Cost and effect data often have missing data because economic evaluations are frequently added onto clinical studies where cost data are rarely the primary outcome. The objective of this article was to investigate which multiple imputation strategy is most appropriate to use for missing cost-effectiveness data in a randomized controlled trial. Three incomplete data sets were generated from a complete reference data set with 17, 35 and 50 % missing data in effects and costs. The strategies evaluated included complete case analysis (CCA), multiple imputation with predictive mean matching (MI-PMM), MI-PMM on log-transformed costs (log MI-PMM), and a two-step MI. Mean cost and effect estimates, standard errors and incremental net benefits were ...
Objectives: Cost-effectiveness analysis (CEA) alongside randomized controlled trials often relies o...
This paper compares methods to remedy missing value problems in survey data. The commonly used meth...
There is compelling evidence that traditional methods used to address the detrimental impacts of mis...
BACKGROUND: Missing data are potentially an extensive problem in cost-effectiveness analyses con...
INTRODUCTION: For the analysis of clinical effects, multiple imputation (MI) of missing data were sh...
Background: Cost-effectiveness has become an important outcome in many clinical trials and has resul...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
In healthcare cost-effectiveness analysis, probability distributions are typically skewed and missin...
We are enthusiastic about the potential for multiple imputation and other methods 14 to improve the ...
PURPOSE: Multiple imputation (MI) has been proposed for handling missing data in cost-effectiveness ...
Background Missing data can introduce bias in the results of randomised controlled trials (RCTs), b...
PURPOSE: Missing data are a well-known and widely documented problem in cost-effectiveness analyses ...
Missing data is a common occurrence in clinical research. Missing data occurs when the value of the ...
OBJECTIVES: Cost-effectiveness analysis (CEA) alongside randomized controlled trials often relies on...
This paper compares methods to remedy missing value problems in survey data. The commonly used metho...
Objectives: Cost-effectiveness analysis (CEA) alongside randomized controlled trials often relies o...
This paper compares methods to remedy missing value problems in survey data. The commonly used meth...
There is compelling evidence that traditional methods used to address the detrimental impacts of mis...
BACKGROUND: Missing data are potentially an extensive problem in cost-effectiveness analyses con...
INTRODUCTION: For the analysis of clinical effects, multiple imputation (MI) of missing data were sh...
Background: Cost-effectiveness has become an important outcome in many clinical trials and has resul...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
In healthcare cost-effectiveness analysis, probability distributions are typically skewed and missin...
We are enthusiastic about the potential for multiple imputation and other methods 14 to improve the ...
PURPOSE: Multiple imputation (MI) has been proposed for handling missing data in cost-effectiveness ...
Background Missing data can introduce bias in the results of randomised controlled trials (RCTs), b...
PURPOSE: Missing data are a well-known and widely documented problem in cost-effectiveness analyses ...
Missing data is a common occurrence in clinical research. Missing data occurs when the value of the ...
OBJECTIVES: Cost-effectiveness analysis (CEA) alongside randomized controlled trials often relies on...
This paper compares methods to remedy missing value problems in survey data. The commonly used metho...
Objectives: Cost-effectiveness analysis (CEA) alongside randomized controlled trials often relies o...
This paper compares methods to remedy missing value problems in survey data. The commonly used meth...
There is compelling evidence that traditional methods used to address the detrimental impacts of mis...