© 2015, © American Statistical Association. Little research has been done to evaluate the effect of adjusting for baseline in the analysis of repeated incomplete binary data through simulation study. In this article, covariate adjusted and unadjusted implementations of the following methods were compared in analyzing incomplete repeated binary data when the outcome at the study endpoint is of interest: logistic regression with the last observation carried forward (LOCF), generalized estimating equations (GEE), weighted GEE (WGEE), generalized linear mixed model (GLMM), and multiple imputation (MI) with analyses via GEE. Incomplete data mimicking several clinical trial scenarios were generated using missing completely at random (MCAR), missi...
Observational studies predicated on the secondary use of information from administrative and health ...
Treatment effects are often evaluated by comparing change over time in outcome measures. However, va...
With most clinical trials, missing data presents a statistical problem in evaluating a treatment\u27...
Missingness frequently complicates the analysis of longitudinal data. A popular solution for dealing...
© 2014 Elsevier B.V. This paper compares the performance of weighted generalized estimating equation...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
Purpose Missing data are a potential source of bias in the results of randomized controlled trials (...
Commonly used methods to analyze incomplete longitudinal clinical trial data include complete case a...
Item does not contain fulltextAlthough missing outcome data are an important problem in randomized t...
Longitudinal studies are useful in medical and health sciences research to examine effects associate...
The presence of some missing outcomes in randomized studies often complicates the estimation of meas...
The present paper compares and contrasts several statistical methods for analyzing incomplete non-Ga...
textThe purpose of this study was to investigate the performance of missing data treatments for long...
Objectives Missing data represent a source of bias in randomized clinical trials (RCTs). This thesi...
Although missing outcome data are an important problem in randomized trials and observational studie...
Observational studies predicated on the secondary use of information from administrative and health ...
Treatment effects are often evaluated by comparing change over time in outcome measures. However, va...
With most clinical trials, missing data presents a statistical problem in evaluating a treatment\u27...
Missingness frequently complicates the analysis of longitudinal data. A popular solution for dealing...
© 2014 Elsevier B.V. This paper compares the performance of weighted generalized estimating equation...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
Purpose Missing data are a potential source of bias in the results of randomized controlled trials (...
Commonly used methods to analyze incomplete longitudinal clinical trial data include complete case a...
Item does not contain fulltextAlthough missing outcome data are an important problem in randomized t...
Longitudinal studies are useful in medical and health sciences research to examine effects associate...
The presence of some missing outcomes in randomized studies often complicates the estimation of meas...
The present paper compares and contrasts several statistical methods for analyzing incomplete non-Ga...
textThe purpose of this study was to investigate the performance of missing data treatments for long...
Objectives Missing data represent a source of bias in randomized clinical trials (RCTs). This thesi...
Although missing outcome data are an important problem in randomized trials and observational studie...
Observational studies predicated on the secondary use of information from administrative and health ...
Treatment effects are often evaluated by comparing change over time in outcome measures. However, va...
With most clinical trials, missing data presents a statistical problem in evaluating a treatment\u27...