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A systematic review of how missing data are handled and reported in multi-database pharmacoepidemiologic studies

机译:对多数据库药物化学研究中处理和报告数据的系统审查

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Purpose: Pharmacoepidemiologic multi-database studies (MDBS) provide opportunities to better evaluate the safety and effectiveness of medicines. However, the issue of missing data is often exacerbated in MDBS, potentially resulting in bias and precision loss. We sought to measure how missing data are being recorded and addressed in pharmacoepidemiologic MDBS. Methods: We conducted a systematic literature search in PubMed for pharmacoepidemiologic MDBS published between 1st January 2018 and 31st December 2019. Included studies were those that used ≥2 distinct databases to assess the same safety/effectiveness outcome associated with a drug exposure. Outcome variables extracted from the studies included strategies to execute a MDBS, reporting of missing data (type, bias evaluation) and the methods used to account for missing data. Results: Two thousand seven hundred and twenty-six articles were identified, and 62 studies were included: using data from either North America (56%), Europe (31%), multiple regions (11%) or East-Asia (2%). Thirty-five (56%) articles reported missing data: 11 of these studies reported that this could have introduced bias and 19 studies reported a method to address missing data. Thirteen (68%) carried out a complete case analysis, 2 (11%) applied multiple imputation, 2 (11%) used both methods, 1 (5%) used mean imputation and 1 (5%) substituted information from a similar variable. Conclusions: Just over half of the recent pharmacoepidemiologic MDBS reported missing data and two-thirds of these studies reported how they accounted for it. We should increase our vigilance for database completeness in MDBS by reporting and addressing the missing data that could introduce bias.
机译:目的:药物流行病学多数据库研究(MDB)为更好地评估药物的安全性和有效性提供了机会。然而,MDB中缺失数据的问题往往会加剧,可能导致偏差和精度损失。我们试图测量药物流行病学MDB中缺失数据的记录和处理方式。方法:我们在PubMed对2018年1月1日至2019年12月31日发表的药物流行病学MDB进行了系统的文献检索。包括那些使用≥2个不同的数据库,用于评估与药物暴露相关的相同安全性/有效性结果。从研究中提取的结果变量包括执行MDBS的策略、缺失数据的报告(类型、偏差评估)以及用于解释缺失数据的方法。结果:共鉴定出226篇文章,包括62项研究:使用来自北美(56%)、欧洲(31%)、多个地区(11%)或东亚(2%)的数据。35篇(56%)文章报告了缺失数据:其中11篇报告了这可能会引入偏见,19篇报告了解决缺失数据的方法。13例(68%)进行了完整的病例分析,2例(11%)采用多重插补,2例(11%)采用两种方法,1例(5%)采用平均插补,1例(5%)采用类似变量的替代信息。结论:刚刚超过一半的药物流行病学MDB报告了缺失数据,其中三分之二的研究报告了它们是如何解释的。我们应该通过报告和处理可能导致偏见的缺失数据,提高对MDB中数据库完整性的警惕。

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