| Literature DB >> 25135344 |
Manisha Desai1, Karen S Pieper, Ken Mahaffey.
Abstract
Subgroup analyses are commonly performed in the clinical trial setting with the purpose of illustrating that the treatment effect was consistent across different patient characteristics or identifying characteristics that should be targeted for treatment. There are statistical issues involved in performing subgroup analyses, however. These have been given considerable attention in the literature for analyses where subgroups are defined by a pre-randomization feature. Although subgroup analyses are often performed with subgroups defined by a post-randomization feature--including analyses that estimate the treatment effect among compliers--discussion of these analyses has been neglected in the clinical literature. Such analyses pose a high risk of presenting biased descriptions of treatment effects. We summarize the challenges of doing all types of subgroup analyses described in the literature. In particular, we emphasize issues with post-randomization subgroup analyses. Finally, we provide guidelines on how to proceed across the spectrum of subgroup analyses.Entities:
Mesh:
Year: 2014 PMID: 25135344 PMCID: PMC4200313 DOI: 10.1007/s11886-014-0531-2
Source DB: PubMed Journal: Curr Cardiol Rep ISSN: 1523-3782 Impact factor: 2.931
Recognized pitfalls and solutions for subgroup analysis as described in the literature
| Statistical issue | Potential solutions |
|---|---|
| Increased type I error rate (false-positive findings) | Limit the number of analyses performed to those that are pre-specified and biologically plausible Adjust for multiplicity |
| Increased type II error rate (low power to detect interesting findings) | Design study to examine particularly relevant subgroups |
| Biased estimates of treatment | Limit to performing proper analyses |
| Findings are difficult to interpret | Emphasize overall findings Utilize formal tests of interaction to appropriately assess heterogeneity of effects Do not perform subgroup analyses if overall findings are negative Report the number of tests performed Report the number of tests that were specified a priori and the number that were specified a posteriori Report all findings—positive and negative |
Guidelines for performing subgroup analyses that build upon those provided by Yusuf et al. (1991)
| Design |
| State plausible subgroup hypotheses and note which are defined by post-randomization features |
| Rank hypotheses in order of plausibility |
| Calculate power. Consider adjusting the design if necessary |
| State methods for analysis and be specific (i.e., include functional form of all relevant variables—continuous or categorical and if categorical, specify the cut-offs) |
| State conclusions that can be drawn from the analysis plan and any resulting decisions that may occur as a consequence of the findings |
| Analysis |
| Use tests of interaction to formally assess heterogeneity of effects |
| Distinguish between a priori and data-driven hypotheses. Do not present |
| Adjust for multiplicity for a priori subgroup analyses |
| If post-randomization: |
| • Consider causal inference tools |
| • Consider method for incorporating time into model |
| • Consider sensitivity analyses, where several models are fit and results compared across models |
| Interpretation and reporting |
| Report findings corresponding to primary hypothesis |
| Report the number of a priori hypotheses tested |
| Report the number of data-driven hypotheses examined |
| Interpret findings in the context of previous studies and/or similar data from other trials, and based on biological plausibility |
| Consider pooling findings for subgroup analyses with other studies |
| Consider external data set where methods can be applied to replicate findings and/or provide code for fitting model, particularly if a post-randomization analysis was conducted so that other investigators can more easily replicate |