In many clinical studies, continuous variables such as age, blood pressure and cholesterol are measured and analyzed. Often clinicians prefer to categorize these continuous variables into different groups, such as low and high risk groups. The goal of this work is to find the cutpoint of a continuous variable where the transition occurs from low to high risk group. Different methods have been published in literature to find such a cutpoint. We extended the methods of Contal and O’Quigley (1999) which was based on the log-rank test and the methods of Klein and Wu (2004) which was based on the Score test to find the cutpoint of a continuous covariate. Since the log-rank test is a nonparametric method and the Score test is a parametric method,...
Parametric survival models are being increasingly used as an alternative to the Cox model in biomedi...
Typical survival analyses treat the time to failure as a response and use parametric models, such as...
In survival studies the values of some covariates may change over time. It is natural to incorporate...
We consider consider the problem of dichotomizing a continuous covariate when performing a regressio...
Traditional survival analysis methods are primarily those of Kaplan-Meier curves, the log-rank test ...
Abstract Background In clinical and epidemiological researches, continuous predictors are often disc...
In statistical analyses the researcher should normally use all the relevant information in the data....
To assess the value of a continuous marker in predicting the risk of a disease, a graphical tool cal...
MOTIVATION: Discrimination statistics describe the ability of a survival model to assign higher r...
Competing risks is commonly encountered in survival data. While fundamental methods have been establ...
In many clinical studies, the outcome of interest is an event time. In addition, longitudinal data o...
A patient-reported outcome (PRO) is a type of outcome reported directly from patients, and it has be...
PhD ThesisProportional hazards models are commonly used in survival analysis. Typically a baseline ...
MotivationDiscrimination statistics describe the ability of a survival model to assign higher risks ...
It is common strategy in medical research to categorize a continuous covariable before evaluating it...
Parametric survival models are being increasingly used as an alternative to the Cox model in biomedi...
Typical survival analyses treat the time to failure as a response and use parametric models, such as...
In survival studies the values of some covariates may change over time. It is natural to incorporate...
We consider consider the problem of dichotomizing a continuous covariate when performing a regressio...
Traditional survival analysis methods are primarily those of Kaplan-Meier curves, the log-rank test ...
Abstract Background In clinical and epidemiological researches, continuous predictors are often disc...
In statistical analyses the researcher should normally use all the relevant information in the data....
To assess the value of a continuous marker in predicting the risk of a disease, a graphical tool cal...
MOTIVATION: Discrimination statistics describe the ability of a survival model to assign higher r...
Competing risks is commonly encountered in survival data. While fundamental methods have been establ...
In many clinical studies, the outcome of interest is an event time. In addition, longitudinal data o...
A patient-reported outcome (PRO) is a type of outcome reported directly from patients, and it has be...
PhD ThesisProportional hazards models are commonly used in survival analysis. Typically a baseline ...
MotivationDiscrimination statistics describe the ability of a survival model to assign higher risks ...
It is common strategy in medical research to categorize a continuous covariable before evaluating it...
Parametric survival models are being increasingly used as an alternative to the Cox model in biomedi...
Typical survival analyses treat the time to failure as a response and use parametric models, such as...
In survival studies the values of some covariates may change over time. It is natural to incorporate...