Department of Medical Informatics, Erasmus University Medical Center, Rotterdam, the Netherlands.
Med Care. 2012 Oct;50(10):890-7. doi: 10.1097/MLR.0b013e31825f63bf.
Drug safety monitoring relies primarily on spontaneous reporting, but electronic health care record databases offer a possible alternative for the detection of adverse drug reactions (ADRs).
To evaluate the relative performance of different statistical methods for detecting drug-adverse event associations in electronic health care record data representing potential ADRs.
Data from 7 databases across 3 countries in Europe comprising over 20 million subjects were used to compute the relative risk estimates for drug-event pairs using 10 different methods, including those developed for spontaneous reporting systems, cohort methods such as the longitudinal gamma poisson shrinker, and case-based methods such as case-control. The newly developed method "longitudinal evaluation of observational profiles of adverse events related to drugs" (LEOPARD) was used to remove associations likely caused by protopathic bias. Data from the different databases were combined by pooling of data, and by meta-analysis for random effects. A reference standard of known ADRs and negative controls was created to evaluate the performance of the method.
The area under the curve of the receiver operator characteristic curve was calculated for each method, both with and without LEOPARD filtering.
The highest area under the curve (0.83) was achieved by the combination of either longitudinal gamma poisson shrinker or case-control with LEOPARD filtering, but the performance between methods differed little. LEOPARD increased the overall performance, but flagged several known ADRs as caused by protopathic bias.
Combinations of methods demonstrate good performance in distinguishing known ADRs from negative controls, and we assume that these could also be used to detect new drug safety signals.
药物安全监测主要依赖于自发报告,但电子医疗记录数据库为发现药物不良反应(ADR)提供了一种可能的替代方法。
评估在代表潜在 ADR 的电子医疗记录数据中检测药物-不良事件关联的不同统计方法的相对性能。
使用来自欧洲 3 个国家的 7 个数据库的数据,这些数据库包含超过 2000 万患者,使用 10 种不同方法计算药物-事件对的相对风险估计,包括为自发报告系统开发的方法、队列方法(如纵向伽马泊松收缩器)和基于病例的方法(如病例对照)。新开发的方法“与药物相关不良事件的观察性概况的纵向评估”(LEOPARD)用于消除可能由前驱偏倚引起的关联。通过数据合并和随机效应的荟萃分析,将来自不同数据库的数据进行组合。创建了已知 ADR 和阴性对照的参考标准,以评估该方法的性能。
计算了每种方法(包括使用和不使用 LEOPARD 过滤)的受试者工作特征曲线下的面积。
纵向伽马泊松收缩器或病例对照与 LEOPARD 过滤相结合的方法获得了最高的曲线下面积(0.83),但方法之间的性能差异不大。LEOPARD 提高了整体性能,但将几个已知的 ADR 标记为前驱偏倚引起的。
方法的组合在区分已知的 ADR 和阴性对照方面表现良好,我们假设这些方法也可用于检测新的药物安全信号。