4.2 Article

Surrogate threshold effect: An alternative measure for meta-analytic surrogate endpoint validation

Journal

PHARMACEUTICAL STATISTICS
Volume 5, Issue 3, Pages 173-186

Publisher

WILEY
DOI: 10.1002/pst.207

Keywords

surrogate endpoint; validation; meta-analysis; two-stage model; prediction

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In many therapeutic areas, the identification and validation Of surrogate endpoints is of prime interest to reduce the duration and/or size of clinical trials. Buyse et al. [Biostatistics 2000; 1:49-67] proposed a meta-analytic approach to the validation. In this approach, the validity of a surrogate is quantified by the coefficient of determination R-trial(2) obtained from a model, which allows for prediction of the treatment effect on the endpoint of interest ('true' endpoint) from the effect on the surrogate. One problem related to the use of R-trial(2) is the difficulty in interpreting its value. To address this difficulty, in this paper we introduce a new concept, the so-called surrogate threshold effect (STE), defined as the minimum treatment effect on the surrogate necessary to predict a non-zero effect on the true endpoint. One of its interesting features, apart from providing information relevant to the practical use of a surrogate endpoint, is its natural interpretation from a clinical point of view. Copyright (C) 2006 John Wiley & Sons, Ltd.

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