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用于前瞻性识别电子病历中安全信号的结构化评估:在健康改善网络中的评估

Structured assessment for prospective identification of safety signals in electronic medical records: evaluation in the health improvement network.

作者信息

Cederholm S, Hill G, Asiimwe A, Bate A, Bhayat F, Persson Brobert G, Bergvall T, Ansell D, Star K, Norén G N

机构信息

Uppsala Monitoring Centre, WHO Collaborating Centre for International Drug Monitoring, Box 1051, SE-75140, Uppsala, Sweden.

出版信息

Drug Saf. 2015 Jan;38(1):87-100. doi: 10.1007/s40264-014-0251-y.

Abstract

BACKGROUND

Pharmacovigilance signal detection largely relies on individual case reports, but longitudinal health data are being explored as complementary information sources. Research to date has focused on the ability of epidemiological methods to distinguish established adverse drug reactions (ADRs) from unrelated adverse events.

OBJECTIVE

The aim of this study was to evaluate a process for structured clinical and epidemiological assessment of temporally associated drugs and medical events in electronic medical records.

METHODS

Pairs of drugs and medical events were selected for review on the basis of their temporal association according to a calibrated self-controlled cohort analysis in The Health Improvement Network. Six assessors trained in pharmacovigilance and/or epidemiology evaluated seven drugs each, with up to 20 medical events per drug. A pre-specified questionnaire considered aspects related to the nature of the temporal pattern, demographic features of the cohort, concomitant medicines, earlier signs and symptoms, and possible confounding by underlying disease. This informed a classification of drug-event pairs as known ADRs, meriting further evaluation, or dismissed.

RESULTS

The number of temporally associated medical events per drug ranged from 11 to 307 (median 50) for the 42 selected drugs. Out of the 509 relevant drug-event combinations subjected to the assessment, 127 (25 %) were classified as known ADRs. Ninety-one (24 %) of the remaining pairs were classified as potential signals meriting further evaluation and 291 (76 %) were dismissed. Suggestive temporal patterns and lack of clear alternative explanations were the most common reasons that drug-event pairs were classified as meriting further evaluation. Earlier signs and symptoms and confounding by the underlying disease were the most common reasons that drug-event pairs were dismissed.

CONCLUSIONS

Exploratory analysis of electronic medical records can detect important potential safety signals. However, effective signal detection requires that statistical signal detection be combined with clinical and epidemiological review to achieve an acceptable false positive rate.

摘要

背景

药物警戒信号检测在很大程度上依赖于个例报告,但纵向健康数据正被视作补充信息来源加以探索。迄今为止的研究聚焦于流行病学方法区分既定药物不良反应(ADR)与无关不良事件的能力。

目的

本研究旨在评估对电子病历中时间相关的药物和医疗事件进行结构化临床和流行病学评估的流程。

方法

根据健康改善网络中经过校准的自控队列分析,基于时间关联性选择药物与医疗事件对进行审查。六名接受过药物警戒和/或流行病学培训的评估人员每人评估七种药物,每种药物最多评估20起医疗事件。一份预先设定的问卷考虑了与时间模式性质、队列人口统计学特征、合并用药、早期体征和症状以及潜在疾病可能造成的混杂因素相关的方面。这为将药物-事件对分类为已知ADR、值得进一步评估或排除提供了依据。

结果

所选42种药物中,每种药物与时间相关的医疗事件数量在11至307起之间(中位数为50起)。在接受评估的509种相关药物-事件组合中,127种(25%)被分类为已知ADR。其余组合中有91种(24%)被分类为值得进一步评估的潜在信号,291种(76%)被排除。提示性时间模式以及缺乏明确的替代解释是药物-事件对被分类为值得进一步评估的最常见原因。早期体征和症状以及潜在疾病造成的混杂是药物-事件对被排除的最常见原因。

结论

对电子病历的探索性分析能够检测出重要的潜在安全信号。然而,有效的信号检测需要将统计信号检测与临床和流行病学审查相结合,以实现可接受的假阳性率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0288/4302222/22b06553d007/40264_2014_251_Fig1_HTML.jpg

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