Line 33: | Line 33: | ||
<div class="sec white three_columns paddingless"> | <div class="sec white three_columns paddingless"> | ||
<div> | <div> | ||
− | <div | + | <div> |
<ul> | <ul> | ||
<li class="outline_item"><a href="#goals">Goals</a></li> | <li class="outline_item"><a href="#goals">Goals</a></li> | ||
Line 45: | Line 45: | ||
</ul> | </ul> | ||
</div> | </div> | ||
− | <div> | + | <div style="padding-bottom:12px;"> |
<ul> | <ul> | ||
<li><a href="https://2016.igem.org/Team:ETH_Zurich/Reporter_Module">Reporter Module</a></li> | <li><a href="https://2016.igem.org/Team:ETH_Zurich/Reporter_Module">Reporter Module</a></li> |
Revision as of 10:06, 1 October 2016
MODEL
INTRODUCTION
Due to the complexity of our system, an intuitive design would not be sufficient. Several components must be tuned specifically for our application, and the correct functioning of the candidate designs is not obvious. We developed a hybrid deterministic-stochastic model of our system covering the mechanics of the components we use. The main goals include a model-aided design of the system, tuning of the system components for our application and prediction of the system behavior.
The stochastic approach of our model allows us to exploit the intrinsic noise at our advantage: our model describes the
The model matches the modular sructure of the system, making easier to exchange components and test their behavior in the full system. Thanks to this feature we were able to quickly test alternative parts like the lactate sensor and the CRISPR switch.
The parameters of the model are strictly based on literature or experimental characterization of the single components. The estiamtion of the parameters uses INSIGHT, a recent method based on Approximate Bayesian Computation (ABC) and flow cytomerty data.1
GOALS
EARLY DESIGN INSIGHTS
- Prove theoretical feasibility of the circuit.
- Assist design of the system by simulating qualitative bahavior.
- Identify potential problems of the system.
SYSTEM TUNING
- Tune the sensors for the for the concentration ranges we want to sense in the gut.
- Adjust the switch module for the desired time scale, still minimizing false positives.
SYSTEM SIMULATION
- Predict the behavior of the complete system.
- Predict impact of alternative modules on the behavior of the system.
- Generate a simple model for inferring the concentrations detected in the gut from fluorescence measurements.
RESULTS
EARLY DESIGN INSIGHTS
Thanks to qualitative simulations of the system during the design phase, we managed to get early information about the behavior of the the system. In particular the model advised us on the design of the reporter system, the placement of the integrase gene and the choice of plasmid ORIs.
Moreover we were able to identify potential problems (like leakiness and sensitivity) and predict their influence on the final system. We designed and constructed the system under awareness of those critical points.
SYSTEM TUNING
Since our application targets specific time and concentration ranges we used the model to tune the components of the system. The sensor module was tuned for the relevant concentrations of quorum sensing molecule and the switch kinetics were adapted for the expected time scale of the measurements.
SYSTEM SIMULATION
After the characterization of the single components we were able to simulate the full system and validate its behavior. This allowed us to model the recorded signal as function of the measured fluorescence distribution, which is a critical operation during actual investigation. The stochastic nature of our model allows us to obtain additional information by taking advantage of the population effect.