Do multiple outcome measures require p-value adjustment?
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Open Access
- 17 June 2002
- journal article
- research article
- Published by Springer Nature in BMC Medical Research Methodology
- Vol. 2 (1), 8
- https://doi.org/10.1186/1471-2288-2-8
Abstract
Readers may question the interpretation of findings in clinical trials when multiple outcome measures are used without adjustment of the p-value. This question arises because of the increased risk of Type I errors (findings of false "significance") when multiple simultaneous hypotheses are tested at set p-values. The primary aim of this study was to estimate the need to make appropriate p-value adjustments in clinical trials to compensate for a possible increased risk in committing Type I errors when multiple outcome measures are used. The classicists believe that the chance of finding at least one test statistically significant due to chance and incorrectly declaring a difference increases as the number of comparisons increases. The rationalists have the following objections to that theory: 1) P-value adjustments are calculated based on how many tests are to be considered, and that number has been defined arbitrarily and variably; 2) P-value adjustments reduce the chance of making type I errors, but they increase the chance of making type II errors or needing to increase the sample size. Readers should balance a study's statistical significance with the magnitude of effect, the quality of the study and with findings from other studies. Researchers facing multiple outcome measures might want to either select a primary outcome measure or use a global assessment measure, rather than adjusting the p-value.Keywords
This publication has 45 references indexed in Scilit:
- Adjusting for multiple testing when reporting research results: the Bonferroni vs Holm methods.American Journal of Public Health, 1996
- No Adjustments Are Needed for Multiple ComparisonsEpidemiology, 1990
- A stagewise rejective multiple test procedure based on a modified Bonferroni testBiometrika, 1988
- An improved Bonferroni procedure for multiple tests of significanceBiometrika, 1986
- Modified Sequentially Rejective Multiple Test ProceduresJournal of the American Statistical Association, 1986
- Reporting the results of epidemiologic studies.American Journal of Public Health, 1986
- Comparing the Means of Several GroupsNew England Journal of Medicine, 1985
- A Biometrics Invited Paper. Assessing Laboratory Evidence for Neoplastic ActivityPublished by JSTOR ,1980
- The evolving case-control studyJournal of Chronic Diseases, 1979
- Some Thoughts on Clinical Trials, Especially Problems of MultiplicityScience, 1977