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Drug safety data mining with a tree-based scan statistic.

机译:使用基于树的扫描统计信息进行药物安全性数据挖掘。

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摘要

In post-marketing drug safety surveillance, data mining can potentially detect rare but serious adverse events. Assessing an entire collection of drug-event pairs is traditionally performed on a predefined level of granularity. It is unknown a priori whether a drug causes a very specific or a set of related adverse events, such as mitral valve disorders, all valve disorders, or different types of heart disease. This methodological paper evaluates the tree-based scan statistic data mining method to enhance drug safety surveillance.We use a three-million-member electronic health records database from the HMO Research Network. Using the tree-based scan statistic, we assess the safety of selected antifungal and diabetes drugs, simultaneously evaluating overlapping diagnosis groups at different granularity levels, adjusting for multiple testing. Expected and observed adverse event counts were adjusted for age, sex, and health plan, producing a log likelihood ratio test statistic.Out of 732 evaluated disease groupings, 24 were statistically significant, divided among 10 non-overlapping disease categories. Five of the 10 signals are known adverse effects, four are likely due to confounding by indication, while one may warrant further investigation.The tree-based scan statistic can be successfully applied as a data mining tool in drug safety surveillance using observational data. The total number of statistical signals was modest and does not imply a causal relationship. Rather, data mining results should be used to generate candidate drug-event pairs for rigorous epidemiological studies to evaluate the individual and comparative safety profiles of drugs. Copyright ? 2013 John Wiley & Sons, Ltd.
机译:在上市后药品安全监视中,数据挖掘可以潜在地检测罕见但严重的不良事件。传统上,评估药物事件对的整个集合是在预定义的粒度级别上执行的。药物是引起非常特异性还是一系列相关的不良事件(如二尖瓣疾病,所有瓣膜疾病或不同类型的心脏病)的先验知识是未知的。该方法论论文评估了基于树的扫描统计数据挖掘方法,以增强药物安全性监控。我们使用了来自HMO研究网络的拥有300万成员的电子健康记录数据库。使用基于树的扫描统计数据,我们评估选定的抗真菌药和糖尿病药物的安全性,同时评估不同粒度级别的重叠诊断组,并针对多种测试进行调整。对预期和观察到的不良事件计数进行了年龄,性别和健康计划调整,得出对数似然比检验统计数据。在732个评估的疾病分组中,有24个具有统计学意义,被划分为10个非重叠疾病类别。 10种信号中有5种是已知的不良反应,其中4种可能是由于适应症引起的,而一种可能需要进一步研究。基于树的扫描统计数据可以成功地用作使用观察数据进行药物安全性监测的数据挖掘工具。统计信号的总数是适度的,并不表示因果关系。相反,应使用数据挖掘结果来生成候选药物事件对,以进行严格的流行病学研究,以评估药物的个体和比较安全性。版权? 2013 John Wiley&Sons,Ltd.

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