Difference between revisions of "Team:US AFRL CarrollHS/Collaborations"

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     <h1>Modeling</h1>
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     <h1>Collaborations</h1>
     <p><b>A Visual, Mathematical Representation of Our Project</p></b>
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     <p><b>Insert Witty Subtitle</p></b>
 
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<h2>Overview</h2>
 
<p>NUS-GEM has completed modelling of Plasmid 1, and Plasmid 2 from the LabPats iGEM. Below you can find the related methodology, results, and discussion. Results indicate the expression levels in increasing order from RBS33, RBS31, RBS30, RBS29, RBS34, RBS35. The modelling results should serve to guide your experiment: you can use the predictions ascertained from modelling results to guide your choice of RBS to obtain the correct expression level of sfGFP in the experiment phase which in turn saves you time and resources.</p>
 
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<h2>Methodology</h2>
 
<p>Given the genetic circuits provided by LabPats team, we modelled the response functions of Plasmid1 and Plasmid 2. After generating the functional response models for both models, we ran a combinatorial analysis that tested the response of sfGFP expression across a range of RBS from RBS29-35, and performed sensitivity analysis. A combinatorial analysis requires changing one part and measuring the changing response of the model. In contrast, a sensitivity analysis measures the impact each part contributes to the response of the mode. The RBS in Plasmid 2 that was changed in the combinatorial analysis was the RBS downstream of J23117, as requested. Plasmid 1 and Plasmid 2 models were both simulated for 3600s. This timeframe is suitable as the models capture the transient and steady state responses of sfhyuGFP.
 
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Due to a lack of data regarding the promoter strength and molecular interaction kinetics of PLsr (Plasmid 1), and the molecule interaction kinetics between PLasR and LasR molecules (Plasmid 2), we have assigned approximations for these two values. Plasmid 1 model assumes PLsR to have a promoter strength of 1 RPU (relative promoter unit), and sets the initial conditions of LsrK and LsrR to be 0 a.u. The Plasmid 2 model assume all LasR molecules induce the PLasR promoter with no degradation.
 
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In addition, the RBS kinetic values used were determined experimentally from characterisation experiments conducted by AdvanceSyn using the PBbE8K vector with E. Coli MG1655 host. We can expect discrepancies in the strength of RBS across different experimental conditions such as when testing in different strains and mediums.</p>
 
 
<table>
 
<tr>
 
<th>RBS</th>
 
<th>Relative RBS Strength</th>
 
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<tr>
 
<td>RBS29</td>
 
<td>0.00001</td>
 
</tr>
 
 
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<td>RBS30</td>
 
<td>0.000009184</td>
 
</tr>
 
 
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<td>RBS31</td>
 
<td>0.0000042</td>
 
</tr>
 
 
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<td>RBS32</td>
 
<td>0.0001</td>
 
</tr>
 
 
<tr>
 
<td>RBS33</td>
 
<td>3e-8</td>
 
</tr>
 
 
<tr>
 
<td>RBS34</td>
 
<td>0.00045</td>
 
</tr>
 
 
<tr>
 
<td> RBS35</td>
 
<td>0.00051</td>
 
</tr>
 
 
</table>
 
<p class="caption">Table 1 RBS strengths determined from AdvanceSyn experiments</p>
 
 
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<img class="graph" src="https://static.igem.org/mediawiki/2017/5/5c/US_AFRL_CarrollHS_ModelingImage1.png">
 
<p class="caption">Figure 1 (Above) LabPats Plasmid 1 modelled genetic circuit with RBS35</p>
 
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<img class="graph" src="https://static.igem.org/mediawiki/2017/5/5e/US_AFRL_CarrollHS_ModelingImage2.png">
 
<p class="caption">Figure 2 (Above) LabPats Plasmid 2 genetic circuit modelled using RBS 34</p>
 
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<h2>Results</h2>
 
<h3>LabPats Plasmid #1</h3>
 
<img class="actualgraph" src="https://static.igem.org/mediawiki/2017/2/25/US_AFRL_CarrollHS_ModelingImage3.png">
 
<p class="caption">Graph 1: sfGFP expression is greatest when using RBS 34,35. Medium sfGFP expression is achieved when using RBS 29,30. Low sfGFP expression is achieved with RBS 31. Very low sfGFP expression is achieved with RBS33.</p>
 
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<table>
 
<tr>
 
<th>Most Sensitive Variables (Descending Order)</th>
 
</tr>
 
 
<tr>
 
<td>PLsr Vmax</td>
 
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<tr>
 
<td>PLsr Hill Coefficient</td>
 
</tr>
 
<tr>
 
<td>Initial condition of LsrR molecule</td>
 
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</table>
 
<p class="caption">Table 2 The maximum velocity rate of PLsr and the Hill Coefficient (measure of binding between molecule and binding site) are the most sensitive parameters of LabPats Plasmid 1. Therefore, changing the type of promoter or the kinetics of the promoter, will have the greatest effect on sfGFP response. To a lesser extent, increasing the amount of LsrR repressor molecule will also impact the response.</p>
 
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<h3>LabPats Plasmid #2</h3>
 
 
<img class="actualgraph" src="https://static.igem.org/mediawiki/2017/d/d2/US_AFRL_CarrollHS_ModelingImage4.png">
 
<p class="caption">Graph 2 The expression patterns from using different RBS is identical to the results obtained in LabPats Plasmid 1.</p>
 
