Department of Biostatistics & Data Science, University of Kansas Medical Center, Mail Stop 1026, 3901 Rainbow Blvd, Kansas City, KS, 66160, USA.
Novartis, East Hanover, NJ, 07936, USA.
BMC Med Res Methodol. 2020 Aug 17;20(1):211. doi: 10.1186/s12874-020-01097-6.
Monitoring and reporting of drug safety during a clinical trial is essential to its success. More recent attention to drug safety has encouraged statistical methods development for monitoring and detecting potential safety signals. This paper investigates the potential impact of the process of the blinded investigator identifying a potential safety signal, which should be further investigated by the Data and Safety Monitoring Board with an unblinded safety data analysis.
In this paper, two-stage Bayesian hierarchical models are proposed for safety signal detection following a pre-specified set of interim analyses that are applied to efficacy. At stage 1, a hierarchical blinded model uses blinded safety data to detect a potential safety signal and at stage 2, a hierarchical logistic model is applied to confirm the signal with unblinded safety data.
Any interim safety monitoring analysis is usually scheduled via negotiation between the trial sponsor and the Data and Safety Monitoring Board. The proposed safety monitoring process starts once 53 subjects have been enrolled into an eight-arm phase II clinical trial for the first interim analysis. Operating characteristics describing the performance of this proposed workflow are investigated using simulations based on the different scenarios.
The two-stage Bayesian safety procedure in this paper provides a statistical view to monitor safety during the clinical trials. The proposed two-stage monitoring model has an excellent accuracy of detecting and flagging a potential safety signal at stage 1, and with the most important feature that further action at stage 2 could confirm the safety issue.
临床试验期间的药物安全性监测和报告对于其成功至关重要。最近对药物安全性的关注鼓励了用于监测和检测潜在安全信号的统计方法的发展。本文研究了盲法研究者识别潜在安全信号的过程的潜在影响,该信号应由数据和安全监测委员会进行盲法安全性数据分析进一步调查。
在本文中,提出了两种两阶段贝叶斯分层模型,用于在预先规定的一系列中期分析之后进行安全性信号检测,这些分析适用于疗效。在第 1 阶段,分层盲法模型使用盲法安全性数据来检测潜在的安全信号,在第 2 阶段,应用分层逻辑回归模型使用非盲法安全性数据来确认信号。
任何中期安全性监测分析通常都是由试验赞助商和数据和安全监测委员会协商安排的。一旦 53 名受试者被纳入八臂二期临床试验进行第一次中期分析,就开始进行拟议的安全性监测过程。基于不同的方案,使用模拟来研究描述该拟议工作流程性能的操作特征。
本文中的两阶段贝叶斯安全性程序为临床试验期间的安全性监测提供了一种统计方法。所提出的两阶段监测模型在第 1 阶段具有出色的准确性,可以检测和标记潜在的安全信号,最重要的特点是第 2 阶段的进一步行动可以确认安全问题。