BACKGROUND: Parametric distributions based on individual patient data can be used to represent both stochastic and parameter uncertainty. Although general guidance is available on how parameter uncertainty should be accounted for in probabilistic sensitivity analysis, there is no comprehensive guidance on reflecting parameter uncertainty in the (correlated) parameters of distributions used to represent stochastic uncertainty in patient-level models. This study aims to provide this guidance by proposing appropriate methods and illustrating the impact of this uncertainty on modeling outcomes. METHODS: Two approaches, 1) using non-parametric bootstrapping and 2) using multivariate Normal distributions, were applied in a simulation and case stu...
The analysis of both patient heterogeneity and parameter uncertainty in decision models is increasin...
Objectives: Decision makers adopt health technologies based on health economic models that are subje...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Background Parametric distributions based on individual patient data can be used to represent both s...
A model’s purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
AbstractA model's purpose is to inform medical decisions and health care resource allocation. Modele...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Objective: In model-based health economic evaluation, uncertainty analysis is often done using para...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Health economic modeling of novel technology at the early stages of a product lifecycle has been use...
Health economic modeling of novel technology at the early stages of a product lifecycle has been use...
AbstractObjectiveIn model-based health economic evaluation, uncertainty analysis is often done using...
Not so long ago, uncertainty in economic evaluation was handled almost exclusively using simple one-...
Introduction. Patient-level simulation models facilitate extrapolation of clinical trial data while ...
Parameter uncertainty, patient heterogeneity, and stochastic uncertainty of outcomes are increasingl...
The analysis of both patient heterogeneity and parameter uncertainty in decision models is increasin...
Objectives: Decision makers adopt health technologies based on health economic models that are subje...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Background Parametric distributions based on individual patient data can be used to represent both s...
A model’s purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
AbstractA model's purpose is to inform medical decisions and health care resource allocation. Modele...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Objective: In model-based health economic evaluation, uncertainty analysis is often done using para...
A model's purpose is to inform medical decisions and health care resource allocation. Modelers emplo...
Health economic modeling of novel technology at the early stages of a product lifecycle has been use...
Health economic modeling of novel technology at the early stages of a product lifecycle has been use...
AbstractObjectiveIn model-based health economic evaluation, uncertainty analysis is often done using...
Not so long ago, uncertainty in economic evaluation was handled almost exclusively using simple one-...
Introduction. Patient-level simulation models facilitate extrapolation of clinical trial data while ...
Parameter uncertainty, patient heterogeneity, and stochastic uncertainty of outcomes are increasingl...
The analysis of both patient heterogeneity and parameter uncertainty in decision models is increasin...
Objectives: Decision makers adopt health technologies based on health economic models that are subje...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...