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使用机器学习模型预测急诊科环境下肺炎患者的30天死亡率。

Predicting 30-day mortality of patients with pneumonia in an emergency department setting using machine-learning models.

作者信息

Kang Soo Yeon, Cha Won Chul, Yoo Junsang, Kim Taerim, Park Joo Hyun, Yoon Hee, Hwang Sung Yeon, Sim Min Seob, Jo Ik Joon, Shin Tae Gun

机构信息

Department of Emergency Medicine, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, Korea.

Department of Digital Health, Samsung Advanced Institute of Health Sciences and Technology, Sungkyunkwan University, Seoul, Korea.

出版信息

Clin Exp Emerg Med. 2020 Sep;7(3):197-205. doi: 10.15441/ceem.19.052. Epub 2020 Sep 30.

Abstract

OBJECTIVE

This study aimed to confirm the accuracy of a machine-learning-based model in predicting the 30-day mortality of patients with pneumonia and evaluating whether they were required to be admitted to the intensive care unit (ICU).

METHODS

The study conducted a retrospective analysis of pneumonia patients at an emergency department (ED) in Seoul, Korea, from January 1, 2016 to December 31, 2017. Patients aged 18 years or older with a pneumonia registry designation on their electronic medical record were enrolled. We collected their demographic information, mental status, and laboratory findings. Three models were used: the pre-existing CURB-65 model, and the CURB-RF and Extensive CURB-RF models, which were machine-learning models that used a random forest algorithm. The primary outcomes were ICU admission from the ED or 30-day mortality. Receiver operating characteristic curves were constructed for the models, and the areas under these curves were compared.

RESULTS

Out of the 1,974 pneumonia patients, 1,732 patients were eligible to be included in the study; from these, 473 patients died within 30 days or were initially admitted to the ICU from the ED. The area under receiver operating characteristic curves of CURB-65, CURB-RF, and extensive-CURB-RF were 0.615 (0.614-0.616), 0.701 (0.700-0.702), and 0.844 (0.843-0.845), respectively.

CONCLUSION

The proposed machine-learning models could predict the mortality of patients with pneumonia more accurately than the pre-existing CURB-65 model and can help decide whether the patient should be admitted to the ICU.

摘要

目的

本研究旨在证实基于机器学习的模型在预测肺炎患者30天死亡率以及评估其是否需要入住重症监护病房(ICU)方面的准确性。

方法

该研究对2016年1月1日至2017年12月31日韩国首尔一家急诊科(ED)的肺炎患者进行了回顾性分析。纳入电子病历中有肺炎登记记录的18岁及以上患者。我们收集了他们的人口统计学信息、精神状态和实验室检查结果。使用了三种模型:原有的CURB - 65模型,以及CURB - RF和扩展CURB - RF模型,后者是使用随机森林算法的机器学习模型。主要结局为从急诊科入住ICU或30天死亡率。为这些模型构建了受试者工作特征曲线,并比较了曲线下面积。

结果

在1974例肺炎患者中,1732例符合纳入研究的条件;其中,473例患者在30天内死亡或最初从急诊科入住ICU。CURB - 65、CURB - RF和扩展CURB - RF的受试者工作特征曲线下面积分别为0.615(0.614 - 0.616)、0.701(0.700 - 0.702)和0.844(0.843 - 0.845)。

结论

所提出的机器学习模型在预测肺炎患者死亡率方面比原有的CURB - 65模型更准确,并且有助于决定患者是否应入住ICU。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/27cf/7550804/8017fdb0d18a/ceem-19-052f1.jpg

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