Many extensions of survival models based on the Cox proportional hazards approach have been proposed to handle clustered or multiple event data. Of particular note are five Cox-based models for recurrent event data: Andersen and Gill (AG); Wei, Lin and Weissfeld (WLW); Prentice, Williams and Peterson, total time (PWP-CP) and gap time (PWP-GT); and Lee, Wei and Amato (LWA). Some authors have compared these models by observing differences that arise from fitting the models to real and simulated data. However, no attempt has been made to systematically identify the components of the models that are appropriate for recurrent event data. We propose a systematic way of characterizing such Cox-based models using four key components: risk intervals...
In longitudinal follow-up studies, during the observation period one subject or unit may experience ...
Time to occurrence of an event in a recurrent event data setting could be affected by many factors s...
The analysis of recurrent event times faces three challenges: betweensubject heterogeneity (frailty)...
Background Injuries are often recurrent, with subsequent injuries influenced by previous occurrences...
This thesis Entitled “modelling and analysis of recurrent event data with multiple causes.Survival d...
Background: In longitudinal studies where subjects experience recurrent incidents over a period of t...
In the Cox Regression model, the outcome under study is the time to a single event, for example deat...
In many biomedical studies, the event of interest can occur more than once in a participant. These e...
Several methods of constructing confidence intervals for the median survival time of a recurrent eve...
International audienceRecurrent events data analysis is common in biomedicine. Literature review ind...
Background: Injuries are often recurrent, with subsequent injuries influenced by previous occurrence...
Abstract Background Sequentially ordered multivariate failure time or recurrent event duration data ...
Background In medical studies with recurrent event data a total time scale perspective is often nee...
Gap times between recurrent events are often encountered in longitudinal follow-up studies related t...
BACKGROUND: Injuries are often recurrent, with subsequent injuries influenced by previous occurrence...
In longitudinal follow-up studies, during the observation period one subject or unit may experience ...
Time to occurrence of an event in a recurrent event data setting could be affected by many factors s...
The analysis of recurrent event times faces three challenges: betweensubject heterogeneity (frailty)...
Background Injuries are often recurrent, with subsequent injuries influenced by previous occurrences...
This thesis Entitled “modelling and analysis of recurrent event data with multiple causes.Survival d...
Background: In longitudinal studies where subjects experience recurrent incidents over a period of t...
In the Cox Regression model, the outcome under study is the time to a single event, for example deat...
In many biomedical studies, the event of interest can occur more than once in a participant. These e...
Several methods of constructing confidence intervals for the median survival time of a recurrent eve...
International audienceRecurrent events data analysis is common in biomedicine. Literature review ind...
Background: Injuries are often recurrent, with subsequent injuries influenced by previous occurrence...
Abstract Background Sequentially ordered multivariate failure time or recurrent event duration data ...
Background In medical studies with recurrent event data a total time scale perspective is often nee...
Gap times between recurrent events are often encountered in longitudinal follow-up studies related t...
BACKGROUND: Injuries are often recurrent, with subsequent injuries influenced by previous occurrence...
In longitudinal follow-up studies, during the observation period one subject or unit may experience ...
Time to occurrence of an event in a recurrent event data setting could be affected by many factors s...
The analysis of recurrent event times faces three challenges: betweensubject heterogeneity (frailty)...