[[abstract]]This work, motivated by an osteoporosis survey study, considers regression analysis with incompletely observed current status data. Here the current status data, including an examination time and an indicator for whether or not the event of interest has occurred by the examination time, is not observed for all subjects. Instead, a surrogate outcome subject to misclassification of the current status is available for all subjects. We focus on semiparametric regression under transformation models, including the proportional hazards and proportional odds models as special cases. Under the missing at random mechanism where the missingness of the current status outcome can depend only on the observed surrogate outcome and covariates, ...
This dissertation considers topics in current status data, a type of survival data where the only av...
Many standard statistical techniques require balanced data. However, missing data may arise by desig...
Summary. Missing covariate data often arise in biomedical studies, and analysis of such data that ig...
[[abstract]]Statistical inference based on right-censored data for the proportional hazards (PH) mod...
We propose a method for fitting semiparametric models such as the proportional hazards (PH), additiv...
In this article, we present nonparametric and semiparametric methods to analyze current status data ...
[[abstract]]Current status data arise due to only one feasible examination such that the failure tim...
Semiparametric transformation models, which include the Cox proportional hazards and proportional od...
We propose semi-parametric methods to model cohort data where repeated outcomes may be missing due t...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
We develop a joint analysis approach for recurrent and nonrecurrent event processes subject to case ...
We propose a profile conditional likelihood approach to handle missing covariates in the general sem...
[[abstract]]We consider joint analysis of event times to a recurrent and a non-recurrent event, with...
In this dissertation, we propose methodology to account for missing data as well as a strategy to ac...
[[abstract]]Regression diagnostics that assess the adequacy of a regression model for observed data ...
This dissertation considers topics in current status data, a type of survival data where the only av...
Many standard statistical techniques require balanced data. However, missing data may arise by desig...
Summary. Missing covariate data often arise in biomedical studies, and analysis of such data that ig...
[[abstract]]Statistical inference based on right-censored data for the proportional hazards (PH) mod...
We propose a method for fitting semiparametric models such as the proportional hazards (PH), additiv...
In this article, we present nonparametric and semiparametric methods to analyze current status data ...
[[abstract]]Current status data arise due to only one feasible examination such that the failure tim...
Semiparametric transformation models, which include the Cox proportional hazards and proportional od...
We propose semi-parametric methods to model cohort data where repeated outcomes may be missing due t...
© 2021 Ruoxu TanThe thesis mainly studies three different topics on missing data, where we intend to...
We develop a joint analysis approach for recurrent and nonrecurrent event processes subject to case ...
We propose a profile conditional likelihood approach to handle missing covariates in the general sem...
[[abstract]]We consider joint analysis of event times to a recurrent and a non-recurrent event, with...
In this dissertation, we propose methodology to account for missing data as well as a strategy to ac...
[[abstract]]Regression diagnostics that assess the adequacy of a regression model for observed data ...
This dissertation considers topics in current status data, a type of survival data where the only av...
Many standard statistical techniques require balanced data. However, missing data may arise by desig...
Summary. Missing covariate data often arise in biomedical studies, and analysis of such data that ig...