Team:Amsterdam/modeling

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Inclusion of this gene might also lead to higher background methylation percentages in the negative controls, however.
Inclusion of this gene might also lead to higher background methylation percentages in the negative controls, however.
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== Stochastic Differential Equations ==
Little amounts of certain key proteins can have large effects on the physiological behaviour of a cell.  
Little amounts of certain key proteins can have large effects on the physiological behaviour of a cell.  
When trying to accurately model these small amounts of proteins the thermodynamic equilibrium assumption that characterizes ODE-models might not be valid;
When trying to accurately model these small amounts of proteins the thermodynamic equilibrium assumption that characterizes ODE-models might not be valid;
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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.
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== 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 xSSA for Mathematica and StochPy for Python.
Most notable are xSSA for Mathematica and StochPy for Python.

Latest revision as of 11:38, 26 September 2012