February 2023 Randomization-Based Test for Censored Outcomes: A New Look at the Logrank Test
Xinran Li, Dylan S. Small
Author Affiliations +
Statist. Sci. 38(1): 92-107 (February 2023). DOI: 10.1214/22-STS851

Abstract

Two-sample tests with censored outcomes are a classical topic in statistics with wide use even in cutting edge applications. There are at least two modes of inference used to justify two-sample tests. One is usual superpopulation inference assuming that units are independent and identically distributed (i.i.d.) samples from some superpopulation; the other is finite population inference that relies on the random assignments of units into different groups. When randomization is actually implemented, the latter has the advantage of avoiding distributional assumptions on the outcomes. In this paper, we focus on finite population inference for censored outcomes, which has been less explored in the literature. Moreover, we allow the censoring time to depend on treatment assignment, under which exact permutation inference is unachievable. We find that, surprisingly, the usual logrank test can also be justified by randomization. Specifically, under a Bernoulli randomized experiment with noninformative i.i.d. censoring, the logrank test is asymptotically valid for testing Fisher’s null hypothesis of no treatment effect on any unit. The asymptotic validity of the logrank test does not require any distributional assumption on the potential event times. We further extend the theory to the stratified logrank test, which is useful for randomized block designs and when censoring mechanisms vary across strata. In sum, the developed theory for the logrank test from finite population inference supplements its classical theory from usual superpopulation inference, and helps provide a broader justification for the logrank test.

Funding Statement

Dylan S. Small was supported in part by Grant R01AI131771-01A1 and 1R01AG065276-01.

Acknowledgments

The authors would like to thank the two reviewers, the Associate Editor and the Editor for their constructive comments.

Citation

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Xinran Li. Dylan S. Small. "Randomization-Based Test for Censored Outcomes: A New Look at the Logrank Test." Statist. Sci. 38 (1) 92 - 107, February 2023. https://doi.org/10.1214/22-STS851

Information

Published: February 2023
First available in Project Euclid: 28 October 2022

MathSciNet: MR4534644
zbMATH: 07654779
Digital Object Identifier: 10.1214/22-STS851

Keywords: design-based inference , noninformative censoring , potential censoring time , potential outcome , stratified logrank test

Rights: Copyright © 2023 Institute of Mathematical Statistics

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Vol.38 • No. 1 • February 2023
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