医学
开胸手术
医疗急救
心理干预
情感(语言学)
置信区间
紧急医疗服务
病人护理
急诊医学
护理部
心理学
外科
沟通
内科学
作者
Yuval Glick,B Avital,Jessie Oppenheimer,D Nahman,Linn Wagnert‐Avraham,Arik Eisenkraft,Lianne Dym,Levi Dt,Ariel Agur,B Gustus,Ariel Furer
出处
期刊:BMJ military health
[BMJ]
日期:2020-02-20
卷期号:167 (3): 158-162
被引量:11
标识
DOI:10.1136/jramc-2019-001320
摘要
Introduction The challenging environment of prehospital casualty care demands providers to make prompt decisions and to engage in lifesaving interventions, occasionally without them being adequately experienced. Telementoring based on augmented reality (AR) devices has the potential to decrease the decision time and minimise the distance gap between an experienced consultant and the first responder. The purpose of this study was to determine whether telementoring with AR glasses would affect chest thoracotomy performance and self-confidence of inexperienced trainees. Methods Two groups of inexperienced medical students performed a chest thoracotomy in an ex vivo pig model. While one group was mentored remotely using HoloLens AR glasses, the second performed the procedure independently. An observer assessed the trainees’ performance. In addition, trainees and mentors evaluated their own performance. Results Quality of performance was found to be superior with remote guidance, without significant prolongation of the procedure (492 s vs 496 s, p=0.943). Moreover, sense of self-confidence among participant was substantially improved in the telementoring group in which 100% of the participants believed the procedure was successful compared with 40% in the control group (p=0.035). Conclusion AR devices may have a role in future prehospital telementoring systems, to provide accessible consultation for first responders, and could thus positively affect the provider's confidence in decision-making, enhance procedure performance and ultimately improve patient prognosis. That being said, future studies are required to estimate full potential of this technology and additional adjustments are necessary for maximal optimisation and implementation in the field of prehospital care.
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