Difference between revisions of "Team:UCSF/Modeling"

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Parameters that we altered were:
 
Parameters that we altered were:
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1) Bar1 protease concentration  
 
1) Bar1 protease concentration  
2) Distance between cells (which is directly correlated with OD or linked to clustering)  
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2) Distance between cells (which is directly correlated with OD or linked to clustering)
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3) Stimulus sensitivity (rtTA-doxycycline)  
 
3) Stimulus sensitivity (rtTA-doxycycline)  
  

Revision as of 20:42, 18 September 2015

MODEL CIRCUIT

Full Circuit Our project this year is centered around the emergence of distinct community phenotypes when individuals in a population are allowed to communicate. Cells in a local population are able to coordinate decisions with other cells in their community through the secretion and reception of chemical signals. Through diffusion and degradation, concentration gradients of the signaling molecule are formed in the extracellular space, providing varying levels of information to neighboring cells in the community.

Focusing on the community phenotype of bimodal activation, our model aims to mathematically estimate distinct states of multiple cells in the population in different immediate extracellular environments.


To create this model, we designed a series of 11 differential equations to predict the outcomes of tuning various communication parameters in our genetic circuit (see below). In our mathematical model, we have two genetically identical cells secreting alpha factor into a bulk pool in the extracellular space. Through diffusion between the two local concentrations and the bulk pool, we can see distinct cell fates of the two cells after changing parameters such as stimulus sensitivity, signal degradation, and distance between cells.

Based on previous literature, our model assumes that basal and constitutive synthesis of proteins in our circuit is constant, natural degradation is constant relative to concentration of the protein, and that synthesis of proteins is the rate determining step, not diffusion. After setting reasonable natural parameters for our circuit, we tuned easily changeable parameters in actual experiments to see if we could observe a bimodal population of activated and quiescent cells.

Parameters that we altered were:
1) Bar1 protease concentration
2) Distance between cells (which is directly correlated with OD or linked to clustering)
3) Stimulus sensitivity (rtTA-doxycycline)

DIFFERENTIAL EQUATIONS

We still need to display our equations that characterize our system.









TUNING COMMUNICATION PARAMETERS

We still need to display our equations that characterize our system.









IMPLEMENTATION

We still need to write that here.









Team UCSF

syssynbio@ucsf.edu