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Machine learning automatically detects COVID-19 using chest CTs in a large multicenter cohort.

Eduardo J Mortani BarbosaBogdan GeorgescuShikha ChagantiGorka Bastarrika AlemanJordi Broncano CabreroGuillaume ChabinThomas FlohrPhilippe GrenierSasa GrbicNakul GuptaFrançois MellotSavvas NicolaouThomas RePina SanelliAlexander W SauterYoungjin YooValentin ZiebandtDorin Comaniciu
Published in: European radiology (2021)
• Unsupervised clustering reveals the key tomographic features including percent airspace opacity and peripheral and basal opacities most typical of COVID-19 relative to control groups. • COVID-19-positive CTs were compared with COVID-19-negative chest CTs (including a balanced distribution of non-COVID-19 pneumonia, ILD, and no pathologies). Classification accuracies for COVID-19, pneumonia, ILD, and CT scans with no pathologies are respectively 90%, 64%, 91%, and 94%. • Our deep learning (DL)-based classification method demonstrates an AUC of 0.93 (sensitivity 90%, specificity 83%). Machine learning methods applied to quantitative chest CT metrics can therefore improve diagnostic accuracy in suspected COVID-19, particularly in resource-constrained environments.
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