校准幂先验方法:从历史数据借用信息及其在生物类似药临床试验中的应用

A Calibrated Power Prior Approach to Borrow Information from Historical Data with Application to Biosimilar Clinical Trials

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2016
被引 61 · 同刊同年前 10%
ABS 3

中文导读

提出一种贝叶斯适应性设计,通过校准幂先验从历史数据中自适应借用信息,并采用贝叶斯相似性指标在期中分析时序贯评估生物类似药与原研药的相似性,可提前停止试验。

Abstract

A biosimilar refers to a follow-on biologic intended to be approved for marketing based on biosimilarity to an existing patented biological product (i.e., the reference product). To develop a biosimilar product, it is essential to demonstrate biosimilarity between the follow-on biologic and the reference product, typically through two-arm randomization trials. We propose a Bayesian adaptive design for trials to evaluate biosimilar products. To take advantage of the abundant historical data on the efficacy of the reference product that is typically available at the time a biosimilar product is developed, we propose the calibrated power prior, which allows our design to adaptively borrow information from the historical data according to the congruence between the historical data and the new data collected from the current trial. We propose a new measure, the Bayesian biosimilarity index, to measure the similarity between the biosimilar and the reference product. During the trial, we evaluate the Bayesian biosimilarity index in a group sequential fashion based on the accumulating interim data, and stop the trial early once there is enough information to conclude or reject the similarity. Extensive simulation studies show that the proposed design has higher power than traditional designs. We applied the proposed design to a biosimilar trial for treating rheumatoid arthritis.

生物类似药贝叶斯统计临床试验设计适应性设计