Difference between revisions of "Team:Aalto-Helsinki/Results"

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<h3>Background</h3>
 
<h3>Background</h3>
<p>Microbially produced propane holds enormous promise as a potential replacement of portable fossil fuels, but the propane yields with current biological pathways are low. The pathway is complex, and to help concentrate engineering efforts on its critical parts, better quantitative understanding of the pathway is required. Our goals were to build a mathematical model of the pathway to better understand it and create biobricks of the propane pathway to help future teams and researchers to continue improving it.</p>
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<p>Microbiologically produced propane holds enormous promise as a potential replacement of portable fossil fuels, but the propane yields with current biological pathways are low. The pathway is complex, and to help concentrate engineering efforts on its critical parts, better quantitative understanding of the pathway is required. Our goals were to build a mathematical model of the pathway to better understand it and create biobricks of the propane pathway to help future teams and researchers to continue improving it.</p>
  
  
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<h3>Background</h3>
 
<h3>Background</h3>
<p>Industrial scale biopropane production would most likely occur as a continuously operated process, as … [why, Tuukka?] To take the first step towards industrial scale production we wanted to try continuous production of propane using a E. coli strain provided to us by Pauli Kallio from the University of Turku.</p>
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<p>Industrial scale biopropane production would most likely occur as a continuously operated process, as … [why, Tuukka?] To take the first step towards industrial scale production we wanted to try continuous production of propane using a <i>E. coli</> strain provided to us by Pauli Kallio from the University of Turku.</p>
  
 
<h3>Outcome</h3>
 
<h3>Outcome</h3>
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  <ul style="list-style-type:disc">
 
  <ul style="list-style-type:disc">
 
   <li><p><a href="https://2015.igem.org/Team:Aalto-Helsinki/Modeling_synergy">Built a stochastic synergy model</a> in Python, simulating enzyme function in cases where two subsequent enzymes stay in close proximity to each other as opposed to moving around freely in a cell</p></li>
 
   <li><p><a href="https://2015.igem.org/Team:Aalto-Helsinki/Modeling_synergy">Built a stochastic synergy model</a> in Python, simulating enzyme function in cases where two subsequent enzymes stay in close proximity to each other as opposed to moving around freely in a cell</p></li>
   <li><p>The synergy model predicts a 200-400% increase in product output if enzymes stay in close proximity to each other</p></li>
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   <li><p>The synergy model predicts a 200-400 % increase in product output if enzymes stay in close proximity to each other</p></li>
 
   <li><p><a href="https://2015.igem.org/Team:Aalto-Helsinki/Modeling_micelle">Constructed a geometrical micelle model</a> based on the sizes and structures of the micelle-forming proteins, indicating that it is indeed possible for micellar structures to form even as enzymes are fused to them</p></li>
 
   <li><p><a href="https://2015.igem.org/Team:Aalto-Helsinki/Modeling_micelle">Constructed a geometrical micelle model</a> based on the sizes and structures of the micelle-forming proteins, indicating that it is indeed possible for micellar structures to form even as enzymes are fused to them</p></li>
 
   <li><p><a href="https://2015.igem.org/Team:Aalto-Helsinki/Parts">Submitted a BioBrick</a> encoding the amphiphilic protein to the registry</p></li>
 
   <li><p><a href="https://2015.igem.org/Team:Aalto-Helsinki/Parts">Submitted a BioBrick</a> encoding the amphiphilic protein to the registry</p></li>
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<h3 id="modelingpropane">Propane pathway</h3>
 
<h3 id="modelingpropane">Propane pathway</h3>
  
<p>We determined the bottlenecks of our reaction, FadB2 being the worst. This caused the lab team to change it to Hbd. After FadB2 the worst bottlenecks are Ado, Car and Hdb. This knowledge affected our decisions on which backbone we should put which construct. Our pathway is also very sensitive to NADPH and NADH concentrations. See more from our page of <a href="https://2015.igem.org/Team:Aalto-Helsinki/Modeling_propane">modeling propane pathway</a></p>
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<p>We determined the bottlenecks of our reaction, FadB2 being the worst. This caused the lab team to change it to Hbd. After FadB2 the worst bottlenecks are ADO, CAR and Hdb. This knowledge affected our decisions on which backbone we should put which construct. Our pathway is also very sensitive to NADPH and NADH concentrations. See more from our page of <a href="https://2015.igem.org/Team:Aalto-Helsinki/Modeling_propane">modeling propane pathway</a></p>
  
 
<h3 id="modelingcellulose">Cellulose pathway</h3>
 
<h3 id="modelingcellulose">Cellulose pathway</h3>

Revision as of 14:59, 16 September 2015

Results

Overview

needs to be written

Propane pathway

Background

Microbiologically produced propane holds enormous promise as a potential replacement of portable fossil fuels, but the propane yields with current biological pathways are low. The pathway is complex, and to help concentrate engineering efforts on its critical parts, better quantitative understanding of the pathway is required. Our goals were to build a mathematical model of the pathway to better understand it and create biobricks of the propane pathway to help future teams and researchers to continue improving it.

Outcome

Figure 1: Illustrative figure of the bottleneck results of our pathway.
  • Built a model of the pathway based on known kinetic properties of the enzymes

  • Identified major bottlenecks of the propane pathway using our model

  • Improved our experimental plans according to the modeling results by changing one enzyme to a better homolog and expressing the rate-limiting enzyme from the highest copy number backbone used

  • Found that propane output was sensitive to NADPH/NADH, suggesting their efficient regeneration might be a limiting factor

  • Submitted a BioBrick containing three crucial enzymes of the propane pathway

  • Successfully assembled an insert containing the rest of the pathways components, BUT WERE UNABLE TO… [how do I express this? Petra, Anna?]

