Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses are often performed one outcome at a time, or jointly using existing software in an ad hoc fashion. A main challenge in the proper analysis of such data is the fact that the different outcomes are measured on different unknown scales. Methodology for handling the scale problem has been previously proposed for cross-sectional data, and here we extend it to the longitudinal setting. We consider modeling the longitudinal data using random effects, while leaving the joint distribution of the multiple outcomes unspecified. We propose an estimating equation together with an expectation-maximization-type (expectation-substitution) algorithm. The con...
Summary. Data involving longitudinal counts are not uncommon. Here we propose new marginalized trans...
In many studies the association of longitudinal measurements of a continuous response and a primary ...
Adherence to medication is critical to achieving effectiveness of any treatment. Poor adherence ofte...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
Multivariate longitudinal data frequently arise in biomedical applications, however their analysis, ...
The shared-parameter model and its so-called hierarchical or random-effects extension are widely use...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
Longitudinal studies often contain several statistical issues, suchas longitudinal process and time-...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
Random effects are often used in generalized linear models to explain the serial dependence for long...
Most of the available multivariate statistical models dictate on fitting different parameters for th...
Most of the available multivariate statistical models dictate on fitting different parameters for th...
Abstract Background Available methods for the joint modelling of longitudinal and time-to-event outc...
Background Available methods for the joint modelling of longitudinal and time-to-event outcomes have...
Summary. Data involving longitudinal counts are not uncommon. Here we propose new marginalized trans...
In many studies the association of longitudinal measurements of a continuous response and a primary ...
Adherence to medication is critical to achieving effectiveness of any treatment. Poor adherence ofte...
Multivariate longitudinal data frequently arise in biomedical applications; however, their analyses ...
Multivariate longitudinal data frequently arise in biomedical applications, however their analysis, ...
The shared-parameter model and its so-called hierarchical or random-effects extension are widely use...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
Longitudinal studies often contain several statistical issues, suchas longitudinal process and time-...
Likelihood-based marginalized models using random effects have become popular for analyzing longitud...
Random effects are often used in generalized linear models to explain the serial dependence for long...
Most of the available multivariate statistical models dictate on fitting different parameters for th...
Most of the available multivariate statistical models dictate on fitting different parameters for th...
Abstract Background Available methods for the joint modelling of longitudinal and time-to-event outc...
Background Available methods for the joint modelling of longitudinal and time-to-event outcomes have...
Summary. Data involving longitudinal counts are not uncommon. Here we propose new marginalized trans...
In many studies the association of longitudinal measurements of a continuous response and a primary ...
Adherence to medication is critical to achieving effectiveness of any treatment. Poor adherence ofte...