Development and validation of a hybrid deep learning-machine learning approach for severity assessment of COVID-19 and other pneumonias

Authors
Park, DoohyunJang, RyoungwooChung, Myung JinAn, Hyun JoonBak, SeongwonChoi, EuijoonHwang, Dosik
Issue Date
2023-08
Publisher
Nature Publishing Group
Citation
Scientific Reports, v.13, no.1
Abstract
The Coronavirus Disease 2019 (COVID-19) is transitioning into the endemic phase. Nonetheless, it is crucial to remain mindful that pandemics related to infectious respiratory diseases (IRDs) can emerge unpredictably. Therefore, we aimed to develop and validate a severity assessment model for IRDs, including COVID-19, influenza, and novel influenza, using CT images on a multi-centre data set. Of the 805 COVID-19 patients collected from a single centre, 649 were used for training and 156 were used for internal validation (D1). Additionally, three external validation sets were obtained from 7 cohorts: 1138 patients with COVID-19 (D2), and 233 patients with influenza and novel influenza (D3). A hybrid model, referred to as Hybrid-DDM, was constructed by combining two deep learning models and a machine learning model. Across datasets D1, D2, and D3, the Hybrid-DDM exhibited significantly improved performance compared to the baseline model. The areas under the receiver operating curves (AUCs) were 0.830 versus 0.767 (p=0.036) in D1, 0.801 versus 0.753 (p<0.001) in D2, and 0.774 versus 0.668 (p<0.001) in D3. This study indicates that the Hybrid-DDM model, trained using COVID-19 patient data, is effective and can also be applicable to patients with other types of viral pneumonia.
Keywords
BACTERIAL
ISSN
2045-2322
URI
https://pubs.kist.re.kr/handle/201004/113378
DOI
10.1038/s41598-023-40506-w
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KIST Article > 2023
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