Oracle Health Sciences, Burlington, MA, USA.
U.S. FDA, Silver Spring, MD, USA.
Drug Saf. 2022 Jul;45(7):765-780. doi: 10.1007/s40264-022-01186-z. Epub 2022 Jun 23.
Statistical signal detection is a crucial tool for rapidly identifying potential risks associated with pharmaceutical products. The unprecedented environment created by the coronavirus disease 2019 (COVID-19) pandemic for vaccine surveillance predisposes commonly applied signal detection methodologies to a statistical issue called the masking effect, in which signals for a vaccine of interest are hidden by the presence of other reported vaccines. This masking effect may in turn limit or delay our understanding of the risks associated with new and established vaccines.
The aim is to investigate the problem of masking in the context of COVID-19 vaccine signal detection, assessing its impact, extent, and root causes.
Based on data underlying the Vaccine Adverse Event Reporting System, three commonly applied statistical signal detection methodologies, and a more advanced regression-based methodology, we investigate the temporal evolution of signals corresponding to five largely recognized adverse events and two potentially new adverse events.
The results demonstrate that signals of adverse events related to COVID-19 vaccines may be undetected or delayed due to masking when generated by methodologies currently utilized by pharmacovigilance organizations, and that a class of advanced methodologies can partially alleviate the problem. The results indicate that while masking is rare relative to all possible statistical associations, it is much more likely to occur in COVID-19 vaccine signaling, and that its extent, direction, impact, and roots are not static, but rather changing in accordance with the changing nature of data.
Masking is an addressable problem that merits careful consideration, especially in situations such as COVID-19 vaccine safety surveillance and other emergency use authorization products.
统计信号检测是快速识别与药物产品相关潜在风险的重要工具。由 2019 年冠状病毒病(COVID-19)大流行所创造的前所未有的环境使常用的信号检测方法容易受到一种称为“掩蔽效应”的统计问题的影响,其中感兴趣疫苗的信号被其他报告疫苗的存在所掩盖。这种掩蔽效应可能会限制或延迟我们对新疫苗和已建立疫苗相关风险的理解。
旨在研究 COVID-19 疫苗信号检测中掩蔽的问题,评估其影响、程度和根本原因。
基于疫苗不良事件报告系统下的数据,三种常用的统计信号检测方法,以及一种更先进的基于回归的方法,我们调查了与五个广泛认可的不良事件和两个潜在新不良事件相对应的信号的时间演变。
结果表明,由于目前药物警戒组织使用的方法存在掩蔽效应,与 COVID-19 疫苗相关的不良事件信号可能会被检测不到或延迟,而一类先进的方法可以部分缓解该问题。结果表明,虽然掩蔽相对于所有可能的统计关联来说是罕见的,但在 COVID-19 疫苗信号中更有可能发生,并且其程度、方向、影响和根源不是静态的,而是根据数据的变化而变化。
掩蔽是一个需要认真考虑的问题,尤其是在 COVID-19 疫苗安全性监测和其他紧急使用授权产品等情况下。