Longitudinal censoring is a common artifact when evaluating biomarkers and an obstacle to overcome when jointly investigating the longitudinal nature of the data and the impact on the survival prognoses of a study population. To fully appreciate the complexity of this scenario one has to devise a modeling strategy that can simultaneously account for (i) longitudinal censoring, (ii) outcome dependent dropout, and potentially (iii) correlated biomarkers. In this thesis we propose a novel joint modeling approach to account for the aforementioned issues by linkingtogether a univariate or multivariate Tobit mixed effects model to a suitable parametric event time distribution. This method is significant to public health research since it enables ...
In longitudinal studies it is often of interest to investigate how a marker that is repeatedly measu...
The joint modeling of longitudinal and time-to-event data has exploded in the methodological literat...
When informative dropouts exist for longitudinal studies, ignoring the informative dropout will resu...
Longitudinal censoring is a common artifact when evaluating biomarkers and an obstacle to overcome w...
Abstract Background Available methods for the joint modelling of longitudinal and time-to-event outc...
Joint modeling techniques have been developed for analyzing correlated longitudinal and survival dat...
We develop and study an innovative method for jointly modeling longitudinal response and time-to-eve...
Ye et al. (2008) proposed a joint model for longitudinal measurements and time-to-event data in whic...
The statistical analysis of observational data arising from HIV/AIDS research is generally faced wit...
In epidemiologic and clinical studies, a relatively large number of biomarkers are repeatedly measur...
Longitudinal studies in medical research often generate both repeated measurements of biomarkers and...
In general survival analysis, multiple studies have considered a single failure time corresponding t...
Trajectories of data are collected in a variety of settings and offer insight into the evolution of ...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
In longitudinal studies it is often of interest to investigate how a marker that is repeatedly measu...
The joint modeling of longitudinal and time-to-event data has exploded in the methodological literat...
When informative dropouts exist for longitudinal studies, ignoring the informative dropout will resu...
Longitudinal censoring is a common artifact when evaluating biomarkers and an obstacle to overcome w...
Abstract Background Available methods for the joint modelling of longitudinal and time-to-event outc...
Joint modeling techniques have been developed for analyzing correlated longitudinal and survival dat...
We develop and study an innovative method for jointly modeling longitudinal response and time-to-eve...
Ye et al. (2008) proposed a joint model for longitudinal measurements and time-to-event data in whic...
The statistical analysis of observational data arising from HIV/AIDS research is generally faced wit...
In epidemiologic and clinical studies, a relatively large number of biomarkers are repeatedly measur...
Longitudinal studies in medical research often generate both repeated measurements of biomarkers and...
In general survival analysis, multiple studies have considered a single failure time corresponding t...
Trajectories of data are collected in a variety of settings and offer insight into the evolution of ...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
Joint modeling of various longitudinal sequences has received quite a bit of attention in recent tim...
In longitudinal studies it is often of interest to investigate how a marker that is repeatedly measu...
The joint modeling of longitudinal and time-to-event data has exploded in the methodological literat...
When informative dropouts exist for longitudinal studies, ignoring the informative dropout will resu...