» Articles » PMID: 35057758

Practical Recommendations for Implementing a Bayesian Adaptive Phase I Design During a Pandemic

Overview
Publisher Biomed Central
Date 2022 Jan 21
PMID 35057758
Authors
Affiliations
Soon will be listed here.
Abstract

Background: Modern designs for dose-finding studies (e.g., model-based designs such as continual reassessment method) have been shown to substantially improve the ability to determine a suitable dose for efficacy testing when compared to traditional designs such as the 3 + 3 design. However, implementing such designs requires time and specialist knowledge.

Methods: We present a practical approach to developing a model-based design to help support uptake of these methods; in particular, we lay out how to derive the necessary parameters and who should input, and when, to these decisions. Designing a model-based, dose-finding trial is demonstrated using a treatment within the AGILE platform trial, a phase I/II adaptive design for novel COVID-19 treatments.

Results: We present discussion of the practical delivery of AGILE, covering what information was found to support principled decision making by the Safety Review Committee, and what could be contained within a statistical analysis plan. We also discuss additional challenges we encountered in the study and discuss more generally what (unplanned) adaptations may be acceptable (or not) in studies using model-based designs.

Conclusions: This example demonstrates both how to design and deliver an adaptive dose-finding trial in order to support uptake of these methods.

Citing Articles

Treating intrusive memories after trauma in healthcare workers: a Bayesian adaptive randomised trial developing an imagery-competing task intervention.

Ramineni V, Millroth P, Iyadurai L, Jaki T, Kingslake J, Highfield J Mol Psychiatry. 2023; 28(7):2985-2994.

PMID: 37100869 PMC: 10131522. DOI: 10.1038/s41380-023-02062-7.


Practical implementation of the partial ordering continual reassessment method in a Phase I combination-schedule dose-finding trial.

Mozgunov P, Jaki T, Gounaris I, Goddemeier T, Victor A, Grinberg M Stat Med. 2022; 41(30):5789-5809.

PMID: 36428217 PMC: 10100035. DOI: 10.1002/sim.9594.

References
1.
Paoletti X, Ezzalfani M, Le Tourneau C . Statistical controversies in clinical research: requiem for the 3 + 3 design for phase I trials. Ann Oncol. 2015; 26(9):1808-1812. PMC: 4551156. DOI: 10.1093/annonc/mdv266. View

2.
Burnett T, Mozgunov P, Pallmann P, Villar S, Wheeler G, Jaki T . Adding flexibility to clinical trial designs: an example-based guide to the practical use of adaptive designs. BMC Med. 2020; 18(1):352. PMC: 7677786. DOI: 10.1186/s12916-020-01808-2. View

3.
Mozgunov P, Knight R, Barnett H, Jaki T . Using an Interaction Parameter in Model-Based Phase I Trials for Combination Treatments? A Simulation Study. Int J Environ Res Public Health. 2021; 18(1). PMC: 7796482. DOI: 10.3390/ijerph18010345. View

4.
OQuigley J, Shen L . Continual reassessment method: a likelihood approach. Biometrics. 1996; 52(2):673-84. View

5.
Khoo S, FitzGerald R, Fletcher T, Ewings S, Jaki T, Lyon R . Optimal dose and safety of molnupiravir in patients with early SARS-CoV-2: a Phase I, open-label, dose-escalating, randomized controlled study. J Antimicrob Chemother. 2021; 76(12):3286-3295. PMC: 8598307. DOI: 10.1093/jac/dkab318. View