Semiparametric Efficiency and Its Implication on the Design and Analysis of Group-Sequential Studies
- 1 December 1997
- journal article
- research article
- Published by JSTOR in Journal of the American Statistical Association
- Vol. 92 (440) , 1342
- https://doi.org/10.2307/2965404
Abstract
Authors have shown that the time-sequential joint distributions of many statistics used to analyze data arising from group-sequential time-to-event and longitudinal studies are multivariate normal with an independent increments covariance structure. In Theorem 1 of this article, we demonstrate that this limiting distribution arises naturally when one uses an efficient test statistic to test a single parameter in a semiparametric or parametric model. Because we are able to think of many of the statistics in the literature in this fashion, the limiting distribution under investigation is just a special case of Theorem 1. Using this general structure, we then develop an information-based design and monitoring procedure that can be applied to any type of model for any type of group-sequential study provided that there is a unique parameter of interest that can be efficiently tested.Keywords
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