Purpose. To illustrate the use of a nonparametric bootstrap method in the evaluation of uncertainty in decision models analyzing cost-effectiveness. Methods. The authors reevaluated a previously published cost-effectiveness analysis that used a Markov model comparing initial percutaneous transluminal angioplasty with bypass surgery for femoropopliteal lesions. Each probability in the model was simulated with a first-order Monte Carte simulation to represent sampling uncertainty. Superimposed on this, a second-order Monte Carlo simulation was performed to represent parameter uncertainty, drawing the probability values from nonparametric distributions based on published data or from primary collected data as available. After simulation of a m...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Objective: In model-based health economic evaluation, uncertainty analysis is often done using para...
Background: Parametric distributions based on individual patient data can be used to represent both ...
Purpose. To illustrate the use of a nonparametric bootstrap method in the evaluation of uncertainty ...
This study compared four alternative approaches (Taylor, Fieller, percentile bootstrap, and bias-cor...
Decision-analytic models are frequently used to evaluate the relative costs and benefits of alternat...
Decision analytic models used for health technology assess-ment are subject to uncertainties. These ...
n recent years, cost-effectiveness analysis has become a frequent component of randomized clinical t...
Health economic decision models are subject to various forms of uncertainty, including uncertainty a...
Purpose: Analyzing and communicating uncertainty is essential in medical decision making. To judge w...
Health economic decision models are subject to considerable uncertainty, much of which arises from c...
International audienceThis paper deals with building bootstrap tests for comparing the mean costs be...
Health economic decision models are subject to considerable uncertainty, much of which arises from c...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in t...
Health economic decision models are based on specific assumptions relating to model structure and pa...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Objective: In model-based health economic evaluation, uncertainty analysis is often done using para...
Background: Parametric distributions based on individual patient data can be used to represent both ...
Purpose. To illustrate the use of a nonparametric bootstrap method in the evaluation of uncertainty ...
This study compared four alternative approaches (Taylor, Fieller, percentile bootstrap, and bias-cor...
Decision-analytic models are frequently used to evaluate the relative costs and benefits of alternat...
Decision analytic models used for health technology assess-ment are subject to uncertainties. These ...
n recent years, cost-effectiveness analysis has become a frequent component of randomized clinical t...
Health economic decision models are subject to various forms of uncertainty, including uncertainty a...
Purpose: Analyzing and communicating uncertainty is essential in medical decision making. To judge w...
Health economic decision models are subject to considerable uncertainty, much of which arises from c...
International audienceThis paper deals with building bootstrap tests for comparing the mean costs be...
Health economic decision models are subject to considerable uncertainty, much of which arises from c...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in t...
Health economic decision models are based on specific assumptions relating to model structure and pa...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Objective: In model-based health economic evaluation, uncertainty analysis is often done using para...
Background: Parametric distributions based on individual patient data can be used to represent both ...