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学习者对用于分诊培训的沉浸式虚拟现实大规模伤亡事件模拟器的评估。

Learner evaluation of an immersive virtual reality mass casualty incident simulator for triage training.

作者信息

Way David P, Panchal Ashish R, Price Alan, Berezina-Blackburn Vita, Patterson Jeremy, McGrath Jillian, Danforth Douglas, Kman Nicholas E

机构信息

Department of Emergency Medicine, The Ohio State University College of Medicine, 782 Prior Hall, 376 W. 10 Ave, Columbus, OH. 43210 USA.

Department of Emergency Medicine, The Ohio State University College of Medicine, 760 Prior Hall, 376 W. 10 Ave, Columbus, OH. 43210 USA.

出版信息

BMC Digit Health. 2024;2(1):56. doi: 10.1186/s44247-024-00117-5. Epub 2024 Sep 16.

Abstract

BACKGROUND

To minimize loss of life, modern mass casualty response requires swift identification, efficient triage categorization, and rapid hemorrhage control. Current training methods remain suboptimal. Our objective was to train first responders to triage a mass casualty incident using Virtual Reality (VR) simulation and obtain their impressions of the training's quality and effectiveness.We trained subjects in a triage protocol called Sort, Assess, Lifesaving interventions, and Treatment and/or Transport (SALT) Triage then had them respond to a terrorist bombing of a subway station using a fully immersive virtual reality simulation. We gathered learner reactions to their virtual reality experience and post-encounter debriefing with a custom electronic survey. The survey was designed to gather information about participants' demographics and prior experience, including roles, triage training, and virtual reality experience. We then asked them to evaluate the training and encounter and the system's potential for training others.

RESULTS

We received 375 completed evaluation surveys from subjects who experienced the virtual reality encounter. Subjects were primarily paramedics, but also included medical learners as well as other emergency medical service (EMS) professionals. Most participants (95%) recommended the experience for other first responders and rated the simulation (95%) and virtual patients (91%) as realistic. Ninety-four percent (94%) of participants rated the virtual reality simulator as "excellent" or "good." We observed some differences between emergency medical service and medical professionals regarding their prior experience with disaster response training and their opinions on how much the experience contributed to their learning. We observed no differences between subjects with extensive virtual reality experience and those without.

CONCLUSIONS

Our virtual reality simulator is an automated, customizable, fully immersive virtual reality system for training and assessing personnel in the proper response to a mass casualty incident. Participants perceived the simulator as an adequate alternative to traditional triage and treatment training and believed that the simulator was realistic and effective for training. Prior experience with virtual reality was not a prerequisite for the use of this system.

SUPPLEMENTARY INFORMATION

The online version contains supplementary material available at 10.1186/s44247-024-00117-5.

摘要

背景

为了尽量减少生命损失,现代大规模伤亡事件应对需要迅速识别、高效分诊分类以及快速控制出血。当前的训练方法仍不尽人意。我们的目标是培训急救人员使用虚拟现实(VR)模拟对大规模伤亡事件进行分诊,并了解他们对培训质量和效果的看法。我们按照一种名为“分类、评估、救生干预以及治疗和/或转运”(SALT)分诊的方案对受试者进行培训,然后让他们使用完全沉浸式虚拟现实模拟应对地铁站恐怖爆炸事件。我们通过定制电子调查问卷收集学习者对其虚拟现实体验的反应以及事件后的汇报情况。该调查问卷旨在收集有关参与者的人口统计学信息和既往经历,包括角色、分诊培训和虚拟现实体验。然后,我们要求他们评估培训、事件以及该系统培训其他人的潜力。

结果

我们从经历虚拟现实事件的受试者那里收到了375份完整的评估调查问卷。受试者主要是护理人员,但也包括医学学习者以及其他紧急医疗服务(EMS)专业人员。大多数参与者(95%)向其他急救人员推荐了该体验,并将模拟(95%)和虚拟患者(91%)评为逼真。94%的参与者将虚拟现实模拟器评为“优秀”或“良好”。我们观察到,在灾难应对培训的既往经历以及对该体验对其学习有多大帮助的看法方面,紧急医疗服务人员和医学专业人员之间存在一些差异。我们没有观察到有丰富虚拟现实体验的受试者和没有此类体验的受试者之间存在差异。

结论

我们的虚拟现实模拟器是一个自动化、可定制、完全沉浸式虚拟现实系统,用于培训和评估人员对大规模伤亡事件的正确应对。参与者认为该模拟器是传统分诊和治疗培训的合适替代方案,并认为该模拟器对培训来说既逼真又有效。使用该系统并非以有虚拟现实既往经历为前提条件。

补充信息

在线版本包含可在10.1186/s44247-024-00117-5获取的补充材料。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/428b/11402856/1a511a0531b7/44247_2024_117_Fig1_HTML.jpg

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