Hauben Manfred
Safety Evaluation and Epidemiology, Pfizer Inc., New York, NY 10017-5755, USA.
Ann Pharmacother. 2003 Jul-Aug;37(7-8):1117-23. doi: 10.1345/aph.1C515.
Statistical techniques have traditionally been underused in spontaneous reporting systems used for postmarketing surveillance of adverse drug events. Regulatory agencies, pharmaceutical companies, and drug monitoring centers have recently devoted considerable efforts to develop and implement computer-assisted automated signal detection methodologies that employ statistical theory to enhance screening efforts of expert clinical reviewers.
To provide a concise state-of-the-art review of the most commonly used automated signal detection procedures, including the underlying statistical concepts, performance characteristics, and outstanding limitations, and issues to be resolved.
Primary articles were identified by MEDLINE search (1965-December 2002) and through secondary sources.
All of the articles identified from the data sources were evaluated and all information deemed relevant was included in this review.
Commonly used methods of automated signal detection are self-contained and involve screening large databases of spontaneous adverse event reports in search of interestingly large disproportionalities or dependencies between significant variables, usually single drug-event pairs, based on an underlying model of statistical independence. The models vary according to the underlying model of statistical independence and whether additional mathematical modeling using Bayesian analysis is applied to the crude measures of disproportionality. There are many potential advantages and disadvantages of these methods, as well as significant unresolved issues related to the application of these techniques, including lack of comprehensive head-to-head comparisons in a single large transnational database, lack of prospective evaluations, and the lack of gold standard of signal detection.
Current methods of automated signal detection are nonclinical and only highlight deviations from independence without explaining whether these deviations are due to a causal linkage or numerous potential confounders. They therefore cannot replace expert clinical reviewers, but can help them to focus attention when confronted with the difficult task of screening huge numbers of drug-event combinations for potential signals. Important questions remain to be answered about the performance characteristics of these methods. Pharmacovigilance professionals should take the time to learn the underlying mathematical concepts in order to critically evaluate accumulating experience pertaining to the relative performance characteristics of these methods that are incompletely defined.
在用于药品上市后不良事件监测的自发报告系统中,统计技术传统上未得到充分利用。监管机构、制药公司和药品监测中心最近投入了大量精力来开发和实施计算机辅助自动信号检测方法,这些方法运用统计理论来加强专家临床审评员的筛选工作。
对最常用的自动信号检测程序进行简明的最新综述,包括基本的统计概念、性能特征、突出的局限性以及有待解决的问题。
通过MEDLINE检索(1965年至2002年12月)及二次来源确定原始文章。
对从数据来源中识别出的所有文章进行评估,所有被认为相关的信息都纳入本综述。
常用的自动信号检测方法自成体系,涉及筛选大量自发不良事件报告数据库,以寻找基于统计独立性基本模型的显著变量(通常是单一药物 - 事件对)之间有趣的大比例失调或相关性。这些模型根据统计独立性的基本模型以及是否将使用贝叶斯分析的额外数学建模应用于失调的粗略度量而有所不同。这些方法有许多潜在的优点和缺点,以及与这些技术应用相关的重大未解决问题,包括在单个大型跨国数据库中缺乏全面的直接比较、缺乏前瞻性评估以及缺乏信号检测的金标准。
当前的自动信号检测方法是非临床的,仅突出与独立性的偏差,而不解释这些偏差是由于因果联系还是众多潜在混杂因素。因此,它们不能取代专家临床审评员,但在面对筛选大量药物 - 事件组合以寻找潜在信号的艰巨任务时,可以帮助他们集中注意力。关于这些方法的性能特征仍有重要问题有待解答。药物警戒专业人员应花时间学习基本的数学概念,以便批判性地评估与这些定义不完整的方法的相对性能特征相关的积累经验。