This work discusses the problem of informative censoring in survival studies. A joint model for the time to event and the time to censoring is presented. Their hazard functions include a latent factor in order to identify this joint model without sacrificing the flexibility of the parametric specification. Furthermore, a fully Bayesian formulation with a semi-parametric proportional hazard function is provided. Similar latent variable models have been described in literature, but here the emphasis is on the performance of the inferential task of the resulting mixture model with unknown number of components. The posterior distribution of the parameters is estimated using Hamiltonian Monte Carlo methods implemented in Stan. Simulation studies...
Middle censoring refers to data that becomes unobservable if it falls within a random interval (L,R)...
Time to event data differ from other types of data because they are censored. Most of the related es...
When analysing survival data from clinical trials, crossing of survival functions is sometimes obser...
This work discusses the problem of informative censoring in survival studies. A joint model for the ...
The standard analyses of survival data involve the assumption that survival and censoring are indepe...
We investigate the Bayesian Information Criterion (BIC) for variable selection in models for censore...
Background The Health Technology Assessment agencies typically require an economic evaluation consid...
Cox proportional hazards models in the presence of censoring assume that the censoring mechanism is ...
This dissertation extends the results of Berliner and Hill (1988) in several directions, including a...
In many medical studies, individuals are seen periodically, at a set of pre-scheduled clinical visit...
This article introduces a new Bayesian approach to the analysis of right-censored survival data. The...
In survival studies with right censored failure times, it is common that censoring is correlated wit...
In this thesis we introduce a model for informative censoring. We assume that the joint distribution...
A proportional hazard function together with partial likelihood estimation is the most common approa...
With the booming of big complex data, various Statistical methods and Data Science techniques have b...
Middle censoring refers to data that becomes unobservable if it falls within a random interval (L,R)...
Time to event data differ from other types of data because they are censored. Most of the related es...
When analysing survival data from clinical trials, crossing of survival functions is sometimes obser...
This work discusses the problem of informative censoring in survival studies. A joint model for the ...
The standard analyses of survival data involve the assumption that survival and censoring are indepe...
We investigate the Bayesian Information Criterion (BIC) for variable selection in models for censore...
Background The Health Technology Assessment agencies typically require an economic evaluation consid...
Cox proportional hazards models in the presence of censoring assume that the censoring mechanism is ...
This dissertation extends the results of Berliner and Hill (1988) in several directions, including a...
In many medical studies, individuals are seen periodically, at a set of pre-scheduled clinical visit...
This article introduces a new Bayesian approach to the analysis of right-censored survival data. The...
In survival studies with right censored failure times, it is common that censoring is correlated wit...
In this thesis we introduce a model for informative censoring. We assume that the joint distribution...
A proportional hazard function together with partial likelihood estimation is the most common approa...
With the booming of big complex data, various Statistical methods and Data Science techniques have b...
Middle censoring refers to data that becomes unobservable if it falls within a random interval (L,R)...
Time to event data differ from other types of data because they are censored. Most of the related es...
When analysing survival data from clinical trials, crossing of survival functions is sometimes obser...