Avillach Paul, Salvo Francesco, Thiessard Frantz, Miremont-Salamé Ghada, Fourrier-Reglat Annie, Haramburu Françoise, Bégaud Bernard, Moore Nicholas, Pariente Antoine
Université de Bordeaux, Bordeaux, France.
Pharmacoepidemiol Drug Saf. 2014 Feb;23(2):186-94. doi: 10.1002/pds.3454. Epub 2013 May 14.
To test an automated method to decrease the number of false-positive (FP) signals of disproportionate reportings (SDRs) generated by co-prescription.
Automated backward stepwise removal of reports concerning the drug associated with the highest ranked SDR for an event was tested for gastric and oesophageal haemorrhages (GOH), central nervous system haemorrhages and cerebrovascular accidents (CNSH), ischaemic coronary artery disorders and muscle pains (MP) using the reporting odds ratio in the French spontaneous reporting research database. After ranking SDRs detected in the complete dataset on the lower limit of the reporting odds ratio 95% confidence interval, reports concerning the drug with the highest ranked SDR were removed. In the dataset thus generated, SDRs were again identified, ranked and reports related to the drug involved in the newly highest ranked SDR removed. The process was repeated until no signal was detected. Initially detected SDRs eliminated using this technique were assessed regarding the summary of products characteristics and the literature to determine their FP nature.
Seventeen SDRs were successively eliminated for GOH, 37 for CNSH, 15 for ischaemic coronary artery disorders, and 36 for MP. Four were FP for GOH, 29 for CNSH, 7 for ACI and none were FP for MP. The positive predictive value of the backward stepwise removal procedure in identifying FP SDRs ranged from 0% (MP) to 78.4% (CNSH).
Although further adjustment is needed to improve the method presented herein, our results suggest that numerous FP signals because of co-prescription bias could be eliminated using an automated method.
测试一种自动化方法,以减少因联合处方产生的不成比例报告(SDR)的假阳性(FP)信号数量。
在法国自发报告研究数据库中,使用报告比值比,针对胃和食管出血(GOH)、中枢神经系统出血和脑血管意外(CNSH)、缺血性冠状动脉疾病和肌肉疼痛(MP),测试自动逐步剔除与事件中排名最高的SDR相关药物的报告。在完整数据集中检测到的SDR按报告比值比95%置信区间下限进行排序后,剔除与排名最高的SDR相关药物的报告。在由此生成的数据集中,再次识别、排序SDR,并剔除与新的排名最高的SDR所涉及药物相关的报告。重复该过程,直到未检测到信号。使用该技术剔除的最初检测到的SDR,根据产品特性总结和文献进行评估,以确定其FP性质。
GOH先后剔除了17个SDR,CNSH为37个,缺血性冠状动脉疾病为15个,MP为36个。GOH中有4个为FP,CNSH为29个,急性冠状动脉综合征(ACI)为7个,MP中无FP。逐步剔除程序识别FP SDR的阳性预测值范围为0%(MP)至78.4%(CNSH)。
尽管需要进一步调整以改进本文提出的方法,但我们的结果表明,使用自动化方法可以消除因联合处方偏倚产生的大量FP信号。