Historically, the cure rate model has been used for modeling time-to-event data within which a significant proportion of patients are assumed to be cured of illnesses, including breast cancer, non-Hodgkin lymphoma, leukemia, prostate cancer, melanoma, and head and neck cancer. Perhaps the most popular type of cure rate model is the mixture model introduced by Berkson and Gage [1]. In this model, it is assumed that a certain proportion of the patients are cured, in the sense that they do not present the event of interest during a long period of time and can found to be immune to the cause of failure under study. In this paper, we propose a general hazard model which accommodates comprehensive families of cure rate models as particular cases,...
In population-based cancer studies, cure is said to occur when the mortality (hazard) rate in the di...
Medical time-to-event studies frequently include two groups of patients: those who will not experien...
Medical time-to-event studies frequently include two groups of patients: those who will not experien...
Historically, the cure rate model has been used for modeling time-to-event data within which a signi...
Cure rate models are survival models consisting of a cured fraction and an uncured fraction. These m...
In the long term follow-up study of clinical survival data, we often encounter situations where some...
When there is evidence of long term survivors, cure rate models have been used by researchers to mod...
The authors propose a novel class of cure rate models for right-censored failure time data. The clas...
The mixture cure model is a developed statistical survival model. It assumes that the studied popula...
This article considers the utility of the bounded cumulative hazard model in cure rate estimation, w...
In this dissertation, we focus on studying three mixture cure models with background mortality. With...
Abstract This research mainly aims to develop a generalized cure rate model, estimate the proportio...
In biomedical studies, survival data with a cure fraction (the proportion of subjects cured of disea...
Cure models have been developed to analyze failure time data with a cured fraction. For such data, s...
Survival analysis examines and models the time it takes for events to occur. The typical event is de...
In population-based cancer studies, cure is said to occur when the mortality (hazard) rate in the di...
Medical time-to-event studies frequently include two groups of patients: those who will not experien...
Medical time-to-event studies frequently include two groups of patients: those who will not experien...
Historically, the cure rate model has been used for modeling time-to-event data within which a signi...
Cure rate models are survival models consisting of a cured fraction and an uncured fraction. These m...
In the long term follow-up study of clinical survival data, we often encounter situations where some...
When there is evidence of long term survivors, cure rate models have been used by researchers to mod...
The authors propose a novel class of cure rate models for right-censored failure time data. The clas...
The mixture cure model is a developed statistical survival model. It assumes that the studied popula...
This article considers the utility of the bounded cumulative hazard model in cure rate estimation, w...
In this dissertation, we focus on studying three mixture cure models with background mortality. With...
Abstract This research mainly aims to develop a generalized cure rate model, estimate the proportio...
In biomedical studies, survival data with a cure fraction (the proportion of subjects cured of disea...
Cure models have been developed to analyze failure time data with a cured fraction. For such data, s...
Survival analysis examines and models the time it takes for events to occur. The typical event is de...
In population-based cancer studies, cure is said to occur when the mortality (hazard) rate in the di...
Medical time-to-event studies frequently include two groups of patients: those who will not experien...
Medical time-to-event studies frequently include two groups of patients: those who will not experien...