Summary. In large cohort studies, it often happens that some covariates are expensive to measure and hence only measured on a validation set. On the other hand, relatively cheap but error-prone measurements of the covariates are available for all subjects. Regression calibration (RC) estimation method (Prentice, 1982, Biometrika 69, 331–342) is a popular method for analyzing such data and has been applied to the Cox model by Wang et al. (1997, Biometrics 53, 131–145) under normal measurement error and rare disease assumptions. In this article, we consider the RC estimation method for the semiparametric accelerated failure time model with covariates subject to measurement error. Asymptotic properties of the proposed method are investigated u...
Presented at 2014 ICSA symposium Program The classical accelerated failure time (AFT) model has been...
This dissertation focuses on utilizing information more efficiently in several settings when some ob...
This paper introduces a novel approach to making inference about the regression parameters in the ac...
In large cohort studies, it often happens that some covariates are expensive to measure and hence on...
<p>This article considers linear regression with missing covariates and a right censored outcome. We...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
Summary. In this article we investigate regression calibration methods to jointly model longitudinal...
In a case–cohort design, covariates are assembled only for a subcohort that is randomly selected fro...
In this dissertation, we consider the use of linear models in the presence of clustered, right-censo...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
In this article we investigate regression calibration methods to jointly model longitudinal and surv...
The accelerated failure time model is widely used for analyzing censored survival times often observ...
The classical accelerated failure time (AFT) model has been extensively investigated due to its dire...
It is well known that measurement error in the covariates of regression models generally causes bias...
Partly interval-censored (PIC) data arise when some failure times are exactly observed while others ...
Presented at 2014 ICSA symposium Program The classical accelerated failure time (AFT) model has been...
This dissertation focuses on utilizing information more efficiently in several settings when some ob...
This paper introduces a novel approach to making inference about the regression parameters in the ac...
In large cohort studies, it often happens that some covariates are expensive to measure and hence on...
<p>This article considers linear regression with missing covariates and a right censored outcome. We...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
Summary. In this article we investigate regression calibration methods to jointly model longitudinal...
In a case–cohort design, covariates are assembled only for a subcohort that is randomly selected fro...
In this dissertation, we consider the use of linear models in the presence of clustered, right-censo...
In survival analysis, semiparametric accelerated failure time (AFT) models directly relate the predi...
In this article we investigate regression calibration methods to jointly model longitudinal and surv...
The accelerated failure time model is widely used for analyzing censored survival times often observ...
The classical accelerated failure time (AFT) model has been extensively investigated due to its dire...
It is well known that measurement error in the covariates of regression models generally causes bias...
Partly interval-censored (PIC) data arise when some failure times are exactly observed while others ...
Presented at 2014 ICSA symposium Program The classical accelerated failure time (AFT) model has been...
This dissertation focuses on utilizing information more efficiently in several settings when some ob...
This paper introduces a novel approach to making inference about the regression parameters in the ac...