Shared parameter models (SPMs) are a useful approach to addressing bias from informative dropout in longitudinal studies. In SPMs it is typically assumed that the longitudinal outcome process and the dropout time are independent, given random effects and observed covariates. However, this conditional independence assumption is unverifiable. Currently, sensitivity analysis strategies for this unverifiable assumption of SPMs are underdeveloped. In principle, parameters that can and cannot be identified by the observed data should be clearly separated in sensitivity analyses, and sensitivity parameters should not influence the model fit to the observed data. For SPMs this is difficult because it is not clear how to separate the observed data l...
Diggle and Kenward (1994, Applied Statistics 43, 49-93) proposed a selection model for continuous lo...
Diggle and Kenward (Appl. Statist. 43 (1994) 49) proposed a selection model for continuous longitudi...
Drop-outs are a common problem in longitudinal studies. In terms of statistical models for the data...
Incomplete data abound in epidemiological and clinical studies. When the missing data process is not...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Dropout is a common complication in longitudinal studies, especially since the distinction between m...
A number of methods have been developed to analyze longitudinal data with dropout. However, there i...
Many studies in various research areas have designs that involve repeated measurements over time of ...
Randomized clinical trials with outcome measured longitudinally are frequently analyzed using either...
We consider estimation in generalized linear mixed models (GLMM) for longitudinal data with informat...
Consider a study whose design calls for the study subjects to be followed from enrollment (time t = ...
Abstract – A generalized Heckman model is used for the joint modeling of longitudinal continuous res...
Diggle and Kenward (1994, Applied Statistics 43, 49-93) proposed a selection model for continuous lo...
Summary. We consider estimation in generalized linear mixed models (GLMM) for longitudinal data with...
We specify identifying assumptions under which linear increments (LI) estimator can be used to estim...
Diggle and Kenward (1994, Applied Statistics 43, 49-93) proposed a selection model for continuous lo...
Diggle and Kenward (Appl. Statist. 43 (1994) 49) proposed a selection model for continuous longitudi...
Drop-outs are a common problem in longitudinal studies. In terms of statistical models for the data...
Incomplete data abound in epidemiological and clinical studies. When the missing data process is not...
Incomplete data are unavoidable in studies that involve data measured or observed longitudinally on ...
Dropout is a common complication in longitudinal studies, especially since the distinction between m...
A number of methods have been developed to analyze longitudinal data with dropout. However, there i...
Many studies in various research areas have designs that involve repeated measurements over time of ...
Randomized clinical trials with outcome measured longitudinally are frequently analyzed using either...
We consider estimation in generalized linear mixed models (GLMM) for longitudinal data with informat...
Consider a study whose design calls for the study subjects to be followed from enrollment (time t = ...
Abstract – A generalized Heckman model is used for the joint modeling of longitudinal continuous res...
Diggle and Kenward (1994, Applied Statistics 43, 49-93) proposed a selection model for continuous lo...
Summary. We consider estimation in generalized linear mixed models (GLMM) for longitudinal data with...
We specify identifying assumptions under which linear increments (LI) estimator can be used to estim...
Diggle and Kenward (1994, Applied Statistics 43, 49-93) proposed a selection model for continuous lo...
Diggle and Kenward (Appl. Statist. 43 (1994) 49) proposed a selection model for continuous longitudi...
Drop-outs are a common problem in longitudinal studies. In terms of statistical models for the data...