Bayesian Adaptive Clinical Trials for Anti-Infective Therapeutics during Epidemic Outbreaks
Bayesian Adaptive Clinical Trials for Anti-Infective Therapeutics during Epidemic Outbreaks
Abstract In the midst of epidemics such as COVID-19, therapeutic candidates are unlikely to be able to complete the usual multi-year clinical trial and regulatory approval process within the course of an outbreak. We apply a Bayesian adaptive patient-centered model—which minimizes the expected harm of false positives and false negatives—to optimize the clinical trial development path during such outbreaks. When the epidemic is more infectious and fatal, the Bayesian-optimal sample size in the clinical trial is lower and the optimal statistical significance level is higher. For COVID-19 (assuming a static R0 = 2 and initial infection percentage of 0.1%), the optimal significance level is 7.1% for a clinical trial of a non-vaccine anti-infective therapeutic clinical trial and 13.6% for that of a vaccine. For a dynamic R0 ranging from 2 to 4, the corresponding values are 14.4% and 26.4%, respectively. Our results illustrate the importance of adapting the clinical trial design and the regulatory approval process to the specific parameters and stage of the epidemic.
Chaudhuri Shomesh、Xiao Danying、Xu Qingyang、Lo Andrew W.
QLS AdvisorsMIT Operations Research Center||MIT Laboratory for Financial EngineeringMIT Operations Research Center||MIT Laboratory for Financial EngineeringMIT Operations Research Center||MIT Laboratory for Financial Engineering||QLS Advisors||MIT Sloan School of Management||MIT Computer Science and Artificial Intelligence Laboratory||MIT Department of Electrical Engineering and Computer Science||Santa Fe Institute
医学研究方法医药卫生理论预防医学
Chaudhuri Shomesh,Xiao Danying,Xu Qingyang,Lo Andrew W..Bayesian Adaptive Clinical Trials for Anti-Infective Therapeutics during Epidemic Outbreaks[EB/OL].(2025-03-28)[2025-04-28].https://www.medrxiv.org/content/10.1101/2020.04.09.20059634.点此复制
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