We propose a flexible joint longitudinal-survival framework to examine the association between longitudinally collected biomarkers and a time-to-event endpoint. More specifically, we use our method for analyzing the survival outcome of end-stage renal disease patients with time-varying serum albumin measurements. Our proposed method is robust to common parametric assumptions in that it avoids explicit distributional assumptions on longitudinal measures and allows for subject-specific baseline hazard in the survival component. Fully joint estimation is performed to account for the uncertainty in the estimated longitudinal biomarkers included in the survival model
Mixed types of multivariate outcomes are common in clinical investigations. Survival time is one of ...
In longitudinal studies it is often of interest to investigate how a marker that is repeatedly measu...
In this thesis, we develop statistical methodology to find solutions to contemporary problems in ren...
We are interested in survival analysis of hemodialysis patients for whom several biomarkers are reco...
In studying the progression of a disease and to better predict time to death (survival data), invest...
In clinical studies, longitudinal and survival data are often obtained simultaneously from the same ...
Motivated by the United States Renal Data System (USRDS), we propose a joint modeling framework for ...
Nephrologists and kidney disease researchers are often interested in monitoring how patients' clinic...
The joint modeling of longitudinal and time-to-event data has exploded in the methodological literat...
In longitudinal studies, clinicians usually collect longitudinal biomarkers’ measurements over time ...
In the past couple of decades, longitudinal and survival data analysis have emerged as important and...
Many longitudinal studies generate both the time to some event of interest and repeated measures dat...
In many clinical investigations, a large amount of biomarker or vital sign data are collected repeat...
Backgound: The term ‘joint modelling’ is used in the statistical literature to refer to methods for ...
Monitoring of individual biomarkers has the potential of explaining the hazard of survival outcomes....
Mixed types of multivariate outcomes are common in clinical investigations. Survival time is one of ...
In longitudinal studies it is often of interest to investigate how a marker that is repeatedly measu...
In this thesis, we develop statistical methodology to find solutions to contemporary problems in ren...
We are interested in survival analysis of hemodialysis patients for whom several biomarkers are reco...
In studying the progression of a disease and to better predict time to death (survival data), invest...
In clinical studies, longitudinal and survival data are often obtained simultaneously from the same ...
Motivated by the United States Renal Data System (USRDS), we propose a joint modeling framework for ...
Nephrologists and kidney disease researchers are often interested in monitoring how patients' clinic...
The joint modeling of longitudinal and time-to-event data has exploded in the methodological literat...
In longitudinal studies, clinicians usually collect longitudinal biomarkers’ measurements over time ...
In the past couple of decades, longitudinal and survival data analysis have emerged as important and...
Many longitudinal studies generate both the time to some event of interest and repeated measures dat...
In many clinical investigations, a large amount of biomarker or vital sign data are collected repeat...
Backgound: The term ‘joint modelling’ is used in the statistical literature to refer to methods for ...
Monitoring of individual biomarkers has the potential of explaining the hazard of survival outcomes....
Mixed types of multivariate outcomes are common in clinical investigations. Survival time is one of ...
In longitudinal studies it is often of interest to investigate how a marker that is repeatedly measu...
In this thesis, we develop statistical methodology to find solutions to contemporary problems in ren...