Difference between revisions of "Team:Thessaloniki/Model"

Line 171: Line 171:
 
                                     estimations. As
 
                                     estimations. As
 
                                     an example, of how we used our models to help in the system
 
                                     an example, of how we used our models to help in the system
                                     design, you can take a look at TALE tuning with IPTG-LacI,
+
                                     design, you can take a look at <a href="https://2018.igem.org/wiki/index.php?
                                     dcas9-sgRNA repressor analysis, and dcas9 expression site
+
                                    title=Team:Thessaloniki/Model/Tale&action=edit#lacI">TALE tuning with IPTG-LacI</a>,
 +
                                     <a href="https://2018.igem.org/wiki/index.php?
 +
                                    title=Team:Thessaloniki/Model/dCas9&action=edit#repan">dcas9-sgRNA repressor analysis</a>,  
 +
                                    and  
 +
                                    <a
 +
                                    href="https://2018.igem.org/wiki/index.php?
 +
                                    title=Team:Thessaloniki/Model/dCas9&action=edit#express">dcas9 expression site</a>
 
                                     decision. As a last part of our model, we also tested the
 
                                     decision. As a last part of our model, we also tested the
 
                                     implementation of IFFL in RNA level. On the other hand, an
 
                                     implementation of IFFL in RNA level. On the other hand, an

Revision as of 01:01, 18 October 2018

The goal of the model is to study the Incoherent Feed Forward Loop (IFFL) as a network type in three systems that use different components critical to the proper network operation. This function aims at balancing the final product to a specific steady state, regardless of the input disruption. We then responded to questions raised by the wet lab, thus helping towards the right course of thought during experimental planning, as well as a better understanding of the systems and the different choices that emerged. We applied a sensitivity analysis to classify system parameters according to their significance, and finally, we explored the robustness of our system predictions by indentifying parameter sets and evaluating their cellular behavior.

How IFFL works

The stability of a system in which IFFL is applied is represented by the staying of its output at a constant level in the equilibrium state for each change of input. In this type of network, the number of plasmids is the input, which is variable and the final protein is the output of the system that must remain constant at each change of input.

In the following figure, the input X is shown to be responsible for the continuously increasing production of the gene of interest Z, as well as for the production of the internal variable Y, which suppresses the production of Z.