Team:Amsterdam/achievements/stochastic model

From 2012.igem.org

(Difference between revisions)
(Comparison of SSA implementations)
(References)
 
(7 intermediate revisions not shown)
Line 27: Line 27:
ordinary differnential equations are unsuited towards modelling systems with small integer amounts of the constituting species.
ordinary differnential equations are unsuited towards modelling systems with small integer amounts of the constituting species.
In these cases a finer-grained modelling method is called for: the Stochastic Simulation Algorithm by Gillespie.
In these cases a finer-grained modelling method is called for: the Stochastic Simulation Algorithm by Gillespie.
-
By modelling each individual molecular reaction separately, the discreteness of this small amounts system is accounted for.
+
By modelling each individual molecular reaction separately, the discreteness of this small amounts system is accounted for.
 +
Despite the small amounts of species present in the system analyzed here, we found no qualitative differences between the ODE and stochastic versions of the model.
==== Comparison of SSA implementations ====
==== Comparison of SSA implementations ====
Line 51: Line 52:
==ODE Model definition==
==ODE Model definition==
-
<table align="left">
+
<table align="right">
<tr><th>Parameter</th><th>Value</th></tr>
<tr><th>Parameter</th><th>Value</th></tr>
<tr><td>Ca</td> <td>$200\ \text{or}\ 40$</td>
<tr><td>Ca</td> <td>$200\ \text{or}\ 40$</td>
Line 100: Line 101:
The equations in the stochastic model are qualitatively equal to the ones in the differential equation model.
The equations in the stochastic model are qualitatively equal to the ones in the differential equation model.
-
Analyzing the behaviour of this model of this model by looking at the time-lapse plots, we see a similar trend as in the ODE-model:
+
The equations, parameter and initial species values can be viewed on [[Team:Amsterdam/achievements/stochastic_model_definition|this page]].
-
all plasmids are methylated. The fusion protein amounts are shown to be widely varying, but this does not alter the fraction of methylated plasmids much.
+
Analyzing the behaviour of this model by looking at the time-lapse plots, we see a similar trend as in the ODE-model:
 +
all plasmids are methylated within a short amount of time. The fusion protein amounts are shown to be widely varying, but this does not alter the fraction of methylated plasmids much.
[[File:Stoch_single.png|thumb|200px|Single trajectory of stochastic model. Just as in the deterministic model, all plasmids are methylated within a short amount of time due to the leaky expression with the used values for $ k_{cat} $ and $ k_{cFP} $]]
[[File:Stoch_single.png|thumb|200px|Single trajectory of stochastic model. Just as in the deterministic model, all plasmids are methylated within a short amount of time due to the leaky expression with the used values for $ k_{cat} $ and $ k_{cFP} $]]
-
 
-
<table align="left">
 
-
<tr><th>Reaction</th><th>Propensity</th></tr>
 
-
<tr><td>
 
-
$ \text{R}_{2}\text{O} \rightarrow \text{R}_{2}\text{O} + \text{M}_{\text{FP}} $
 
-
</td><td>
 
-
$ \text{R}_{2}\text{O} \cdot \text{k}_{\text{s0MFP}} $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{M}_{\text{FP}} \rightarrow \text{M}_{\text{FP}} + \text{FP} $
 
-
</td><td>
 
-
$ \text{k}_{\text{sFP}} \cdot \text{M}_{\text{FP}} $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \oslash \rightarrow \text{PlasU} $
 
-
</td><td>
 
-
$ k_{\text{Plas}} \cdot (\frac{\text{PlasM} + \text{PlasU}}{Ca})$
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{FP} \rightarrow \oslash $
 
-
</td><td>
 
-
$ \lambda_{\text{FP}} \cdot \text{FP} $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{M}_{\text{FP}} \rightarrow \oslash $
 
-
</td><td>
 
-
$ \lambda_{\text{MFP}} \cdot \text{M}_{\text{FP}} $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{PlasU} \rightarrow \text{PlasM} $
 
-
</td><td>
 
-
$ \frac{\text{k}_{\text{cFP}}}{\text{N}_{\text{A}} \cdot \text{V}_{\text{Ecoli}}} \cdot \text{FP} \cdot \text{PlasU} $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{PlasU} \rightarrow \oslash $
 
-
</td><td>
 
-
$ \lambda_{\text{Plas}} \cdot \text{PlasU} $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{PlasM} \rightarrow \oslash $
 
-
</td><td>
 
-
$ \lambda_{\text{Plas}} \cdot \text{PlasM} $
 
-
</td></tr>
 
-
</table>
 
-
 
-
<table align="left">
 
-
<tr><th>Parameter</th><th>Value</th></tr>
 
-
<tr><td>
 
-
$ \text{Ca} $
 
-
</td><td>
 
-
$ 200 $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{N}_{\text{A}} $
 
-
</td><td>
 
-
$ 6.0221367 $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{V}_{\text{Ecoli}} $
 
-
</td><td>
 
-
$ 8 $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{k}_{\text{s0MFP}} $
 
-
</td><td>
 
-
$ 0.01$
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{k}_{\text{sFP}} $
 
-
</td><td>
 
-
$ 30 $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \lambda_{\text{MFP}} $
 
-
</td><td>
 
-
$ 0.462 $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \lambda_{\text{FP}} $
 
-
</td><td>
 
-
$ 0.2 $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{k}_{\text{cFP}} $
 
-
</td><td>
 
-
$ 0.0005 $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \text{k}_{\text{Plas}} $
 
-
</td><td>
 
-
$ 0.00866434 $
 
-
</td></tr>
 
-
 
-
<tr><td>
 
-
$ \lambda_{\text{Plas}} $
 
-
</td><td>
 
-
$ 0.00866434 $
 
-
</td></tr>
 
-
</table>
 
-
 
-
<table align="right">
 
-
<tr><th>Species name</th><th>Initial value</th></tr>
 
-
<tr><td>
 
-
$ \text{PlasM} $
 
-
</td><td>
 
-
$ 0 $
 
-
</td></tr>
 
-
<tr><td>
 
-
$ \text{PlasU} $
 
-
</td><td>
 
-
$ 200 $
 
-
</td></tr>
 
-
<tr><td>
 
-
$ \text{FP} $
 
-
</td><td>
 
-
$ 0 $
 
-
</td></tr>
 
-
<tr><td>
 
-
$ \text{M}_{\text{FP}} $
 
-
</td><td>
 
-
$ 0 $
 
-
</td></tr>
 
-
</table>
 
== Retrieving sensible parameter values ==
== Retrieving sensible parameter values ==
Line 274: Line 138:
Most notably, in the steady state that this system reaches all plasmids are methylated.
Most notably, in the steady state that this system reaches all plasmids are methylated.
This is very undesirable of course!
This is very undesirable of course!
 +
 +
==== Other parameters ====
 +
Values for the mRNA degradation rate and protein synthesis have been taking from ([[#Mantzaris|2]]).
== Steady state parameter scanning ==
== Steady state parameter scanning ==
Line 303: Line 170:
</span>
</span>
 +
<span id="Mantzaris">
 +
<sup>
 +
Stamatakis, M., & Mantzaris, N. V. (2009). Comparison of deterministic and stochastic models of the lac operon genetic network. Biophysical journal, 96(3), 887–906. doi:10.1016/j.bpj.2008.10.028
 +
</sup>
 +
</span>
</div>
</div>

Latest revision as of 03:27, 27 September 2012