利用人工智能提高医疗急救调度中的应急响应能力给编辑的信。

IF 2.9 Q1 EMERGENCY MEDICINE Archives of Academic Emergency Medicine Pub Date : 2023-01-01 DOI:10.22037/aaem.v11i1.2097
Payam Emami, Karim Javanmardi
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Enhancing Emergency Response through Artificial Intelligence in Emergency Medical Services Dispatching; a Letter to Editor.
The emergency medical dispatcher (EMD) serves as a crucial link between individuals in need of emergency medical assistance and the emergency medical services (EMS) resource delivery system. Through their expertise and training, EMDs are able to accurately assess emergency situations, provide appropriate guidance over the phone, and dispatch the necessary EMS personnel to the scene. With adequate training, program management, supervision, and medical guidance, the EMD can accurately assess the caller’s needs, choose an appropriate response approach, furnish relevant information to responders, and offer suitable assistance and guidance to patients through the caller. By diligently adhering to a written and medically approved EMD protocol, informed decisions regarding EMS responses can be made in a reliable, replicable, and fair manner (1, 2). Artificial intelligence (AI) is the concept of a computer program that utilizes existing information to make decisions and enhances its performance based on accumulated experience. Machine learning (ML), a crucial aspect of AI,
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来源期刊
Archives of Academic Emergency Medicine
Archives of Academic Emergency Medicine Medicine-Emergency Medicine
CiteScore
8.90
自引率
7.40%
发文量
0
审稿时长
6 weeks
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