We suggest a new simple approach for estimation and assessment of covariate effects for the cumulative incidence curve in the competing risks model. We consider a semiparametric regression model where some effects may be time-varying and some may be constant over time. Our estimator can be implemented by standard software. Our simulation study shows that the estimator works well and has finite-sample properties comparable with the subdistribution approach. We apply the method to bone marrow transplant data and estimate the cumulative incidence of death in complete remission following a bone marrow transplantation. Here death in complete remission and relapse are two competing events. Copyright 2008, Oxford University Press.
International audiencePatients are frequently exposed to failure from several mutually exclusive cau...
Clinical trials and cohort studies that collect survival data frequently involve patients who may fa...
Semicompeting risks data are commonly seen in biomedical applications in which a terminal event cens...
Abstract: The cumulative incidence function provides intuitive summary information about competing r...
The cumulative incidence is the probability of failure from the cause of interest over a certain tim...
We suggest a regression approach to estimate the excess cumulative incidence function (CIF) when mat...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
Statistical techniques such as Kaplan-Meier estimate is commonly used and interpreted as the probabi...
BackgroundIn many studies, some information might not be available for the whole cohort, some covari...
Recently personalized medicine and dynamic treatment regimes have drawn considerable attention. Dyna...
Competing risks arise in studies in which individuals are subject to a number of potential failure e...
Competing risks occur in survival analysis when an individual is at risk of more than one type of ev...
In many studies, survival data involve several types of failure. This is commonly referred as compet...
The possible occurrence of multiple events during follow-up is a common situation in several clinica...
The use of cumulative incidence functions for characterizing the risk of one type of event in the pr...
International audiencePatients are frequently exposed to failure from several mutually exclusive cau...
Clinical trials and cohort studies that collect survival data frequently involve patients who may fa...
Semicompeting risks data are commonly seen in biomedical applications in which a terminal event cens...
Abstract: The cumulative incidence function provides intuitive summary information about competing r...
The cumulative incidence is the probability of failure from the cause of interest over a certain tim...
We suggest a regression approach to estimate the excess cumulative incidence function (CIF) when mat...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
Statistical techniques such as Kaplan-Meier estimate is commonly used and interpreted as the probabi...
BackgroundIn many studies, some information might not be available for the whole cohort, some covari...
Recently personalized medicine and dynamic treatment regimes have drawn considerable attention. Dyna...
Competing risks arise in studies in which individuals are subject to a number of potential failure e...
Competing risks occur in survival analysis when an individual is at risk of more than one type of ev...
In many studies, survival data involve several types of failure. This is commonly referred as compet...
The possible occurrence of multiple events during follow-up is a common situation in several clinica...
The use of cumulative incidence functions for characterizing the risk of one type of event in the pr...
International audiencePatients are frequently exposed to failure from several mutually exclusive cau...
Clinical trials and cohort studies that collect survival data frequently involve patients who may fa...
Semicompeting risks data are commonly seen in biomedical applications in which a terminal event cens...