%0 Journal Article %T Likelihood based observability analysis and confidence intervals for predictions of dynamic models %A Clemens Kreutz %A Andreas Raue %A Jens Timmer %J BMC Systems Biology %D 2012 %I BioMed Central %R 10.1186/1752-0509-6-120 %X 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.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 webcite.A major goal of Systems Biology is the prediction of cellular behavior over a broad range of environmental conditions. To be able to generate realistic predictions, the individual processes of a system of interest have to be translated into a mathematical framework. The task of establishing a realistic mathematical model which is able to reliably predict a systems behavior is to comprehensively use the existing knowledge, e.g. in terms of experimental data, to adjust the models¡¯ structures and parameters.The major steps of this mathematical modeling process comprise model discrimination, i.e. identification of an appropriate model structure, model calibration, i.e. estimation of unknown model parameters, as well as prediction and model validation. For all these topics it is essential to have appropriate methods assessing the certainty or ambiguity of any result for given experimental information.For parameter estimation, there are several approaches to derive confidence intervals, like standard errors which are based on an estimate of the covariance matrix of the parame %K Confidence intervals %K Identifiability %K Likelihood %K Parameter estimation %K Prediction %K Profile likelihood %K Optimal experimental design %K Ordinary differential equations %K Signal transduction %K Statistical inference %K Uncertainty %U http://www.biomedcentral.com/1752-0509/6/120