Title |
APPROXIMATE BAYESIAN PARAMETER INFERENCE FOR DYNAMICAL SYSTEMS IN SYSTEMS BIOLOGY |
Author/s |
Jovan Tanevski, Sašo Džeroski, Ljupčo Kocarev |
Citation |
J. Tanevski, S. Džeroski and Lj. Kocarev, "APPROXIMATE BAYESIAN PARAMETER INFERENCE FOR DYNAMICAL SYSTEMS IN SYSTEMS BIOLOGY", Contributions, Sec. Math. Tech. Sci., MASA, ISSN 0351–3246, Vol. 31, no.1-2, 2011, pp.73-98. |
Abstract |
This paper proposes to use approximate instead of
exact stochastic simulation algorithms for approximate Bayesian
parameter inference of dynamical systems in systems biology. It
first presents the mathematical framework for the description of
systems biology models, especially from the aspect of a stochastic
formulation as opposed to deterministic model formulations based
on the law of mass action. In contrast to maximum likelihood
methods for parameter inference, approximate inference methodsare
presented which are based on sampling parameters from a known prior probability distribution, which gradually
evolves tward a posterior distribution, through the comparison of simulated data from the
model to a given data set of measurements.
The paper then discusses the simulation process, where an overview is given of the different exact and approximate
methods or stochastic simulation and their improvements that we propose.
The exact and approximate simulators are implemented and used within approximate Bayesian parameter inference methods.
Our evaluation of these methods on two tasks of parameter estimation in two different models
shows that equally good results are obtained much faster
when using approximate simulation as compared to using exact simulation.
|
Keywords |
systems biology, reaction kinetics, stochastic models,
exact stochastic simulation, approximate stochastic simulation,
approximate parameter inference |