TL;DR
This study developed deep learning models to accurately classify and grade pulmonary edema severity in chest radiographs, demonstrating high performance on a large dataset and potential for clinical application.
Contribution
Introduced semi-supervised and supervised deep learning models for pulmonary edema grading using a large radiograph dataset, improving classification accuracy.
Findings
Semi-supervised model achieved AUC of 0.99 for alveolar edema detection.
Model performance decreased with milder edema categories.
Deep learning models effectively graded pulmonary edema severity.
Abstract
Purpose: To develop a machine learning model to classify the severity grades of pulmonary edema on chest radiographs. Materials and Methods: In this retrospective study, 369,071 chest radiographs and associated radiology reports from 64,581 (mean age, 51.71; 54.51% women) patients from the MIMIC-CXR chest radiograph dataset were included. This dataset was split into patients with and without congestive heart failure (CHF). Pulmonary edema severity labels from the associated radiology reports were extracted from patients with CHF as four different ordinal levels: 0, no edema; 1, vascular congestion; 2, interstitial edema; and 3, alveolar edema. Deep learning models were developed using two approaches: a semi-supervised model using a variational autoencoder and a pre-trained supervised learning model using a dense neural network. Receiver operating characteristic curve analysis was…
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