Estimation of treatment effect under non-proportional hazards and conditionally independent censoring
- PMID: 22763957
- PMCID: PMC3876422
- DOI: 10.1002/sim.5440
Estimation of treatment effect under non-proportional hazards and conditionally independent censoring
Abstract
In clinical trials with time-to-event outcomes, it is common to estimate the marginal hazard ratio from the proportional hazards model, even when the proportional hazards assumption is not valid. This is unavoidable from the perspective that the estimator must be specified a priori if probability statements about treatment effect estimates are desired. Marginal hazard ratio estimates under non-proportional hazards are still useful, as they can be considered to be average treatment effect estimates over the support of the data. However, as many have shown, under non-proportional hazard, the 'usual' unweighted marginal hazard ratio estimate is a function of the censoring distribution, which is not normally considered to be scientifically relevant when describing the treatment effect. In addition, in many practical settings, the censoring distribution is only conditionally independent (e.g., differing across treatment arms), which further complicates the interpretation. In this paper, we investigate an estimator of the hazard ratio that removes the influence of censoring and propose a consistent robust variance estimator. We compare the coverage probability of the estimator to both the usual Cox model estimator and an estimator proposed by Xu and O'Quigley (2000) when censoring is independent of the covariate. The new estimator should be used for inference that does not depend on the censoring distribution. It is particularly relevant to adaptive clinical trials where, by design, censoring distributions differ across treatment arms.
Copyright © 2012 John Wiley & Sons, Ltd.
Figures
References
-
- Struthers CA, Kalbfleisch JD. Misspecifed proportional hazard model. Biometrika. 1986;73:363–369.
-
- Xu R, O’Quigley J. Estimating average regression effect under non-proportional hazards. Biostatistics. 2000;1:423–439. - PubMed
-
- van Houwelingen HC, van de Velde CJH, Stijnen T. Interim analysis on survival data: its potential bias and how to repair it. Statistics in Medicine. 2005;24:2823–2835. - PubMed
-
- Wei LJ, Durham SD. The randomized play-the-winner rule in medical trials. J Am Stat Assoc. 1978;73:840–843.
-
- Rosenberger WF, Lachin JM. The use of response-adaptive designs in clinical trials. Control Clin Trials. 1993;14:471–484. - PubMed
Publication types
MeSH terms
Grants and funding
LinkOut - more resources
Full Text Sources