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Dose-Specific Adverse Drug Reaction Identification in Electronic Patient Records: Temporal Data Mining in an Inpatient Psychiatric Population

机译:电子病历中剂量特异性药物不良反应鉴定:住院精神病人群的时间数据挖掘

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摘要

Data collected for medical, filing and administrative purposes in electronic patient records (EPRs) represent a rich source of individualised clinical data, which has great potential for improved detection of patients experiencing adverse drug reactions (ADRs), across all approved drugs and across all indication areas.The aim of this study was to take advantage of techniques for temporal data mining of EPRs in order to detect ADRs in a patient- and dose-specific manner.We used a psychiatric hospital’s EPR system to investigate undesired drug effects. Within one workflow the method identified patient-specific adverse events (AEs) and links these to specific drugs and dosages in a temporal manner, based on integration of text mining results and structured data. The structured data contained precise information on drug identity, dosage and strength.When applying the method to the 3,394 patients in the cohort, we identified AEs linked with a drug in 2,402 patients (70.8 %). Of the 43,528 patient-specific drug substances prescribed, 14,736 (33.9 %) were linked with AEs. From these links we identified multiple ADRs (p 0.05) and found them to occur at similar frequencies, as stated by the manufacturer and in the literature. We showed that drugs displaying similar ADR profiles share targets, and we compared submitted spontaneous AE reports with our findings. For nine of the ten most prescribed antipsychotics in the patient population, larger doses were prescribed to sedated patients than non-sedated patients; five patients exhibited a significant difference (p 0.05). Finally, we present two cases (p 0.05) identified by the workflow. The method identified the potentially fatal AE QT prolongation caused by methadone, and a non-described likely ADR between levomepromazine and nightmares found among the hundreds of identified novel links between drugs and AEs (p 0.05).The developed method can be used to extract dose-dependent ADR information from already collected EPR data. Large-scale AE extraction from EPRs may complement or even replace current drug safety monitoring methods in the future, reducing or eliminating manual reporting and enabling much faster ADR detection.
机译:电子病历(EPR)中用于医疗,归档和管理目的的收集的数据代表了丰富的个性化临床数据,在所有批准的药物和所有适应症中,对于改进药物不良反应(ADR)患者的检测具有巨大潜力这项研究的目的是利用EPR的时态数据挖掘技术,以便以患者和剂量特定的方式检测ADR。我们使用了精神病医院的EPR系统来研究不良药物作用。在一个工作流程中,该方法基于文本挖掘结果和结构化数据的集成,识别了患者特定的不良事件(AE),并将其与特定的药物和剂量暂时联系起来。结构化数据包含有关药物身份,剂量和强度的准确信息。当将该方法应用于队列中的3394名患者时,我们在2402名患者中确定了与药物相关的AEs(70.8%)。在处方的43528种患者特异性药物中,有14736种(33.9%)与AE相关。通过这些链接,我们确定了多个ADR(p <0.05),并发现它们以相似的频率发生,如制造商和文献所述。我们发现显示出相似ADR资料的药物具有共同的目标,并且我们将提交的自发AE报告与我们的发现进行了比较。对于患者中十种处方最多的抗精神病药物中的九种,镇静患者开出的剂量要比非镇静患者大。五名患者表现出显着差异(p <0.05)。最后,我们介绍了工作流程确定的两种情况(p <0.05)。该方法确定了美沙酮引起的潜在致命的AE QT延长,并且在数百种已确定的药物与AE之间的新颖联系中发现了左旋丙嗪和噩梦之间未描述的可能的ADR(p <0.05),该方法可用于提取来自已收集的EPR数据的剂量依赖性ADR信息。从EPR中大规模提取AE可能会在将来补充甚至取代当前的药物安全监测方法,从而减少或消除人工报告,并能更快地进行ADR检测。

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