Competing risk or "multiple cause" survival data arise in medical, criminological, financial, engineering, and many other contexts when death or failure of an individual or unit is classified into one of a variety of types or causes. Important issues in the analysis of such data range from basic properties, such as consistency of estimation of parameters, through more complex boundary hypothesis-testing problems, such as whether a specified list of causes is ``exhaustive'' $-$ as opposed to the possibility that some individuals may be ``immune'' to all of these causes. We give a carefully formulated parametric mixture model for competing risk data which allows for censoring and immune individuals, and for which a large-sample analysis can b...
We propose a method to analyse competing risks survival data when failure types are missing for some...
Advisors: Sanjib Basu; Nader Ebrahimi.Committee members: Alan M. Polansky; Duchwan Ryu; Ananda Sen; ...
While nonparametric methods have been well established for inference on competing risks data, parame...
Abstract: “Competing risk ” or “multiple cause ” survival data arise in medical, crim-inological, fi...
In the competing risks model, a unit is exposed to several risks at the same time, but it is assumed...
Parametric estimation of cause-specific hazard functions in a competing risks model is considered. A...
In several studies in Survival Analysis, the cause of failure / death of items or individuals may be...
Competing risks data usually arises in studies in which the failure of an individual may be classifi...
Competing risk analysis refers to a special type of survival analysis that aims to correctly estimat...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
AbstractWe study the large-sample properties of a class of parametric mixture models with covariates...
Standard survival analysis focuses on failure-time data that has one type of failure. Competing risk...
Competing risks occur often in survival analysis. In present work, we study different ap- proaches t...
In this article, a competing risk model is analyzed in the presence of complete and censored data wh...
In competing-risks analysis, the cause-specific cumulative incidence function (CIF) is usually obtai...
We propose a method to analyse competing risks survival data when failure types are missing for some...
Advisors: Sanjib Basu; Nader Ebrahimi.Committee members: Alan M. Polansky; Duchwan Ryu; Ananda Sen; ...
While nonparametric methods have been well established for inference on competing risks data, parame...
Abstract: “Competing risk ” or “multiple cause ” survival data arise in medical, crim-inological, fi...
In the competing risks model, a unit is exposed to several risks at the same time, but it is assumed...
Parametric estimation of cause-specific hazard functions in a competing risks model is considered. A...
In several studies in Survival Analysis, the cause of failure / death of items or individuals may be...
Competing risks data usually arises in studies in which the failure of an individual may be classifi...
Competing risk analysis refers to a special type of survival analysis that aims to correctly estimat...
This thesis contains two parts focusing on regression analysis and diagnostic accuracy analysis of c...
AbstractWe study the large-sample properties of a class of parametric mixture models with covariates...
Standard survival analysis focuses on failure-time data that has one type of failure. Competing risk...
Competing risks occur often in survival analysis. In present work, we study different ap- proaches t...
In this article, a competing risk model is analyzed in the presence of complete and censored data wh...
In competing-risks analysis, the cause-specific cumulative incidence function (CIF) is usually obtai...
We propose a method to analyse competing risks survival data when failure types are missing for some...
Advisors: Sanjib Basu; Nader Ebrahimi.Committee members: Alan M. Polansky; Duchwan Ryu; Ananda Sen; ...
While nonparametric methods have been well established for inference on competing risks data, parame...