Paris/Cell auto 2

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Revision as of 12:29, 24 October 2007




Contents

Spatial simulation

We try with this work to characterize the diffusion of the DAP and the effect on the cells. We have a growing culture with germinal cells and somatic cells.
We want to see if we can have different kinds of evolution for our cells.
as we can see in the simple automaton the diffusion mechanism and the effect on differentiation can be fescribe more accuratly, so for the moment we just ignore the diffusion putting a black box on it and just focused on the total number of DAP entities.

We make some hypothesis:

We work with a evolving population ( death for BactS and division BactG).

  • Case 1 : The differentiation is DAP dependent, it's append when the cell as enough DAP to evolve but not enough to divide.
  • Case 2 : The differentiation has a constant rate, it will be the same rate for each division cycle

The DAP is made in bacteria S, the production rate is the difference between the total production and self consummation
We consider a global variable DAP (no internal/external DAP)
The DAP is consumed in bacteria G


All the cells grow

We have 3 bags and 1 entity in our model

  • bag

Bact it has a concentration internal of DAP and a radius. It's a cell in our automaton
BactS is a Bact which produce DAP and can grow
BactG is a Bact which consume DAP and can divide or differentiate

  • entity

DAP Value of DAP


Case 1

We produce this set of rules


Mechanic forces

  • We create a spring between the center of each Bact, then we compute the forces related to this spring and we update the position of the cells (adding noise to it)

For bactS

*if random < Probability of death then
   BactS=null
else if random < probability to grow & size < max cell size then BactS=BactS+{new size=size+delta} else nothing
*Produce DAP


For BactG

*DAP'=DAP - self consumed DAP - diffused DAP
*if  enough DAP then
  if random< probability of differentiation then
   BactG=BactS
  else
   BactG= BactG+{DAP'}
 else
  if size > max size then
   if probability to divide > random & DAP'> minimal needed to divide then
    BactG = 2 BactG with minimal size 
   else 
    BactG= BactG +{DAP=DAP'}
  else
   if random < probability to grow then
    BactG = BactG + {new size= size + delta}
   else
    nothing




Initial state


4 BactS and a BactG in the middle


Parameters


We have 8 parameters and we can had noise for each of them.
Mechanic

  • DT time step
  • K constant of the spring
  • Mu variation of position
  • R0_Gm minimal size of a BactG (after division)
  • R0_G maximal size of a BactG (before division)
  • R0_S maximal size of BactS


In Bact

  • Diff diffusion constant


In BactS:

  • Diffp probability of differentiation
  • DEPOT production of DAP
  • DeathSP probability of death
  • CroitS probability of growth


In BactG:

  • CONS Dap consumed
  • DivG probability of division
  • CroitG probability of growth




Output


The output is two videos showing the evolution of the organism

  • The first video show a first comportment
Red : BactG
Green : BactS
dark<->light Bact : low<->high DAP
The number of bacteria (G or S) increase with the time
  • The second video show a second comportment
Red BactG
Green BactS
dark<->light Bact : low<->high DAP
The number of cells is constant and maintains itself

After playing with the parameters we can isolate 4 kinds of comportment.
2 of them are not really interested the system doesn't evolve or collapse (all the bacteria become S type).
The other 2 comportment show that our system can lead to an evolving organism developing itself and colonizing the environment or it can stay stable like a tissue or an organ.

Case 2

We produce this set of rules


Mechanic forces

  • We create a spring between the center of each Bact, then we compute the forces related to this spring and we update the position of the cells (adding noise to it)

For bactS

*if random < Probability of death then
  BactS=null
else if random < probability to grow & size < max cell size then BactS=BactS+{new size=size+delta} else nothing
*Produce DAP


For BactG

*DAP'=DAP - self consumed DAP - diffused DAP
*if random< probability of differentiation then
 BactG=BactS
else
 if size > max size then
  if probability to divide > random & DAP'> minimal needed to divide then
   BactG = 2 BactG with minimal size 
  else 
   if random < probability to grow then
    BactG = BactG + {new size= size + delta}
   else
    nothing
 else
  BactG = BactG + {DAP=DAP'}




Initial state


6 BactS and a BactG in the middle for the first result 5 BactS and 2 BactG for the second result


Parameters


We have 8 parameters and we can had noise for each of them.
Mechanic

  • DT time step
  • K constant of the spring
  • Mu variation of position
  • R0_Gm minimal size of a BactG (after division)
  • R0_G maximal size of a BactG (before division)
  • R0_S maximal size of BactS


In Bact

  • Diff diffusion constant


In BactS:

  • Diffp probability of differentiation
  • DEPOT production of DAP
  • DeathSP probability of death
  • CroitS probability of growth


In BactG:

  • CONS Dap consumed
  • DivG probability of division
  • CroitG probability of growth




Output


The output is two videos showing the evolution of the organism

  • The first video show a first comportment
Red : BactG
Green : BactS
dark<->light Bact : low<->high DAP
The number of bacteria (G or S) increase with the time
  • The second video show a second comportment
Red BactG
Green BactS
dark<->light Bact : low<->high DAP
The number of cells is constant and maintains itself

After playing with the parameters we can isolate 4 kinds of comportment.
2 of them are not really interested the system doesn't evolve or collapse (all the bacteria become S type).
The other 2 comportment show that our system can lead to an evolving organism developing itself and colonizing the environment or it can stay stable like a tissue or an organ.