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一种用于检测随时间推移不良反应频率增加的非参数方法。

A nonparametric method to detect increased frequencies of adverse drug reactions over time.

机构信息

Pharmacometrics, Novartis Pharma AG, Basel, Switzerland.

Quantitative Safety Sciences and Epidemiology, Novartis Pharma AG, Basel, Switzerland.

出版信息

Stat Med. 2018 Apr 30;37(9):1491-1514. doi: 10.1002/sim.7593. Epub 2018 Jan 10.

Abstract

Signal detection is routinely applied to spontaneous report safety databases in the pharmaceutical industry and by regulators. As an example, methods that search for increases in the frequencies of known adverse drug reactions for a given drug are routinely applied, and the results are reported to the health authorities on a regular basis. Such methods need to be sensitive to detect true signals even when some of the adverse drug reactions are rare. The methods need to be specific and account for multiplicity to avoid false positive signals when the list of known adverse drug reactions is long. To apply them as part of a routine process, the methods also have to cope with very diverse drugs (increasing or decreasing number of cases over time, seasonal patterns, very safe drugs versus drugs for life-threatening diseases). In this paper, we develop new nonparametric signal detection methods, directed at detecting differences between a reporting and a reference period, or trends within a reporting period. These methods are based on bootstrap and permutation distributions, and they combine statistical significance with clinical relevance. We conducted a large simulation study to understand the operating characteristics of the methods. Our simulations show that the new methods have good power and control the family-wise error rate at the specified level. Overall, in all scenarios that we explored, the method performs much better than our current standard in terms of power, and it generates considerably less false positive signals as compared to the current standard.

摘要

信号检测通常应用于制药行业和监管机构的自发报告安全性数据库。例如,通常会应用搜索给定药物已知药物不良反应频率增加的方法,并且会定期向卫生当局报告结果。这些方法需要具有敏感性,以便即使某些药物不良反应较为罕见,也能检测到真实信号。这些方法需要具有特异性,并考虑到多重性,以避免在已知药物不良反应列表较长时出现假阳性信号。为了将这些方法应用于常规流程中,这些方法还必须应对非常多样化的药物(随着时间的推移,病例数量增加或减少、季节性模式、非常安全的药物与危及生命疾病的药物)。在本文中,我们开发了新的非参数信号检测方法,旨在检测报告期和参考期之间的差异,或报告期内的趋势。这些方法基于自举和置换分布,将统计显著性与临床相关性相结合。我们进行了大量模拟研究以了解这些方法的工作特性。我们的模拟结果表明,新方法具有良好的功效,并能在指定水平上控制总体错误率。总的来说,在我们探索的所有场景中,该方法在功效方面都明显优于我们目前的标准,并且与目前的标准相比,产生的假阳性信号要少得多。

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