Health economic decision models are subject to various forms of uncertainty, including uncertainty about the parameters of the model and about the model structure. These uncertainties can be handled within a Bayesian framework, which also allows evidence from previous studies to be combined with the data. As an example, we consider a Markov model for assessing the cost-effectiveness of implantable cardioverter defibrillators. Using Markov chain Monte Carlo posterior simulation, uncertainty about the parameters of the model is formally incorporated in the estimates of expected cost and effectiveness. We extend these methods to include uncertainty about the choice between plausible model structures. This is accounted for by averaging the post...
The Bayesian approach to statistics has been growing rapidly in popularity as an alternative to the ...
Health economic decision models are subject to considerable uncertainty, much of which arises from c...
Purpose. To illustrate the use of a nonparametric bootstrap method in the evaluation of uncertainty ...
Decision analytic models used for health technology assess-ment are subject to uncertainties. These ...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in t...
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 ...
AbstractBackgroundStandard approaches to estimation of Markov models with data from randomized contr...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in ...
Healthcare resource allocation decisions are commonly informed by computer model predictions of popu...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in t...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in t...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
The purpose of this dissertation is to analyze three models in medicine and finance using Bayesian i...
AbstractBackgroundThe characterization of uncertainty is critical in cost-effectiveness analysis, pa...
The Bayesian approach to statistics has been growing rapidly in popularity as an alternative to the ...
Health economic decision models are subject to considerable uncertainty, much of which arises from c...
Purpose. To illustrate the use of a nonparametric bootstrap method in the evaluation of uncertainty ...
Decision analytic models used for health technology assess-ment are subject to uncertainties. These ...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in t...
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 ...
AbstractBackgroundStandard approaches to estimation of Markov models with data from randomized contr...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in ...
Healthcare resource allocation decisions are commonly informed by computer model predictions of popu...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in t...
We consider the problem of assessing new and existing technologies for their cost-effectiveness in t...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
The purpose of this dissertation is to analyze three models in medicine and finance using Bayesian i...
AbstractBackgroundThe characterization of uncertainty is critical in cost-effectiveness analysis, pa...
The Bayesian approach to statistics has been growing rapidly in popularity as an alternative to the ...
Health economic decision models are subject to considerable uncertainty, much of which arises from c...
Purpose. To illustrate the use of a nonparametric bootstrap method in the evaluation of uncertainty ...