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药物不良反应的因果关系评估:已发表决策算法得出的结果与专家小组评估结果的比较

Causality assessment of adverse drug reactions: comparison of the results obtained from published decisional algorithms and from the evaluations of an expert panel.

作者信息

Macedo Ana Filipa, Marques Francisco Batel, Ribeiro Carlos Fontes, Teixeira Frederico

机构信息

Núcleo de Farmacovigilância do Centro, Faculdade de Medicina, Faculdade de Farmácia, Universidade de Coimbra, Administração Regional de Saúde do Centro, Portugal.

出版信息

Pharmacoepidemiol Drug Saf. 2005 Dec;14(12):885-90. doi: 10.1002/pds.1138.

Abstract

PURPOSE

To compare the results of causality assessments of reported adverse drug reactions (ADR's) obtained from decisional algorithms with those obtained from an expert panel using the WHO global introspection method (GI) and to further evaluate the influence of confounding variables on algorithms ability in assessing causality.

METHOD

Two hundred sequentially reported ADR's were included in this study. An independent researcher used algorithms, while an expert panel assessed the same reports using the GI, both aimed at evaluating causality. Reports were divided into three groups according to the presence, absence or lack of information on confounding variables.

RESULTS

For the total sample, observed agreements between decisional algorithms compared with GI varied from 21% to 56%, average of 47%. When confounding variables were taken into account, agreements varied between 41% and 69%, average of 58%; 8% and 65%, average of 46% and 15% and 53%, average of 42% accordingly to the absence, lack of information or presence of confounding variables, respectively. The extend of reproducibility beyond chance was low for the total sample (average Kappa = 0.26) and within the groups considered.

CONCLUSION

The overall observed agreement between algorithm and GI was moderate although poorly different from chance, confounding variables being a shortcoming of algorithms ability in assessing causality.

摘要

目的

比较通过决策算法得出的已报告药物不良反应(ADR)因果关系评估结果与采用世界卫生组织全球内省法(GI)的专家小组得出的结果,并进一步评估混杂变量对算法评估因果关系能力的影响。

方法

本研究纳入了200例连续报告的ADR。一名独立研究人员使用算法,而一个专家小组使用GI对相同的报告进行评估,二者均旨在评估因果关系。根据是否存在混杂变量信息,将报告分为三组。

结果

对于总样本,决策算法与GI之间观察到的一致性在21%至56%之间,平均为47%。当考虑混杂变量时,一致性在41%至69%之间,平均为58%;根据是否存在、缺乏信息或存在混杂变量,相应的一致性分别为8%至65%,平均为46%,以及15%至53%,平均为42%。总样本以及所考虑的组内超出偶然的可重复性程度较低(平均Kappa = 0.26)。

结论

算法与GI之间观察到的总体一致性为中等程度,尽管与偶然情况差异不大,混杂变量是算法评估因果关系能力的一个缺陷。

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