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Deep Learning Models for Predicting Severe Progression in COVID-19-Infected Patients: Retrospective Study
- Source :
- JMIR Medical Informatics, Vol 9, Iss 1, p e24973 (2021)
- Publication Year :
- 2021
- Publisher :
- JMIR Publications, 2021.
-
Abstract
- BackgroundMany COVID-19 patients rapidly progress to respiratory failure with a broad range of severities. Identification of high-risk cases is critical for early intervention. ObjectiveThe aim of this study is to develop deep learning models that can rapidly identify high-risk COVID-19 patients based on computed tomography (CT) images and clinical data. MethodsWe analyzed 297 COVID-19 patients from five hospitals in Daegu, South Korea. A mixed artificial convolutional neural network (ACNN) model, combining an artificial neural network for clinical data and a convolutional neural network for 3D CT imaging data, was developed to classify these cases as either high risk of severe progression (ie, event) or low risk (ie, event-free). ResultsUsing the mixed ACNN model, we were able to obtain high classification performance using novel coronavirus pneumonia lesion images (ie, 93.9% accuracy, 80.8% sensitivity, 96.9% specificity, and 0.916 area under the curve [AUC] score) and lung segmentation images (ie, 94.3% accuracy, 74.7% sensitivity, 95.9% specificity, and 0.928 AUC score) for event versus event-free groups. ConclusionsOur study successfully differentiated high-risk cases among COVID-19 patients using imaging and clinical features. The developed model can be used as a predictive tool for interventions in aggressive therapies.
- Subjects :
- Computer applications to medicine. Medical informatics
R858-859.7
Subjects
Details
- Language :
- English
- ISSN :
- 22919694
- Volume :
- 9
- Issue :
- 1
- Database :
- Directory of Open Access Journals
- Journal :
- JMIR Medical Informatics
- Publication Type :
- Academic Journal
- Accession number :
- edsdoj.2320efc8d67a4c1da2e88c9d53c66d9f
- Document Type :
- article
- Full Text :
- https://doi.org/10.2196/24973