As randomization methods use more information in more complex ways to assign patients to treatments, analysis of the resulting data becomes challenging. The treatment assignment vector and outcome vector become correlated whenever randomization probabilities depend on data correlated with outcomes. One straightforward analysis method is a re-randomization test that fixes outcome data and creates a reference distribution for the test statistic by repeatedly re-randomizing according to the same randomization method used in the trial. This article reviews re-randomization tests, especially in nonstandard settings like covariate-adaptive and response-adaptive randomization. We show that re-randomization tests provide valid inference in a wide range of settings. Nonetheless, there are simple examples demonstrating limitations.
机构:
Inst Cancerol Ouest, F-49055 Angers, France
Univ Nantes, INSERM U1307, CNRS UMR 6075, CRCI2NA, F-44000 Nantes, FranceInst Cancerol Ouest, F-49055 Angers, France
Guerin-Charbonnel, Catherine
Bocquet, Francois
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机构:
Inst Cancerol Ouest, F-49055 Angers, France
Nantes Univ, Fac Law & Polit Sci, Law & Social Change Lab, CNRS UMR 6297, F-44035 Nantes, FranceInst Cancerol Ouest, F-49055 Angers, France