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Wiley InterScience | ||||||||||||||||||||||
![]() BiometricsVolume 64 Issue 3, Pages 707 - 715 Published Online: 11 Jan 2008 ©2009 International Biometric Society Journal of the International Biometric Society
Abstract | References | Full Text: HTML, PDF (Size: 170K) | Related Articles | Citation Tracking Improving Efficiency of Inferences in Randomized Clinical Trials Using Auxiliary Covariates Copyright ©2008 International Biometric Society KEYWORDS Covariate adjustment • Hypothesis test •
k-arm trial • Kruskal–Wallis test • Log odds ratio • Longitudinal data • Semiparametric theory ABSTRACTSummary . The primary goal of a randomized clinical trial is to make comparisons among two or more treatments. For example, in a two-arm trial with continuous response, the focus may be on the difference in treatment means; with more than two treatments, the comparison may be based on pairwise differences. With binary outcomes, pairwise odds ratios or log odds ratios may be used. In general, comparisons may be based on meaningful parameters in a relevant statistical model. Standard analyses for estimation and testing in this context typically are based on the data collected on response and treatment assignment only. In many trials, auxiliary baseline covariate information may also be available, and it is of interest to exploit these data to improve the efficiency of inferences. Taking a semiparametric theory perspective, we propose a broadly applicable approach to adjustment for auxiliary covariates to achieve more efficient estimators and tests for treatment parameters in the analysis of randomized clinical trials. Simulations and applications demonstrate the performance of the methods. Received April 2007. Revised October2007. Accepted October2007. |
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2009 Harold W. Kuhn Award |
Congratulations to Gerald G. Brown and W. Matthew Carlyle, recipients of the 2009 Harold W. Kuhn Award for their exceptional paper published in Naval Research Logistics "
Optimizing the US Navy's combat logistics force
" Read the full article FREE online PDF [320k] | |
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Teaching Statistics |
Want to share your knowledge with those teaching pupils aged 9 – 19? Do you have a paper of interest to those teaching statistics, mathematics or economics? | |