Comparison of the cox model and the regression tree procedure in analysing a randomized clinical trial
- 30 December 1993
- journal article
- clinical trial
- Published by Wiley in Statistics in Medicine
- Vol. 12 (24) , 2351-2366
- https://doi.org/10.1002/sim.4780122411
Abstract
In a clinical trial comparing different treatments the patients may be rather heterogeneous with regard to their natural prognosis. Simple overall comparison of the treatment groups may lead to a biased estimate of the treatment effect even in a well‐balanced randomized study, at least when survival time is the outcome. An adequate analysis of the treatment effect is only feasible in a multivariate framework where the important prognostic factors are accounted for and, additionally, treatment‐covariate interactions may be evaluated. Analyses using the Cox model are compared with alternative approaches based on the Classification and Regression Tree )CART( technique. Basic differences between these approaches are outlined and discussed in the context of a randomized clinical trial of chemotherapy in patients with brain tumours.Keywords
This publication has 37 references indexed in Scilit:
- A note on the calculation of expected survival, illustrated by the survival of liver transplant patientsStatistics in Medicine, 1991
- Analysis of clinical trial outcomes: Alternative approaches to subgroup analysisControlled Clinical Trials, 1989
- Exponential survival treesStatistics in Medicine, 1989
- Covariate imbalance and random allocation in clinical trialsStatistics in Medicine, 1989
- Non‐parametric analysis of treatment—covariate interaction in the presence of censoringStatistics in Medicine, 1988
- Assessment of stratum‐covariate interactions in Cox's proportional hazards regression modelStatistics in Medicine, 1986
- Biased estimates of treatment effect in randomized experiments with nonlinear regressions and omitted covariatesBiometrika, 1984
- Further aspects of data analysisControlled Clinical Trials, 1983
- A Bayesian approach to the interpretation of subgroup results in clinical trialsJournal of Chronic Diseases, 1982
- Selecting optimal treatment in clinical trials using covariate informationJournal of Chronic Diseases, 1977