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Assessing Definitions of Heroin Overdose in ED & EMS Data Using Hospital Billing Data

机译:使用医院账单数据评估ED和EMS数据中海洛因过量的定义

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Objective:? The aim of this project was to assess the face validity of surveillance case definitions for heroin overdose in emergency medical services (EMS) and emergency department syndromic surveillance (SyS) data systems by comparing case counts to those found in a statewide emergency department (ED) hospital administrative billing data system. Introduction:? In 2016, the Centers for Disease Control and Prevention funded 12 states, under the Enhanced State Opioid Overdose Surveillance (ESOOS) program, to utilize state Emergency Medical Services (EMS) and emergency department syndromic surveillance (SyS) data systems to increase timeliness of state data on drug overdose events. An important component of the ESOOS program is the development and validation of case definitions for drug overdoses for EMS and ED SyS data systems with a focus on small area anomaly detection. In fiscal year one of the grant Kentucky collaborated with CDC to develop case definitions for heroin and opioid overdoses for both SyS and EMS data. These drug overdose case definitions are compared between these two rapid surveillance systems, and further compared to emergency department (ED) hospital administrative claims billing data, to assess their face validity. Methods:? The most recent available data were pulled from multiple hospitals in a large healthcare system serving an urban region of Kentucky. Definitions for acute heroin overdose were applied to all three sources. For SyS and ED data, definitions were queried against the same hospitals within this geographic region and aggregated to week-level totals. SyS and ED data are similar with the exception of additional textual information available in SyS (such as chief complaint). Our EMS definition of heroin overdose was loosely based on a draft definition that was produced by the Massachusetts Department of Public Health, and relies more on textual analysis versus ICD10 codes used in SyS and ED data systems. While SyS and ED used the same hospitals as the frame of selection, EMS used incidents that occurred in the approximate catchment area served by those hospitals. Weekly totals from all three data sources were plotted in R studio with LOESS-smoothed trend lines. Unsmoothed times series plots also demonstrate highly correlated trends, but the smoothed trend lines are less cluttered and easier to interpret. Results:? Visual interpretation of the LOESS-smoothed trend lines shows very similar trajectories among all three sources [Fig 1]. The resultant graph demonstrates that individually, the time courses described by SyS and EMS data track closely with the one observed in ED data. The absolute counts between the three sources showed some differences, as expected. The EMS system captures a slightly different cohort that may include people that do not go to the ED (observation patients, refused transport, etc.) and SyS/ED have slightly different definitions (as ED does not include a free-text chief complaint. These types of limitations are better explored through data linkage that may or may not include medical record review to establish ground truth. Conclusions:? Public health surveillance of drug overdoses has traditionally relied on ED billing data. In most states, however, there is a lag of at least several months before this data becomes available for analysis. In some jurisdictions the delay may be considerably longer. Rapid surveillance data sources may allow for more timely identification of changes in overdose patterns at the local level. In addition, SyS/EMS can be used together to confirm that a spike seen in one rapid system is confirmed within the other, with relative ease. Though the comparison is a rather simple or crude visual analysis of three data systems at a common geographic level, there is still appears to be a common pattern among the three systems. While this does not carry the validity of cross-data matched analysis, it does provide some of the utility of looking at these system collective without match; and therefore may be of use to surveillance users that may be limited by de-identified data.
机译:目的:?该项目的目的是通过将病例数与全州急诊部门(ED)中发现的病例数进行比较,评估急诊医疗服务(EMS)和急诊科症状监测(SyS)数据系统中海洛因过量监测病例定义的面部有效性。医院行政计费数据系统。介绍:? 2016年,疾病预防控制中心根据增强型阿片类药物过量监测(ESOOS)计划资助了12个州,以利用州紧急医疗服务(EMS)和急诊科症状监测(SyS)数据系统来提高州的及时性有关药物过量事件的数据。 ESOOS计划的重要组成部分是开发和验证EMS和ED SyS数据系统用药过量的案例定义,重点是小面积异常检测。在财政年度中,肯塔基州的一项赠款与CDC合作,为SyS和EMS数据开发了海洛因和阿片类药物过量的案例定义。在这两个快速监视系统之间比较了这些药物过量案例的定义,并进一步与急诊科(ED)医院行政理赔账单数据进行了比较,以评估其面部有效性。方法:?最新的可用数据来自服务于肯塔基州市区的大型医疗系统中的多家医院。急性海洛因过量的定义适用于所有三个来源。对于SyS和ED数据,针对该地理区域内的同一家医院查询了定义,并汇总到每周水平的总数中。 SyS和ED数据相似,除了SyS中可用的其他文本信息(例如主要投诉)。我们对海洛因过量的EMS定义大致基于麻省公共卫生部制定的定义草案,它更多地依赖于文本分析,而不是SyS和ED数据系统中使用的ICD10代码。虽然SyS和ED使用与选择框架相同的医院,但EMS使用的事件发生在这些医院所服务的大致集水区。在R Studio中使用LOESS平滑的趋势线绘制了来自所有三个数据源的每周总计。不平滑的时间序列图也显示出高度相关的趋势,但平滑的趋势线不那么混乱,更易于解释。结果:? LOESS平滑趋势线的直观解释显示所有三个来源之间的轨迹非常相似[图1]。结果图表明,分别由SyS和EMS数据描述的时间过程与在ED数据中观察到的时间过程密切相关。正如预期的那样,三个来源之间的绝对计数显示出一些差异。 EMS系统捕获的队列稍有不同,其中可能包括不去急诊室的人(观察患者,拒绝运输等),而SyS / ED的定义略有不同(因为急诊室不包括自由文本的主要投诉)。通过数据链接可以更好地探讨这些类型的局限性,这些链接可能包括也可能不包括病历审查以建立基本事实。结论:传统上,对药物过量的公共卫生监督依赖于ED计费数据,但是在大多数州, SyS / EMS至少需要数月的时间才能进行分析,某些地区的延迟时间可能会更长,快速监控的数据源可以更及时地确定本地的用药过量变化。可以一起使用,以相对容易地确认在一个快速系统中看到的尖峰在另一个系统中得以确认。在共同的地理级别分析三个数据系统时,这三个系统之间似乎仍然存在一个共同的模式。尽管这没有交叉数据匹配分析的有效性,但确实提供了一些有用的工具来查看这些没有匹配的系统集合;因此对于可能受到取消标识的数据限制的监视用户可能有用。

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