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The impact of covariate misclassification using generalized linear regression under covariate–adaptive randomization.

Authors :
Fan, Liqiong
Yeatts, Sharon D.
Wolf, Bethany J.
McClure, Leslie A.
Selim, Magdy
Palesch, Yuko Y.
Source :
Statistical Methods in Medical Research; Feb2018, Vol. 27 Issue 2, p20-34, 15p
Publication Year :
2018

Abstract

Under covariate adaptive randomization, the covariate is tied to both randomization and analysis. Misclassification of such covariate will impact the intended treatment assignment; further, it is unclear what the appropriate analysis strategy should be. We explore the impact of such misclassification on the trial’s statistical operating characteristics. Simulation scenarios were created based on the misclassification rate and the covariate effect on the outcome. Models including unadjusted, adjusted for the misclassified, or adjusted for the corrected covariate were compared using logistic regression for a binary outcome and Poisson regression for a count outcome. For the binary outcome using logistic regression, type I error can be maintained in the adjusted model, but the test is conservative using an unadjusted model. Power decreased with both increasing covariate effect on the outcome as well as the misclassification rate. Treatment effect estimates were biased towards the null for both the misclassified and unadjusted models. For the count outcome using a Poisson model, covariate misclassification led to inflated type I error probabilities and reduced power in the misclassified and the unadjusted model. The impact of covariate misclassification under covariate–adaptive randomization differs depending on the underlying distribution of the outcome. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09622802
Volume :
27
Issue :
2
Database :
Complementary Index
Journal :
Statistical Methods in Medical Research
Publication Type :
Academic Journal
Accession number :
127287629
Full Text :
https://doi.org/10.1177/0962280215616405