4.4 Article

Assessing and reporting heterogeneity in treatment effects in clinical trials: a proposal

Journal

TRIALS
Volume 11, Issue -, Pages -

Publisher

BMC
DOI: 10.1186/1745-6215-11-85

Keywords

-

Funding

  1. NIH [R01 NS062153, U54 RR023562]
  2. Pfizer, Inc.
  3. VA Health Services Research & Development Service's Quality Enhancement Research Initiative [QUERI DIB 98-001]
  4. Michigan Diabetes Research & Training Center (NIDDK of The National Institutes of Health) [P60 DK-20572]

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Mounting evidence suggests that there is frequently considerable variation in the risk of the outcome of interest in clinical trial populations. These differences in risk will often cause clinically important heterogeneity in treatment effects (HTE) across the trial population, such that the balance between treatment risks and benefits may differ substantially between large identifiable patient subgroups; the average benefit observed in the summary result may even be non-representative of the treatment effect for a typical patient in the trial. Conventional subgroup analyses, which examine whether specific patient characteristics modify the effects of treatment, are usually unable to detect even large variations in treatment benefit (and harm) across risk groups because they do not account for the fact that patients have multiple characteristics simultaneously that affect the likelihood of treatment benefit. Based upon recent evidence on optimal statistical approaches to assessing HTE, we propose a framework that prioritizes the analysis and reporting of multivariate risk-based HTE and suggests that other subgroup analyses should be explicitly labeled either as primary subgroup analyses (well-motivated by prior evidence and intended to produce clinically actionable results) or secondary (exploratory) subgroup analyses (performed to inform future research). A standardized and transparent approach to HTE assessment and reporting could substantially improve clinical trial utility and interpretability.

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