Abstract

Doc number: 120

Abstract

Background: Predicting a system's behavior based on a mathematical model is a primary task in Systems Biology. If the model parameters are estimated from experimental data, the parameter uncertainty has to be translated into confidence intervals for model predictions. For dynamic models of biochemical networks, the nonlinearity in combination with the large number of parameters hampers the calculation of prediction confidence intervals and renders classical approaches as hardly feasible.

Results: In this article reliable confidence intervals are calculated based on the prediction profile likelihood . Such prediction confidence intervals of the dynamic states can be utilized for a data-based observability analysis. The method is also applicable if there are non-identifiable parameters yielding to some insufficiently specified model predictions that can be interpreted as non-observability . Moreover, a validation profile likelihood is introduced that should be applied when noisy validation experiments are to be interpreted.

Conclusions: The presented methodology allows the propagation of uncertainty from experimental to model predictions. Although presented in the context of ordinary differential equations, the concept is general and also applicable to other types of models. Matlab code which can be used as a template to implement the method is provided at http://www.fdmold.uni-freiburg.de/∼ckreutz/PPL .

Details

Title
Likelihood based observability analysis and confidence intervals for predictions of dynamic models
Author
Kreutz, Clemens; Raue, Andreas; Timmer, Jens
Pages
120
Publication year
2012
Publication date
2012
Publisher
BioMed Central
e-ISSN
1752-0509
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
1136526325
Copyright
© 2012 Kreutz et al.; licensee BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License( http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.