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<table>
 
<tr>
 
<th>Most Sensitive Variables (Descending Order)</th>
 
</tr>
 
 
<tr>
 
<td>PLasr Vmax</td>
 
</tr>
 
<tr>
 
<td>J23117 Vmax</td>
 
</tr>
 
<tr>
 
<td>Relative RBS strength</td>
 
</tr>
 
<tr>
 
<td>PLasR Km</td>
 
</tr>
 
</table>
 
<p class="caption">Table 3 Changing the promoter or kinetics of PLasR and J23117 will have the greatest effect on the response of sfGFP. Fine tuning of the system can be achieved by modifying the RBS used.</p>
 
 
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<h2>Discussion</h2>
 
<p>Results indicate that the greater the RBS strength, the greater the expression level of sfGFP. Therefore, from RBS29-35, RBS 35 and RBS34 offer the greatest levels of expression. They are followed by RBS29 and 30 which offer medium levels of expression, then RBS31 which offers low levels of expression, and finally RBS33 which offers a very low level of expression.</p>
 
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<p>
 
In addition, the sensitivity analysis show that the kinetic characteristics of the promoter have the greatest effect on sfGFP response. If substantial changes are needed to modify expression levels, the model strongly recommends experimenters to change the promoter used, or modify its kinetic values. However, as promoter engineering is a complex process, the next best solution is change the RBS which can offers less impact in changing response than changing the promoter. Therefore, for reasons of convenience or fine- tuning of response, the model suggests changing the RBS can achieve the required results.</p><br>
 
<p>In practice, let us consider a case in Plasmid 2 where 1. the expression levels of sfGFP is not high enough despite using RBS34; and 2. PLasR is fixed because of its application in the circuit. Experimenters could change RBS34 to RBS35 to increase expression levels, however the resultant increase in sfGFP expression may not be enough. From the model we can identify that promoter strength has the greatest effect on response, therefore by changing J23117 to a stronger constitutive promoter such as J23114, we should be able to increase sfGFP expression levels significantly.</p>
 
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<h2>Limitations of the Model</h2>
 
<p>Models of Plasmid 1 and Plasmid 2 represent a general understanding of the system; however, they are not without their limitations. As stated previously, the models are limited due to assumptions in Plasmid 1 about promoter strength and molecule interaction kinetics between LsrR and PLsr; and in Plasmid 2 assumptions about the molecule interaction kinetics between PLasR and LasR. To rectify these limitations further characterisation of PLsR and LsrR molecule, and PLasR and LasR molecule are needed.</p>
 
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<p>Finally, modelling results are not true representations of results but rather only general representations; models only offer a guide for experimenters. Parameters such as humidity, pH, medium, strain type and temperature are only a few of the many parameters known to affect results. However, as current modelling systems cannot capture all possible parameters, they cannot match experimental results in terms value. Therefore, the purpose of modelling is to guide the experimenter by presenting them with insight and understanding of their system. This advantage, saves the experimenter time and resources during the experiment phase. For example, the models produced from LabPats Plasmid 1 and LabPats Plasmid 2 identify the effect different RBS may have on the system as well as identify the most sensitive parts in the genetics circuits.
 
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<h2>Our Applications</h2>
 
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<h2>Credits</h2>
 
<p>We would like thank the NUS-GEM iGEM team for collaborating with us on modeling. NUS-GEM modeled our project, along with writing it up. All the text, tables, graphs, and images on this page were created by them.</p>
 
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<h2>Teams </h2>
 
<h2>Teams </h2>
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<p><h4>University of Nebraska Lincoln</h4> We filled out their scientific survey over global warming and methane gas online.
 
<p><h4>University of Nebraska Lincoln</h4> We filled out their scientific survey over global warming and methane gas online.
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Revision as of 18:50, 29 October 2017


Collaborations

Insert Witty Subtitle

Teams


Northwestern:

One of the first teams we reached out to was Northwestern. The two teams exchanged project information and provided each other initial feedback.


Imperial London:

For our team, the Wiki proved the most challenging aspect of the required iGEM components due to our lack of computer experts. Fortunately for us, London's Imperial Team came to the rescue. The Brits guided us on various Wiki components and even offered their old website code for us to dissect and examine in order to implement on our website. We're extremely grateful and hope to meet them in Boston to express our thanks!


London School of Boys:

The London School of Boys' iGEM Team was also very beneficial in Wiki help. Adam Jones assisted Annie with many questions regarding the Wiki and went above and beyond to help us with coding.


Singapore:

Wilbert from the Singapore University team was extremely helpful, assisting us with any number of iGEM components and technicalities. He enthusiastically gave us pointers about the Jamboree as well as the iGEM “Do’s and Don’ts”. Because this is the students' first year participating in the iGEM competition, Wilbert meticulously explained some of the more obscure steps to achieve medal criteria and even offered to guide us in the modeling portion of the project. The students still speak fondly of Wilbert and hope to meet him at the Jamboree in November.


US Army/US Marine:

The U.S. Army and Marine were two of the teams that we have contacted. Our team held a long Skype discussion concerning the iGem process and goals, as well as the Interlab, Wiki details, and activities at the Jamboree. The US Navy team advised us to complete the Interlab carefully and to use the already provided Excel spreadsheet. On our side, we offered to help the US Army team with troubleshooting their project. After the video conference, we were able to finish the Interlab swiftly with few hiccups.


Michigan State:

We plan to attend the mini-Jamboree/meet-up on July 29th at Michigan State University. There will be quite a few teams attending and many activities have been planned. Our team gave a short presentation and then discuss and receive feedback and criticism. Our team meet an iGEM veteran who gave the team extremely insightful advice on the inner workings of the jamboree. We were very excited!


University of Nebraska Lincoln

We filled out their scientific survey over global warming and methane gas online.

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