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自发报告数据库内部及之间统计信号检测方法的比较。

Comparison of statistical signal detection methods within and across spontaneous reporting databases.

作者信息

Candore Gianmario, Juhlin Kristina, Manlik Katrin, Thakrar Bharat, Quarcoo Naashika, Seabroke Suzie, Wisniewski Antoni, Slattery Jim

机构信息

European Medicines Agency, 7 Westferry Circus, Canary Wharf, London, E14 4HB, UK.

出版信息

Drug Saf. 2015 Jun;38(6):577-87. doi: 10.1007/s40264-015-0289-5.

Abstract

BACKGROUND

Most pharmacovigilance departments maintain a system to identify adverse drug reactions (ADRs) through analysis of spontaneous reports. The signal detection algorithms (SDAs) and the nature of the reporting databases vary between operators and it is unclear whether any algorithm can be expected to provide good performance in a wide range of environments.

OBJECTIVE

The objective of this study was to compare the performance of commonly used algorithms across spontaneous reporting databases operated by pharmaceutical companies and national and international pharmacovigilance organisations.

METHODS

220 products were chosen and a reference set of ADRs was compiled. Within four company, one national and two international databases, 15 SDAs based on five disproportionality methods were tested. Signals of disproportionate reporting (SDRs) were calculated at monthly intervals and classified by comparison with the reference set. These results were summarised as sensitivity and precision for each algorithm in each database.

RESULTS

Different algorithms performed differently between databases but no method dominated all others. Performance was strongly dependent on the thresholds used to define a statistical signal. However, the different disproportionality statistics did not influence the achievable performance. The relative performance of two algorithms was similar in different databases. Over the lifetime of a product there is a reduction in precision for any method.

CONCLUSIONS

In designing signal detection systems, careful consideration should be given to the criteria that are used to define an SDR. The choice of disproportionality statistic does not appreciably affect the achievable range of signal detection performance and so this can primarily be based on ease of implementation, interpretation and minimisation of computing resources. The changes in sensitivity and precision obtainable by replacing one algorithm with another are predictable. However, the absolute performance of a method is specific to the database and is best assessed directly on that database. New methods may be required to gain appreciable improvements.

摘要

背景

大多数药物警戒部门通过分析自发报告来维持一个识别药品不良反应(ADR)的系统。信号检测算法(SDA)和报告数据库的性质因运营者而异,目前尚不清楚是否有任何算法能在广泛的环境中提供良好的性能。

目的

本研究的目的是比较常用算法在制药公司以及国家和国际药物警戒组织运营的自发报告数据库中的性能。

方法

选择了220种产品,并编制了一份ADR参考集。在四个公司、一个国家和两个国际数据库中,对基于五种不成比例方法的15种SDA进行了测试。每月计算不成比例报告信号(SDR),并与参考集进行比较进行分类。这些结果总结为每个数据库中每种算法的灵敏度和精确度。

结果

不同算法在不同数据库中的表现不同,但没有一种方法优于其他所有方法。性能在很大程度上取决于用于定义统计信号的阈值。然而,不同的不成比例统计方法并不影响可实现的性能。两种算法在不同数据库中的相对性能相似。在产品的整个生命周期内,任何方法的精确度都会降低。

结论

在设计信号检测系统时,应仔细考虑用于定义SDR的标准。不成比例统计方法的选择不会明显影响信号检测性能的可实现范围,因此这主要可以基于易于实施、解释和最小化计算资源。用一种算法替换另一种算法可获得的灵敏度和精确度的变化是可预测的。然而,一种方法的绝对性能特定于数据库,最好直接在该数据库上进行评估。可能需要新的方法才能获得显著改进。

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