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Bayesian hierarchical methods in the detection of potentially teratogenic first-trimester medications

机译:贝叶斯分层方法检测潜在致畸的孕早期药物

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Purpose: Bayesian hierarchical models (BHMs) have been used to identify adverse drug reactions, allowing information sharing amongst adverse reactions and drugs expected to have similar properties. This study evaluated the use of BHMs in the routine signal detection analyses of potential first-trimester teratogens, where these models have not previously been applied. Methods: Data on 15 058 malformed foetuses exposed to first trimester medications (1995-2011) from 13 European congenital anomaly (CA) registries were analysed. The proportion of each CA in women taking a specific medication was compared with the proportion of that CA in all other women in the dataset (55 CAs x 523 medications). BHMs were grouped by either medications or CAs or by both simultaneously, and the results compared with analysing each medication-CA combination separately and adjusting for multiplicity using a double false discovery rate (FDR) procedure. The proportions of "high-risk" medications (medications which have been shown to carry a moderate to high risk of foetal malformations) identified as potential signals were compared, as well as the total number of potential signals requiring follow up (the effective workload). Results: BHMs identified more high-risk medications than the double FDR method, but the effective workload was larger. A BHM grouping both medications and CAs, for example, identified 23 of high-risk medications compared with 14 by the double FDR; however, there was an increase from 16 to 71 potential signals requiring follow up. Conclusion: For comparable effective workloads, BHMs did not outperform the double FDR, which is comparatively straightforward to implement and is therefore recommended for continued use in teratogenic signal detection analyses.
机译:目的:贝叶斯分层模型(BHMs)已被用于识别药物不良反应,允许在不良反应和预期具有相似特性的药物之间共享信息。本研究评估了BHMs在潜在孕早期致畸剂的常规信号检测分析中的使用,这些模型以前从未应用过。方法:分析来自13个欧洲先天性畸形(CA)登记处的15 058例妊娠早期药物暴露于妊娠早期药物的畸形胎儿的数据。将服用特定药物的女性中每种 CA 的比例与数据集中所有其他女性中该 CA 的比例进行比较(55 种 CA x 523 种药物)。BHM 按药物或 CA 分组或同时按两者分组,结果与单独分析每种药物-CA 组合并使用双误发现率 (FDR) 程序调整多重性进行比较。比较了被确定为潜在信号的“高风险”药物(已被证明具有中度至高度胎儿畸形风险的药物)的比例,以及需要随访的潜在信号总数(有效工作量)。结果:BHMs比双FDR法鉴定出更多的高危药物,但有效工作量更大。例如,将药物和 CA 对 BHM 进行分组,确定了 23% 的高风险药物,而双 FDR 为 14%;然而,需要跟进的潜在信号从 16 个增加到 71 个。结论:对于可比的有效工作负载,BHM的表现并不优于双FDR,后者的实现相对简单,因此建议继续用于致畸信号检测分析。

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