Difference between revisions of "Team:UNOTT/Modelling"

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          <h4 style="color: #ffffff; font-weight: bold; font-size: 30px;">Conclusion</h4><center></center>
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    <h5 style="color: #C0C0C0; font-weight: bold; font-size: 20px;"> What iGEM Nottingham 2017 learnt from modelling and took away from it. </h5>
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    <p> The main objectives of modelling were met: the simulation for calculating the fluorescence spectra was completed and was not only  extensively used in the lab to generate spectra when the parameters consisted of different protein concentrations, but was used to produce dummy data for the comparison software to produce a demo for when industry contacts came to visit the labs. Furthermore, the models allowed for parameters we couldn't test for in the lab for example, what the spectra would look like if one protein was inhibited but the others weren't.</p>
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    <p> The main reason the team undertook a rigorous approach to modelling was because it wouldn't have been accurate to construct a single model to show how the fluorescence spectra would vary with protein concentration without taking into account elements such protein degradation, the impact of CRISPRi and whether wavelengths would impact how the strong the intensity is. The simulation simply allowed the team to combine all the models produced to give a desired output in a programming fashion so the model could be used by anyone without a maths and programming background. </p>
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    <p> Overall, the models showed that given a specific wavelength and a certain concentration of protein (ug/mol), a spectra will be produced. Furthermore, beyond helping to validate real world data, it helped to solve practical issues with the wet lab. The biggest issue modelling helped to solve was that the wet lab weren't able to produce any CFP fluorescence. The models showed that after 500nm, the CFP proteins wouldn't fluoresce, which suggested the solution to this problem would be to use a lower wavelength, such as 490nm </p>
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      <h4 style="color: #ffffff; font-weight: bold; font-size: 30px;">Are Our Constructions Random?</h4><center></center>
 
    <br> </br>   
 
    <h5 style="color: #C0C0C0; font-weight: bold; font-size: 20px;"> Showing that our constructions are random and why they are random </h5>
 
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        <p> When constructing our proteins with our current method, there were 3 vectors we could order from. <p>
 
 
      
 
      
        <p> However, in this proof of concept, order is irrelevant as the gene is either inhibited (1) or not (0). Using </p>
 
        $$ \color{white}{  n ^ r } $$
 
        <p> Where n = 2 and r = 3, this gives us a total combination of 2<sup> 3 </sup> {1,1,1} {1,1,0} {1,0,1} {1,0,0} {0,1,1} {0,1,0} {0,0,1} {0,0,0} </p>
 
   
 
        <p> Randomness comes from the fact the system relies on Brownian Motion <sup> 1 </sup>, a random process to create these combinations.</p>
 
   
 
        <p> However, in order for a movement to fall under Brownian Motion, it must fulfill a condition where the process must have continuous paths. This is not true as once the structures begin to form, the paths stop  (they do not collide off each other elastically, but rather, combine.) Furthermore, the bacterium might become biased towards options that put less metabolic stress on the bacterium, which results in selection. Alternatively, using metabolites to undergo transposition can improve randomness. <sup> 2 </sup> </p>
 
   
 
        <p> In order to aid, with the wet lab in what combinations they can expect, the team developed an Excel Spreadsheet where a user can simply input details of the construction and it would show what construction it would look like </p>
 
   
 
        <p> Members of the public are encouraged to try it out and can use it to help with identifying how their spectra would look if they used the same proteins the project used </p>
 
   
 
        <a href="https://github.com/BurgundyIsAPublicEnemy/iGEMNotts2017/tree/master/Models">Excel Spreadsheet</a>
 
   
 
        <br> </br>
 
        <p> <sup> 1 </sup> Refer to https://statistics.stanford.edu/sites/default/files/EFS%20NSF%20149.pdf </p>
 
        <p> <sup> 2 </sup> Refer https://link.springer.com/book/10.1007%2F978-1-4612-0459-6 for more information about Brownian Motion and Random Walk. </p>
 
       
 
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<div class="expandable-box">
 
      <h4 style="color: #ffffff; font-weight: bold; font-size: 30px;">Conclusion</h4><center></center>
 
<h5 style="color: #C0C0C0; font-weight: bold; font-size: 20px;"> What iGEM Nottingham 2017 learnt from modelling and took away from it. </h5>
 
      <div id="clear9" style="display: none;">
 
<p> The main objectives of modelling were met: the simulation for calculating the fluorescence spectra was completed and was not only  extensively used in the lab to generate spectra when the parameters consisted of different protein concentrations, but was used to produce dummy data for the comparison software to produce a demo for when industry contacts came to visit the labs. Furthermore, the models allowed for parameters we couldn't test for in the lab for example, what the spectra would look like if one protein was inhibited but the others weren't.</p>
 
 
<p> The main reason the team undertook a rigorous approach to modelling was because it wouldn't have been accurate to construct a single model to show how the fluorescence spectra would vary with protein concentration without taking into account elements such protein degradation, the impact of CRISPRi and whether wavelengths would impact how the strong the intensity is. The simulation simply allowed the team to combine all the models produced to give a desired output in a programming fashion so the model could be used by anyone without a maths and programming background. </p>
 
 
<p> Overall, the models showed that given a specific wavelength and a certain concentration of protein (ug/mol), a spectra will be produced. Furthermore, beyond helping to validate real world data, it helped to solve practical issues with the wet lab. The biggest issue modelling helped to solve was that the wet lab weren't able to produce any CFP fluorescence. The models showed that after 500nm, the CFP proteins wouldn't fluoresce, which suggested the solution to this problem would be to use a lower wavelength, such as 490nm </p>
 
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Revision as of 13:37, 1 November 2017





MODELLING

Overview







About modeling and why iGEM Nottingham chose to do it

Constitutive Gene Expression For Protein and mRNA Expression over Time

The general gene expression equation showing the process of protein synthesis

Gene Transcription Regulation by Repressors (CRISPRi) - Concentration over Time

Calculating how much protein is produced over time when a gene is inhibited

Relationship between Max Fluorescence and Protein Concentration

Using our models to estimate the amount of fluorescence expected from a certain concentration of protein synthesized

Absorption and Emission Wavelengths From Given Concentrations of sfGFP, mRFP & ECFP

Conclusion

What iGEM Nottingham 2017 learnt from modelling and took away from it.

Are Our Constructions Random?



Showing that our constructions are random and why they are random