We develop regression methods for inference on conditional quantiles of time‐to‐transition in multistate processes. Special cases include survival, recurrent event, semicompeting, and competing risk data. We use an ad hoc representation of the underlying stochastic process, in conjunction with methods for censored quantile regression. In a simulation study, we demonstrate that the proposed approach has a superior finite sample performance over simple methods for censored quantile regression, which naively assume independence between states, and over methods for competing risks, even when the latter are applied to competing risk data settings. We apply our approach to data on hospital‐acquired infections in cirrhotic patients, showing a quan...
Quantites, especially the medians, of survival times are often used as summary statistics to compare...
The overall theme of this thesis focuses on the joint modeling of longitudinal covariates and a cens...
In this paper we propose a quantile survival model to analyze censored data. Thisapproach provides a...
We develop regression methods for inference on conditional quantiles of time-to-transition in multis...
As an alternative to the mean regression model, the quantile regression model has been studied exten...
We introduce a regression model which includes the proportional hazard and accelerated failure time ...
M.Sc. (Mathematical Statistics)While a typical regression model describes how the mean value of a re...
We propose parametric inferences for quantile event times with adjustment for covariates on competin...
Summary: In this paper we propose a semiparametric quantile regression model for censored survival d...
This thesis develops two semiparametric methods for censored survival data when the covariates invol...
Since survival data occur over time, often important covariates that we wish to consider also change...
Quantile regression models the conditional quantile as a function of independent variables providing...
In time to event data analysis, it is often of interest to predict quantities such as t-year surviva...
The thesis consists of six chapters and focus on two topics: quantile regression and survival analys...
In this thesis, we concern about some issues in survival data with censored covariates. In the fi...
Quantites, especially the medians, of survival times are often used as summary statistics to compare...
The overall theme of this thesis focuses on the joint modeling of longitudinal covariates and a cens...
In this paper we propose a quantile survival model to analyze censored data. Thisapproach provides a...
We develop regression methods for inference on conditional quantiles of time-to-transition in multis...
As an alternative to the mean regression model, the quantile regression model has been studied exten...
We introduce a regression model which includes the proportional hazard and accelerated failure time ...
M.Sc. (Mathematical Statistics)While a typical regression model describes how the mean value of a re...
We propose parametric inferences for quantile event times with adjustment for covariates on competin...
Summary: In this paper we propose a semiparametric quantile regression model for censored survival d...
This thesis develops two semiparametric methods for censored survival data when the covariates invol...
Since survival data occur over time, often important covariates that we wish to consider also change...
Quantile regression models the conditional quantile as a function of independent variables providing...
In time to event data analysis, it is often of interest to predict quantities such as t-year surviva...
The thesis consists of six chapters and focus on two topics: quantile regression and survival analys...
In this thesis, we concern about some issues in survival data with censored covariates. In the fi...
Quantites, especially the medians, of survival times are often used as summary statistics to compare...
The overall theme of this thesis focuses on the joint modeling of longitudinal covariates and a cens...
In this paper we propose a quantile survival model to analyze censored data. Thisapproach provides a...