In many public health problems, an important goal is to identify the effect of some treatment/intervention on the risk of failure for the whole population. A marginal proportional hazards regression model is often used to analyze such an effect. When dependent censoring is explained by many auxiliary covariates, we utilize two working models to condense high-dimensional covariates to achieve dimension reduction. Then the estimator of the treatment effect is obtained by maximizing a pseudo-likelihood function over a sieve space. Such an estimator is shown to be consistent and asymptotically normal when either of the two working models is correct; additionally, when both working models are correct, its asymptotic variance is the same as the s...
AbstractIn this article, we consider a proportional odds model, which allows one to examine the exte...
We propose a semiparametric approach to the proportional hazards regression analysis of interval-cen...
In many biomedical studies, it is common that due to budget constraints, the primary covariate is on...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
This dissertation deals with right-censored data in survival analysis, where the dependent censoring...
One major aspect in medical research is to relate the survival times of patients with the relevant c...
This dissertation deals with right-censored data in survival analysis, where the dependent censoring...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
We consider the problem of inference on the regression coefficient in the Cox's proportional hazards...
AbstractDoubly censored data, which include left as well as right censored observations, are frequen...
The Botswana Combination Prevention Project was a cluster-randomized HIV prevention trial whose foll...
AbstractDoubly censored data, which include left as well as right censored observations, are frequen...
In survival analysis, proportional hazards model is the most commonly used and the Cox model is the ...
AbstractIn this article, we consider a proportional odds model, which allows one to examine the exte...
We propose a semiparametric approach to the proportional hazards regression analysis of interval-cen...
In many biomedical studies, it is common that due to budget constraints, the primary covariate is on...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
This dissertation deals with right-censored data in survival analysis, where the dependent censoring...
One major aspect in medical research is to relate the survival times of patients with the relevant c...
This dissertation deals with right-censored data in survival analysis, where the dependent censoring...
One goal in survival analysis of right-censored data is to estimate the marginal survival function i...
We consider the problem of inference on the regression coefficient in the Cox's proportional hazards...
AbstractDoubly censored data, which include left as well as right censored observations, are frequen...
The Botswana Combination Prevention Project was a cluster-randomized HIV prevention trial whose foll...
AbstractDoubly censored data, which include left as well as right censored observations, are frequen...
In survival analysis, proportional hazards model is the most commonly used and the Cox model is the ...
AbstractIn this article, we consider a proportional odds model, which allows one to examine the exte...
We propose a semiparametric approach to the proportional hazards regression analysis of interval-cen...
In many biomedical studies, it is common that due to budget constraints, the primary covariate is on...