Words to live by: Using medic impressions to identify the need for prehospital lifesaving interventions.

IF 3.4 3区 医学 Q1 EMERGENCY MEDICINE
Academic Emergency Medicine Pub Date : 2025-05-01 Epub Date: 2025-01-24 DOI:10.1111/acem.15067
Aaron C Weidman, Zach Sedor-Schiffhauer, Chase Zikmund, David D Salcido, Francis X Guyette, Leonard S Weiss, Ronald K Poropatich, Michael R Pinsky
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引用次数: 0

Abstract

Background: Prehospital emergencies require providers to rapidly identify patients' medical condition and determine treatment needs. We tested whether medics' initial, written impressions of patient condition contain information that can help identify patients who require prehospital lifesaving interventions (LSI) prior to or during transport.

Methods: We analyzed free-text medic impressions of prehospital patients encountered at the scene of an accident or injury, using data from STAT MedEvac air medical transport service from 2012 to 2021. EMR records were used to identify LSIs performed for these patients in prehospital settings. Text was cleaned via natural language processing and transformed using term frequency-inverse document frequency. A gradient boosting machine learning (ML) model was used to predict individual patient need for prehospital LSI as well as seven LSI subcategories (e.g., airway interventions, blood transfusion, vasopressor medication).

Results: A total of 12,913 prehospital patients were included in our sample (mean age = 52.3 years, 63% men). We observed good ML performance in predicting overall LSI (area under the receiver operating curve = 0.793, 95% confidence interval = [0.776-0.810]; average precision = 0.670, 95% confidence interval = [0.643-0.695] vs. LSI rate of 0.282) and equivalent-or-better performance in predicting each LSI subcategory except for crystalloid fluid administration. We identified individual words within medic impressions that portended high (e.g., unresponsive, hemorrhage) or low (e.g., droop, rib) LSI rates. Calibration analysis showed that models could prioritize correct LSI identification (i.e., high sensitivity) or accurate triage (i.e., low false-positive rate). Sensitivity analyses showed that model performance was robust when removing from medic impressions words that directly labeled an LSI.

Conclusions: ML based on free-text medic impressions can help identify patient need for prehospital LSI. We discuss future work, such as applying similar methods to 9-1-1 call requests, and potential applications, including voice-to-text translation of medic impressions.

生活准则:利用医生的印象来确定院前救生干预措施的必要性。
背景:院前紧急情况要求提供者快速识别患者的医疗状况并确定治疗需求。我们测试了医务人员对患者病情的初步书面印象是否包含有助于识别在转运之前或转运过程中需要院前救生干预(LSI)的患者的信息。方法:利用2012年至2021年STAT MedEvac航空医疗运输服务的数据,分析在事故或伤害现场遇到的院前患者的自由文本医疗印象。EMR记录用于识别院前环境中对这些患者进行的lsi。通过自然语言处理对文本进行清理,并使用词频率-逆文档频率进行转换。使用梯度增强机器学习(ML)模型预测个体患者院前LSI以及七个LSI子类(如气道干预、输血、血管加压药物)的需求。结果:我们的样本共纳入12,913例院前患者(平均年龄为52.3岁,63%为男性)。我们观察到ML在预测整体LSI方面表现良好(接收器工作曲线下面积= 0.793,95%置信区间= [0.776-0.810];平均精度= 0.670,95%置信区间= [0.643-0.695],LSI率为0.282),在预测除晶体流体管理外的每个LSI子类别方面具有同等或更好的性能。我们在医学印象中识别出预示高(例如,无反应,出血)或低(例如,下垂,肋骨)LSI率的单个单词。校准分析表明,模型可以优先考虑正确的LSI识别(即高灵敏度)或准确的分类(即低假阳性率)。敏感性分析表明,当从医学印象中删除直接标记LSI的单词时,模型的性能是稳健的。结论:基于自由文本医学印象的机器学习可以帮助确定患者院前LSI的需求。我们讨论了未来的工作,例如将类似的方法应用于911呼叫请求,以及潜在的应用,包括医学印象的语音到文本翻译。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Academic Emergency Medicine
Academic Emergency Medicine 医学-急救医学
CiteScore
7.60
自引率
6.80%
发文量
207
审稿时长
3-8 weeks
期刊介绍: Academic Emergency Medicine (AEM) is the official monthly publication of the Society for Academic Emergency Medicine (SAEM) and publishes information relevant to the practice, educational advancements, and investigation of emergency medicine. It is the second-largest peer-reviewed scientific journal in the specialty of emergency medicine. The goal of AEM is to advance the science, education, and clinical practice of emergency medicine, to serve as a voice for the academic emergency medicine community, and to promote SAEM''s goals and objectives. Members and non-members worldwide depend on this journal for translational medicine relevant to emergency medicine, as well as for clinical news, case studies and more. Each issue contains information relevant to the research, educational advancements, and practice in emergency medicine. Subject matter is diverse, including preclinical studies, clinical topics, health policy, and educational methods. The research of SAEM members contributes significantly to the scientific content and development of the journal.
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