Machine learning to predict in-hospital cardiac arrest from patients presenting to the emergency department

被引:0
作者
Tsung-Chien Lu
Chih-Hung Wang
Fan-Ya Chou
Jen-Tang Sun
Eric H. Chou
Edward Pei-Chuan Huang
Chu-Lin Tsai
Matthew Huei-Ming Ma
Cheng-Chung Fang
Chien-Hua Huang
机构
[1] National Taiwan University Hospital,Department of Emergency Medicine
[2] National Taiwan University,Department of Emergency Medicine, College of Medicine
[3] Department of Emergency Medicine,Department of Emergency Medicine
[4] Far Eastern Memorial Hospital,Department of Emergency Medicine
[5] Baylor Scott and White All Saints Medical Center,Department of Emergency Medicine
[6] National Taiwan University Hsinchu Branch,undefined
[7] National Taiwan University Yunlin Branch,undefined
来源
Internal and Emergency Medicine | 2023年 / 18卷
关键词
Machine learning; Emergency department; In-hospital cardiac arrest; Cardiopulmonary resuscitation;
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学科分类号
摘要
In-hospital cardiac arrest (IHCA) in the emergency department (ED) is not uncommon but often fatal. Using the machine learning (ML) approach, we sought to predict ED-based IHCA (EDCA) in patients presenting to the ED based on triage data. We retrieved 733,398 ED records from a tertiary teaching hospital over a 7 year period (Jan. 1, 2009–Dec. 31, 2015). We included only adult patients (≥ 18 y) and excluded cases presenting as out-of-hospital cardiac arrest. Primary outcome (EDCA) was identified via a resuscitation code. Patient demographics, triage data, and structured chief complaints (CCs), were extracted. Stratified split was used to divide the dataset into the training and testing cohort at a 3-to-1 ratio. Three supervised ML models were trained and performances were evaluated and compared to the National Early Warning Score 2 (NEWS2) and logistic regression (LR) model by the area under the receiver operating characteristic curve (AUC). We included 316,465 adult ED records for analysis. Of them, 636 (0.2%) developed EDCA. Of the constructed ML models, Random Forest outperformed the others with the best AUC result (0.931, 95% CI 0.911–0.949), followed by Gradient Boosting (0.930, 95% CI 0.909–0.948) and Extra Trees classifier (0.915, 95% CI 0.892–0.936). Although the differences between each of ML models and LR (AUC: 0.905, 95% CI 0.882–0.926) were not significant, all constructed ML models performed significantly better than using the NEWS2 scoring system (AUC 0.678, 95% CI 0.635–0.722). Our ML models showed excellent discriminatory performance to identify EDCA based only on the triage information. This ML approach has the potential to reduce unexpected resuscitation events if successfully implemented in the ED information system.
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页码:595 / 605
页数:10
相关论文
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