Abstract
The main focus of therapeutic confirmatory clinical trials, generally, is to demonstrate the efficacy of a new or experimental treatment in terms of mean(s) of the primary endpoint(s). In some cases, however, variance(s) of the endpoints also may be the focus of interest. For example, given two treatments with equal efficacy in terms of the means, a treatment with smaller variability, and thus more predictable efficacy, may be preferable. In this paper we consider single and multiple comparison procedures for partial covariance matrices of endpoints in clinical trials that can be used to demonstrate the superiority of a new treatment to an active comparator in terms of the variability. First, we review and discuss the existing methods for comparing two covariance matrices based on the union-intersection test procedure. Second, we propose a single comparison procedure and a multiple comparison procedure for partial covariance matrices that limits the number of comparisons and compare its performance with the tests discussed in the first section, using Monte Carlo simulations. The simulation results suggest that power of the proposed procedure is generally higher than those of the previous methods, while keeping the type I error rates nearly within the nominal level.
Acknowledgements
The authors wish to thank the referee for his/her valuable comments. The authors also thank the Pfizer colleague, Yoichi Ii, for his helpful comments that improved the presentation of this paper.
Citation
Yoshiomi Nakazuru. Takashi Seo. "Single and multiple comparison procedures for partial covariance matrices of two treatment groups in clinical trials." SUT J. Math. 50 (1) 47 - 66, January 2014. https://doi.org/10.55937/sut/1415120761
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