Information Seeking and Sensemaking in Emergency Medical Service through Simulation Video Review.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Zhan Zhang, Karen Joy, Aastha S Bhadani, Tejas D Joshi, Kathleen Adelgais, Mustafa Ozkaynak
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Abstract

Emergency medical services (EMS) providers often face significant challenges in their work, including collecting, integrating, and making sense of a variety of information. Despite their criticality, EMS work is one of the very few medical domains with limited technical support. To design and implement effective decision support, it is essential to examine and gain a holistic understanding of the fine-grained process of sensemaking in the field. To that end, we reviewed 25 video recordings of EMS simulations to understand the nuances of EMS sensemaking work, including 1) the types of information and situation that are collected and made sense of in the field; 2) the work practices and temporal patterns of EMS sensemaking work; and 3) the challenges in EMS sensemaking and decision-making process. Based on the results, we discuss implications for technology opportunities to support rapid information acquisition and sensemaking in time-critical, high-risk medical settings such as EMS.

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通过模拟视频回顾紧急医疗服务中的信息搜索和感知决策。
紧急医疗服务(EMS)提供者在工作中经常面临重大挑战,包括收集、整合和理解各种信息。尽管急诊医疗服务至关重要,但它却是少数几个技术支持有限的医疗领域之一。要设计和实施有效的决策支持,就必须对现场感知决策的精细过程进行研究和全面了解。为此,我们回顾了 25 个急救医疗模拟视频录像,以了解急救医疗感知工作的细微差别,包括:1)现场收集和感知的信息和情况类型;2)急救医疗感知工作的工作实践和时间模式;3)急救医疗感知和决策过程中的挑战。根据研究结果,我们讨论了在时间紧迫、高风险的医疗环境(如急救医疗服务)中支持快速信息获取和感知决策的技术机会的意义。
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