Motivation: Systems biology employs mathematical modelling to further our understanding of biochemical pathways. Since the amount of experimental data on which the models are parameterized is often limited, these models exhibit large uncertainty in both parameters and predictions. Statistical methods can be used to select experiments that will reduce such uncertainty in an optimal manner. However, existing methods for Optimal Experiment Design (OED) rely on assumptions that are inappropriate when data is scarce considering model complexity. Results: We have developed a novel method to perform OED for models that cope with large parameter uncertainty. We employ a Bayesian approach involving importance sampling of the Posterior Predictive Dis...
Experimental design is important in system identification, especially when the models are complex an...
Experimental design is important in system identification, especially when the models are complex an...
Experimental design is important in system identification, especially when the models are complex an...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
Motivation: Systems biology employs mathematical modelling to fur-ther our understanding of biochemi...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Motivation: Experiment design strategies for biomedical models with the purpose of parameter estimat...
The complexity of statistical models that are used to describe biological processes poses significan...
Motivation: Experiment design strategies for biomedical models with the purpose of parameter estimat...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Experimental design is important in system identification, especially when the models are complex an...
Experimental design is important in system identification, especially when the models are complex an...
Experimental design is important in system identification, especially when the models are complex an...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
Motivation: Systems biology employs mathematical modelling to fur-ther our understanding of biochemi...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Computational models have emerged as a key tool to study and characterize the behavior of biological...
Motivation: Experiment design strategies for biomedical models with the purpose of parameter estimat...
The complexity of statistical models that are used to describe biological processes poses significan...
Motivation: Experiment design strategies for biomedical models with the purpose of parameter estimat...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Background Mathematical modeling is often used to formalize hypotheses on how a biochemical network ...
Experimental design is important in system identification, especially when the models are complex an...
Experimental design is important in system identification, especially when the models are complex an...
Experimental design is important in system identification, especially when the models are complex an...