Competing risks occur in survival analysis when an individual is at risk of more than one type of event and one event's occurrence precludes another's. The cause-specific cumulative incidence function (CIF) is a measure of interest with competing-risks data. It gives the absolute (or crude) risk of having the event by time t, accounting for the fact that it is impossible to have the event if a competing event occurs first. The user-written command stcompet calculates nonparametric estimates of the cause-specific CIF, and the official Stata command stcrreg fits the Fine and Gray (1999, Journal of the American Statistical Association 94: 496–509) model for competing-risks data. Geskus (2011, Biometrics 67: 39–49) has recently shown that stand...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
Competing-risks survival regression provides a useful alternative to Cox regression in the presence ...
Competing risks occur in survival analysis when an individual is at risk of more than one type of ev...
In competing-risks analysis, the cause-specific cumulative incidence function (CIF) is usually obtai...
Competing risk analysis refers to a special type of survival analysis that aims to correctly estimat...
Competing risks are present when the patients within a dataset could experience one or more of sever...
In a competing risks analysis, interest lies in the cause-specific cumulative incidence function (CI...
In a competing risks analysis, interest lies in the cause-specific cumulative incidence function (CI...
Survival analysis is a powerful statistical tool to study failure-time data. In introductory courses...
stcompadj estimates the adjusted cumulative incidence function based on a Cox or a flexible parametr...
Although cumulative incidence function (CIF) estimates are commonly used to describe the failure pro...
Although cumulative incidence function (CIF) estimates are commonly used to describe the failure pro...
<p>Survival analysis is a powerful statistical tool to study failure-time data. In introductory cour...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
Competing-risks survival regression provides a useful alternative to Cox regression in the presence ...
Competing risks occur in survival analysis when an individual is at risk of more than one type of ev...
In competing-risks analysis, the cause-specific cumulative incidence function (CIF) is usually obtai...
Competing risk analysis refers to a special type of survival analysis that aims to correctly estimat...
Competing risks are present when the patients within a dataset could experience one or more of sever...
In a competing risks analysis, interest lies in the cause-specific cumulative incidence function (CI...
In a competing risks analysis, interest lies in the cause-specific cumulative incidence function (CI...
Survival analysis is a powerful statistical tool to study failure-time data. In introductory courses...
stcompadj estimates the adjusted cumulative incidence function based on a Cox or a flexible parametr...
Although cumulative incidence function (CIF) estimates are commonly used to describe the failure pro...
Although cumulative incidence function (CIF) estimates are commonly used to describe the failure pro...
<p>Survival analysis is a powerful statistical tool to study failure-time data. In introductory cour...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
Competing risks occur frequently in the analysis of survival data. A competing risk is an event whos...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
Competing-risks survival regression provides a useful alternative to Cox regression in the presence ...