Instrumental variable methods allow unbiased estimation in the presence of unmeasured confounders when an appropriate instrumental variable is available. Two-stage least-squares and residual inclusion methods have recently been adapted to additive hazard models for censored survival data. The semi-parametric additive hazard model which can include time-independent and time-dependent covariate effects is particularly suited for the two-stage residual inclusion method, since it allows direct estimation of time-independent covariate effects without restricting the effect of the residual on the hazard. In this article we prove asymptotic normality of two-stage residual inclusion estimators of regression coefficients in a semi-parametric additiv...
Middle-censoring refers to data arising in situations where the exact lifetime of study subjects bec...
Proposition Two-stage least squares estimators and variants thereof are widely used to infer the eff...
Two-stage instrumental variable methods are commonly used to estimate the causal effects of treatmen...
Instrumental variable methods allow unbiased estimation in the presence of unmeasured confounders wh...
Abstract: Interval-censored event time data often arise in medical and public health studies. In suc...
Bias due to unobserved confounding can seldom be ruled out with certainty when estimating the causal...
Bias due to unobserved confounding can seldom be ruled out with certainty when estimating the causal...
We consider additive hazard models (Aalen, 1989) for the effect of a randomized treatment on a survi...
Cox proportional hazard model is often used to estimate the effect of covariates on hazard for censo...
For the additive risk model with time-varying covariates which are subject to measurement errors, we...
We study joint modeling of survival and longitudinal data. There are two regression models of inter...
Semiparametric transformation models provide a very general framework for studying the effects of (p...
The use of instrumental variables for estimating the effect of an exposure on an outcome is popular ...
We consider instrumental variable estimation of the proportional hazards model of Cox (1972). The in...
The proportional hazards assumption in the commonly used Cox model for censored failure time data is...
Middle-censoring refers to data arising in situations where the exact lifetime of study subjects bec...
Proposition Two-stage least squares estimators and variants thereof are widely used to infer the eff...
Two-stage instrumental variable methods are commonly used to estimate the causal effects of treatmen...
Instrumental variable methods allow unbiased estimation in the presence of unmeasured confounders wh...
Abstract: Interval-censored event time data often arise in medical and public health studies. In suc...
Bias due to unobserved confounding can seldom be ruled out with certainty when estimating the causal...
Bias due to unobserved confounding can seldom be ruled out with certainty when estimating the causal...
We consider additive hazard models (Aalen, 1989) for the effect of a randomized treatment on a survi...
Cox proportional hazard model is often used to estimate the effect of covariates on hazard for censo...
For the additive risk model with time-varying covariates which are subject to measurement errors, we...
We study joint modeling of survival and longitudinal data. There are two regression models of inter...
Semiparametric transformation models provide a very general framework for studying the effects of (p...
The use of instrumental variables for estimating the effect of an exposure on an outcome is popular ...
We consider instrumental variable estimation of the proportional hazards model of Cox (1972). The in...
The proportional hazards assumption in the commonly used Cox model for censored failure time data is...
Middle-censoring refers to data arising in situations where the exact lifetime of study subjects bec...
Proposition Two-stage least squares estimators and variants thereof are widely used to infer the eff...
Two-stage instrumental variable methods are commonly used to estimate the causal effects of treatmen...