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使用机器学习工具预测急诊重症监护病房患者的结局。

Using machine learning tools to predict outcomes for emergency department intensive care unit patients.

机构信息

Department of Emergency, Peking University Third Hospital, 49 North Garden Rd, Haidian District, Beijing, China.

Institute of Signal and Image Processes, Beijing Institute of Technology, 5 South Zhongguancun Street, Haidian District, Beijing, China.

出版信息

Sci Rep. 2020 Dec 1;10(1):20919. doi: 10.1038/s41598-020-77548-3.

Abstract

The number of critically ill patients has increased globally along with the rise in emergency visits. Mortality prediction for critical patients is vital for emergency care, which affects the distribution of emergency resources. Traditional scoring systems are designed for all emergency patients using a classic mathematical method, but risk factors in critically ill patients have complex interactions, so traditional scoring cannot as readily apply to them. As an accurate model for predicting the mortality of emergency department critically ill patients is lacking, this study's objective was to develop a scoring system using machine learning optimized for the unique case of critical patients in emergency departments. We conducted a retrospective cohort study in a tertiary medical center in Beijing, China. Patients over 16 years old were included if they were alive when they entered the emergency department intensive care unit system from February 2015 and December 2015. Mortality up to 7 days after admission into the emergency department was considered as the primary outcome, and 1624 cases were included to derive the models. Prospective factors included previous diseases, physiologic parameters, and laboratory results. Several machine learning tools were built for 7-day mortality using these factors, for which their predictive accuracy (sensitivity and specificity) was evaluated by area under the curve (AUC). The AUCs were 0.794, 0.840, 0.849 and 0.822 respectively, for the SVM, GBDT, XGBoost and logistic regression model. In comparison with the SAPS 3 model (AUC = 0.826), the discriminatory capability of the newer machine learning methods, XGBoost in particular, is demonstrated to be more reliable for predicting outcomes for emergency department intensive care unit patients.

摘要

随着急诊就诊人数的增加,全球危重症患者的数量也在增加。对危重症患者进行死亡率预测对于急诊护理至关重要,这会影响急诊资源的分配。传统的评分系统是使用经典的数学方法为所有急诊患者设计的,但危重症患者的危险因素存在复杂的相互作用,因此传统的评分系统不能轻易适用于他们。由于缺乏准确预测急诊科危重症患者死亡率的模型,本研究旨在开发一种使用机器学习优化的评分系统,专门针对急诊科危重症患者的独特情况。我们在中国北京的一家三级医疗中心进行了一项回顾性队列研究。纳入标准为:2015 年 2 月至 12 月期间从急诊进入重症监护病房系统时存活的 16 岁以上患者。将入院后 7 天内的死亡率作为主要结局,共纳入 1624 例患者来建立模型。前瞻性因素包括既往疾病、生理参数和实验室结果。使用这些因素,我们为 7 天死亡率构建了几种机器学习工具,并通过曲线下面积(AUC)评估其预测准确性(敏感性和特异性)。SVM、GBDT、XGBoost 和逻辑回归模型的 AUC 分别为 0.794、0.840、0.849 和 0.822。与 SAPS 3 模型(AUC=0.826)相比,新的机器学习方法,尤其是 XGBoost,对于预测急诊重症监护病房患者的结局,其判别能力被证明更可靠。

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