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A Gradient Boosting Machine Learning Model for Predicting Early Mortality in the Emergency Department Triage: Devising a Nine-Point Triage Score

机译:预测急诊部门早期死亡率的梯度升压机学习模型:设计九点分类

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Background Emergency departments (ED) are becoming increasingly overwhelmed, increasing poor outcomes. Triage scores aim to optimize the waiting time and prioritize the resource usage. Artificial intelligence (AI) algorithms offer advantages for creating predictive clinical applications. Objective Evaluate a state-of-the-art machine learning model for predicting mortality at the triage level and, by validating this automatic tool, improve the categorization of patients in the ED. Design An institutional review board (IRB) approval was granted for this retrospective study. Information of consecutive adult patients (ages 18-100) admitted at the emergency department (ED) of one hospital were retrieved (January 1, 2012-December 31, 2018). Features included the following: demographics, admission date, arrival mode, referral code, chief complaint, previous ED visits, previous hospitalizations, comorbidities, home medications, vital signs, and Emergency Severity Index (ESI). The following outcomes were evaluated: early mortality (up to 2 days post ED registration) and short-term mortality (2-30 days post ED registration). A gradient boosting model was trained on data from years 2012-2017 and examined on data from the final year (2018). The area under the curve (AUC) for mortality prediction was used as an outcome metric. Single-variable analysis was conducted to develop a nine-point triage score for early mortality. Key Results Overall, 799,522 ED visits were available for analysis. The early and short-term mortality rates were 0.6% and 2.5%, respectively. Models trained on the full set of features yielded an AUC of 0.962 for early mortality and 0.923 for short-term mortality. A model that utilized the nine features with the highest single-variable AUC scores (age, arrival mode, chief complaint, five primary vital signs, and ESI) yielded an AUC of 0.962 for early mortality. Conclusion The gradient boosting model shows high predictive ability for screening patients at risk of early mortality utilizing data available at the time of triage in the ED.
机译:背景技术急诊部门(ED)越来越多地淹没,增加了差的结果。分类分数旨在优化等待时间并优先考虑资源使用情况。人工智能(AI)算法提供了创建预测性临床应用的优势。目的评估用于预测分类水平的死亡率的最先进的机器学习模型,并通过验证这种自动工具,改善ED中患者的分类。设计制度审查委员会(IRB)批准已批准此回顾性研究。检索到一家医院急诊部(ED)录取的连续成年患者(18-100岁)的信息(2012年1月1日至2018年12月31日)。包括以下功能:人口统计数据,录取日,抵达模式,推荐代码,首席投诉,以前的ed访问,以前的住院治疗,可用性,家庭药物,生命体征和紧急严重程度指数(ESI)。评估以下结果:早期死亡率(初期注册后2天)和短期死亡率(注册登记后2-30天)。从2012-2017年的数据培训了梯度提升模型,并在最后一年(2018年)审查了数据。用于死亡率预测的曲线(AUC)下的区域被用作结果指标。进行单变分析以发展九点分类评分以进行早期死亡率。关键效果总体上,799,522次申请参观可供分析。早期和短期死亡率分别为0.6%和2.5%。在全套特征上培训的模型产生了0.962的AUC,用于早期死亡率和0.923,用于短期死亡率。利用具有最高单变度AUC分数的九个特征(年龄,到达模式,首要投诉,五次生命体征和ESI)的模型产生了0.962的AUC,用于早期死亡率。结论梯度升压模型显示出筛查患者患者在ED中的分类时可用的数据的早期死亡率风险的高预测能力。

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