利用住院病人用药单和实验室检测数据检测药物不良反应

Mei Liu, M. Matheny, Yonghui Wu, E. M. Hinz, J. Denny, J. Schildcrout, R. Miller, Hua Xu
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引用次数: 1

摘要

导读:药物安全需要在药物的整个市场生命周期内进行监测。早期发现药物不良反应(adr)可以发出警报,防止患者受到伤害。最近,电子病历(EMRs)已成为药物警戒的宝贵资源。本研究考察了EMR中回顾性用药单和住院患者实验室结果的使用,以确定adr。方法:利用12年的电子病历数据,我们设计了一项研究,通过比较药物暴露组和匹配的未暴露组的结果,将异常实验室结果与特定药物订单联系起来。我们评估了自发报告系统(SRS)中使用的六种药物警戒方法的相对优点,包括比例报告比(PRR)、报告优势比(ROR)、Yule’s Q、卡方检验、贝叶斯置信传播神经网络(BCPNN)和伽玛泊松收缩器(GPS)。入院时间设置为“零日”,所有药物订单和实验室结果时间以从该时间到出院的天数表示。根据ICD9编码,根据年龄、性别、种族和主要诊断结果,将暴露组中的每名患者随机与4名未暴露患者配对。
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Detecting Adverse Drug Reactions Using Inpatient Medication Orders and Laboratory Tests Data
Introduction: Medication safety requires monitoring throughout a drug's market life. Early detection of adverse drug reactions (ADRs) can lead to alerts that prevent patient harm. Recently, electronic medical records (EMRs) have emerged as a valuable resource for pharmacovigilance. This study examines the use of retrospective medication orders and inpatient laboratory results in the EMR to identify ADRs. Methods: Using 12 years of EMR data, we designed a study to correlate abnormal laboratory results with specific drug orders by comparing outcomes of a drug-exposed group and a matched unexposed group. We assessed the relative merits of six pharmacovigilance methods used in spontaneous reporting systems (SRS), including proportional reporting ratio (PRR), reporting odds ratio (ROR), Yule's Q, the Chi-square test, Bayesian confidence propagation neural networks (BCPNN) and a gamma Poisson shrinker (GPS). The time of admission was set as "day zero" and all drug orders and laboratory results timings were represented as days elapsed since that time until discharge. Each patient in the exposed group was randomly matched to four unexposed patients by age group, gender, race, and major diagnoses based on ICD9 codes.
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