The Bayesian Design of Adaptive Clinical Trials
Abstract
:1. Introduction
2. Bayesian Designs
3. Adaptive Designs: The Frequentist Approach
- (1)
- Adaptive allocation rule—change in the randomization procedure to modify the allocation proportion.
- (2)
- Adaptive sampling rule—change in the number of study subjects (sample size) or change in study population: entry criteria for the patients change.
- (3)
- Adaptive stopping rule—during the course of the trial, a data-dependent rule dictates whether and when to stop for harm/futility/efficacy.
- (4)
- Adaptive enrichment: during the trial, treatments are added or dropped.
3.1. Dose Finding
3.2. Response-Adaptive Randomization
3.3. Sequential Monitoring
4. The Bayesian Viewpoint in Response-Adaptive Designs
4.1. Bayesian Adaptive Randomization
“If P is the probability estimate (meaning the posterior probability) that one treatment is better than a second, as judged by data at present available, then we might take some monotone increasing function of P, say f(P), to fix the fraction of such individuals to be treated in the first manner until more evidence may be utilised, where 0 ≤ f(P) ≤ 1; the remaining fraction of such individuals (1 − f(P)) to be treated in the second manner; or we may establish a probability of treatment by the two methods of f(P) and 1 − f(P), respectively”.(Thompson, [48])
4.2. Sample Size Determination and Early Stopping
5. Suggestions of Bayesian Adaptive Design from the Literature
- The TITE-CRM by Cheung and Chappell [59] incorporates the time-to-event of each patient allowing patients to be entered in a staggered fashion.
- Escalation with Overdose Control (EWOC) by Babb and Rogatko [60]: it is the same as CRM, except for the use of the αth-quantile of the MTD’s posterior, instead of its mean, when selecting the next dose. This allows rapid dose escalation while controlling the probability of exceeding MDT. The extension of EWOC to covariate utilization permits personalization of the dose level for each specific patient.
- The STARPAC design [61] uses a traditional rule-based design until the first patient has a dose limiting toxicity and then switches to a modified CRM.
- Yin and Yuan [62] use the rather controversial idea of averaging the statistical model with respect to the parameter prior in conjunction with the Continuous Reassessment Method.
- The modified Toxicity Probability Interval (mTPI) design [63]. The decision to escalate or de-escalate the dose is made by partitioning the probability interval into three subintervals. The posterior probability that p* is in each subinterval is calculated, divided by the width of the subinterval. The interval with the highest posterior probability mass dictates the dose decision for the next patient. The mTPI possesses desirable large- and small-sample properties. These designs are compared in a numerical study in [64].
- The Adaptive Bayesian Compound Design by McGree et al. [65]: the authors use a compound utility functions to account for the dual experimental goals of estimating the MTD and addressing the safety of subjects.
- ➢
- Thompson’s idea for adaptive randomization, extended from the case of two treatment arms to several arms, has been applied by Thall, Inoue and Martin [67] to the design of a lymphocyte infusion trial.
- ➢
- Under a beta-binomial model, Yuan, Huang and Liu [68] design a trial for leukemia. The randomization assigns an incoming patient to the treatment arm such that the imbalance of a prognostic score across the treatments is minimized. This score depends on an unknown parameter whose posterior mean is continuously updated during the ongoing trial.
- ➢
- Still for the Beta Binomial model, in Giovagnoli [69] the trace criterion is used as the utility function and a recursive “biased coin” is found that maximizes the posterior utility. The sequential randomized treatment allocation is shown to converge to Neyman’s classical target, namely the optimal one according to the trace criterion.
- ➢
- Under the same model, Xiao et al. [70] have defined a Bayesian Doubly-adaptive Biased Coin Design, using the posterior probabilities of pA > pB and of pB > pA, for the target and an assignment rule similar to the ERADE mentioned in Section 3.2. They derive some asymptotic properties of their Bayesian design, namely convergence and asymptotic normality of the allocation proportion.
- ➢
- Giovagnoli and Verdinelli [71] choose a recursive target that optimizes the posterior expectation of a compound utility function and the ERADE algorithm for convergence.
- Wang [73] predicts how the sample size of a clinical trial needs to be adjusted so as to claim a success at the conclusion of the trial with an expected probability.
- An interesting evaluation paper is by Uemura et al. [74].
- Continuous monitoring by means of predictive probabilities is given by Lee and Liu [75]: for the binary case, under a beta-binomial model, and a given maximum sample size, they recursively calculate the predictive probability of concluding the study rejecting the hypothesis of no efficacy of the new treatment. They search for the design parameters within the given constraints such that both the size and power of the test can be guaranteed.
- Yin, Chen and Lee [76] have coupled Thompson’s adaptive randomization design with predictive probability approaches for Phase II.
- Zhong et al. [77] introduce a two-stage design with sample size re-estimation at the interim stage which uses a fully Bayesian predictive approach to reduce an overly large initial sample size when necessary.
6. Bayesian Adaptive Designs in Registered Trials
- The Randomized Embedded Multifactorial Adaptive Platform Trial in Community Acquired Pneumonia (REMAP-CAP): see [84]. It has set-up a sub-platform called “REMAP−COVID” on which the evaluation of specific treatments for COVID-19 is run.
- Anti-Thrombotic Therapy to Ameliorate Complications of COVID-19 (ATTACC) (see [85]), similar in purpose to RECAP-COVID.
- GBM AGILE, an adaptive clinical trial to deliver improved treatments for glioblastoma, now open and enrolling patients ([86]).
- STURDY, a randomized clinical trial of Vitamin D supplement doses for the prevention of falls in older adults ([87]).
- The SPRINT trial on safety and efficacy of neublastin in painful lumbosacral radiculopathy ([88]).
- SARC009: A Phase II study in patients with previously treated, high-grade, advanced sarcoma ([89]).
- The EPAD project in neurology ([92]).
- A study on Lemborexant, for the treatment of insomnia disorder ([99]).
- A Phase I non-randomized trial of a combination therapy in patients with pancreatic adenocarcinoma ([100]).
- A first-in-human study of RG7342 for the treatment of schizophrenia in healthy male subjects ([101]).
- A newly started Phase II trial in Japan for sarcoma ([102]) also shows the utility of a Bayesian adaptive design.
- A Bayesian response-adaptive trial in tuberculosis is the endTB trial ([103]).
- Acute Stroke Therapy by Inhibition of Neutrophils (ASTIN) was a Bayesian adaptive phase 2 dose-response study to establish whether UK-279,276 improves recovery in acute ischemic stroke. The adaptive design facilitated early termination for futility ([104]).
7. Controversies
8. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Acknowledgments
Conflicts of Interest
References
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Giovagnoli, A. The Bayesian Design of Adaptive Clinical Trials. Int. J. Environ. Res. Public Health 2021, 18, 530. https://doi.org/10.3390/ijerph18020530
Giovagnoli A. The Bayesian Design of Adaptive Clinical Trials. International Journal of Environmental Research and Public Health. 2021; 18(2):530. https://doi.org/10.3390/ijerph18020530
Chicago/Turabian StyleGiovagnoli, Alessandra. 2021. "The Bayesian Design of Adaptive Clinical Trials" International Journal of Environmental Research and Public Health 18, no. 2: 530. https://doi.org/10.3390/ijerph18020530
APA StyleGiovagnoli, A. (2021). The Bayesian Design of Adaptive Clinical Trials. International Journal of Environmental Research and Public Health, 18(2), 530. https://doi.org/10.3390/ijerph18020530