科幻小说或临床现实:人工智能在创伤护理连续体中的应用综述。

IF 6 1区 医学 Q1 EMERGENCY MEDICINE
Olivia F Hunter, Frances Perry, Mina Salehi, Hubert Bandurski, Alan Hubbard, Chad G Ball, S Morad Hameed
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引用次数: 5

摘要

人工智能(AI)和机器学习描述了一系列广泛的算法类型,可以根据数据集进行训练以进行预测。人工智能的日益成熟为在创伤护理中应用这些算法创造了新的机会。我们的论文概述了目前人工智能在创伤护理中的应用,包括损伤预测、分诊、急诊科数量、评估和结果。从受伤点开始,算法被用来预测机动车碰撞的严重程度,这可以帮助通知紧急响应。一旦到达现场,人工智能就可以用来帮助紧急服务部门远程对患者进行分类,以便告知转移地点和紧急情况。对于接收医院,这些工具可用于预测急诊科的创伤量,以帮助分配适当的人员配备。在患者到达医院后,这些算法不仅可以帮助预测损伤严重程度,从而为决策提供信息,还可以预测患者的结果,帮助创伤团队预测患者的发展轨迹。总的来说,这些工具有能力改变创伤护理。人工智能在创伤外科领域仍处于萌芽阶段,但这些文献表明,这项技术具有巨大的潜力。基于人工智能的创伤预测工具需要通过前瞻性试验和算法的临床验证进一步探索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Science fiction or clinical reality: a review of the applications of artificial intelligence along the continuum of trauma care.

Science fiction or clinical reality: a review of the applications of artificial intelligence along the continuum of trauma care.

Science fiction or clinical reality: a review of the applications of artificial intelligence along the continuum of trauma care.

Science fiction or clinical reality: a review of the applications of artificial intelligence along the continuum of trauma care.

Artificial intelligence (AI) and machine learning describe a broad range of algorithm types that can be trained based on datasets to make predictions. The increasing sophistication of AI has created new opportunities to apply these algorithms within within trauma care. Our paper overviews the current uses of AI along the continuum of trauma care, including injury prediction, triage, emergency department volume, assessment, and outcomes. Starting at the point of injury, algorithms are being used to predict severity of motor vehicle crashes, which can help inform emergency responses. Once on the scene, AI can be used to help emergency services triage patients remotely in order to inform transfer location and urgency. For the receiving hospital, these tools can be used to predict trauma volumes in the emergency department to help allocate appropriate staffing. After patient arrival to hospital, these algorithms not only can help to predict injury severity, which can inform decision-making, but also predict patient outcomes to help trauma teams anticipate patient trajectory. Overall, these tools have the capability to transform trauma care. AI is still nascent within the trauma surgery sphere, but this body of the literature shows that this technology has vast potential. AI-based predictive tools in trauma need to be explored further through prospective trials and clinical validation of algorithms.

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来源期刊
World Journal of Emergency Surgery
World Journal of Emergency Surgery EMERGENCY MEDICINE-SURGERY
CiteScore
14.50
自引率
5.00%
发文量
60
审稿时长
10 weeks
期刊介绍: The World Journal of Emergency Surgery is an open access, peer-reviewed journal covering all facets of clinical and basic research in traumatic and non-traumatic emergency surgery and related fields. Topics include emergency surgery, acute care surgery, trauma surgery, intensive care, trauma management, and resuscitation, among others.
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