A Poisson-gamma model is introduced to account for between-subjects heterogeneity and within-subjects serial correlation occurring in longitudinal count data. The model extends the usual time-constant shared frailty approach to allow time-varying serially correlated gamma frailty whilst retaining standard marginal assumptions. A composite likelihood approach to estimation and testing for serial correlation is proposed. The work is motivated by a clinical trial on patient-controlled analgesia where the number of analgesic doses taken by hospital patients in successive time intervals following abdominal surgery is recorded
Supplemental material for Correlated gamma frailty models for bivariate survival time data by Adelin...
The shared frailty model is one of the popular tool to analyze correlated right-censored time-toeven...
We introduce an approach for incorporating dependence between outcomes from a Poisson regression mod...
Frailty models are often used to study the individual heterogeneity in multivariate survival analysi...
The analysis of multivariate time-to-event (TTE) data can become complicated due to the presence of ...
Longitudinal data have been collected in many medical studies. For this kind of data, observations w...
In this article, we study nonparametric estimation of the mean function of a counting process with p...
In this article, we study nonparametric estimation of the mean function of a counting process with p...
We propose a new parametric time-varying shared frailty model to represent changes over time in popu...
The term frailty was introduced by Vaupel et al. to indicate that dierentindividuals are at risks ev...
Consider a recurrent event data where frailty models are used to account for correlations among the ...
The shared frailty models allow for unobserved heterogeneity or for statistical dependence between o...
In this paper, a new measure for assessing the temporal variation in the strength of association in ...
Dependence in survival analysis is most frequently modeled by the frailty model or the copula model....
A key assumption of the popular Cox model is that the observations in the study are statistically in...
Supplemental material for Correlated gamma frailty models for bivariate survival time data by Adelin...
The shared frailty model is one of the popular tool to analyze correlated right-censored time-toeven...
We introduce an approach for incorporating dependence between outcomes from a Poisson regression mod...
Frailty models are often used to study the individual heterogeneity in multivariate survival analysi...
The analysis of multivariate time-to-event (TTE) data can become complicated due to the presence of ...
Longitudinal data have been collected in many medical studies. For this kind of data, observations w...
In this article, we study nonparametric estimation of the mean function of a counting process with p...
In this article, we study nonparametric estimation of the mean function of a counting process with p...
We propose a new parametric time-varying shared frailty model to represent changes over time in popu...
The term frailty was introduced by Vaupel et al. to indicate that dierentindividuals are at risks ev...
Consider a recurrent event data where frailty models are used to account for correlations among the ...
The shared frailty models allow for unobserved heterogeneity or for statistical dependence between o...
In this paper, a new measure for assessing the temporal variation in the strength of association in ...
Dependence in survival analysis is most frequently modeled by the frailty model or the copula model....
A key assumption of the popular Cox model is that the observations in the study are statistically in...
Supplemental material for Correlated gamma frailty models for bivariate survival time data by Adelin...
The shared frailty model is one of the popular tool to analyze correlated right-censored time-toeven...
We introduce an approach for incorporating dependence between outcomes from a Poisson regression mod...