This work was motivated by observational studies in pregnancy with spontaneous abortion (SAB) as outcome. Clearly some women experience the SAB event but the rest do not. In addition, the data are left truncated due to the way pregnant women are recruited into these studies. For those women who do experience SAB, their exact event times are sometimes unknown. Finally, a small percentage of the women are lost to follow-up during their pregnancy. All these give rise to data that are left truncated, partly interval and right-censored, and with a clearly defined cured portion. We consider the non-mixture Cox regression cure rate model and adopt the semiparametric spline-based sieve maximum likelihood approach to analyze such data. Using modern ...
A significant proportion of patients in cancer clinical trials can be cured. That is, the symptoms o...
SUMMARY. Some failure time data come from a population that consists of some subjects who are suscep...
With the ongoing advance in the medical sciences, we may quite often encounter data sets where some ...
This thesis focuses on semiparametric sieve maximum likelihood esti- mation of interval censored sur...
Evaluating and understanding the risk and safety of using medications for autoimmune disease in a wo...
There has been considerable progress in the development of semiparametric transformation models for ...
There has been considerable progress in the development of semiparametric transformation models for ...
This paper considers the analysis of current status data with a cured proportion in the population u...
Contrary to what is generally assumed in survival analysis, a fraction of the population under study...
Interval censored data arise from many clinical studies when the failure event cannot be directly ob...
In a randomized controlled clinical trial study where the response variable of interest is the time ...
In this thesis, we shall attempt to give the NPMLE of the event time distribution and cure-rate base...
Existing semiparametric mixture cure models with interval-censored data often assume a survival mode...
In cancer clinical trials, a significant fraction of patients can be cured, that is, the symptoms of...
This paper addresses regression analysis of partly interval censored data. Partly interval censored ...
A significant proportion of patients in cancer clinical trials can be cured. That is, the symptoms o...
SUMMARY. Some failure time data come from a population that consists of some subjects who are suscep...
With the ongoing advance in the medical sciences, we may quite often encounter data sets where some ...
This thesis focuses on semiparametric sieve maximum likelihood esti- mation of interval censored sur...
Evaluating and understanding the risk and safety of using medications for autoimmune disease in a wo...
There has been considerable progress in the development of semiparametric transformation models for ...
There has been considerable progress in the development of semiparametric transformation models for ...
This paper considers the analysis of current status data with a cured proportion in the population u...
Contrary to what is generally assumed in survival analysis, a fraction of the population under study...
Interval censored data arise from many clinical studies when the failure event cannot be directly ob...
In a randomized controlled clinical trial study where the response variable of interest is the time ...
In this thesis, we shall attempt to give the NPMLE of the event time distribution and cure-rate base...
Existing semiparametric mixture cure models with interval-censored data often assume a survival mode...
In cancer clinical trials, a significant fraction of patients can be cured, that is, the symptoms of...
This paper addresses regression analysis of partly interval censored data. Partly interval censored ...
A significant proportion of patients in cancer clinical trials can be cured. That is, the symptoms o...
SUMMARY. Some failure time data come from a population that consists of some subjects who are suscep...
With the ongoing advance in the medical sciences, we may quite often encounter data sets where some ...