Agenzia regionale di sanità della Toscana, Florence, Italy.
Julius Global Health, Utrecht Medical Center University, Utrecht, The Netherlands.
Clin Pharmacol Ther. 2020 Aug;108(2):228-235. doi: 10.1002/cpt.1833. Epub 2020 May 5.
Although postmarketing studies conducted in population-based databases often contain information on patients in the order of millions, they can still be underpowered if outcomes or exposure of interest is rare, or the interest is in subgroup effects. Combining several databases might provide the statistical power needed. A multi-database study (MDS) uses at least two healthcare databases, which are not linked with each other at an individual person level, with analyses carried out in parallel across each database applying a common study protocol. Although many MDSs have been performed in Europe in the past 10 years, there is a lack of clarity on the peculiarities and implications of the existing strategies to conduct them. In this review, we identify four strategies to execute MDSs, classified according to specific choices in the execution: (A) local analyses, where data are extracted and analyzed locally, with programs developed by each site; (B) sharing of raw data, where raw data are locally extracted and transferred without analysis to a central partner, where all the data are pooled and analyzed; (C) use of a common data model with study-specific data, where study-specific data are locally extracted, loaded into a common data model, and processed locally with centrally developed programs; and (D) use of general common data model, where all local data are extracted and loaded into a common data model, prior to and independent of any study protocol, and protocols are incorporated in centrally developed programs that run locally. We illustrate differences between strategies and analyze potential implications.
尽管基于人群的数据库中的上市后研究通常包含按百万计的患者信息,但如果感兴趣的结局或暴露很少,或者兴趣在于亚组效应,则这些研究仍可能没有足够的效力。合并多个数据库可能提供所需的统计效力。多数据库研究(MDS)使用至少两个医疗保健数据库,这些数据库在个人层面上彼此不相关联,并且在每个数据库中平行进行分析,应用共同的研究方案。尽管过去 10 年来在欧洲已经进行了许多 MDS,但对于执行它们的现有策略的特点和影响仍缺乏明确性。在这篇综述中,我们确定了执行 MDS 的四种策略,根据执行中的特定选择进行分类:(A)本地分析,其中在本地提取和分析数据,每个站点都开发程序;(B)原始数据共享,其中在本地提取原始数据并在不进行分析的情况下传输到中央合作伙伴,在那里汇总和分析所有数据;(C)使用具有特定于研究的数据的通用数据模型,其中在本地提取特定于研究的数据,将其加载到通用数据模型中,并在本地使用中央开发的程序进行处理;以及(D)使用通用的通用数据模型,其中所有本地数据都在任何研究协议之前和独立地提取并加载到通用数据模型中,并将协议纳入在本地运行的中央开发的程序中。我们说明了策略之间的差异,并分析了潜在的影响。