We propose an alternative to the method of generalized estimating equations (GEE) for inference about binary longitudinal data. Unlike GEE, the method is practicable when the data consist of long time series on each subject and the set of observation times is not necessarily common to all subjects. Instead of modelling the intra-series correlations explicitly, we assume that a subject's propensity to respond is governed by an underlying, but unobserved, stationary continuous process. Given a realization of this process, we assume that the binary responses are conditionally independent, with the probability that a subject responds positively at any given time t depending on the value of the underlying process at that time and also on any cov...
We propose a structural mean modeling approach to obtain compliance-adjusted estimates for treatment...
This paper addresses the problem of modelling longitudinal data describing patients' responses in cl...
In many clinical trials treatments need to be repeatedly applied as diseases relapse frequently afte...
Motivated by an empirical analysis of ecological momentary assessment data (EMA) collected in a smok...
We propose nested latent compliance class models for analyzing longitudinal randomized trials when s...
In this paper, we propose and explore a semiparametric approach to analyzing longitudinal binary dat...
The authors consider regression analysis for binary data collected repeatedly over time on members o...
A new model for multivariate non-normal longitudinal data is proposed. In a first step, each longitu...
A new model for multivariate non-normal longitudinal data is proposed. In a first step, each longitu...
In some longitudinal studies for binary data, the expectation of the binary response variable of an ...
Compliance, the extent to which patients follow a medication regimen, has been recognized as one of ...
This thesis and related research is motivated by my interest in understanding the use of time-varyin...
We consider longitudinal studies with binary outcomes that are measured repeatedly on subjects over ...
Thesis (Ph.D.)-University of KwaZulu-Natal, Pietermaritzburg, 2010.Longitudinal data tend to be corr...
In the presence of non-compliance, conventional analysis by intention-to-treat provides an unbiased ...
We propose a structural mean modeling approach to obtain compliance-adjusted estimates for treatment...
This paper addresses the problem of modelling longitudinal data describing patients' responses in cl...
In many clinical trials treatments need to be repeatedly applied as diseases relapse frequently afte...
Motivated by an empirical analysis of ecological momentary assessment data (EMA) collected in a smok...
We propose nested latent compliance class models for analyzing longitudinal randomized trials when s...
In this paper, we propose and explore a semiparametric approach to analyzing longitudinal binary dat...
The authors consider regression analysis for binary data collected repeatedly over time on members o...
A new model for multivariate non-normal longitudinal data is proposed. In a first step, each longitu...
A new model for multivariate non-normal longitudinal data is proposed. In a first step, each longitu...
In some longitudinal studies for binary data, the expectation of the binary response variable of an ...
Compliance, the extent to which patients follow a medication regimen, has been recognized as one of ...
This thesis and related research is motivated by my interest in understanding the use of time-varyin...
We consider longitudinal studies with binary outcomes that are measured repeatedly on subjects over ...
Thesis (Ph.D.)-University of KwaZulu-Natal, Pietermaritzburg, 2010.Longitudinal data tend to be corr...
In the presence of non-compliance, conventional analysis by intention-to-treat provides an unbiased ...
We propose a structural mean modeling approach to obtain compliance-adjusted estimates for treatment...
This paper addresses the problem of modelling longitudinal data describing patients' responses in cl...
In many clinical trials treatments need to be repeatedly applied as diseases relapse frequently afte...