Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific applications of models that enhance diagnosis or aid decision-making. Variance-based sensitivity analysis methods, which apportion each fraction of the output uncertainty (variance) to the effects of individual input parameters or their interactions, are considered the gold standard. The variance portions are called the Sobol sensitivity indices and can be estimated by a Monte Carlo (MC) approach (e.g., Saltelli's method [1]) or by employing a metamodel (e.g., the (generalized) polynomial chaos expansion (gPCE) [2, 3]). All these methods require a large number of model evaluations when estimating the Sobol sensitivity indices for models with ma...
Sobol' sensitivity indeices, used in variance based global sensitivity analysis of model output, are...
International audienceWe present a global sensitivity analysis that quantifies the impact of paramet...
When applying models to patient-specific situations, the impact of model input uncertainty on the mo...
Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific ap...
Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific ap...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...
As we shift from population-based medicine towards a more precise patient-specific regime guided by ...
Sensitivity indices obtained from a global variance-based sensitivity analysis can help by identifyi...
Sensitivity analysis assesses the influence of input parameters on the conclusion of a model. Tradit...
AbstractThree metamodel-based method are compared for computing the Sobol’ indices of models featuri...
Biomechanical models often need to describe very complex systems, organs or diseases, and hence also...
Probabilistic sensitivity analysis (PSA) is required to account for uncertainty in cost-effectivenes...
Probabilistic sensitivity analysis (PSA) is required to account for uncertainty in cost-effectivenes...
AbstractUncertainty in the model input parameters are to be taken into account in order to assess th...
The solution of several operations research problems requires the creation of a quantitative model. ...
Sobol' sensitivity indeices, used in variance based global sensitivity analysis of model output, are...
International audienceWe present a global sensitivity analysis that quantifies the impact of paramet...
When applying models to patient-specific situations, the impact of model input uncertainty on the mo...
Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific ap...
Uncertainty quantification and global sensitivity analysis are indispensable for patient-specific ap...
International audienceGlobal sensitivity analysis is now established as a powerful approach for dete...
As we shift from population-based medicine towards a more precise patient-specific regime guided by ...
Sensitivity indices obtained from a global variance-based sensitivity analysis can help by identifyi...
Sensitivity analysis assesses the influence of input parameters on the conclusion of a model. Tradit...
AbstractThree metamodel-based method are compared for computing the Sobol’ indices of models featuri...
Biomechanical models often need to describe very complex systems, organs or diseases, and hence also...
Probabilistic sensitivity analysis (PSA) is required to account for uncertainty in cost-effectivenes...
Probabilistic sensitivity analysis (PSA) is required to account for uncertainty in cost-effectivenes...
AbstractUncertainty in the model input parameters are to be taken into account in order to assess th...
The solution of several operations research problems requires the creation of a quantitative model. ...
Sobol' sensitivity indeices, used in variance based global sensitivity analysis of model output, are...
International audienceWe present a global sensitivity analysis that quantifies the impact of paramet...
When applying models to patient-specific situations, the impact of model input uncertainty on the mo...