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Data management and data analysis techniques in pharmacoepidemiological studies using a pre-planned multi-database approach: a systematic literature review

机译:使用预先计划的多数据库方法进行药物流行病学研究的数据管理和数据分析技术:系统的文献综述

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摘要

PURPOSE:To identify pharmacoepidemiological multi-database studies and to describe data management and data analysis techniques used for combining data.METHODS:Systematic literature searches were conducted in PubMed and Embase complemented by a manual literature search. We included pharmacoepidemiological multi-database studies published from 2007 onwards that combined data for a pre-planned common analysis or quantitative synthesis. Information was retrieved about study characteristics, methods used for individual-level analyses and meta-analyses, data management and motivations for performing the study.RESULTS:We found 3083 articles by the systematic searches and an additional 176 by the manual search. After full-text screening of 75 articles, 22 were selected for final inclusion. The number of databases used per study ranged from 2 to 17 (median = 4.0). Most studies used a cohort design (82%) instead of a case-control design (18%). Logistic regression was most often used for individual-level analyses (41%), followed by Cox regression (23%) and Poisson regression (14%). As meta-analysis method, a majority of the studies combined individual patient data (73%). Six studies performed an aggregate meta-analysis (27%), while a semi-aggregate approach was applied in three studies (14%). Information on central programming or heterogeneity assessment was missing in approximately half of the publications. Most studies were motivated by improving power (86%).CONCLUSIONS:Pharmacoepidemiological multi-database studies are a well-powered strategy to address safety issues and have increased in popularity. To be able to correctly interpret the results of these studies, it is important to systematically report on database management and analysis techniques, including central programming and heterogeneity testing.
机译:目的:鉴定药物流行病学多数据库研究并描述用于合并数据的数据管理和数据分析技术。方法:在PubMed中进行系统文献检索,Embase进行人工文献检索,以补充文献资料。我们纳入了从2007年开始发布的药物流行病学多数据库研究,这些研究结合了数据以进行预先计划的通用分析或定量合成。检索到以下信息:研究特征,用于个人分析和荟萃分析的方法,数据管理以及进行研究的动机。结果:通过系统搜索,我们找到了3083篇文章,通过手动搜索,找到了176篇文章。在对75篇文章进行全文筛选之后,选择了22篇作为最终收录。每次研究使用的数据库数量范围为2到17(中位数== 4.0)。大多数研究使用队列设计(82%)而不是病例对照设计(18%)。逻辑回归最常用于个人分析(41%),其次是考克斯回归(23%)和泊松回归(14%)。作为荟萃分析方法,大多数研究合并了单个患者的数据(73%)。六项研究进行了汇总荟萃分析(27%),而三项研究(14%)采用了半汇总方法。大约一半的出版物中缺少有关中央编程或异质性评估的信息。大多数研究都是通过提高能力来激发的(86%)。结论:药物流行病学多数据库研究是解决安全问题的有力策略,并且越来越受欢迎。为了能够正确解释这些研究的结果,重要的是系统地报告数据库管理和分析技术,包括中央编程和异构测试。

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