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Deep learning prediction of hospital readmissions for asthma and COPD.

Authors :
Lopez, Kevin
Li, Huan
Lipkin-Moore, Zachary
Kay, Shannon
Rajeevan, Haseena
Davis, J. Lucian
Wilson, F. Perry
Rochester, Carolyn L.
Gomez, Jose L.
Source :
Respiratory Research. 12/13/2023, Vol. 24 Issue 1, p1-11. 11p.
Publication Year :
2023

Abstract

Question: Severe asthma and COPD exacerbations requiring hospitalization are linked to increased disease morbidity and healthcare costs. We sought to identify Electronic Health Record (EHR) features of severe asthma and COPD exacerbations and evaluate the performance of four machine learning (ML) and one deep learning (DL) model in predicting readmissions using EHR data. Study design and methods: Observational study between September 30, 2012, and December 31, 2017, of patients hospitalized with asthma and COPD exacerbations. Results: This study included 5,794 patients, 1,893 with asthma and 3,901 with COPD. Patients with asthma were predominantly female (n = 1288 [68%]), 35% were Black (n = 669), and 25% (n = 479) were Hispanic. Black (44 vs. 33%, p = 0.01) and Hispanic patients (30 vs. 24%, p = 0.02) were more likely to be readmitted for asthma. Similarly, patients with COPD readmissions included a large percentage of Blacks (18 vs. 10%, p < 0.01) and Hispanics (8 vs. 5%, p < 0.01). To identify patients at high risk of readmission index hospitalization data of a subset of 2,682 patients, 777 with asthma and 1,905 with COPD, was analyzed with four ML models, and one DL model. We found that multilayer perceptron, the DL method, had the best sensitivity and specificity compared to the four ML methods implemented in the same dataset. Interpretation: Multilayer perceptron, a deep learning method, had the best performance in predicting asthma and COPD readmissions, demonstrating that EHR and deep learning integration can improve high-risk patient detection. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
14659921
Volume :
24
Issue :
1
Database :
Academic Search Index
Journal :
Respiratory Research
Publication Type :
Academic Journal
Accession number :
174206409
Full Text :
https://doi.org/10.1186/s12931-023-02628-7