AbstractHow to take advantage of the available auxiliary covariate information when the primary covariate of interest is not measured is a frequently encountered question in biomedical study. In this paper, we consider the multivariate failure times regression analysis in which the primary covariate is assessed only in a validation set, but a continuous auxiliary covariate for it is available for all subjects in the study cohort. Under the frame of marginal hazard model, we propose to estimate the induced relative risk function in the non-validation set through kernel smoothing method and then obtain an estimated pseudo-partial likelihood function. The proposed estimator which maximizes the estimated pseudo-partial likelihood is shown to be...
In medical research, investigators are often interested in estimating marginal survival distribution...
Abstract: The cumulative incidence function provides intuitive summary information about competing r...
is proposed to estimate the covariate effect in a nonparametric proportional hazards model, λ(t|x) ...
How to take advantage of the available auxiliary covariate information when the primary covariate of...
AbstractHow to take advantage of the available auxiliary covariate information when the primary cova...
In this paper we use Cox’s regression model to fit failure time data with continuous informative aux...
In many biomedical studies, it is common that due to budget constraints, the primary covariate is on...
As biological studies become more expensive to conduct, statistical methods that take advantage of e...
Statistical estimation and inference for marginal hazard models with varying coefficients for multiv...
In this dissertation we use Cox’s regression model to fit failure time data with continuous informat...
AbstractIn competing risks model, several failure times arise potentially. The smallest failure time...
Marginal additive hazards models are considered for multivariate survival data in which individuals ...
Correlated failure time data analysis has been an interesting topic for about 30 years. Nonparametri...
<div><p>Regression analysis of censored failure observations via the proportional hazards model perm...
We consider the problem of inference on the regression coefficient in the Cox's proportional hazards...
In medical research, investigators are often interested in estimating marginal survival distribution...
Abstract: The cumulative incidence function provides intuitive summary information about competing r...
is proposed to estimate the covariate effect in a nonparametric proportional hazards model, λ(t|x) ...
How to take advantage of the available auxiliary covariate information when the primary covariate of...
AbstractHow to take advantage of the available auxiliary covariate information when the primary cova...
In this paper we use Cox’s regression model to fit failure time data with continuous informative aux...
In many biomedical studies, it is common that due to budget constraints, the primary covariate is on...
As biological studies become more expensive to conduct, statistical methods that take advantage of e...
Statistical estimation and inference for marginal hazard models with varying coefficients for multiv...
In this dissertation we use Cox’s regression model to fit failure time data with continuous informat...
AbstractIn competing risks model, several failure times arise potentially. The smallest failure time...
Marginal additive hazards models are considered for multivariate survival data in which individuals ...
Correlated failure time data analysis has been an interesting topic for about 30 years. Nonparametri...
<div><p>Regression analysis of censored failure observations via the proportional hazards model perm...
We consider the problem of inference on the regression coefficient in the Cox's proportional hazards...
In medical research, investigators are often interested in estimating marginal survival distribution...
Abstract: The cumulative incidence function provides intuitive summary information about competing r...
is proposed to estimate the covariate effect in a nonparametric proportional hazards model, λ(t|x) ...