We propose vertical modelling as a natural approach to the problem of analysis of competing risks data when failure types are missing for some individuals. Under a natural missing-at-random assumption for these missing failure types, we use the observed data likelihood to estimate its parameters and show that the all-cause hazard and the relative hazards appearing in vertical modelling are indeed key quantities of this likelihood. This fact has practical implications in that it suggests vertical modelling as a simple and attractive method of analysis in competing risks with missing causes of failure; all individuals are used in estimating the all-cause hazard and only those with non-missing cause of failure for relative hazards. The relativ...
Competing risk or "multiple cause" survival data arise in medical, criminological, financial, engine...
Nicolaie et al. (2010) have advanced a vertical model as the latest continuous time competing risks ...
We present a Bayesian approach for analysis of competing risks survival data with masked causes of f...
In this paper, we extend the vertical modeling approach for the analysis of survival data with compe...
We propose a method to analyse competing risks survival data when failure types are missing for some...
Discrete time competing risks data continue to arise in social sciences, education etc., where time ...
Abstract: Competing risks data arise when study subjects may experience several different types of f...
Summary. In competing risks data, missing failure types (causes) is a very common phenomenon. In a g...
In the competing risks model, a unit is exposed to several risks at the same time, but it is assumed...
Standard survival analysis focuses on failure-time data that has one type of failure. Competing risk...
Competing risks data usually arises in studies in which the failure of an individual may be classifi...
Goetghebeur and Ryan proposed a method for proportional hazards analyses of competing risks failure-...
In medical studies or in reliability analysis an investigator is often interested in the assessment ...
While nonparametric methods have been well established for inference on competing risks data, parame...
http://onlinelibrary.wiley.com/doi/10.1002/sim.5755/abstractCompeting risks arise when patients may ...
Competing risk or "multiple cause" survival data arise in medical, criminological, financial, engine...
Nicolaie et al. (2010) have advanced a vertical model as the latest continuous time competing risks ...
We present a Bayesian approach for analysis of competing risks survival data with masked causes of f...
In this paper, we extend the vertical modeling approach for the analysis of survival data with compe...
We propose a method to analyse competing risks survival data when failure types are missing for some...
Discrete time competing risks data continue to arise in social sciences, education etc., where time ...
Abstract: Competing risks data arise when study subjects may experience several different types of f...
Summary. In competing risks data, missing failure types (causes) is a very common phenomenon. In a g...
In the competing risks model, a unit is exposed to several risks at the same time, but it is assumed...
Standard survival analysis focuses on failure-time data that has one type of failure. Competing risk...
Competing risks data usually arises in studies in which the failure of an individual may be classifi...
Goetghebeur and Ryan proposed a method for proportional hazards analyses of competing risks failure-...
In medical studies or in reliability analysis an investigator is often interested in the assessment ...
While nonparametric methods have been well established for inference on competing risks data, parame...
http://onlinelibrary.wiley.com/doi/10.1002/sim.5755/abstractCompeting risks arise when patients may ...
Competing risk or "multiple cause" survival data arise in medical, criminological, financial, engine...
Nicolaie et al. (2010) have advanced a vertical model as the latest continuous time competing risks ...
We present a Bayesian approach for analysis of competing risks survival data with masked causes of f...