Recurrent event data are commonly encountered in longitudinal follow-up studies related to biomedical science, econometrics, reliability, and demography. In many studies, recurrent events serve as important measurements for evaluating disease progression, health deterioration, or insurance risk. When analyzing recurrent event data, an independent censoring condition is typically required for the construction of statistical methods. Nevertheless, in some situations, the terminating time for observing recurrent events could be correlated with the recurrent event process and, as a result, the assumption of independent censoring is violated. In this paper, we consider joint modeling of a recurrent event process and a failure time in which a com...
The number of recurrent events before a terminating event is often of interest. For instance, death ...
The joint modeling framework has found extensive applications in cancer and other biomedical researc...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/89578/1/j.0006-341X.2004.00225.x.pd
Recurrent events together with longitudinal measurements are commonly observed in follow-up studies ...
Multivariate failure time data arise in various forms including recurrent event data when individual...
When a recurrent event process is ended by death, this may imply dependent censoring if the two proc...
<p>Recurrent event data arise frequently in various fields such as biomedical sciences, public healt...
When conducting recurrent event data analysis, it is common to assume that the covariate processes a...
Background: Sequentially ordered multivariate failure time or recurrent event duration data are comm...
This paper considers the analysis of a repeat event outcome in clinical trials of chronic diseases i...
Abstract Background Sequentially ordered multivariate failure time or recurrent event duration data ...
Recurrent event data are widely encountered in clinical and observational studies. Most methods for ...
Multivariate recurrent event data are usually encountered in many clinical and longitudinal studies ...
Dependent censoring occurs in longitudinal studies of recurrent events when the censoring time depen...
Recurrent events models have lately received a lot of attention in the literature. The majority of ...
The number of recurrent events before a terminating event is often of interest. For instance, death ...
The joint modeling framework has found extensive applications in cancer and other biomedical researc...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/89578/1/j.0006-341X.2004.00225.x.pd
Recurrent events together with longitudinal measurements are commonly observed in follow-up studies ...
Multivariate failure time data arise in various forms including recurrent event data when individual...
When a recurrent event process is ended by death, this may imply dependent censoring if the two proc...
<p>Recurrent event data arise frequently in various fields such as biomedical sciences, public healt...
When conducting recurrent event data analysis, it is common to assume that the covariate processes a...
Background: Sequentially ordered multivariate failure time or recurrent event duration data are comm...
This paper considers the analysis of a repeat event outcome in clinical trials of chronic diseases i...
Abstract Background Sequentially ordered multivariate failure time or recurrent event duration data ...
Recurrent event data are widely encountered in clinical and observational studies. Most methods for ...
Multivariate recurrent event data are usually encountered in many clinical and longitudinal studies ...
Dependent censoring occurs in longitudinal studies of recurrent events when the censoring time depen...
Recurrent events models have lately received a lot of attention in the literature. The majority of ...
The number of recurrent events before a terminating event is often of interest. For instance, death ...
The joint modeling framework has found extensive applications in cancer and other biomedical researc...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/89578/1/j.0006-341X.2004.00225.x.pd