Suppr超能文献

因果关系评估能否满足新的欧洲药物不良反应定义?自发报告中使用方法的综述。

Can causality assessment fulfill the new European definition of adverse drug reaction? A review of methods used in spontaneous reporting.

机构信息

Department of Experimental Medicine, Section of Pharmacology L. Donatelli, University of Campania 'L. Vanvitelli', Naples, Italy; Campania Regional Centre for Pharmacovigilance and Pharmacoepidemiology, University of Campania 'L. Vanvitelli', Naples, Italy.

Department of Experimental Medicine, Section of Pharmacology L. Donatelli, University of Campania 'L. Vanvitelli', Naples, Italy; Campania Regional Centre for Pharmacovigilance and Pharmacoepidemiology, University of Campania 'L. Vanvitelli', Naples, Italy.

出版信息

Pharmacol Res. 2017 Sep;123:122-129. doi: 10.1016/j.phrs.2017.07.005. Epub 2017 Jul 8.

Abstract

Causality assessment is a fundamental biomedical technique for the signal detection performed by Pharmacovigilance centers in a Spontaneous reporting system. Moreover, it is a crucial and important practice for detecting preventable adverse drug reactions. Among different methods for causality assessment, algorithms (such as the Naranjo, or Begaud Methods) seem for their operational procedure and easier applicability one of the most commonly used methods. With the upcoming of the new European Pharmacovigilance legislation including in the definition of the adverse event also effects resulting from abuse, misuse and medication error, all well-known preventable causes of ADRs, there was an emerging need to evaluate whether algorithms could fulfill this new definition. In this review, twenty-two algorithmic methods were identified and none of them seemed to fulfill perfectly the new criteria of adverse event although some of them come close. In fact, several issues were arisen in applying causality assessment algorithms to these new definitions as for example the impossibility to answer the rechallenge question in case of medication error or AEFI (Adverse Event Following Immunization). Moreover, the exact conditions at which events occurred, as for example dosage or mode of administration should be considered to better assess causality in conditions of abuse/overdose, or misuse as well as in conditions of lack of expected efficacy reports for biotechnological drugs and adverse event occurring after mixing of vaccines. Therefore, this review highlights the need of updating algorithmic methods to allow a perfect applicability in all possible clinical scenarios accordingly or not with the terms of marketing authorization.

摘要

因果关系评估是药物警戒中心在自发报告系统中进行信号检测的一项基本医学技术。此外,它还是检测可预防药物不良反应的重要实践。在因果关系评估的不同方法中,算法(如 Naranjo 或 Begaud 方法)因其操作程序简单且易于应用,似乎是最常用的方法之一。随着新的欧洲药物警戒法规的出台,包括滥用、误用和用药错误导致的不良事件,所有这些都是已知的可预防的药物不良反应的原因,因此需要评估算法是否能够满足这一新定义。在本次综述中,共确定了 22 种算法方法,但没有一种方法似乎完全符合新的不良事件标准,尽管其中一些方法较为接近。事实上,在将因果关系评估算法应用于这些新定义时,出现了一些问题,例如在用药错误或疫苗接种后不良反应(AEFI)的情况下,无法回答再挑战问题。此外,还应考虑事件发生的确切条件,例如剂量或给药方式,以在滥用/过量、误用以及缺乏预期生物制药疗效报告或疫苗混合后发生不良反应的情况下更好地评估因果关系。因此,本综述强调了更新算法方法的必要性,以便在所有可能的临床情况下都能完美地应用,无论是否符合上市许可的条件。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验