Difference between revisions of "Team:HUST-China/Model/model-euk"

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<thead><tr class="tableizer-firstrow"><th>Parameter</th><th>Description </th><th>Value</th><th>Source</th></tr></thead><tbody>
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<tr><td>trc pulseoff</td><td>rate of pulseoff transcription </td><td>-</td><td>estimated</td></tr>
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<tr><td>trc pulseon</td><td>rate of pulseon transcription</td><td>-</td><td>estimated</td></tr>
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<tr><td>copynum</td><td>copy number of plasmid</td><td>50</td><td>estimated</td></tr>
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<tr><td>trc 1</td><td>rate of ABF2 transcription</td><td>0.003</td><td>estimated</td></tr>
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<tr><td>trl pp2cs</td><td>rate of pp2cs translation </td><td>0.006</td><td>estimated</td></tr>
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<tr><td>trl snRk</td><td>rate of snRk translation </td><td>0.08</td><td>estimated</td></tr>
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<tr><td>trl ABF2</td><td>rate of ABF2 translation </td><td>0.005</td><td>estimated</td></tr>
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<tr><td>trl Gene</td><td>rate of Gene_of_interset translation </td><td>1</td><td>estimated</td></tr>
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<tr><td>deg mPP2Cs</td><td>rate of mPP2C degradation </td><td>0.7</td><td>estimated</td></tr>
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<tr><td>deg mSnRk2.2 </td><td>rate of mSnRk2.2  degradation </td><td>0.7</td><td>estimated</td></tr>
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<tr><td>deg mABF2</td><td>rate of mABF2 degradation </td><td>0.01</td><td>estimated</td></tr>
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<tr><td>deg mGene</td><td>rate of mGene_of_interset degradation </td><td>5.7</td><td>estimated</td></tr>
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<tr><td>deg pp2cs</td><td>rate of pp2cs degradation </td><td>0.04</td><td>estimated</td></tr>
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<tr><td>deg snRk</td><td>rate of snRk degradation </td><td>0.05</td><td>estimated</td></tr>
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<tr><td>deg ABF2</td><td>rate of ABF2 degradation </td><td>0.01</td><td>estimated</td></tr>
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<tr><td>deg Gene</td><td>rate of Gene_of_interset degradation </td><td>1</td><td>estimated</td></tr>
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<tr><td>Vmax mSnRk2.2 </td><td>maximum transcription rate of promoter RD29A</td><td>0.01</td><td>estimated</td></tr>
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<tr><td>Vmax mgene</td><td>maximum transcription rate of promoter RD29A</td><td>5</td><td>estimated</td></tr>
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<tr><td>KmABF2</td><td>apparent association constant for ABF2 binding with RD29A</td><td>0.1</td><td>estimated</td></tr>
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<tr><td>Vmax ABF2</td><td>maxinum rate of Phosphorylation</td><td>0.6</td><td>estimated</td></tr>
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<tr><td>Vmax PP2C</td><td>maxinum rate of Dephosphorylation</td><td>0.4</td><td>estimated</td></tr>
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<tr><td>KmSnRK</td><td>Michaelis-Menten constant of Phosphorylation</td><td>10</td><td>estimated</td></tr>
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<tr><td>KmPP2C</td><td>Michaelis-Menten constant of Dephosphorylation</td><td>1</td><td>estimated</td></tr>
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Revision as of 12:55, 18 October 2016

Modeling

Eukaryote

This pathway has two inputs, but only has two states: the target gene expressed or not. If “Pulse on” input signal is higher than “pulse off”, it will lead to the expression of gene of interest. Otherwise, it will not lead to expression.

In order to expand our scope of the filter, we also design the eukaryotic pathway which has the function of corresponding filter/switch. Meanwhile, we also need to understand its working condition clearly.

Modeling

In this pathway, the time of spreading of the substance or each combination/response reaction, compared to the whole time scales (protein), is negligible, so we adopted simplified differential equation to simulate the pathway this time.

  • Parameter details

    more details
  • ParameterDescription ValueSource
    trc pulseoffrate of pulseoff transcription -estimated
    trc pulseonrate of pulseon transcription-estimated
    copynumcopy number of plasmid50estimated
    trc 1rate of ABF2 transcription0.003estimated
    trl pp2csrate of pp2cs translation 0.006estimated
    trl snRkrate of snRk translation 0.08estimated
    trl ABF2rate of ABF2 translation 0.005estimated
    trl Generate of Gene_of_interset translation 1estimated
    deg mPP2Csrate of mPP2C degradation 0.7estimated
    deg mSnRk2.2 rate of mSnRk2.2 degradation 0.7estimated
    deg mABF2rate of mABF2 degradation 0.01estimated
    deg mGenerate of mGene_of_interset degradation 5.7estimated
    deg pp2csrate of pp2cs degradation 0.04estimated
    deg snRkrate of snRk degradation 0.05estimated
    deg ABF2rate of ABF2 degradation 0.01estimated
    deg Generate of Gene_of_interset degradation 1estimated
    Vmax mSnRk2.2 maximum transcription rate of promoter RD29A0.01estimated
    Vmax mgenemaximum transcription rate of promoter RD29A5estimated
    KmABF2apparent association constant for ABF2 binding with RD29A0.1estimated
    Vmax ABF2maxinum rate of Phosphorylation0.6estimated
    Vmax PP2Cmaxinum rate of Dephosphorylation0.4estimated
    KmSnRKMichaelis-Menten constant of Phosphorylation10estimated
    KmPP2CMichaelis-Menten constant of Dephosphorylation1estimated

  • Fomular

    more details

Analysis

We have only on/off states of the eukaryotic system, so the complexity of this model will be lower, but it probably means that the system can have a better stability and robustness, for that reason, we will focus on the sensitivity analysis of parameters, meanwhile, validate the designed functions work out or not.

  • Test of filter function

    We adopted a simple sine function as input to verify the filtering performance.* (The input signal in the figure is to show the result more clearly so that we have moved the graph. The actual strength is 0.1sin(t))

    We can see that the output signal, which does not contain obvious waveform, is still stable. And the ABF2 phosphorylation/dephosphorization of the system has played the role as the "capacity" as we analyzed before, so as to improve the filtering effect of the system.

  • Parameter sensitivity analysis/robustness evaluation

    The main approximate treatment in this circuit should be substrate disaggregation coefficient correction, when SnRK2.2 / PP2Cs concentration is low and supersaturated by the substrate, meanwhile, part of the substrate cannot be catalytic in time. So we mainly analyzed the velocity of substrate producing rate for testing the sensitivity of the parameters, which is named trc1.


    Similarly, we keep pathways in the condition of open and choose to change the ratio of signal strength to find out the final expression level and the response time for analyzing.

    The expression level of the final production varies with the changing of trc1, but it still maintains itself in a high expression level, which has a minor influence on our switching or the filtering function.

    Even though there exist some twists in the responding time, all the floating range is still in 10%. And our circuit shows a great stability after we enlarged the numerical value of trc1.

Summary

Our eukaryotic pathway can be worked out as a filter and a swich in a steady way. And the analyze of sensitivity of parameters also shows that we should use the promoter, which has much bigger velocity of transcription, to help maintain a great robustness.