There have been proposed so far many methods of statistical diagnostics in Cox regression for checking the goodness of the estimated model or checking the adequacy of the data. The former type contains the checking of the overall goodness of fit, the validity of the assumption of proportional hazards and the proper functional forms of the effects of covariates. While the latter type contains the checking whether there exist singly and/or jointly influential observations in the data set. In the present paper we study numerically the performances of various methods of diagnostics including our method of influence analysis for multiple-case diagnostics (Sung and Tanaka, 2003) by analyzing a real data set of lung cancer patients
This article is concerned with variable selection methods for the proportional hazards regression mo...
While epidemiologic and clinical research often aims to analyze predictors of specific endpoints, ti...
While epidemiologic and clinical research often aims to analyze predictors of specific endpoints, ti...
There have been proposed so far many methods of statistical diagnostics in Cox regression for checki...
This thesis consists of four papers about the assumption of proportional hazards for the Cox model i...
In this study, we consider the development of influential diagnostics to assess case influence for ...
It is important that the process of studying and modelling the prognosis of disability should be con...
We extend the Cox proportional hazards model to cases when the exposure is a densely sampled functio...
Some important non-graphical methods of testing proportional hazards assumption in the Cox regressio...
Cox's regression model is one of the most used methods in medical statistics, and the method also fi...
Statistical modeling of lifetime data, or survival analysis, is studied in many fields, including me...
Another approach to analyze survival data is to use regression analysis. This can be accomplished by...
<p>Results of univariate and multivariate survival analyses for overall survival by the Cox proporti...
The Cox (1972) regression model was a major advancement in the analysis of survival data because it ...
Twenty-one years after its appearance, Cox's 1972 paper on Regression models and life tables continu...
This article is concerned with variable selection methods for the proportional hazards regression mo...
While epidemiologic and clinical research often aims to analyze predictors of specific endpoints, ti...
While epidemiologic and clinical research often aims to analyze predictors of specific endpoints, ti...
There have been proposed so far many methods of statistical diagnostics in Cox regression for checki...
This thesis consists of four papers about the assumption of proportional hazards for the Cox model i...
In this study, we consider the development of influential diagnostics to assess case influence for ...
It is important that the process of studying and modelling the prognosis of disability should be con...
We extend the Cox proportional hazards model to cases when the exposure is a densely sampled functio...
Some important non-graphical methods of testing proportional hazards assumption in the Cox regressio...
Cox's regression model is one of the most used methods in medical statistics, and the method also fi...
Statistical modeling of lifetime data, or survival analysis, is studied in many fields, including me...
Another approach to analyze survival data is to use regression analysis. This can be accomplished by...
<p>Results of univariate and multivariate survival analyses for overall survival by the Cox proporti...
The Cox (1972) regression model was a major advancement in the analysis of survival data because it ...
Twenty-one years after its appearance, Cox's 1972 paper on Regression models and life tables continu...
This article is concerned with variable selection methods for the proportional hazards regression mo...
While epidemiologic and clinical research often aims to analyze predictors of specific endpoints, ti...
While epidemiologic and clinical research often aims to analyze predictors of specific endpoints, ti...