Misspecification of the covariance structure in a linear mixed model (LMM) can lead to biased population parameters' estimates under MAR drop-out. In our motivating example of modeling CD4 cell counts during untreated HIV infection, random intercept and slope LMMs are frequently used. In this article, we evaluate the performance of LMMs with specific covariance structures, in terms of bias in the fixed effects estimates, under specific MAR drop-out mechanisms, and adopt a Bayesian model comparison criterion to discriminate between the examined approaches in real-data applications. We analytically show that using a random intercept and slope structure when the true one is more complex can lead to seriously biased estimates, with the deg...
This paper focuses on the multivariate linear mixed-effects model, including all the correlations be...
In this paper we analyse, using Monte Carlo simulation, the possible consequences of incorrect assum...
The analysis of complex longitudinal data is challenging due to several inherent features: (i) more ...
Nonlinear mixed effects models (NLMEs) are very popular in many longitudinal studies such as HIV vi...
University of Minnesota Ph.D. dissertation. February 2013. Major: Educational Psychology. Advisor: M...
Using a Monte Carlo simulation and the Kenward-Roger (KR) correction for degrees of freedom this pap...
Using a Monte Carlo simulation and the Kenward-Roger (KR) correction for degrees of freedom this pap...
Despite technological advances in efficiency enhancement of quantification assays, biomedical studie...
Longitudinal data are widely analysed using linear mixed models, with 'random slopes' models particu...
We investigate the importance of the assumed covariance structure for longitudinal modelling of CD4 ...
Longitudinal data are widely analysed using linear mixed models, with 'random slopes' models particu...
Statistical models have greatly improved our understanding of the pathogenesis of HIV-1 infection an...
Statistical models have greatly improved our understanding of the pathogenesis of HIV-1 infection an...
Linear mixed effects models are highly flexible in handling a broad range of data types and are the...
We consider estimation in generalized linear mixed models (GLMM) for longitudinal data with informat...
This paper focuses on the multivariate linear mixed-effects model, including all the correlations be...
In this paper we analyse, using Monte Carlo simulation, the possible consequences of incorrect assum...
The analysis of complex longitudinal data is challenging due to several inherent features: (i) more ...
Nonlinear mixed effects models (NLMEs) are very popular in many longitudinal studies such as HIV vi...
University of Minnesota Ph.D. dissertation. February 2013. Major: Educational Psychology. Advisor: M...
Using a Monte Carlo simulation and the Kenward-Roger (KR) correction for degrees of freedom this pap...
Using a Monte Carlo simulation and the Kenward-Roger (KR) correction for degrees of freedom this pap...
Despite technological advances in efficiency enhancement of quantification assays, biomedical studie...
Longitudinal data are widely analysed using linear mixed models, with 'random slopes' models particu...
We investigate the importance of the assumed covariance structure for longitudinal modelling of CD4 ...
Longitudinal data are widely analysed using linear mixed models, with 'random slopes' models particu...
Statistical models have greatly improved our understanding of the pathogenesis of HIV-1 infection an...
Statistical models have greatly improved our understanding of the pathogenesis of HIV-1 infection an...
Linear mixed effects models are highly flexible in handling a broad range of data types and are the...
We consider estimation in generalized linear mixed models (GLMM) for longitudinal data with informat...
This paper focuses on the multivariate linear mixed-effects model, including all the correlations be...
In this paper we analyse, using Monte Carlo simulation, the possible consequences of incorrect assum...
The analysis of complex longitudinal data is challenging due to several inherent features: (i) more ...