BACKGROUND:Decision-analytic cost-effectiveness (CE) models combine many parameters, often obtained after meta-analysis. AIM:We compared different methods of mixed-treatment comparison (MTC) to combine transition and event probabilities derived from several trials, especially with respect to health-economic (HE) outcomes like (quality adjusted) life years and costs. METHODS:Trials were drawn from a simulated reference population, comparing two of four fictitious interventions. The goal was to estimate the CE between two of these. The amount of heterogeneity between trials was varied in scenarios. Parameter estimates were combined using direct comparison, MTC methods proposed by Song and Puhan, and Bayesian generalized linear fixed effects (...
Abstract Background Indirect treatment comparison (ITC) and mixed treatment comparisons (MTC) have b...
Factorial randomised controlled trials (RCTs) evaluate two or more interventions simultaneously, ena...
University of Minnesota Ph.D. dissertation. August 2013. Major: Biostatistics. Advisors: Bradley P. ...
Decision-analytic cost-effectiveness (CE) models combine many parameters, often obtained after meta-...
Background Decision-Analytic cost-effectiveness (CE) models combine many parameters, often obtained ...
Decision-analytic cost-effectiveness (CE) models combine many different parameters like transition p...
Objectives To compare the use of pair-wise meta-analysis methods to multiple treatment comparison...
Mixed treatment comparison (MTC) models rely on estimates of relative effectiveness from randomized ...
ABSTRACTObjectiveTo demonstrate the application of a Bayesian mixed treatment comparison (MTC) model...
Economic evaluations conducted alongside randomized controlled trials are a popular vehicle for gene...
AbstractRecently, mixed treatment comparisons (MTC) have been presented as an extension of tradition...
CONTEXT: Statistical models employed in analysing patient-level cost and effectiveness data need to...
Background: Comparing the effectiveness of interventions is now a requirement for r...
Background: Partial factorial trials compare two or more pairs of treatments on overlapping patient ...
Purpose: Analyzing and communicating uncertainty is essential in medical decision making. To judge w...
Abstract Background Indirect treatment comparison (ITC) and mixed treatment comparisons (MTC) have b...
Factorial randomised controlled trials (RCTs) evaluate two or more interventions simultaneously, ena...
University of Minnesota Ph.D. dissertation. August 2013. Major: Biostatistics. Advisors: Bradley P. ...
Decision-analytic cost-effectiveness (CE) models combine many parameters, often obtained after meta-...
Background Decision-Analytic cost-effectiveness (CE) models combine many parameters, often obtained ...
Decision-analytic cost-effectiveness (CE) models combine many different parameters like transition p...
Objectives To compare the use of pair-wise meta-analysis methods to multiple treatment comparison...
Mixed treatment comparison (MTC) models rely on estimates of relative effectiveness from randomized ...
ABSTRACTObjectiveTo demonstrate the application of a Bayesian mixed treatment comparison (MTC) model...
Economic evaluations conducted alongside randomized controlled trials are a popular vehicle for gene...
AbstractRecently, mixed treatment comparisons (MTC) have been presented as an extension of tradition...
CONTEXT: Statistical models employed in analysing patient-level cost and effectiveness data need to...
Background: Comparing the effectiveness of interventions is now a requirement for r...
Background: Partial factorial trials compare two or more pairs of treatments on overlapping patient ...
Purpose: Analyzing and communicating uncertainty is essential in medical decision making. To judge w...
Abstract Background Indirect treatment comparison (ITC) and mixed treatment comparisons (MTC) have b...
Factorial randomised controlled trials (RCTs) evaluate two or more interventions simultaneously, ena...
University of Minnesota Ph.D. dissertation. August 2013. Major: Biostatistics. Advisors: Bradley P. ...