Difference between revisions of "Team:UNOTT/Modelling"

Line 356: Line 356:
 
       <center></center>
 
       <center></center>
 
           <div id="clear5" style="display: none;">
 
           <div id="clear5" style="display: none;">
      <p> Another issue the team faced was that at any given time, it was expected that the proteins would be expressed so the bacteria would fluoresce. This can be confirmed by looking at the bacteria after being constructed and observing that they are giving off light. However, it was unknown what intensity this fluorescence would be. </p>
+
<p> Another issue the team faced was that at any given time, it was expected that the proteins would be expressed so the bacteria would fluoresce. This can be confirmed by looking at the bacteria after being constructed and observing that they are giving off light. However, it was unknown what intensity this fluorescence would be. </p>
 
<br></br>
 
<br></br>
      <p> To solve this issue,  an equation was developed to find out what the intensity of fluorescence would be at that certain time. This consisted of of calculating the protein concentration at the time and using real life lab data of the fluorescence at that time period, the team could map that intensity to the protein concentration at that time. </p>
+
<p> To solve this issue,  an equation was developed to find out what the intensity of fluorescence would be at that certain time. This consisted of of calculating the protein concentration at the time and using real life lab data of the fluorescence at that time period, the team could map that intensity to the protein concentration at that time. </p>
 
<br></br>
 
<br></br>
      <p> When the fluorescence data received from the wet lab were graphed, a model was constructed using the data. Originally, the data from the lab was the Fluorescence against Time but by using the Gene Transcription Regulation by Repressors model developed earlier <sup> 1 </sup>, the team were able to estimate the protein concentration at a certain time periods. </p>
+
<p> When the fluorescence data received from the wet lab were graphed, a model was constructed using the data. Originally, the data from the lab was the Fluorescence against Time but by using the Gene Transcription Regulation by Repressors model developed earlier <sup> 1 </sup>, the team were able to estimate the protein concentration at a certain time periods.</p>
      <sup> Figure 7 </sup>
+
 
 +
<sup> Figure 7 </sup>
 
       <br> </br>
 
       <br> </br>
 
       <p style="text-align: center;" > <img src="https://static.igem.org/mediawiki/2017/1/19/T--UNOTT--ProteinConcVsFluorescence.png" class="border" height="600" width="1000" style= position: fixed; align=center; > </p>
 
       <p style="text-align: center;" > <img src="https://static.igem.org/mediawiki/2017/1/19/T--UNOTT--ProteinConcVsFluorescence.png" class="border" height="600" width="1000" style= position: fixed; align=center; > </p>
 
       <br> </br>
 
       <br> </br>
      <p> Due to time constraints, rather than implementing the relationship directly from lab data, the data was fitted using a Polynomial Fit of Order 3 using Excel and an equation was calculated from these. These equations were directly plugged into the simulation. However, this is inaccurate as the R squared value was ... , suggesting that it doesn't fully capture the data trend. </p>
+
<p> These graphs show the relationship between protein concentration of a certain type of protein and the intensity that can be expected of it. By integrating real life data into the models, we can have accurate representation of how the bacteria would behave in real life. This suggests that when comparing the modelled data to real life data from for our lab data set. there is a strong fit. However, this is not necessarily true for all cases: we simply only had data for the conditions we were using, which suggests that more data would be required for the models to be truly representative of real world data.</p>
 +
<br> </br>
 +
<p> Due to time constraints, rather than implementing the relationship directly from lab data, the data was fitted using a Polynomial Fit of Order 3 using Excel and an equation was calculated from these. These equations were directly plugged into the simulation. However, this is inaccurate as the R squared value was ... , suggesting that it doesn't fully capture the data trend. </p>
 
<br></br>
 
<br></br>
 
       <p> These relationships were implemented into the simulation to give the expected spectra produced by each protein. This highlights another use: by adding or subtracting values from our fit, we can create a threshold for our Keys. This was essential when developing the Raw Data Simulator. <sup> 2 </sup></p>
 
       <p> These relationships were implemented into the simulation to give the expected spectra produced by each protein. This highlights another use: by adding or subtracting values from our fit, we can create a threshold for our Keys. This was essential when developing the Raw Data Simulator. <sup> 2 </sup></p>

Revision as of 15:24, 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

Working out which wavelengths are required to produce a fluorescence spectra.

Are Our Constructions Random?



Showing that our constructions are random and why they are random

Conclusion

What iGEM Nottingham 2017 learnt from modelling and how modelling impacted the project.