4.5 Article

A small sample study of the STEPP approach to assessing treatment-covariate interactions in survival data

Journal

STATISTICS IN MEDICINE
Volume 28, Issue 8, Pages 1255-1268

Publisher

JOHN WILEY & SONS LTD
DOI: 10.1002/sim.3524

Keywords

treatment-covariate interaction; clinical trials; permutation-based inference; survival analysis

Funding

  1. The United States National Cancer Institute [CA-75362]
  2. The Italian Ministry for Research (MIUR) protocol [2007AYHZWC]

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A new, intuitive method has recently been proposed to explore treatment-covariate interactions in survival data arising from two treatment arms of a clinical trial. The method is based on constructing overlapping subpopulations of patients with respect to one (or more) covariates of interest and in observing the pattern of the treatment effects estimated across the subpopulations. A plot of these treatment effects is called a subpopulation treatment effect pattern plot. Here, we explore the small sample characteristics of the asymptotic results associated with the method and develop an alternative permutation distribution-based approach to inference that should be preferred for smaller sample sizes. We then describe an extension of the method to the case in which the pattern of estimated quantiles of survivor functions is of interest. Copyright (C) 2009 John Wiley & Sons, Ltd.

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