A BOOTSTRAP RESAMPLING PROCEDURE FOR MODEL-BUILDING - APPLICATION TO THE COX REGRESSION-MODEL

被引:499
作者
SAUERBREI, W
SCHUMACHER, M
机构
[1] Institute of Medical Biometry and Informatics, University of Freiburg, Freiburg, D-7800, Stefan-Meier-Str
关键词
D O I
10.1002/sim.4780111607
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
A common problem in the statistical analysis of clinical studies is the selection of those variables in the framework of a regression model which might influence the outcome variable. Stepwise methods have been available for a long time, but as with many other possible strategies, there is a lot of criticism of their use. Investigations of the stability of a selected model are often called for, but usually are not carried out in a systematic way. Since analytical approaches are extremely difficult, data-dependent methods might be an useful alternative. Based on a bootstrap resampling procedure, Chen and George investigated the stability of a stepwise selection procedure in the framework of the Cox proportional hazard regression model. We extend their proposal and develop a bootstrap-model selection procedure, combining the bootstrap method with existing selection techniques such as stepwise methods. We illustrate the proposed strategy in the process of model building by using data from two cancer clinical trials featuring two different situations commonly arising in clinical research. In a brain tumour study the adjustment for covariates in an overall treatment comparison is of primary interest calling for the selection of even 'mild' effects. In a prostate cancer study we concentrate on the analysis of treatment covariate interactions demanding that only 'strong' effects should be selected. Both variants of the strategy will be demonstrated analysing the clinical trials with a Cox model, but they can be applied in other types of regression with obvious and straightforward modifications.
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页码:2093 / 2109
页数:17
相关论文
共 49 条
[31]   ISMOD - AN ALL-SUBSETS REGRESSION PROGRAM FOR GENERALIZED LINEAR-MODELS .1. STATISTICAL AND COMPUTATIONAL BACKGROUND [J].
LAWLESS, JF ;
SINGHAL, K .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 1987, 24 (02) :117-124
[32]  
LEE KL, 1983, BIOMETRICS, V93, P341
[33]   WHY STEPDOWN PROCEDURES IN VARIABLE SELECTION [J].
MANTEL, N .
TECHNOMETRICS, 1970, 12 (03) :621-&
[34]   THE RESULTS OF LOGISTIC ANALYSES WHEN THE VARIABLES ARE HIGHLY CORRELATED - AN EMPIRICAL EXAMPLE USING DIET AND CHD INCIDENCE [J].
MCGEE, D ;
REED, D ;
YANO, K .
JOURNAL OF CHRONIC DISEASES, 1984, 37 (9-10) :713-719
[35]  
Miller A., 1990, SUBSET SELECTION REG
[36]   SELECTION OF SUBSETS OF REGRESSION VARIABLES [J].
MILLER, AJ .
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES A-STATISTICS IN SOCIETY, 1984, 147 :389-425
[37]  
MITCHELL TJ, 1988, J AM STAT ASSOC, V83, P1023, DOI 10.2307/2290129
[38]  
PINSKER IS, 1987, COMMUN STAT THEORY, V16, P2227
[39]   USE OF AN F-STATISTIC IN STEPWISE REGRESSION PROCEDURES [J].
POPE, PT ;
WEBSTER, JT .
TECHNOMETRICS, 1972, 14 (02) :327-&
[40]  
RAO CR, 1973, LINEAR STATISTICAL I