Team:Amsterdam/achievements/stochastic model
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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 ==== | ||
During the course of the summer we've investigated many stochastic simulation packages with implementation of the direct algorithms and some more coarse-grained optimizations thereof (e.g. the tau-leaping algorithm). | During the course of the summer we've investigated many stochastic simulation packages with implementation of the direct algorithms and some more coarse-grained optimizations thereof (e.g. the tau-leaping algorithm). | ||
- | Most notable are [www.xlr8r.info/SSA/ xSSA] for Mathematica and [http://www.stompy.sourceforge.net StochPy] for Python. | + | Most notable are [http://www.xlr8r.info/SSA/ xSSA] for Mathematica and [http://www.stompy.sourceforge.net StochPy] for Python. |
The former seems a great tool, but at the time of writing seems to lack the ability to process third order reactions (reactions with three reactants). | The former seems a great tool, but at the time of writing seems to lack the ability to process third order reactions (reactions with three reactants). | ||
The latter has been developed at the Free University Amsterdam by Timo Maarleveld, currently PhD-student there. | The latter has been developed at the Free University Amsterdam by Timo Maarleveld, currently PhD-student there. | ||
In using this package, we've kept in close contact with Timo and submitted a lot of bug reports, helping the software to grow. | In using this package, we've kept in close contact with Timo and submitted a lot of bug reports, helping the software to grow. | ||
- | Additionally, we've also extended StochPy by writing a supplementary tool [Team:Amsterdam/ | + | Additionally, we've also extended StochPy by writing a supplementary tool [https://2012.igem.org/Team:Amsterdam/extra/software MDL2LaTeX], that eases the publishing of models developed with StochPy. |
=Leakiness and background noise= | =Leakiness and background noise= | ||
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==ODE Model definition== | ==ODE Model definition== | ||
- | <table align=" | + | <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> | ||
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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 | + | 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} $]] | ||
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== Retrieving sensible parameter values == | == Retrieving sensible parameter values == | ||
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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 == | ||
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Our experimental results can thus be explained by any combination of the two parameters which which has an intermediate value in plot. | Our experimental results can thus be explained by any combination of the two parameters which which has an intermediate value in plot. | ||
- | A similar parameter scan has been painstakingly performed with the stochastic model. Simulations with 20 trajectories of 200-minute simulations for each parameter combination in a two-dimensional scan for both the $k_{cat}$ and $k_{cFP}$ in the same ranges as the ODE parm-scan. Unfortunately, even for these high amount of replications the variability in the resulting methylation fractions is very high, such that no trends are discernible at all in the results (data not shown). This variability can probably be reduced by performing even longer simulations and using more trajectories. A more efficient implementation of the SSA will have to be used to reach this goal within reasonable time scales | + | A similar parameter scan has been painstakingly performed with the stochastic model. Simulations with 20 trajectories of 200-minute simulations for each parameter combination in a two-dimensional scan for both the $k_{cat}$ and $k_{cFP}$ in the same ranges as the ODE parm-scan. Unfortunately, even for these high amount of replications the variability in the resulting methylation fractions is very high, such that no trends are discernible at all in the results (data not shown). This variability can probably be reduced by performing even longer simulations and using more trajectories. A much more efficient implementation of the SSA will have to be used to reach this goal within reasonable time scales however. We hope to finish these simulations before the Jamboree. Because the deterministic simulations show similar qualitative behaviour as the more realistic stochastic simulations in the time-lapse plots, one could argue that we will obtain similar results here as the much less computationally expensive ODE-parameter scan. |
- | The steady state fraction of methylation shows almost no dependence upon the leaky transcription rate in the ODE model. This is likely caused by the steady state value that the mRNA reaches fairly quickly. The parameter scan density plots shows a very weak to no influence of the background noise. The fact that the degradation rate of the mRNA is much larger than the leaky transcription rate probably causes this. On the contrary, the steady state fraction of methylated plasmids is shown to be heavily dependent upon the catalysis rate of the fusion protein. | + | The steady state fraction of methylation shows almost no dependence upon the leaky transcription rate in the ODE model. This is likely caused by the steady state value that the mRNA reaches fairly quickly. The parameter scan density plots shows a very weak to no influence of the background noise. The fact that the degradation rate of the mRNA is much larger than the leaky transcription rate probably causes this. On the contrary, the steady state fraction of methylated plasmids is shown to be heavily dependent upon the catalysis rate of the fusion protein. This can steer future experiments to research the effects of lowered catalysis rates. |
= Discussion = | = Discussion = | ||
- | + | Unlike our initial expectations, the ODE-model analyzed here suggests that the catalysis rate of the FP is more important to the high background noise we have observed in the experiments than the leaky expression rate. | |
- | + | This yields a new hypothesis to test in the lab: will lowering the catalysis rate significantly lower the background methylation rate? | |
+ | This raises the question on how to lower the catalysis rate of the MTase. A few methods to do this come to mind: | ||
+ | * Lower the temperature during the experiments, which will slow down all reactions in the cell including the catalysis rate | ||
+ | * Mutate amino acid sequence of binding domain, making the affinity of the for the DNA smaller | ||
+ | * Mutate some other part of the protein | ||
+ | * Pick a different methyltransferase, one that has a lower catalysis rate | ||
+ | * Attach a fluorescent protein to the methyltransferase | ||
=References= | =References= | ||
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</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