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Published in: BMC Geriatrics 1/2021

Open Access 01-12-2021 | Septicemia | Research article

Predicting outcomes in older ED patients with influenza in real time using a big data-driven and machine learning approach to the hospital information system

Authors: Tian-Hoe Tan, Chien-Chin Hsu, Chia-Jung Chen, Shu-Lien Hsu, Tzu-Lan Liu, Hung-Jung Lin, Jhi-Joung Wang, Chung-Feng Liu, Chien-Cheng Huang

Published in: BMC Geriatrics | Issue 1/2021

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Abstract

Background

Predicting outcomes in older patients with influenza in the emergency department (ED) by machine learning (ML) has never been implemented. Therefore, we conducted this study to clarify the clinical utility of implementing ML.

Methods

We recruited 5508 older ED patients (≥65 years old) in three hospitals between 2009 and 2018. Patients were randomized into a 70%/30% split for model training and testing. Using 10 clinical variables from their electronic health records, a prediction model using the synthetic minority oversampling technique preprocessing algorithm was constructed to predict five outcomes.

Results

The best areas under the curves of predicting outcomes were: random forest model for hospitalization (0.840), pneumonia (0.765), and sepsis or septic shock (0.857), XGBoost for intensive care unit admission (0.902), and logistic regression for in-hospital mortality (0.889) in the testing data. The predictive model was further applied in the hospital information system to assist physicians’ decisions in real time.

Conclusions

ML is a promising way to assist physicians in predicting outcomes in older ED patients with influenza in real time. Evaluations of the effectiveness and impact are needed in the future.
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Metadata
Title
Predicting outcomes in older ED patients with influenza in real time using a big data-driven and machine learning approach to the hospital information system
Authors
Tian-Hoe Tan
Chien-Chin Hsu
Chia-Jung Chen
Shu-Lien Hsu
Tzu-Lan Liu
Hung-Jung Lin
Jhi-Joung Wang
Chung-Feng Liu
Chien-Cheng Huang
Publication date
01-12-2021
Publisher
BioMed Central
Published in
BMC Geriatrics / Issue 1/2021
Electronic ISSN: 1471-2318
DOI
https://doi.org/10.1186/s12877-021-02229-3

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