The Danish Drowning Cohort: Utstein-style data from fatal and non-fatal drowning incidents in Denmark.

IF 3.4 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES BMC Medical Research Methodology Pub Date : 2025-01-30 DOI:10.1186/s12874-025-02483-8
Niklas Breindahl, Kasper Bitzer, Oliver B Sørensen, Alexander Wildenschild, Signe A Wolthers, Tim Lindskou, Jacob Steinmetz, Stig N F Blomberg, Helle C Christensen
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Abstract

Background: Effective interventions to reduce drowning incidents require accurate and reliable data for scientific analysis. However, the lack of high-quality evidence and the variability in drowning terminology, definitions, and outcomes present significant challenges in assessing studies to inform drowning guidelines. Many drowning reports use inappropriate classifications for drowning incidents, which significantly contributes to the underreporting of drowning. In particular, non-fatal drowning incidents are underreported because many countries do not routinely collect this data.

The danish drowning cohort: The Danish Drowning Cohort was established in 2016 to facilitate research to improve preventative, rescue, and treatment interventions to reduce the incidence, mortality, and morbidity of drowning. The Danish Drowning Cohort contains nationwide data on all fatal and non-fatal drowning incidents treated by the Danish Emergency Medical Services. Data are extracted from the Danish prehospital electronic medical record using a text-search algorithm (Danish Drowning Formula) and a manual validation process. The WHO definition of drowning, supported by the clarification statement for non-fatal drowning, is used as the case definition to identify drowning. All drowning patients are included, including unwitnessed incidents, non-conveyed patients, patients declared dead prehospital, or patients with obvious clinical signs of irreversible death. This method allows syndromic surveillance and monitors a nationwide cohort of fatal and non-fatal drowning incidents in near-real time to inform future prevention strategies. The Danish Drowning Cohort complies with the Utstein style for drowning reporting guidelines. The 30-day mortality is obtained through the Civil Personal Register to differentiate between fatal and non-fatal drowning incidents. In addition to prehospital data, new data linkages with other Danish registries via the patient's civil registration number will enable the examination of various additional factors associated with drowning risk.

Conclusion: The Danish Drowning Cohort contains nationwide prehospital data on all fatal and non-fatal drowning incidents treated by the Danish Emergency Medical Service. It is a basis for all research on drowning in Denmark and may improve preventative, rescue, and treatment interventions to reduce the incidence, mortality, and morbidity of drowning.

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丹麦溺水队列:来自丹麦致命和非致命溺水事件的乌斯坦式数据。
背景:减少溺水事件的有效干预需要准确可靠的数据进行科学分析。然而,缺乏高质量的证据以及溺水术语、定义和结果的可变性,给评估研究以提供溺水指南带来了重大挑战。许多溺水报告对溺水事件使用了不适当的分类,这在很大程度上导致了溺水的少报。特别是,非致命性溺水事件的报告不足,因为许多国家没有定期收集这方面的数据。丹麦溺水队列:丹麦溺水队列于2016年建立,旨在促进研究,以改进预防、救援和治疗干预措施,降低溺水的发病率、死亡率和发病率。丹麦溺水队列包含丹麦紧急医疗服务部门处理的所有致命和非致命溺水事件的全国数据。使用文本搜索算法(丹麦溺水公式)和手动验证过程从丹麦院前电子病历中提取数据。世卫组织的溺水定义在非致命性溺水澄清声明的支持下,被用作确定溺水的病例定义。包括所有溺水患者,包括未目击事件、未转运的患者、院前宣布死亡的患者或有明显不可逆死亡临床体征的患者。这种方法允许对综合征进行监测,并近乎实时地监测全国致命和非致命溺水事件队列,以便为未来的预防战略提供信息。丹麦溺水队列遵循Utstein风格的溺水报告指南。30天死亡率是通过民事个人登记册获得的,以区分致命和非致命溺水事件。除了院前数据外,通过患者民事登记号码与丹麦其他登记处建立新的数据联系,将能够检查与溺水风险相关的各种其他因素。结论:丹麦溺水队列包含丹麦紧急医疗服务部门处理的所有致命性和非致命性溺水事件的全国院前数据。它是丹麦所有溺水研究的基础,可以改善预防、救援和治疗干预措施,以降低溺水的发生率、死亡率和发病率。
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来源期刊
BMC Medical Research Methodology
BMC Medical Research Methodology 医学-卫生保健
CiteScore
6.50
自引率
2.50%
发文量
298
审稿时长
3-8 weeks
期刊介绍: BMC Medical Research Methodology is an open access journal publishing original peer-reviewed research articles in methodological approaches to healthcare research. Articles on the methodology of epidemiological research, clinical trials and meta-analysis/systematic review are particularly encouraged, as are empirical studies of the associations between choice of methodology and study outcomes. BMC Medical Research Methodology does not aim to publish articles describing scientific methods or techniques: these should be directed to the BMC journal covering the relevant biomedical subject area.
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