentrating.
- The "wave" of bacterial concentration starts moving relatively fast, and slows down quickly. This is due to the change in repellent concentration. The "wave" converges to ~7[mm].
- The bacteria react significantly less to a normalized repellent concentration of less than ~3[mm]. This is approximately where the two graphs intersect.
- As the concentration of repellent goes down, the bacteria are less reactive. This continues as the bacteria's diffusion speed surpasses the chemotaxis rate. In other words, more bacteria move away from the concentration peak than into it for t>15[mim].
- Projecting this on the chip color experiment, we can predict there will be three shades of color: weak where the bacteria moved from (low concentration), strong where the bacteria moved to (high concentration) and on the far end, unchanged as the bacteria were not exposed to the repellent.


Comparison to Experiments

The experiment ran as the setup shown in the "Overview" section: The channel was filled with bacteria in motility buffer and then the sample was inserted. We used engineered E. coli with a S.Tar PctA receptor taken from a plate and suspended in motility buffer. The chemo-repellent used is TCE.



Table 2: Substance for chemotaxis experiment


a.


b.


Fig. 1: a. Chemotaxis of E. coli with a S.Tar PctA receptor due to exposure to TCE (enhanced picture). b. E. coli with a S.Tar PctA receptor exposed to motility buffer (control).


As expected, a visible cluster of strong dark blue has formed next to a lighter shade due to chemotactic activity. Furthermore, the distance the bacteria passed is only a few millimeter as the model predicted.
The time scale does not line up: The color darkens as the experiment continues. This will probably be corrected by using more accurate diffusion and chemotactic coefficients.
Some of the inconsistencies between the model and the experiment (like the uneven cluster of colored bacteria) can be explained by problems loading the chemo-repellent as shown in the chemo-repellent concentration experiment.

Conclusions



Results


This model predicts the overall behavior of our system. In our experiments we were able to show that the concentration of the repellent acts as we expected in terms of changes in the diffusion limit's velocity. When compared to the bacterial concentration, again, the experiments showed a similar behavior as the numeric solution of Keller-Segal equation.

As explained before, this model requires further fitting to get more accurate results. Not only by using more accurate coefficients, but with improving the system itself.



Future development

We would like to improve the model and design new ones based on it. First, develop models for the different coefficients in the Keller-Segal equation: bacteria diffusion coefficient, chemotactic coefficient and bacteria life and death. Theoretically, those coefficients can be controlled by changing some parameters like the number of flagella or receptors a cell has, or even manipulating the biological tracks of the bacteria. This will enable us to get even more accurate results. Secondly, to build a library of different receptors and ligands. Thirdly, expanding our model so it could predict movement of bacteria in different geometric constructs such as funnels or U bends. This research can be the basis of a prototype commercial device.

As for the first part, we worked with iGEM Freiburg (2) in developing a function for the chemotactic coefficient. Also, we designed a new assay for experimentally measuring it.

This assay, named Trap & Track, is a novel way to detect chemotaxis on the nanometric level. By using it we can measure the exact repellent concentration that induces chemotaxis and calculate the chemotactic coefficient accurately for every material. A detailed explanation about the assay can be found here.

As for the second part, the S.Tar system enables us to change the receptors a bacterium has and by that, change the materials it repels from. In the future, this system can be expanded to control the efficiency of these receptors and even control other aspects of the chemotaxis pathway such as the flagella.

The third and final part is to improve the device itself. We designed a new fluidic chip and fabricated it in different methods. This new design will give us a more controlled diffusion by cancelling out most of the flow and fixing the diffusion source. Also, by changing the geometry of the channel, the bacteria concentration will increase and cause a more noticeable signal. This will improve the accuracy of the experiments we run, and in turn, our overall model.

References:
1. KELLER, Evelyn F.; SEGEL, Lee A. Model for chemotaxis. Journal of theoretical biology, 1971, 30.2: 225-234.
2. MAZZAG, B. C.; ZHULIN, I. B.; MOGILNER, Alexander. Model of bacterial band formation in aerotaxis. Biophysical journal, 2003, 85.6: 3558-3574..




S.tar, by iGEM Technion 2016