A Retrospective Application of the Arbon and Hartman Models to the Union Cycliste International Mountain Bike World Cup.

IF 2.1 4区 医学 Q2 EMERGENCY MEDICINE Prehospital and Disaster Medicine Pub Date : 2023-10-01 Epub Date: 2023-08-29 DOI:10.1017/S1049023X23006222
Heather Tucker, Timothy Duncan, Paul A Craven, Christopher Goode, James Scheidler
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Abstract

Introduction: Outdoor activities have accelerated in the past several years. The authors were tasked with providing medical care for the Union Cycliste International (UCI) mountain biking World Cup in Snowshoe, West Virginia (USA) in September 2021. The Hartman and Arbon models were designed to predict patient presentation and hospital transport rates as well as needed medical resources at urban mass-gathering events. However, there is a lack of standardized methods to predict injury, illness, and insult severity at rural mass gatherings.

Study objective: This study aimed to determine whether the Arbon model would predict, within 10%, the number of patient presentations to be expected and to determine if the event classification provided by the Hartman model would adequately predict resources needed during the event.

Methods: Race data were collected from UCI event officials and injury data were collected from participants at time of presentation for medical care. Predicted presentation and transport rates were calculated using the Arbon model, which was then compared to the actual observed presentation rates. Furthermore, the event classification provided by the Hartman model was compared to the resources utilized during the event.

Results: During the event, 34 patients presented for medical care and eight patients required some level of transport to a medical facility. The Arbon predictive model for the 2021 event yielded 30.3 expected patient presentations. There were 34 total patient presentations during the 2021 race, approximately 11% more than predicted. The Hartman model yielded a score of four. Based on this score, this race would be classified as an "intermediate" event, requiring multiple Advanced Life Support (ALS) and Basic Life Support (BLS) personnel and transport units.

Conclusion: The Arbon model provided a predicted patient presentation rate within reasonable error to allow for effective pre-event planning and resource allocation with only a four patient presentation difference from the actual data. While the Arbon model under-predicted patient presentations, the Hartman model under-estimated resources needed due to the high-risk nature of downhill cycling. The events staffed required physician skills and air medical services to safely care for patients. Further evaluation of rural events will be needed to determine if there is a generalized need for physician presence at smaller events with inherently risky activities, or if this recurring cycling event is an outlier.

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Arbon和Hartman模型在联合自行车国际山地自行车世界杯上的应用回顾。
简介:户外活动在过去几年里加速了。作者的任务是为2021年9月在美国西弗吉尼亚州斯诺肖举行的国际山地自行车联合会(UCI)山地自行车世界杯提供医疗服务。Hartman和Arbon模型旨在预测城市大规模集会活动中的患者表现、医院运输率以及所需的医疗资源。然而,在农村大规模集会中,缺乏预测伤害、疾病和侮辱严重程度的标准化方法。研究目的:本研究旨在确定Arbon模型是否能在10%以内预测预期的患者就诊次数,并确定Hartman模型提供的事件分类是否能充分预测事件期间所需的资源。方法:从UCI赛事官员那里收集比赛数据,从参与者那里收集受伤数据。使用Arbon模型计算预测的呈现率和传输率,然后将其与实际观察到的呈现率进行比较。此外,将Hartman模型提供的事件分类与事件期间使用的资源进行了比较。结果:在活动期间,34名患者接受了医疗护理,8名患者需要一定程度的交通工具才能到达医疗机构。2021年事件的Arbon预测模型产生了30.3例预期患者表现。在2021年的比赛中,共有34名患者出现症状,比预测多出约11%。哈特曼模型得了四分。根据这一分数,这场比赛将被归类为“中级”赛事,需要多名高级生命支持(ALS)和基本生命支持(BLS)人员和运输单位。结论:Arbon模型提供了一个在合理误差范围内的预测患者表现率,以便在与实际数据只有四名患者表现差异的情况下进行有效的事件前规划和资源分配。虽然Arbon模型低于预测的患者表现,但Hartman模型由于下坡自行车的高风险性质而低于估计的所需资源。这些活动的工作人员需要医生技能和空中医疗服务来安全地照顾病人。需要对农村活动进行进一步评估,以确定是否普遍需要医生参与具有内在风险的小型活动,或者这种反复发生的自行车活动是否是一种异常情况。
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来源期刊
Prehospital and Disaster Medicine
Prehospital and Disaster Medicine Medicine-Emergency Medicine
CiteScore
3.10
自引率
13.60%
发文量
279
期刊介绍: Prehospital and Disaster Medicine (PDM) is an official publication of the World Association for Disaster and Emergency Medicine. Currently in its 25th volume, Prehospital and Disaster Medicine is one of the leading scientific journals focusing on prehospital and disaster health. It is the only peer-reviewed international journal in its field, published bi-monthly, providing a readable, usable worldwide source of research and analysis. PDM is currently distributed in more than 55 countries. Its readership includes physicians, professors, EMTs and paramedics, nurses, emergency managers, disaster planners, hospital administrators, sociologists, and psychologists.
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