Difference between revisions of "Team:IIT Delhi/Stochastic Model"

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noise can intrinsic, for eg from randomness of chemical reactions in side of the cell or
 
noise can intrinsic, for eg from randomness of chemical reactions in side of the cell or
 
extrinsic, for ex, different operating temperature or cell shape size variety. To model such
 
extrinsic, for ex, different operating temperature or cell shape size variety. To model such
behavior we have adopted stochastic simulation algorithm by Gillespie.<br><br>
+
behavior we have adopted stochastic simulation algorithm by Gillespie.<br>
 
+
  
 +
</h2>
 +
<img src = "https://static.igem.org/mediawiki/2017/6/61/T--IIT_Delhi--five_node_output_Gillispie.jpg" style='border:3px solid #000000' width = "40%"><br>
 +
<h6>Fig.1 GFP expression simulated via Gillispie algorithm</h6><br>
 +
<h2 id="pfont">
  
 
The algorithm model the set of chemical reactions and the instant they occur as
 
The algorithm model the set of chemical reactions and the instant they occur as
 
random. The model takes account of intrinsic noise more accurately. After each reaction,
 
random. The model takes account of intrinsic noise more accurately. After each reaction,
 
the algorithm determines which reaction will occur next, and how much time will elapse
 
the algorithm determines which reaction will occur next, and how much time will elapse
before it occurs. The flow chart of the Algorithm is presented as Fig2 which describes
+
before it occurs. The flow chart of the Algorithm is presented as Fig.2 which describes
 
the Monte Carlo simulation based simulation.<br>
 
the Monte Carlo simulation based simulation.<br>
 
</h2>
 
</h2>
 
<img src = "https://static.igem.org/mediawiki/2017/5/50/T--IIT_Delhi--untitled_diagram.png" style='border:3px solid #000000' width = "40%"><br>
 
<img src = "https://static.igem.org/mediawiki/2017/5/50/T--IIT_Delhi--untitled_diagram.png" style='border:3px solid #000000' width = "40%"><br>
<h6>Fig2. Stochastic modeling flowchart</h6><br>
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<h6>Fig.2 Stochastic modeling flowchart</h6><br>
 
<h2 id="pfont">
 
<h2 id="pfont">
  
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<img src = "https://static.igem.org/mediawiki/2017/c/c9/T--IIT_Delhi--stochasform.jpg" style='border:3px solid #000000' width = "40%"><br><br>
 
<img src = "https://static.igem.org/mediawiki/2017/c/c9/T--IIT_Delhi--stochasform.jpg" style='border:3px solid #000000' width = "40%"><br><br>
  
The frequency response of translational dynamics is shown in Fig.Y validate the analysis. The mRNA dynamics which is noisy, and as noises are always are of high frequency in nature, the low pass action provided by the process can attenuate such characteristics.
+
The frequency response of translational dynamics is shown in Fig.7 validate the analysis. The mRNA dynamics which is noisy, and as noises are always are of high frequency in nature, the low pass action provided by the process can attenuate such characteristics.
 
As the γ increases the bandwidth increases and make the system succeptible to noise, that
 
As the γ increases the bandwidth increases and make the system succeptible to noise, that
 
is why a ssrA tag protein expression is much faster (owe to the larger bandwidth) but
 
is why a ssrA tag protein expression is much faster (owe to the larger bandwidth) but
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</h2>
 
</h2>
 
<img src = "https://static.igem.org/mediawiki/2017/8/8b/T--IIT_Delhi--fig_freq_response.png" style='border:3px solid #000000' width = "80%"><br>
 
<img src = "https://static.igem.org/mediawiki/2017/8/8b/T--IIT_Delhi--fig_freq_response.png" style='border:3px solid #000000' width = "80%"><br>
<h6>Fig7. Frequency response for various degradation rate<br>
+
<h6>Fig.7 Frequency response for various degradation rate<br>
  
 
</h6>
 
</h6>

Revision as of 21:42, 1 November 2017

iGEM IIT Delhi


Stochastic Model

                                                                                                                                                                                                                 

Noise in a system is a repeating issues from engineering to science. In a biogical system noise can intrinsic, for eg from randomness of chemical reactions in side of the cell or extrinsic, for ex, different operating temperature or cell shape size variety. To model such behavior we have adopted stochastic simulation algorithm by Gillespie.


Fig.1 GFP expression simulated via Gillispie algorithm

The algorithm model the set of chemical reactions and the instant they occur as random. The model takes account of intrinsic noise more accurately. After each reaction, the algorithm determines which reaction will occur next, and how much time will elapse before it occurs. The flow chart of the Algorithm is presented as Fig.2 which describes the Monte Carlo simulation based simulation.


Fig.2 Stochastic modeling flowchart

The simulation results presented in Fig. X shows a square wave pattern in the mRNA and protein level. On simulating the system in stochastic enviornment, few more interesting results comes into picture. One of such is noise propagation in the biological system. The simulated results show a noisier mRNA expression than the protein level, which makes the mRNA less stable compared to the protein. On investigating further we observed the translation procedure is acting as a low pass filter. If we model the translation process (which is linear in nature) in frequency domain, the transfer function becomes,



The frequency response of translational dynamics is shown in Fig.7 validate the analysis. The mRNA dynamics which is noisy, and as noises are always are of high frequency in nature, the low pass action provided by the process can attenuate such characteristics. As the γ increases the bandwidth increases and make the system succeptible to noise, that is why a ssrA tag protein expression is much faster (owe to the larger bandwidth) but becomes more noisy (as the system low pass action range is increased with the increase in bandwidth.)


Fig.7 Frequency response for various degradation rate



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