Comparison of Bayesian and frequentist monitoring boundaries motivated by the Multiplatform Randomized Clinical Trial

Author:

Joo Jungnam1,Leifer Eric S1ORCID,Proschan Michael A2,Troendle James F1,Reynolds Harmony R3,Hade Erinn A4,Lawler Patrick R56,Kim Dong-Yun1ORCID,Geller Nancy L1

Affiliation:

1. Office of Biostatistics Research, Division of Intramural Research, National Heart, Lung, and Blood Institute, Bethesda, MD, USA

2. Biostatistics Research Branch, National Institute of Allergy and Infectious Diseases, Bethesda, MD, USA

3. Cardiovascular Clinical Research Center, Leon H. Charney Division of Cardiology, Department of Medicine, NYU Grossman School of Medicine, New York, NY, USA

4. Division of Biostatistics, Department of Population Health, NYU Grossman School of Medicine, New York, NY, USA

5. Peter Munk Cardiac Centre, Toronto General Hospital, Toronto, ON, Canada

6. McGill University Health Centre, Montreal, QC, Canada

Abstract

Background The coronavirus disease 2019 pandemic highlighted the need to conduct efficient randomized clinical trials with interim monitoring guidelines for efficacy and futility. Several randomized coronavirus disease 2019 trials, including the Multiplatform Randomized Clinical Trial (mpRCT), used Bayesian guidelines with the belief that they would lead to quicker efficacy or futility decisions than traditional “frequentist” guidelines, such as spending functions and conditional power. We explore this belief using an intuitive interpretation of Bayesian methods as translating prior opinion about the treatment effect into imaginary prior data. These imaginary observations are then combined with actual observations from the trial to make conclusions. Using this approach, we show that the Bayesian efficacy boundary used in mpRCT is actually quite similar to the frequentist Pocock boundary. Methods The mpRCT’s efficacy monitoring guideline considered stopping if, given the observed data, there was greater than 99% probability that the treatment was effective (odds ratio greater than 1). The mpRCT’s futility monitoring guideline considered stopping if, given the observed data, there was greater than 95% probability that the treatment was less than 20% effective (odds ratio less than 1.2). The mpRCT used a normal prior distribution that can be thought of as supplementing the actual patients’ data with imaginary patients’ data. We explore the effects of varying probability thresholds and the prior-to-actual patient ratio in the mpRCT and compare the resulting Bayesian efficacy monitoring guidelines to the well-known frequentist Pocock and O’Brien–Fleming efficacy guidelines. We also contrast Bayesian futility guidelines with a more traditional 20% conditional power futility guideline. Results A Bayesian efficacy and futility monitoring boundary using a neutral, weakly informative prior distribution and a fixed probability threshold at all interim analyses is more aggressive than the commonly used O’Brien–Fleming efficacy boundary coupled with a 20% conditional power threshold for futility. The trade-off is that more aggressive boundaries tend to stop trials earlier, but incur a loss of power. Interestingly, the Bayesian efficacy boundary with 99% probability threshold is very similar to the classic Pocock efficacy boundary. Conclusions In a pandemic where quickly weeding out ineffective treatments and identifying effective treatments is paramount, aggressive monitoring may be preferred to conservative approaches, such as the O’Brien–Fleming boundary. This can be accomplished with either Bayesian or frequentist methods.

Publisher

SAGE Publications

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