Frailty models are frequently used to analyse clustered survival data in medical contexts. The frailties, or random effects, are used to model the association between individual survival times within clusters.Analysis of survival times of related individuals is typically complicated because follow up on an event type of interest is censored by events of secondary interest. Treating such competing events as independent may yield an incorrect analysis when the random effects associated with other event types are dependent of the event type of interest. We study two related inferential procedures for dependent data where the frailties of the type specific hazards may be correlated between competing event types.Routine registers offer possibili...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
Routine registers offer researchers opportunities to carry out studies of covariate effects on lifet...
Multivariate survival data typically have correlated failure times. The correlation is often the con...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
Analysis of semi-competing risks data is becoming increasingly important in medical research in whic...
In this article, the focus is on the analysis of multivariate survival time data with various types ...
Clustered survival data are often analysed using frailty models. The frailty distribution provides a...
We present a multilevel frailty model for handling serial dependence and simultaneous heterogeneity ...
The aim of this paper is to present an overview of the methods used in modeling survival data. Since...
A generalization of the semiparametric Cox's proportional hazards model by means of a random effect...
We present a multilevel frailty model for handling serial dependence and simultaneous heterogeneity ...
We present a multilevel frailty model for handling serial dependence and simultaneous heterogeneity ...
In survival analysis recurrent event times are often observed on the same subject. These event times...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
Routine registers offer researchers opportunities to carry out studies of covariate effects on lifet...
Multivariate survival data typically have correlated failure times. The correlation is often the con...
This paper reviews some of the main approaches to the analysis of multivariate censored survival dat...
Analysis of semi-competing risks data is becoming increasingly important in medical research in whic...
In this article, the focus is on the analysis of multivariate survival time data with various types ...
Clustered survival data are often analysed using frailty models. The frailty distribution provides a...
We present a multilevel frailty model for handling serial dependence and simultaneous heterogeneity ...
The aim of this paper is to present an overview of the methods used in modeling survival data. Since...
A generalization of the semiparametric Cox's proportional hazards model by means of a random effect...
We present a multilevel frailty model for handling serial dependence and simultaneous heterogeneity ...
We present a multilevel frailty model for handling serial dependence and simultaneous heterogeneity ...
In survival analysis recurrent event times are often observed on the same subject. These event times...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...
The frailty model is a random effect survival model, which allows for unobserved heterogeneity or fo...