4.3 Article

Generalized pairwise comparisons for censored data: An overview

Journal

BIOMETRICAL JOURNAL
Volume 65, Issue 2, Pages -

Publisher

WILEY
DOI: 10.1002/bimj.202100354

Keywords

bias; censored outcome; generalized pairwise comparisons; net benefit; statistical power

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The method of generalized pairwise comparisons (GPC) is an extension of the Wilcoxon-Mann-Whitney test that can handle censored data. This paper evaluates different GPC methods and provides recommendations for their use in various situations. The study finds that methods that ignore uninformative pairs are comparable to more complex methods in low censoring situations and slightly superior in high censoring situations. If estimation of net benefit is of interest, the imputation or IPCW methods provide unbiased estimators up to a certain proportion of drop-out censoring.
The method of generalized pairwise comparisons (GPC) is an extension of the well-known nonparametric Wilcoxon-Mann-Whitney test for comparing two groups of observations. Multiple generalizations of Wilcoxon-Mann-Whitney test and other GPC methods have been proposed over the years to handle censored data. These methods apply different approaches to handling loss of information due to censoring: ignoring noninformative pairwise comparisons due to censoring (Gehan, Harrell, and Buyse); imputation using estimates of the survival distribution (Efron, Peron, and Latta); or inverse probability of censoring weighting (IPCW, Datta and Dong). Based on the GPC statistic, a measure of treatment effect, the net benefit, can be defined. It quantifies the difference between the probabilities that a randomly selected individual from one group is doing better than an individual from the other group. This paper aims at evaluating GPC methods for censored data, both in the context of hypothesis testing and estimation, and providing recommendations related to their choice in various situations. The methods that ignore uninformative pairs have comparable power to more complex and computationally demanding methods in situations of low censoring, and are slightly superior for high proportions (>40%) of censoring. If one is interested in estimation of the net benefit, Harrell's c index is an unbiased estimator if the proportional hazards assumption holds. Otherwise, the imputation (Efron or Peron) or IPCW (Datta, Dong) methods provide unbiased estimators in case of proportions of drop-out censoring up to 60%.

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