Team:Imperial College London/Autoinduction

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Revision as of 21:00, 19 October 2009 by JamesField (Talk | contribs)

Please delete as completed.
Autoinduction feedback from todays session.

1) Mention the purpose of AI - No timer because...
2) Don't link to the temporal control page here.
3) Have a rationale section.
4) Add what teams can reuse from this module.
5) Have a conclusion of the page at the end - couple of lines.


Contents

Module Integration - Autoinduction



Overview

The autoinduction process switches on Module 2 following the accumulation of a predetermined concentration of polypeptide. The term 'autoinduction' was chosen as the flipping of this switch is triggered by the chemical composition of the media in which our chassis is grown. Thus the 'on signal' orginates from inside the system: hence 'autoinduction'.



Design Rationale

Before embarking on the creation of an autoinduction switch we reviewed a number of possible alternatives. A genetically encoded timer was initially considered however these present a considerable number of problems that were absent from an autoinduction switch.

Genetic Timers Autoinduction Switch
Existing genetic timers are unable to provide a long enough delay. The length of our delay can be tuned by altering the composition of our media
They are liable to fall out of phase. Since the whole population are exposed to the same media, a greater proportion will begin Module 2 in synchrony.
They require multiple genes. Only a single promoter is required for our autoinduction switch.


We believe that the advantages and modularity of our autoinduction switch is such that future iGEM teams will be able to deploy it in a broad range of senarios.

Initiation

Module 2 is triggered by a rise in levels of cyclic Adenosine Mono Phosphate (cAMP). This is because cAMP facilitates the dimerisation of the transcription factor CRP which induces transcription downstream of the PcstA promoter (PcstA (BBa_K118011)). The rise in cAMP is correlated with a fall in levels of the primary carbon source (glucose). Thus, by controlling the initial amount of glucose present in the system, we achieve a timer function for the start of Module 2.

Results

II09 diax wolf.jpg
We have modelled autoinduction by a number of models, and we hope that experimental results will confirm which model is most applicable to our system.

The first of our diauxic growth models is a cybernetic model developed by Kompala et al [1]. This model shows that glucose (S1) is used up before the secondary carbon source (S2). During this phase, the population (X) is in exponential grow until glucose (S1) runs out. This is followed by a stationary growth phase, and finally the population enters a second exponential growth phase as they start uptaking the secondary carbon source (S2). Another model was developed by Keasling [2] that takes into account the dynamics of the lactose operon. //Include a nice diauxic growth curve from the lab

  About the models and simulations!



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