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制药商自发报告数据库中三种信号检测方法的标准修订与性能比较

Criteria revision and performance comparison of three methods of signal detection applied to the spontaneous reporting database of a pharmaceutical manufacturer.

作者信息

Matsushita Yasuyuki, Kuroda Yasufumi, Niwa Shinpei, Sonehara Satoshi, Hamada Chikuma, Yoshimura Isao

机构信息

Faculty of Engineering, Tokyo University of Science, Tokyo, Japan.

出版信息

Drug Saf. 2007;30(8):715-26. doi: 10.2165/00002018-200730080-00008.

Abstract

BACKGROUND AND OBJECTIVE

Several statistical methods exist for detecting signals of potential adverse drug reactions in spontaneous reporting databases. However, these signal-detection methods were developed using regulatory databases, which contain a far larger number of adverse event reports than the databases maintained by individual pharmaceutical manufacturers. Furthermore, the composition and quality of the spontaneous reporting databases differ between regulatory agencies and pharmaceutical companies. Thus, the signal-detection criteria proposed for regulatory use are considered to be inappropriate for pharmaceutical industry use without modification. The objective of this study was to revise the criteria for signal detection to make them suitable for use by pharmaceutical manufacturers.

METHODS

A model comprising 40 drugs and 1000 adverse events was constructed based on a spontaneous reporting database provided by a pharmaceutical company and used in a simulation to investigate appropriate criteria for signal detection. In total, 1000 pseudo datasets were generated with this model, and three statistical methods (proportional reporting ratio [PRR], Bayesian Confidence Propagation Neural Network [BCPNN] and multi-item gamma Poisson shrinker [MGPS]) for signal detection were applied to each dataset. The sensitivity and specificity of each method were evaluated using these pseudo datasets. The optimum critical value for signal detection (i.e. the value that achieved the highest sensitivity with 95% specificity) was identified for each method. The optimum values were also examined with the adverse events classified into two categories according to frequency. The three original detection methods and their revised versions were applied to a real pharmaceutical company database to detect 173 known adverse reactions of four drugs.

RESULTS

The 1000 pseudo datasets consisted of an average of 81 862 reports and 11,407 drug-event pairs, including 1192 adverse drug reactions. The sensitivities of PRR, BCPNN and MGPS methods were 49%, 45% and 26%, respectively, whereas their specificities were 95%, 99.6% and 99.99%, respectively; these sensitivities were unacceptably low for pharmaceutical manufacturers, whereas the specificities were acceptable. The highest sensitivity for each method, obtained by changing critical values and maintaining specificity at 95%, was 44%, 62% and 62%, respectively. When adverse events were classified into two categories, sensitivities as high as 75% for regular events and 39% for rare events were achieved with the revised BCPNN method. The critical values of the information component minus two standard deviations (IC - 2SD) index of the revised BCPNN method were greater than -0.7 for regular events and greater than -0.6 for rare events. The revised BCPNN method yielded 51% sensitivity and 89% specificity for the real dataset.

CONCLUSION

A lower critical value may be needed when signal-detection methodology is applied to the spontaneous reporting databases of pharmaceutical manufacturers. For example, it is recommended that pharmaceutical manufacturers use the BCPNN method with IC - 2SD criteria of greater than -0.7 for regular events and greater than -0.6 for rare events.

摘要

背景与目的

在自发报告数据库中,有多种统计方法可用于检测潜在药物不良反应信号。然而,这些信号检测方法是基于监管数据库开发的,监管数据库中包含的不良事件报告数量远多于各制药公司维护的数据库。此外,监管机构与制药公司的自发报告数据库在构成和质量上存在差异。因此,监管用途的信号检测标准未经修改就被认为不适用于制药行业。本研究的目的是修订信号检测标准,使其适用于制药制造商。

方法

基于一家制药公司提供的自发报告数据库构建了一个包含40种药物和1000例不良事件的模型,并用于模拟研究信号检测的合适标准。用该模型总共生成了1000个伪数据集,并将三种信号检测统计方法(比例报告比[PRR]、贝叶斯置信传播神经网络[BCPNN]和多项伽马泊松收缩器[MGPS])应用于每个数据集。使用这些伪数据集评估每种方法的敏感性和特异性。为每种方法确定了信号检测的最佳临界值(即达到95%特异性时最高敏感性的值)。还根据频率将不良事件分为两类来检验最佳值。将三种原始检测方法及其修订版本应用于一家真实制药公司的数据库,以检测四种药物的173例已知不良反应。

结果

1000个伪数据集平均包含81862份报告和11407个药物 - 事件对,其中包括1192例药物不良反应。PRR、BCPNN和MGPS方法的敏感性分别为49%、45%和26%,而它们的特异性分别为95%、99.6%和99.99%;这些敏感性对制药制造商来说低得不可接受,而特异性是可接受的。通过改变临界值并将特异性保持在95%,每种方法获得的最高敏感性分别为44%、62%和62%。当将不良事件分为两类时,修订后的BCPNN方法对常见事件的敏感性高达75%,对罕见事件的敏感性为39%。修订后的BCPNN方法的信息成分减去两个标准差(IC - 2SD)指数的临界值,对于常见事件大于 -0.7,对于罕见事件大于 -0.6。修订后的BCPNN方法对真实数据集的敏感性为51%,特异性为89%。

结论

将信号检测方法应用于制药制造商的自发报告数据库时,可能需要较低的临界值。例如,建议制药制造商使用BCPNN方法,对于常见事件采用IC - 2SD标准大于 -0.7,对于罕见事件采用大于 -0.6。

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