Handling misclassified stratification variables in the analysis of randomised trials with continuous outcomes

Author:

Yelland Lisa N.12ORCID,Louise Jennie3,Kahan Brennan C.4ORCID,Morris Tim P.4ORCID,Lee Katherine J.56,Sullivan Thomas R.12ORCID

Affiliation:

1. Women and Kids Theme South Australian Health and Medical Research Institute Adelaide South Australia Australia

2. School of Public Health The University of Adelaide Adelaide South Australia Australia

3. Adelaide Medical School The University of Adelaide Adelaide South Australia Australia

4. MRC Clinical Trials Unit at UCL London UK

5. Clinical Epidemiology and Biostatistics Unit Murdoch Children's Research Institute Melbourne Victoria Australia

6. Department of Paediatrics The University of Melbourne Melbourne Victoria Australia

Abstract

Many trials use stratified randomisation, where participants are randomised within strata defined by one or more baseline covariates. While it is important to adjust for stratification variables in the analysis, the appropriate method of adjustment is unclear when stratification variables are affected by misclassification and hence some participants are randomised in the incorrect stratum. We conducted a simulation study to compare methods of adjusting for stratification variables affected by misclassification in the analysis of continuous outcomes when all or only some stratification errors are discovered, and when the treatment effect or treatment‐by‐covariate interaction effect is of interest. The data were analysed using linear regression with no adjustment, adjustment for the strata used to perform the randomisation (randomisation strata), adjustment for the strata if all errors are corrected (true strata), and adjustment for the strata after some errors are discovered and corrected (updated strata). The unadjusted model performed poorly in all settings. Adjusting for the true strata was optimal, while the relative performance of adjusting for the randomisation strata or the updated strata varied depending on the setting. As the true strata are unlikely to be known with certainty in practice, we recommend using the updated strata for adjustment and performing subgroup analyses, provided the discovery of errors is unlikely to depend on treatment group, as expected in blinded trials. Greater transparency is needed in the reporting of stratification errors and how they were addressed in the analysis.

Funder

Medical Research Council Canada

National Health and Medical Research Council

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. A Note on Stratification Errors in the Analysis of Clinical Trials;Statistics in Biopharmaceutical Research;2023-07-27

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