Continuous production

Our chemostat.

Background

Industrial scale biopropane production would most likely occur as a continuously operated process, as … [why, Tuukka?] To take the first step towards industrial scale production we wanted to try continuous production of propane using a E. coli strain provided to us by Pauli Kallio from the University of Turku.

Outcome

  • Successful batch production to prepare analytical equipment for continuous production

  • First report ever worldwide of successful microbial production of propane in continuous production

  • 145 hour continuous production experiment in a 500 ml chemostat

  • Propane yield 22,7 µg/L in reactor gas phase

Amphiphilic protein

Background

Amphiphilic proteins are synthetic proteins consisting of a hydrophilic and a hydrophobic domain that have been shown to spontaneously form micellar and vesicular structures. We were interested whether these structures could be used as scaffolds to have subsequent enzymes of the propane pathway in close proximity. To study if fusing enzymes to the proteins would disrupt micelle formation and whether our idea could enhance propane output we wanted to build models.

Outcome

Figure 2: 2d simplification of the micelle structure
  • Built a stochastic synergy model in Python, simulating enzyme function in cases where two subsequent enzymes stay in close proximity to each other as opposed to moving around freely in a cell

  • The synergy model predicts a 200-400 % increase in product output if enzymes stay in close proximity to each other

  • Constructed a geometrical micelle model based on the sizes and structures of the micelle-forming proteins, indicating that it is indeed possible for micellar structures to form even as enzymes are fused to them

  • Submitted a BioBrick encoding the amphiphilic protein to the registry

  • Due to time restraints, we were unable to experimentally validate the idea by fusing either two subsequent enzymes of the propane pathway or components of the violacein pathway to the amphiphilic proteins

N-terminally fusable GFP

Background

To validate our amphiphilic brick, we needed a GFP that could be fused to the amino-terminal end of the protein. There was no such brick available on the registry. We wanted to create a GFP BioBrick that could be fused to the N-terminal end of any protein using BioBrick methods.

Outcome

  • Submitted a BioBrick encoding GFP with an extra nucleotide prior to the suffix, ensuring that it can be fused to the N-terminal end of a protein using BioBrick assembly methods while maintaining the reading frame

  • Collaborated with team HS Slovenia to validate the brick

GFP microscope pic

Combining modeling and experimental work in iGEM

Background

Mathematical modeling is a key component of synthetic biology and also played a central role in our project. Collaboration between modelers and biologists can however be challenging, something we also noticed in our project. We wanted to study how iGEM teams tackle these challenges and are able to integrate modeling to their experimentation.

Figure 3: Educational background of questionnaire respondents, 2014 iGEM
participants and professional synthetic biology researchers categorized.
"Mathematical" includes mathematics, computer science and physics.

Outcome

  • Created a questionnaire for iGEM teams on collaboration between modeling and experimentation, and studied 2014 teams and professional synthetic biology groups to find out what educational backgrounds team members are coming from

  • Biggest issues in collaboration between modelers and experimentalists are: lack of knowledge of the other field, lack of common terminology and differences in ways of thinking

  • Both modelers and biologists need to understand the basics of the other field to be able to effectively collaborate.

  • Having experimentalists and modelers work close together is beneficial. One approach generally found successful is to have some biologists get involved in modeling to help ensure models are useful for the project and connected to reality.

  • Regular team meetings for presenting and discussing progress and issues of every field take time, but ensure all team members stay informed and can voice their insights.

  • Students with a mathematical background are underrepresented in iGEM teams as compared to professional synthetic biology groups.

  • On the other hand, iGEM teams have relatively many biotechnology students, who often stand seem to act as mediators between the modeling and experimentation.

HumHub report and Collab Seeker

Background

Finding new collaboration partners in iGEM is not easy, as finding information about different teams projects is time-consuming and often difficult. On the other hand, communication with other teams as well as internal team communication can be difficult due to a multitude of platforms used, often cluttered with non-iGEM content. We wanted to do something to these issues to make iGEM even better.

Outcome

  • Worked with Stockholm iGEM team on HumHub, a collaboration platform for iGEM teams, and collaboratively wrote a report on it with them

  • Created a questionnaire on how teams found their collaboration partners and how they’re keeping in touch with them

  • Found that 22 out of the 23 teams that answered wished for better means to find collaboration partners with

  • Built Collab Seeker, a lightweight collaboration search tool, which helps find relevant collaboration partners using keywords and provides their contact information

pic of collab seeker?
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Modeling results

Modeling is an important part of synthetic biology. With good models, one can gain insight of the biological phenomena before doing anything in the lab. Understanding the biological system allows us to make better decisions as we modify the system for our purposes. We succeeded in building models that helped our project, even though the cellulose pathway remained a mystery for the modeling team.

Propane pathway

We determined the bottlenecks of our reaction, FadB2 being the worst. This caused the lab team to change it to Hbd. After FadB2 the worst bottlenecks are ADO, CAR and Hdb. This knowledge affected our decisions on which backbone we should put which construct. Our pathway is also very sensitive to NADPH and NADH concentrations. See more from our page of modeling propane pathway

Cellulose pathway

We didn't get any meaningful results from our (nonexistent) cellulose model. Check the cellulose page to read more about the degradation pathway and what thoughts our modeling team had.

Micelle

We determined that it is geometrically possible to form the micelles. We also determined that it would be beneficial to have Car and Ado close together instead of the traditional way of them floating independently in the cell.

Lab results

This is a link to our lab results page!

Future

To read our thoughts on future prospects and on how to carry on from where we left, please see our Future page.