4.6 Article

Subgroup analyses in randomized controlled trials frequently categorized continuous subgroup information

Journal

JOURNAL OF CLINICAL EPIDEMIOLOGY
Volume 150, Issue -, Pages 72-79

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.jclinepi.2022.06.017

Keywords

Categorization; Continuous variables; Dichotomization; Moderator analysis; Randomized controlled trials; Subgroup analysis

Funding

  1. MRC [MR/S014357/1]
  2. Cancer Research UK [C22436/A25354]

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This study investigated the methods of subgroup analyses using continuous variables in published randomized controlled trials (RCTs). The results showed that the majority of studies dichotomized the continuous variables and treated the subgroups as categorical variables, potentially resulting in a loss of substantial statistical information.
Background and Objectives: To investigate how subgroup analyses of published Randomized Controlled Trials (RCTs) are performed when subgroups are created from continuous variables. Methods: We carried out a review of RCTs published in 2016-2021 that included subgroup analyses. Information was extracted on whether any of the subgroups were based on continuous variables and, if so, how they were analyzed. Results: Out of 428 reviewed papers, 258 (60.4%) reported RCTs with a subgroup analysis. Of these, 178/258 (69%) had at least one subgroup formed from a continuous variable and 14/258 (5.4%) were unclear. The vast majority (169/178, 94.9%) dichotomized the continuous variable and treated the subgroup as categorical. The most common way of dichotomizing was using a pre-specified cutpoint (129/169, 76.3%), followed by a data-driven cutpoint (26/169, 15.4%), such as the median. Conclusion: It is common for subgroup analyses to use continuous variables to define subgroups. The vast majority dichotomize the continuous variable and, consequently, may lose substantial amounts of statistical information (equivalent to reducing the sample size by at least a third). More advanced methods that can improve efficiency, through optimally choosing cutpoints or directly using the continuous information, are rarely used. (C) 2022 The Author(s). Published by Elsevier Inc. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

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