Modern analysis of incomplete longitudinal outcomes involves formulating assumptions about the missingness mechanisms and then using a statistical method that produces valid inferences under this assumption. In this manuscript, we define missingness strategies for analyzing randomized clinical trials (RCTs) based on plausible clinical scenarios. Penalties for dropout are also introduced in an attempt to balance benefits against risks. Some missingness mechanisms are assumed to be non-future dependent, which is a subclass of missing not at random. Non-future dependent stipulates that missingness depends on the past and the present information but not on the future. Missingness strategies are implemented in the pattern-mixture modeling framew...
BACKGROUND: Informative attrition occurs when the reason participants drop out from a study is assoc...
Recently, pattern-mixture modelling has become a popular tool for modelling incomplete longitudinal ...
BACKGROUND: Informative attrition occurs when the reason participants drop out from a study is assoc...
We extend the pattern-mixture approach to handle missing continuous outcome data in longitudinal clu...
Biomedical research is plagued with problems of missing data, especially in clinical trials of medic...
Biomedical research is plagued with problems of missing data, especially in clinical trials of medi...
Conclusion. The missing data is a common problem in clinical trial. The methodology development is u...
Abstract Background The benefit of a given treatment can be evaluated via a randomized clinical tria...
Medical Research Council Clinical Trails Unit at UCL [Studentship to MS; MC EX G0800814 to JRC,TPM]
Purpose Missing data are a potential source of bias in the results of randomized controlled trials (...
Incomplete series of data is a common feature in quality-of-life studies, in particular in chronic d...
Abstract Background Informative attrition occurs when...
Abstract Background Informative attrition occurs when the reason participants drop out from a study ...
BACKGROUND: Informative attrition occurs when the reason participants drop out from a study is assoc...
Pattern-mixture models have gained considerable interest in recent years. Patternmixture modeling al...
BACKGROUND: Informative attrition occurs when the reason participants drop out from a study is assoc...
Recently, pattern-mixture modelling has become a popular tool for modelling incomplete longitudinal ...
BACKGROUND: Informative attrition occurs when the reason participants drop out from a study is assoc...
We extend the pattern-mixture approach to handle missing continuous outcome data in longitudinal clu...
Biomedical research is plagued with problems of missing data, especially in clinical trials of medic...
Biomedical research is plagued with problems of missing data, especially in clinical trials of medi...
Conclusion. The missing data is a common problem in clinical trial. The methodology development is u...
Abstract Background The benefit of a given treatment can be evaluated via a randomized clinical tria...
Medical Research Council Clinical Trails Unit at UCL [Studentship to MS; MC EX G0800814 to JRC,TPM]
Purpose Missing data are a potential source of bias in the results of randomized controlled trials (...
Incomplete series of data is a common feature in quality-of-life studies, in particular in chronic d...
Abstract Background Informative attrition occurs when...
Abstract Background Informative attrition occurs when the reason participants drop out from a study ...
BACKGROUND: Informative attrition occurs when the reason participants drop out from a study is assoc...
Pattern-mixture models have gained considerable interest in recent years. Patternmixture modeling al...
BACKGROUND: Informative attrition occurs when the reason participants drop out from a study is assoc...
Recently, pattern-mixture modelling has become a popular tool for modelling incomplete longitudinal ...
BACKGROUND: Informative attrition occurs when the reason participants drop out from a study is assoc...