Dependent censoring occurs in longitudinal studies of recurrent events when the censoring time depends on the potentially unobserved recurrent event times. To perform regression analysis in this setting, we propose a semiparametric joint model that formulates the marginal distributions of the recurrent event process and dependent censoring time through scale-change models, while leaving the distributional form and dependence structure unspecified. We derive consistent and asymptotically normal estimators for the regression parameters. We also develop graphical and numerical methods for assessing the adequacy of the proposed model. The finite-sample behavior of the new inference procedures is evaluated through simulation studies. An applicat...
We propose a broad class of semiparametric transformation models with random effects for the joint a...
Various regression methods have been proposed for analyzing recurrent event data. Among them, the se...
In this article we study a class of semiparametric transformation models with random effects for the...
Two major challenges arise in regression analyses of recurrent event data: first, popular existing m...
Abstract. Recurrent events are frequently observed in biomedical studies, and often more than one ty...
We consider a study which monitors the occurrences of a recurrent event for n subjects or units. Rec...
Recurrent event data arise frequently from medical research. Examples include repeated infections, r...
<p>Health sciences research often involves both right- and interval-censored events because the occu...
Recurrent event data and panel count data are often encountered in longitudinal follow-up studies. T...
Multivariate recurrent event data are usually encountered in many clinical and longitudinal studies ...
Recurrent event data are often encountered in longitudinal follow-up studies in many important areas...
Recurrent events models have lately received a lot of attention in the literature. The majority of ...
The problem of non-parametric estimation for the distribution function governing the time to occurre...
Recurrent event data are commonly encountered in longitudinal follow-up studies related to biomedica...
International audienceIn this paper, we introduce new parametric and semiparametric regression techn...
We propose a broad class of semiparametric transformation models with random effects for the joint a...
Various regression methods have been proposed for analyzing recurrent event data. Among them, the se...
In this article we study a class of semiparametric transformation models with random effects for the...
Two major challenges arise in regression analyses of recurrent event data: first, popular existing m...
Abstract. Recurrent events are frequently observed in biomedical studies, and often more than one ty...
We consider a study which monitors the occurrences of a recurrent event for n subjects or units. Rec...
Recurrent event data arise frequently from medical research. Examples include repeated infections, r...
<p>Health sciences research often involves both right- and interval-censored events because the occu...
Recurrent event data and panel count data are often encountered in longitudinal follow-up studies. T...
Multivariate recurrent event data are usually encountered in many clinical and longitudinal studies ...
Recurrent event data are often encountered in longitudinal follow-up studies in many important areas...
Recurrent events models have lately received a lot of attention in the literature. The majority of ...
The problem of non-parametric estimation for the distribution function governing the time to occurre...
Recurrent event data are commonly encountered in longitudinal follow-up studies related to biomedica...
International audienceIn this paper, we introduce new parametric and semiparametric regression techn...
We propose a broad class of semiparametric transformation models with random effects for the joint a...
Various regression methods have been proposed for analyzing recurrent event data. Among them, the se...
In this article we study a class of semiparametric transformation models with random effects for the...