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Using Bayesian statistics in confirmatory clinical trials in the regulatory setting: a tutorial review

Se Yoon Lee

2024BMC Medical Research Methodology21 citationsDOIOpen Access PDF

Abstract

Bayesian statistics plays a pivotal role in advancing medical science by enabling healthcare companies, regulators, and stakeholders to assess the safety and efficacy of new treatments, interventions, and medical procedures. The Bayesian framework offers a unique advantage over the classical framework, especially when incorporating prior information into a new trial with quality external data, such as historical data or another source of co-data. In recent years, there has been a significant increase in regulatory submissions using Bayesian statistics due to its flexibility and ability to provide valuable insights for decision-making, addressing the modern complexity of clinical trials where frequentist trials are inadequate. For regulatory submissions, companies often need to consider the frequentist operating characteristics of the Bayesian analysis strategy, regardless of the design complexity. In particular, the focus is on the frequentist type I error rate and power for all realistic alternatives. This tutorial review aims to provide a comprehensive overview of the use of Bayesian statistics in sample size determination, control of type I error rate, multiplicity adjustments, external data borrowing, etc., in the regulatory environment of clinical trials. Fundamental concepts of Bayesian sample size determination and illustrative examples are provided to serve as a valuable resource for researchers, clinicians, and statisticians seeking to develop more complex and innovative designs.

Topics & Concepts

Frequentist inferenceBayesian probabilityComputer scienceBayesian statisticsType I and type II errorsFlexibility (engineering)Sample size determinationClinical trialData scienceBayesian inferenceStatisticsMedicineArtificial intelligenceMathematicsPathologyStatistical Methods in Clinical TrialsOptimal Experimental Design MethodsHealth Systems, Economic Evaluations, Quality of Life