Sensitivity analyses of clinical trial designs: Selecting scenarios and summarizing operating characteristics Journal Article


Authors: Han, L.; Arfè, A.; Trippa, L.
Article Title: Sensitivity analyses of clinical trial designs: Selecting scenarios and summarizing operating characteristics
Abstract: The use of simulation-based sensitivity analyses is fundamental for evaluating and comparing candidate designs of future clinical trials. In this context, sensitivity analyses are especially useful to assess the dependence of important design operating characteristics with respect to various unknown parameters. Typical examples of operating characteristics include the likelihood of detecting treatment effects and the average study duration, which depend on parameters that are unknown until after the onset of the clinical study, such as the distributions of the primary outcomes and patient profiles. Two crucial components of sensitivity analyses are (i) the choice of a set of plausible simulation scenarios and (ii) the list of operating characteristics of interest. We propose a new approach for choosing the set of scenarios to be included in a sensitivity analysis. We maximize a utility criterion that formalizes whether a specific set of sensitivity scenarios is adequate to summarize how the operating characteristics of the trial design vary across plausible values of the unknown parameters. Then, we use optimization techniques to select the best set of simulation scenarios (according to the criteria specified by the investigator) to exemplify the operating characteristics of the trial design. We illustrate our proposal in three trial designs. Supplementary materials for this article are available online. © 2023 American Statistical Association.
Keywords: sensitivity analysis; clinical trial design; simulated annealing; operating characteristics; function approximation
Journal Title: American Statistician
Volume: 78
Issue: 1
ISSN: 0003-1305
Publisher: American Statistical Association  
Date Published: 2024-01-01
Start Page: 76
End Page: 87
Language: English
DOI: 10.1080/00031305.2023.2216253
PROVIDER: scopus
PMCID: PMC11052542
PUBMED: 38680760
DOI/URL:
Notes: Article -- Source: Scopus
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  1. Andrea Arfe
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