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Win statistics (win ratio, win odds, and net benefit) can complement one another to show the strength of the treatment effect on time‐to‐event outcomes

Dong, Gaohong, Huang, Bo, Verbeeck, Johan, Cui, Ying, Song, James, Gamalo‐Siebers, Margaret, Wang, Duolao ORCID: https://orcid.org/0000-0003-2788-2464, Hoaglin, David C., Seifu, Yodit, Mütze, Tobias and Kolassa, John (2022) 'Win statistics (win ratio, win odds, and net benefit) can complement one another to show the strength of the treatment effect on time‐to‐event outcomes'. Pharmaceutical Statistics, Vol 22, Issue 1, pp. 20-33.

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Abstract

Conventional analyses of a composite of multiple time-to-event outcomes use the time to the first event. However, the first event may not be the most important outcome. To address this limitation, generalized pairwise comparisons and win statistics (win ratio, win odds, and net benefit) have become popular and have been applied to clinical trial practice. However, win ratio, win odds, and net benefit have typically been used separately. In this article, we examine the use of these three win statistics jointly for time-to-event outcomes. First, we explain the relation of point estimates and variances among the three win statistics, and the relation between the net benefit and the Mann–Whitney U statistic. Then we explain that the three win statistics are based on the same win proportions, and they test the same null hypothesis of equal win probabilities in two groups. We show theoretically that the Z-values of the corresponding statistical tests are approximately equal; therefore, the three win statistics provide very similar p-values and statistical powers. Finally, using simulation studies and data from a clinical trial, we demonstrate that, when there is no (or little) censoring, the three win statistics can complement one another to show the strength of the treatment effect. However, when the amount of censoring is not small, and without adjustment for censoring, the win odds and the net benefit may have an advantage for interpreting the treatment effect; with adjustment (e.g., IPCW adjustment) for censoring, the three win statistics can complement one another to show the strength of the treatment effect. For calculations we use the R package WINS, available on the CRAN (Comprehensive R Archive Network).

Item Type: Article
Subjects: QU Biochemistry > QU 26.5 Informatics. Automatic data processing. Computers
WA Public Health > Statistics. Surveys > WA 950 Theory or methods of medical statistics. Epidemiologic methods
Faculty: Department: Clinical Sciences & International Health > Clinical Sciences Department
Digital Object Identifer (DOI): https://doi.org/10.1002/pst.2251
SWORD Depositor: JISC Pubrouter
Depositing User: JISC Pubrouter
Date Deposited: 09 Dec 2022 09:55
Last Modified: 27 Jun 2023 01:09
URI: https://archive.lstmed.ac.uk/id/eprint/20867

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