The multivariate linear mixed model (MLMM) has emerged as an important analytical tool for longitudinal data with multiple outcomes. However, the analysis of multivariate longitudinal data could be complicated by the presence of censored measurements because of a detection limit of the assay in combination with unavoidable missing values arising when subjects miss some of their scheduled visits intermittently. This paper presents a generalization of the MLMM approach, called the MLMM-CM, for a joint analysis of the multivariate longitudinal data with censored and intermittent missing responses. A computationally feasible expectation maximization-based procedure is developed to carry out maximum likelihood estimation within the MLMM-CM frame...
Longitudinal data are valuable in various disciplines because they provide helpful developmental pat...
Longitudinal studies could be complicated by left-censored repeated measures. For example, in Human ...
In many applications, statistical models for real data often have natural constraints or restriction...
The multivariate linear mixed model (MLMM) has emerged as an important analytical tool for longitudi...
Multivariate longitudinal data arisen in medical studies often exhibit complex features such as cens...
The analysis of complex longitudinal data is challenging due to several inherent features: (i) more ...
In biomedical studies and clinical trials, repeated measures are often subject to some upper and/or ...
Mixed effects models are widely used for modelling clustered data when there are large variations be...
Non-linear mixed effects models (NLME) and generalized linear mixed effects models (GLMM) are common...
We propose a joint model for longitudinal and survival data with time-varying covariates subject to ...
Many studies in various research areas have designs that involve repeated measurements over time of ...
Commonly used methods to analyze incomplete longitudinal clinical trial data include complete case a...
Semiparametric nonlinear mixed-effects (NLME) models are flexible for modelling complex longitudinal...
Treatment effects are often evaluated by comparing change over time in outcome measures. However, va...
In some acquired immunodeficiency syndrome (AIDS) clinical trials, the human immunodeficiency virus-...
Longitudinal data are valuable in various disciplines because they provide helpful developmental pat...
Longitudinal studies could be complicated by left-censored repeated measures. For example, in Human ...
In many applications, statistical models for real data often have natural constraints or restriction...
The multivariate linear mixed model (MLMM) has emerged as an important analytical tool for longitudi...
Multivariate longitudinal data arisen in medical studies often exhibit complex features such as cens...
The analysis of complex longitudinal data is challenging due to several inherent features: (i) more ...
In biomedical studies and clinical trials, repeated measures are often subject to some upper and/or ...
Mixed effects models are widely used for modelling clustered data when there are large variations be...
Non-linear mixed effects models (NLME) and generalized linear mixed effects models (GLMM) are common...
We propose a joint model for longitudinal and survival data with time-varying covariates subject to ...
Many studies in various research areas have designs that involve repeated measurements over time of ...
Commonly used methods to analyze incomplete longitudinal clinical trial data include complete case a...
Semiparametric nonlinear mixed-effects (NLME) models are flexible for modelling complex longitudinal...
Treatment effects are often evaluated by comparing change over time in outcome measures. However, va...
In some acquired immunodeficiency syndrome (AIDS) clinical trials, the human immunodeficiency virus-...
Longitudinal data are valuable in various disciplines because they provide helpful developmental pat...
Longitudinal studies could be complicated by left-censored repeated measures. For example, in Human ...
In many applications, statistical models for real data often have natural constraints or restriction...