Borrowing information across patient subgroups in clinical trials, with application to a paediatric trial

BACKGROUND: Clinical trial investigators may need to evaluate treatment effects in a specific subgroup (or subgroups) of participants in addition to reporting results of the entire study population. Such subgroups lack power to detect a treatment effect, but there may be strong justification for bor...

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Veröffentlicht in:BMC MEDICAL RESEARCH METHODOLOGY 2022-02, Vol.22 (1)
Hauptverfasser: Turner, Rebecca M, Turkova, Anna, Moore, Cecilia L, Bamford, Alasdair, Archary, Moherndran, Barlow-Mosha, Linda N, Cotton, Mark F, Cressey, Tim R, Kaudha, Elizabeth, Lugemwa, Abbas, Lyall, Hermione, Mujuru, Hilda A, Mulenga, Veronica, Musiime, Victor, Rojo, Pablo, Tudor-Williams, Gareth, Welch, Steven B, Gibb, Diana M, Ford, Deborah, White, Ian R, the ODYSSEY Trial Team
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Sprache:eng
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Zusammenfassung:BACKGROUND: Clinical trial investigators may need to evaluate treatment effects in a specific subgroup (or subgroups) of participants in addition to reporting results of the entire study population. Such subgroups lack power to detect a treatment effect, but there may be strong justification for borrowing information from a larger patient group within the same trial, while allowing for differences between populations. Our aim was to develop methods for eliciting expert opinions about differences in treatment effect between patient populations, and to incorporate these opinions into a Bayesian analysis. METHODS: We used an interaction parameter to model the relationship between underlying treatment effects in two subgroups. Elicitation was used to obtain clinical opinions on the likely values of the interaction parameter, since this parameter is poorly informed by the data. Feedback was provided to experts to communicate how uncertainty about the interaction parameter corresponds with relative weights allocated to subgroups in the Bayesian analysis. The impact on the planned analysis was then determined. RESULTS: The methods were applied to an ongoing non-inferiority trial designed to compare antiretroviral therapy regimens in 707 children living with HIV and weighing ≥ 14 kg, with an additional group of 85 younger children weighing 
ISSN:1471-2288
1471-2288
DOI:10.1186/s12874-022-01539-3