大规模伤亡事件模拟的远程运动分析。

IF 2.8 Q2 HEALTH CARE SCIENCES & SERVICES
Boris Tolg
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引用次数: 0

摘要

背景:在物理模拟事件中对大规模伤亡事件进行定期培训对应急服务至关重要。这些模拟的准备和执行消耗了大量的时间、人员和金钱。因此,重要的是要从每次模拟中收集尽可能多的信息,同时尽量减少对参与者的影响,从而使模拟尽可能真实。本文对大规模伤亡事件模拟中参与者的gps远程运动测量进行了分析。结合不同的评估方法来分析数据。这可以减少测量方法的潜在偏差。方法:通过GPS记录仪对大规模伤亡事件模拟参与者的运动模式进行分析。根据参与者进入或离开指定区域的运动模式,模拟的时间轴被分割成事件部分。研究人员将密切合作的参与者的运动模式关联起来,分析他们的合作情况。地面观察员创建的书面日志用于重建模拟事件,为验证运动分析提供比较参考。结果:记录的参与者的运动模式被发现与观察者日志和分类分配定性相关,允许在模拟期间部分重建参与者的行为。通过分析模拟患者离开事件现场的次数,指出了在分诊决策中可能存在的一些误判。结论:对GPS记录仪的运动模式进行分析,并与地面观测结果进行比较,表明可以自动提供模拟过程中有关事件的准确信息。虽然实地观察员的记录对于评估细节是至关重要的,但授权对个人和群体运动进行自动分析也许可以使观察员集中精力于更具体的任务。提出的部分自动化运动分析方法可以简化大规模伤亡事件仿真分析的过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A remote motion analysis of mass casualty incident simulations.

Background: Regular training for mass casualty incidents at physical simulation events is vital for emergency services. The preparation and execution of these simulations consume huge amounts of time, personnel, and money. It is therefore important to gather as much information as possible from each simulation while minimizing any influence on the participants, so as to keep the simulation as realistic as possible. In this paper, an analysis of GPS-based remote motion measurements of participants in a mass casualty incident simulation is presented. A combination of different evaluation methods is used to analyze the data. This could reduce the potential bias of the measurement methods.

Methods: Movement patterns of participants of mass casualty incident simulations, measured by GPS loggers, were analyzed. The timeline of the simulation was segmented into event sections, based on movement patterns of participants entering or leaving defined areas. Movement patterns of participants working closely together were correlated to analyze their cooperation. Written logs created by observers on the ground were used to reconstruct the events of the simulation, to provide a comparative reference to validate the motion analysis.

Results: Recorded motion patterns of the participants were found to be qualitatively related to observer logs and triage allocations, allowing a partial reconstruction of the behavior of the participants during the simulation. By analyzing the times the simulation patients left the site of events some possible misjudgments in the triage decisions were indicated.

Conclusions: Analysis of movement patterns from GPS loggers and comparison with observations made on the ground showed that accurate information about the events during the simulation can be automatically delivered. Although the records of observers on the ground are vital to assess details, delegation of the automated analysis of individual and group motion could perhaps allow observers to concentrate on more specific tasks. The partially automated motion analysis methods presented should simplify the process of analyzing mass casualty incident simulations.

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来源期刊
CiteScore
5.70
自引率
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