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  4. Prediction of high-risk emergency department revisits from a machine-learning algorithm: a proof-of-concept study.
 
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Prediction of high-risk emergency department revisits from a machine-learning algorithm: a proof-of-concept study.

Journal
BMJ health & care informatics
Journal Volume
31
Journal Issue
1
ISSN
2632-1009
Date Issued
2024-04-22
Author(s)
CHIH-WEI SUNG  
Ho, Joshua
CHENG-YI FAN  
Chen, Ching-Yu
CHI-HSIN CHEN  
Lin, Shao-Yung
JIA-HOW CHANG  
JIUN-WEI CHEN  
EDWARD PEI-CHUAN HUANG  
DOI
10.1136/bmjhci-2023-100859
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/721521
Abstract
Background High-risk emergency department (ED) revisit is considered an important quality indicator that may reflect an increase in complications and medical burden. However, because of its multidimensional and highly complex nature, this factor has not been comprehensively investigated. This study aimed to predict high-risk ED revisit with a machine-learning (ML) approach. Methods This 3-year retrospective cohort study assessed adult patients between January 2019 and December 2021 from National Taiwan University Hospital Hsin-Chu Branch with high-risk ED revisit, defined as hospital or intensive care unit admission after ED return within 72 hours. A total of 150 features were preliminarily screened, and 79 were used in the prediction model. Deep learning, random forest, extreme gradient boosting (XGBoost) and stacked ensemble algorithm were used. The stacked ensemble model combined multiple ML models and performed model stacking as a meta-level algorithm. Confusion matrix, accuracy, sensitivity, specificity and area under the receiver operating characteristic curve (AUROC) were used to evaluate performance. Results Analysis was performed for 6282 eligible adult patients: 5025 (80.0%) in the training set and 1257 (20.0%) in the testing set. High-risk ED revisit occurred for 971 (19.3%) of training set patients vs 252 (20.1%) in the testing set. Leading predictors of high-risk ED revisit were age, systolic blood pressure and heart rate. The stacked ensemble model showed more favourable prediction performance (AUROC 0.82) than the other models: deep learning (0.69), random forest (0.78) and XGBoost (0.79). Also, the stacked ensemble model achieved favourable accuracy and specificity. Conclusion The stacked ensemble algorithm exhibited better prediction performance in which the predictions were generated from different ML algorithms to optimally maximise the final set of results. Patients with older age and abnormal systolic blood pressure and heart rate at the index ED visit were vulnerable to high-risk ED revisit. Further studies should be conducted to externally validate the model.
Subjects
Machine Learning
Patient Outcome Assessment
SDGs

[SDGs]SDG3

Publisher
BMJ Publishing Group
Description
Article number e100859
Type
journal article

臺大位居世界頂尖大學之列,為永久珍藏及向國際展現本校豐碩的研究成果及學術能量,圖書館整合機構典藏(NTUR)與學術庫(AH)不同功能平台,成為臺大學術典藏NTU scholars。期能整合研究能量、促進交流合作、保存學術產出、推廣研究成果。

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