Linear mixed models are often used for the analysis of data from clinical trials with repeated quantitative outcomes. This paper considers linear mixed models where a particular form is assumed for the treatment effect, in particular constant over time or proportional to time. For simplicity, we assume no baseline covariates and complete post-baseline measures, and we model arbitrary mean responses for the control group at each time. For the variance-covariance matrix, we consider an unstructured model, a random intercepts model and a random intercepts and slopes model. We show that the treatment effect estimator can be expressed as a weighted average of the observed time-specific treatment effects, with weights depending on the covariance ...
Linear models for uncorrelated data have well established measures to gauge the influence of one or ...
We propose and examine a panel data model for isolating the effect of a treatment, taken once at bas...
In much of epidemiological and clinical research, repeated observations of response variables and a ...
Studies commonly focus on estimating a mean treatment effect in a population. However, in some appli...
Mobile health is a rapidly developing field in which behavioral treatments are delivered to individu...
In this paper, we investigate the impact of time-invariant covariates when fitting transition mixed ...
In longitudinal data analysis, the introduction of random effects provides statisticians with a conv...
Our main objective for this thesis is to present and discuss the linear mixed effects model and, in ...
In linear mixed effects models, random effects are used for modelling the variance-covariance struct...
A core task in analyzing randomized clinical trials based on longitudinal data is to find the best ...
University of Minnesota Ph.D. dissertation. February 2013. Major: Educational Psychology. Advisor: M...
Subjects often drop out of longitudinal studies prematurely, yielding unbalanced data with unequal n...
<p>Linear mixed effects model typical, random effects, and state-specific intercepts and slopes for ...
<p>Mixed effects models of clinic-month intervention rates with autoregressive residuals (<i>n</i> =...
Doctor of PhilosophyDepartment of StatisticsGary L. GadburyStudies commonly focus on estimating a me...
Linear models for uncorrelated data have well established measures to gauge the influence of one or ...
We propose and examine a panel data model for isolating the effect of a treatment, taken once at bas...
In much of epidemiological and clinical research, repeated observations of response variables and a ...
Studies commonly focus on estimating a mean treatment effect in a population. However, in some appli...
Mobile health is a rapidly developing field in which behavioral treatments are delivered to individu...
In this paper, we investigate the impact of time-invariant covariates when fitting transition mixed ...
In longitudinal data analysis, the introduction of random effects provides statisticians with a conv...
Our main objective for this thesis is to present and discuss the linear mixed effects model and, in ...
In linear mixed effects models, random effects are used for modelling the variance-covariance struct...
A core task in analyzing randomized clinical trials based on longitudinal data is to find the best ...
University of Minnesota Ph.D. dissertation. February 2013. Major: Educational Psychology. Advisor: M...
Subjects often drop out of longitudinal studies prematurely, yielding unbalanced data with unequal n...
<p>Linear mixed effects model typical, random effects, and state-specific intercepts and slopes for ...
<p>Mixed effects models of clinic-month intervention rates with autoregressive residuals (<i>n</i> =...
Doctor of PhilosophyDepartment of StatisticsGary L. GadburyStudies commonly focus on estimating a me...
Linear models for uncorrelated data have well established measures to gauge the influence of one or ...
We propose and examine a panel data model for isolating the effect of a treatment, taken once at bas...
In much of epidemiological and clinical research, repeated observations of response variables and a ...