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Effect of database profile variation on drug safety assessment: an analysis of spontaneous adverse event reports of Japanese cases

机译:数据库配置文件变化对药物安全性评估的影响:日本病例自发不良事件报告的分析

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Background: The use of a statistical approach to analyze cumulative adverse event (AE) reports has been encouraged by regulatory authorities. However, data variations affect statistical analyses (eg, signal detection). Further, differences in regulations, social issues, and health care systems can cause variations in AE data. The present study examined similarities and differences between two publicly available databases, ie, the Japanese Adverse Drug Event Report (JADER) database and the US Food and Drug Administration Adverse Event Reporting System (FAERS), and how they affect signal detection.Methods: Two AE data sources from 2010 were examined, ie, JADER cases (JP) and Japanese cases extracted from the FAERS (FAERS-JP). Three methods for signals of disproportionate reporting, ie, the reporting odds ratio, Bayesian confidence propagation neural network, and Gamma Poisson Shrinker (GPS), were used on drug-event combinations for three substances frequently recorded in both systems.Results: The two databases showed similar elements of AE reports, but no option was provided for a shareable case identifier. The average number of AEs per case was 1.6±1.3 (maximum 37) in the JP and 3.3±3.5 (maximum 62) in the FAERS-JP. Between 5% and 57% of all AEs were signaled by three quantitative methods for etanercept, infliximab, and paroxetine. Signals identified by GPS for the JP and FAERS-JP, as referenced by Japanese labeling, showed higher positive sensitivity than was expected. Conclusion: The FAERS-JP was different from the JADER. Signals derived from both datasets identified different results, but shared certain signals. Discrepancies in type of AEs, drugs reported, and average number of AEs per case were potential contributing factors. This study will help those concerned with pharmacovigilance better understand the use and pitfalls of using spontaneous AE data.
机译:背景:监管部门鼓励使用统计方法分析累积不良事件(AE)报告。但是,数据变化会影响统计分析(例如,信号检测)。此外,法规,社会问题和医疗保健系统的差异可能会导致AE数据发生变化。本研究调查了两个公开可用的数据库(即日本不良药品事件报告(JADER)数据库和美国食品药品管理局不良事件报告系统(FAERS))之间的异同及其对信号检测的影响。方法:两个检查了2010年的AE数据源,即JADER病例(JP)和从FAERS中提取的日本病例(FAERS-JP)。在两种系统中经常记录的三种物质的药物事件组合中,使用了三种报告信号不均的信号方法,即报告几率,贝叶斯置信传播神经网络和伽马泊松收缩(GPS)。结果:两个数据库显示了与AE报告类似的元素,但没有提供可共享案例标识符的选项。 JP中每例的平均AE数为1.6±1.3(最大37),而FAERS-JP中为AE的平均数量为3.3±3.5(最大62)。通过三种定量方法对依那西普,英夫利昔单抗和帕罗西汀发出信号,表示所有AE的5%至57%。由GPS识别出的JP和FAERS-JP信号(如日本标签所示)显示出比预期更高的正灵敏度。结论:FAERS-JP与JADER不同。从两个数据集中获得的信号识别出不同的结果,但共享某些信号。不良事件类型,报告的药物和每例平均不良事件数量之间的差异是潜在的影响因素。这项研究将帮助那些关注药物警戒性的人更好地了解使用自发AE数据的使用和陷阱。

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