Title of article :
Inference of an oscillating model for the yeast cell cycle Original Research Article
Author/Authors :
Nicole Radde، نويسنده , , Lars Kaderali، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Abstract :
High-throughput techniques allow measurement of hundreds of cell components simultaneously. The inference of interactions between cell components from these experimental data facilitates the understanding of complex regulatory processes. Differential equations have been established to model the dynamic behavior of these regulatory networks quantitatively. Usually traditional regression methods for estimating model parameters fail in this setting, since they overfit the data. This is even the case, if the focus is on modeling subnetworks of, at most, a few tens of components. In a Bayesian learning approach, this problem is avoided by a restriction of the search space with prior probability distributions over model parameters.
Keywords :
Bayesian regularization , Saccharomyces cerevisiae , Oscillations , Ordinary differential equations , Gene regulatory network , cell cycle
Journal title :
Discrete Applied Mathematics
Journal title :
Discrete Applied Mathematics