Institute of Infection, Veterinary and Ecological Sciences, University of Liverpool, Leahurst Campus, Neston, CH64 7TE, UK.
Institute of Systems, Molecular and Integrative Biology, University of Liverpool, Liverpool, L69 3GL, UK.
J Small Anim Pract. 2024 Jun;65(6):361-367. doi: 10.1111/jsap.13721. Epub 2024 Mar 5.
To use text mining approaches to identify instances of suspected adverse drug reactions recorded in first opinion veterinary free-text clinical narratives, and to evaluate whether these were also reported to either the Veterinary Medicines Directorate or the relevant Marketing Authorisation holder in order to derive an estimate of the suspected adverse drug reaction (sADR) minimum under-reporting rate. To characterise sADR reports and explore whether particular features are associated with report submission.
Two regular expressions were developed to identify mentions of "adverse drug reactions" and "side effects" in the free-text clinical narratives of electronic health records contained within the Small Animal Veterinary Surveillance Network database. Consultations containing a match for the developed regular expressions were manually reviewed for inclusion and further classified to determine the suspected product, seriousness and expectedness of the event, and an indication of whether the event had been reported. The associations between event characteristics and reporting were explored using Fisher's exact tests.
A total of 10,565 records were manually reviewed from which 827 sADRs were identified. Approximately 90% of these sADRs were not recorded as reported. Suspected adverse drug reactions that were not considered "expected" were recorded as reported more frequently than "expected" sADRs. However, clinical severity did not appear to impact on whether there was a record of reporting.
This is the first estimate of under reporting sADRs based on real world evidence from veterinary clinical records. The under-reporting rate implied by this study highlights that further interventions are required to improve reporting rate within the veterinary profession in order to support pharmacovigilance activities and improve drug safety.
利用文本挖掘方法识别第一意见兽医自由文本临床叙述中记录的疑似药物不良反应(sADR)实例,并评估这些是否也向兽医药品管理局或相关上市许可持有人报告,以得出疑似药物不良反应(sADR)的最低漏报率的估计值。对 sADR 报告进行特征描述,并探索是否存在特定特征与报告提交相关。
开发了两个正则表达式来识别小型动物兽医监测网络数据库中电子健康记录的自由文本临床叙述中“药物不良反应”和“副作用”的提及。对包含开发的正则表达式匹配项的咨询进行了手动审查,以确定是否纳入,并进一步分类以确定可疑产品、事件的严重程度和预期性,以及事件是否已报告的指示。使用 Fisher 精确检验探索事件特征与报告之间的关联。
从 10565 份记录中进行了手动审查,其中确定了 827 例 sADR。这些 sADR 中约有 90%未记录为已报告。未被认为“预期”的疑似药物不良反应比“预期”的 sADR 更频繁地被记录为已报告。然而,临床严重程度似乎并未影响报告记录。
这是首次基于兽医临床记录的真实世界证据对 sADR 漏报率的估计。本研究暗示的漏报率突出表明,为了支持药物警戒活动和改善药物安全性,需要进一步干预来提高兽医行业的报告率。