Department of Non-Communicable Disease Epidemiology, London School of Hygiene and Tropical Medicine, Keppel St, WC1E 7HT, London, UK.
GlaxoSmithKline, Brentford, UK.
Drug Saf. 2024 Feb;47(2):183-192. doi: 10.1007/s40264-023-01382-5. Epub 2023 Dec 13.
For signal detection studies investigating either drug safety or method evaluation, the choice of drug-outcome pairs needs to be tailored to the planned study design and vice versa. While this is well understood in hypothesis-testing epidemiology, it should be as important in signal detection, but this has not widely been considered. There is a need for a taxonomy framework to provide guidance and a systematic reproducible approach to the selection of appropriate drugs and outcomes for signal detection studies either investigating drug safety or assessing method performance using real-world data.
The aim was to design a general framework for the selection of appropriate drugs and outcomes for signal detection studies given a study design of interest. As a motivating example, we illustrate how the framework is applied to build a reference set for a study aiming to assess the performance of the self-controlled case series with active comparators.
We reviewed criteria presented in two published studies which aimed to provide practical advice for choosing the appropriate signal evaluation methodology, and assessed their relevance for signal detection. Further characteristics specific to signal detection were added. The final framework is based on: the application of study design requirements, the database(s) of interest, and the clinical importance of the drug(s) and outcome(s) under consideration. This structure was applied by selecting drug-outcome pairs as a reference set (i.e. list of drug-outcome pairs classified as positive or negative controls) for which the method is expected to work well for a signal detection study aiming to assess the performance of self-controlled case series. Eight criteria were used, related to the application of self-controlled case series assumptions, choice of active comparators, coverage in the database of interest and clinical importance of the outcomes.
After application of the framework, two classes of antibiotics (seven drugs) were selected for the study, and 28 outcomes from all organ classes were chosen from the drug labels, out of the 273 investigated. In total, this corresponds to 104 positive controls (drug-outcome pairs) and 58 negative controls.
We proposed and applied a framework for the selection of drugs and outcomes for both drug safety signal detection and method assessment used in signal detection to optimise their performance given a study design. This framework will eliminate part of the bias relating to drugs and outcomes not being suited to the method or database. The main difficulty lies in the choice of the criteria and their application to ensure systematic selection, especially as some information remains unknown in signal detection, and clinical judgement was needed on occasions. The same framework could be adapted for other methods.
对于旨在调查药物安全性或方法评估的信号检测研究,药物-结果组合的选择需要根据计划的研究设计进行定制,反之亦然。虽然这在假设检验流行病学中得到了很好的理解,但在信号检测中也应该如此重要,但这尚未得到广泛考虑。需要有一种分类框架来提供指导,并为使用真实世界数据进行信号检测研究选择合适的药物和结果提供系统的可重现方法,这些研究既可以调查药物安全性,也可以评估方法性能。
目的是设计一种通用框架,用于在给定感兴趣的研究设计的情况下,选择合适的药物和结果进行信号检测研究。作为一个激励性示例,我们说明了如何应用该框架构建一个参考集,用于评估使用活性对照的自我对照病例系列的性能的研究。
我们回顾了两项已发表的研究中提出的标准,这些标准旨在为选择合适的信号评估方法提供实用建议,并评估了它们对信号检测的相关性。此外,还添加了特定于信号检测的其他特征。最终框架基于:研究设计要求、感兴趣的数据库和所考虑的药物和结果的临床重要性。通过选择药物-结果组合作为参考集(即被分类为阳性或阴性对照的药物-结果组合列表)来应用该结构,该参考集预计对旨在评估自我对照病例系列性能的信号检测研究中的方法效果良好。使用了八项标准,这些标准与自我对照病例系列假设的应用、活性对照的选择、感兴趣的数据库中的覆盖范围以及结果的临床重要性有关。
应用该框架后,从 273 种研究药物中选择了两类抗生素(七种药物),并从药物标签中选择了所有器官类别的 28 个结果,共选择了 104 个阳性对照(药物-结果组合)和 58 个阴性对照。
我们提出并应用了一种用于药物安全性信号检测和信号检测中使用的方法评估的药物和结果选择框架,以根据研究设计优化其性能。该框架将消除部分与不适合该方法或数据库的药物和结果相关的偏差。主要困难在于选择标准及其应用,以确保系统选择,特别是在信号检测中某些信息仍然未知,并且需要临床判断的情况下。相同的框架可以适应其他方法。