Bunting Denise, Endo Taku, Watt Kerrianne, Daniel Raymond, Bosley Emma
Information Support, Research & Evaluation, Queensland Ambulance Service, Brisbane, Australia.
Queensland Health, Preventive Health Branch, Brisbane, Australia.
Prehosp Emerg Care. 2023;27(8):1031-1040. doi: 10.1080/10903127.2022.2108179. Epub 2022 Aug 30.
: The aim of this work is to describe routine integration of prehospital emergency health records into a health master linkage file, delivering ongoing access to integrated patient treatment and outcome information for ambulance-attended patients in Queensland.: The Queensland Ambulance Service (QAS) data are integrated monthly into the Queensland Health Master Linkage File (MLF) using a linkage algorithm that relies on probabilistic matches in combination with deterministic rules based on patient demographic details, date, time and facility identifiers. Each ambulance record is assigned an enduring linkage key (unique patient identifier) and further processing determines whether each record matches with a corresponding hospital emergency department, admission or death registry record. In this study, all QAS electronic ambulance report form (eARF) records from October 2016 to December 2018 where at least 1 key linkage variable was present (n = 1,771,734) were integrated into the MLF.: The majority of records (n = 1,456,502; 82.2%) were for transported patients, and 90.1% (n = 1,312,176) of these transports were to public hospital facilities. Of these transport records, 93.9% (n = 1,231,951) matched to emergency department (ED) records and 59.3% (n = 864,394) also linked to admitted patient records. Of ambulance non-transport records integrated into the MLF, 23.6% (n = 74,311) matched with ED records.: This study demonstrates robust linkage methods, quality assurance processes and high linkage rates of data across the continuum of care (prehospital/emergency department/admitted patient/death) in Queensland. The resulting infrastructure provides a high-quality linked dataset that facilitates complex research and analysis to inform critical functions such as quality improvement, system evaluation and design.
这项工作的目的是描述将院前急救健康记录常规整合到健康主链接文件中,以便为昆士兰州接受救护车救治的患者持续提供综合患者治疗和结果信息。昆士兰救护车服务(QAS)数据每月使用一种链接算法整合到昆士兰健康主链接文件(MLF)中,该算法依靠概率匹配以及基于患者人口统计学细节、日期、时间和机构标识符的确定性规则。每条救护车记录都被分配一个持久链接键(唯一患者标识符),进一步处理确定每条记录是否与相应的医院急诊科、住院或死亡登记记录匹配。在本研究中,2016年10月至2018年12月所有至少存在1个关键链接变量的QAS电子救护车报告表(eARF)记录(n = 1,771,734)被整合到MLF中。大多数记录(n = 1,456,502;82.2%)是关于被运送患者的,其中90.1%(n = 1,312,176)的运送是送往公立医院机构。在这些运送记录中,93.9%(n = 1,231,951)与急诊科(ED)记录匹配,59.3%(n = 864,394)也与住院患者记录相关联。整合到MLF中的救护车非运送记录中,23.6%(n = 74,311)与ED记录匹配。这项研究展示了昆士兰州在连续医疗过程(院前/急诊科/住院患者/死亡)中强大的数据链接方法、质量保证流程和高链接率。由此产生的基础设施提供了一个高质量的链接数据集,便于进行复杂的研究和分析,为质量改进、系统评估和设计等关键功能提供信息。