In competing risks setting, we account for death according to a specific cause and the quantities of interest are usually the cause-specific hazards (CSHs) and the cause-specific cumulative probabilities. A cause-specific cumulative probability can be obtained with a combination of the CSHs or via the subdistribution hazard. Here, we modeled the CSH with flexible hazard-based regression models using B-splines for the baseline hazard and time-dependent (TD) effects. We derived the variance of the cause-specific cumulative probabilities at the population level using the multivariate delta method and showed how we could easily quantify the impact of a covariate on the cumulative probability scale using covariate-adjusted cause-specific cumulat...
Many biomedical and clinical studies with time-to-event outcomes involve competing risks data. These...
In this paper we describe flexible competing risks regression models using the comp.risk() function ...
Prognostic studies often involve modeling competing risks, where an individual can experience only o...
In a competing risks analysis, interest lies in the cause-specific cumulative incidence function (CI...
In competing-risks analysis, the cause-specific cumulative incidence function (CIF) is usually obtai...
“Competing Risks” refers to the study of the time to event where there is more than one type of fail...
Competing risks occur in survival analysis when an individual is at risk of more than one type of ev...
The cumulative incidence function is widely reported in competing risks studies, with group differen...
Background: When a patient experiences an event other than the one of interest in the study, usually...
We suggest a new simple approach for estimation and assessment of covariate effects for the cumulati...
The Fine-Gray subdistribution hazard model has become the default method to estimate the incidence o...
Thesis (Ph. D.)--University of Hawaii at Manoa, 1996.Includes bibliographical references (leaves 129...
For competing risks data, the Fine–Gray proportional hazards model for subdistribution has gained po...
The number needed to treat is a tool often used in clinical settings to illustrate the effect of a t...
The cumulative incidence is the probability of failure from the cause of interest over a certain tim...
Many biomedical and clinical studies with time-to-event outcomes involve competing risks data. These...
In this paper we describe flexible competing risks regression models using the comp.risk() function ...
Prognostic studies often involve modeling competing risks, where an individual can experience only o...
In a competing risks analysis, interest lies in the cause-specific cumulative incidence function (CI...
In competing-risks analysis, the cause-specific cumulative incidence function (CIF) is usually obtai...
“Competing Risks” refers to the study of the time to event where there is more than one type of fail...
Competing risks occur in survival analysis when an individual is at risk of more than one type of ev...
The cumulative incidence function is widely reported in competing risks studies, with group differen...
Background: When a patient experiences an event other than the one of interest in the study, usually...
We suggest a new simple approach for estimation and assessment of covariate effects for the cumulati...
The Fine-Gray subdistribution hazard model has become the default method to estimate the incidence o...
Thesis (Ph. D.)--University of Hawaii at Manoa, 1996.Includes bibliographical references (leaves 129...
For competing risks data, the Fine–Gray proportional hazards model for subdistribution has gained po...
The number needed to treat is a tool often used in clinical settings to illustrate the effect of a t...
The cumulative incidence is the probability of failure from the cause of interest over a certain tim...
Many biomedical and clinical studies with time-to-event outcomes involve competing risks data. These...
In this paper we describe flexible competing risks regression models using the comp.risk() function ...
Prognostic studies often involve modeling competing risks, where an individual can experience only o...