Background: In randomised trials of medical interventions, the most reliable analysis follows the intention-to-treat (ITT) principle. However, the ITT analysis requires that missing outcome data have to be imputed. Different imputation techniques may give different results and some may lead to bias. In anti-obesity drug trials, many data are usually missing, and the most used imputation method is last observation carried forward (LOCF). LOCF is generally considered conservative, but there are more reliable methods such as multiple imputation (MI). Objectives: To compare four different methods of handling missing data in a 60-week placebo controlled anti-obesity drug trial on topiramate. Methods: We compared an analysis of complete cases wit...
Objective: When designing prediction models by complete case analysis (CCA), missing information in ...
Background Missing data can introduce bias in the results of randomised controlled trials (RCTs), b...
BACKGROUND: Missing data are potentially an extensive problem in cost-effectiveness analyses con...
In randomised trials of medical interventions, the most reliable analysis follows the intention-to-t...
Dropouts and missing data are nearly-ubiquitous in obesity randomized controlled trails, threatening...
Dropouts and missing data are nearly-ubiquitous in obesity randomized controlled trails, threatening...
Introduction: The HELP trial of a healthy lifestyle and eating programme for obese pregnant women r...
When a new treatment has similar efficacy compared to standard therapy in medical or social studies,...
Objectives: Missing data is a recurrent issue in many fields of medical research, particularly in qu...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
Introduction: In this study, penalized imputation (PI), a common approach to handle missing smoking ...
Introduction: In this study, penalized imputation (PI), a common approach to handle missing smoking ...
Missing data are common in clinical trials. In longitudinal studies missing data are mostly related ...
BACKGROUND: Longitudinal studies almost always have some individuals with missing outcomes. Inapprop...
Objective: QoL data were routinely collected in a randomised controlled trial (RCT), which employed...
Objective: When designing prediction models by complete case analysis (CCA), missing information in ...
Background Missing data can introduce bias in the results of randomised controlled trials (RCTs), b...
BACKGROUND: Missing data are potentially an extensive problem in cost-effectiveness analyses con...
In randomised trials of medical interventions, the most reliable analysis follows the intention-to-t...
Dropouts and missing data are nearly-ubiquitous in obesity randomized controlled trails, threatening...
Dropouts and missing data are nearly-ubiquitous in obesity randomized controlled trails, threatening...
Introduction: The HELP trial of a healthy lifestyle and eating programme for obese pregnant women r...
When a new treatment has similar efficacy compared to standard therapy in medical or social studies,...
Objectives: Missing data is a recurrent issue in many fields of medical research, particularly in qu...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
Introduction: In this study, penalized imputation (PI), a common approach to handle missing smoking ...
Introduction: In this study, penalized imputation (PI), a common approach to handle missing smoking ...
Missing data are common in clinical trials. In longitudinal studies missing data are mostly related ...
BACKGROUND: Longitudinal studies almost always have some individuals with missing outcomes. Inapprop...
Objective: QoL data were routinely collected in a randomised controlled trial (RCT), which employed...
Objective: When designing prediction models by complete case analysis (CCA), missing information in ...
Background Missing data can introduce bias in the results of randomised controlled trials (RCTs), b...
BACKGROUND: Missing data are potentially an extensive problem in cost-effectiveness analyses con...