Davies Heather, Noble Peter-John, Fins Ivo S, Pinchbeck Gina, Singleton David, Pirmohamed Munir, Killick David
Institute of Infection, Veterinary and Ecological Sciences, University of Liverpool, Liverpool, United Kingdom.
Institute of Systems, Molecular and Integrative Biology, University of Liverpool, Liverpool, United Kingdom.
Front Vet Sci. 2025 Apr 1;12:1550468. doi: 10.3389/fvets.2025.1550468. eCollection 2025.
Spontaneous reporting of adverse events (AEs) by veterinary professionals and the public is the cornerstone of post-marketing safety surveillance for veterinary medicinal products (VMPs). However, studies suggest that most veterinary AEs remain unreported. Veterinary medicine regulators, including the United Kingdom Veterinary Medicines Directorate and the European Medicines Agency, have included the exploration of big data utilization to support pharmacovigilance efforts in their regulatory strategies. In this study, we describe the application of veterinary electronic healthcare records (EHRs) from the SAVSNET veterinary first opinion informatics system to conduct pharmacoepidemiological analyses. Five VMP-AE pairs were selected for investigation in a proof-of-concept study, where drug exposure was identified from semi-structured treatment data and AEs from the unstructured free-text clinical narrative. Dictionaries were developed to identify AEs based on standard terminology. The precision of these dictionaries improved when they were expanded using word vectorization and expert opinion. A key strength of first-opinion EHR datasets is their ability to enable cohort studies and facilitate calculations of absolute incidence and relative risk. Thus, we demonstrate that unstructured free-text clinical narratives can be used to identify outcomes for veterinary pharmacoepidemiological studies and, consequently, support and expand pharmacovigilance efforts based on spontaneous AE reports.
兽医专业人员和公众对不良事件(AE)的自发报告是兽药上市后安全监测的基石。然而,研究表明,大多数兽药不良事件仍未得到报告。包括英国兽药管理局和欧洲药品管理局在内的兽药监管机构已将探索利用大数据支持药物警戒工作纳入其监管战略。在本研究中,我们描述了如何应用来自SAVSNET兽医首诊信息系统的兽医电子健康记录(EHR)进行药物流行病学分析。在一项概念验证研究中,选择了五对兽药-不良事件组合进行调查,其中药物暴露从半结构化治疗数据中识别,不良事件从未结构化的自由文本临床叙述中识别。基于标准术语开发了词典来识别不良事件。当使用词向量法和专家意见对这些词典进行扩展时,其准确性得到了提高。首诊电子健康记录数据集的一个关键优势在于,它们能够开展队列研究,并便于计算绝对发病率和相对风险。因此,我们证明,非结构化的自由文本临床叙述可用于识别兽药药物流行病学研究的结果,从而基于自发的不良事件报告支持并扩大药物警戒工作。