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药物不良反应因果关系评估方法:一项系统综述

Methods for causality assessment of adverse drug reactions: a systematic review.

作者信息

Agbabiaka Taofikat B, Savović Jelena, Ernst Edzard

机构信息

Complementary Medicine, Peninsula Medical School, Universities of Exeter and Plymouth, Exeter, UK.

出版信息

Drug Saf. 2008;31(1):21-37. doi: 10.2165/00002018-200831010-00003.

Abstract

Numerous methods for causality assessment of adverse drug reactions (ADRs) have been published. The aim of this review is to provide an overview of these methods and discuss their strengths and weaknesses. We conducted electronic searches in MEDLINE (via PubMed), EMBASE and the Cochrane databases to find all assessment methods. Thirty-four different methods were found, falling into three broad categories: expert judgement/global introspection, algorithms and probabilistic methods (Bayesian approaches). Expert judgements are individual assessments based on previous knowledge and experience in the field using no standardized tool to arrive at conclusions regarding causality. Algorithms are sets of specific questions with associated scores for calculating the likelihood of a cause-effect relationship. Bayesian approaches use specific findings in a case to transform the prior estimate of probability into a posterior estimate of probability of drug causation. The prior probability is calculated from epidemiological information and the posterior probability combines this background information with the evidence in the individual case to come up with an estimate of causation. As a result of problems of reproducibility and validity, no single method is universally accepted. Different causality categories are adopted in each method, and the categories are assessed using different criteria. Because assessment methods are also not entirely devoid of individual judgements, inter-rater reliability can be low. In conclusion, there is still no method universally accepted for causality assessment of ADRs.

摘要

关于药物不良反应(ADR)因果关系评估的众多方法已被发表。本综述的目的是概述这些方法,并讨论它们的优缺点。我们在MEDLINE(通过PubMed)、EMBASE和Cochrane数据库中进行了电子检索,以查找所有评估方法。共发现34种不同的方法,分为三大类:专家判断/整体反思、算法和概率方法(贝叶斯方法)。专家判断是基于该领域先前知识和经验的个人评估,不使用标准化工具得出关于因果关系的结论。算法是一组具有相关分数的特定问题,用于计算因果关系的可能性。贝叶斯方法利用病例中的特定发现将药物因果关系概率的先验估计转化为后验估计。先验概率根据流行病学信息计算,后验概率将此背景信息与个体病例中的证据相结合,以得出因果关系的估计。由于存在可重复性和有效性问题,没有一种方法被普遍接受。每种方法采用不同的因果关系类别,且使用不同的标准对类别进行评估。由于评估方法也并非完全没有个人判断,评估者间的可靠性可能较低。总之,目前仍没有一种被普遍接受的药物不良反应因果关系评估方法。

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