Automated AI-Driven CT Quantification of Lung Disease Predicts Adverse Outcomes in Patients Hospitalized for COVID-19 Pneumonia
The purpose of our work was to assess the independent and incremental value of AI-derived quantitative determination of lung lesions extent on initial CT scan for the prediction of clinical deterioration or death in patients hospitalized with COVID-19 pneumonia. 323 consecutive patients (mean age 65...
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doaj-c863d2291a9844a19963b595e2c986612021-06-01T00:03:48ZengMDPI AGDiagnostics2075-44182021-05-011187887810.3390/diagnostics11050878Automated AI-Driven CT Quantification of Lung Disease Predicts Adverse Outcomes in Patients Hospitalized for COVID-19 PneumoniaMarie Laure Chabi0Ophélie Dana1Titouan Kennel2Alexia Gence-Breney3Hélène Salvator4Marie Christine Ballester5Marc Vasse6Anne Laure Brun7François Mellot8Philippe A. Grenier9Department of Medical Imaging, Foch Hospital, 92150 Suresnes, FranceDepartment of Medical Imaging, Foch Hospital, 92150 Suresnes, FranceDepartment of Clinical Research and Innovation, Foch Hospital, 92150 Suresnes, FranceDepartment of Medical Imaging, Foch Hospital, 92150 Suresnes, FranceDepartment of Pneumology, Foch Hospital, UFR Santé Simone Veil UVSQ Paris-Saclay University, 92150 Suresnes, FranceDepartment of Emergency Medicine, Foch Hospital, 92150 Suresnes, FranceDepartment of Clinical Biology, Foch Hospital, 92150 Suresnes, FranceDepartment of Medical Imaging, Foch Hospital, 92150 Suresnes, FranceDepartment of Medical Imaging, Foch Hospital, 92150 Suresnes, FranceDepartment of Clinical Research and Innovation, Foch Hospital, 92150 Suresnes, FranceThe purpose of our work was to assess the independent and incremental value of AI-derived quantitative determination of lung lesions extent on initial CT scan for the prediction of clinical deterioration or death in patients hospitalized with COVID-19 pneumonia. 323 consecutive patients (mean age 65 ± 15 years, 192 men), with laboratory-confirmed COVID-19 and an abnormal chest CT scan, were admitted to the hospital between March and December 2020. The extent of consolidation and all lung opacities were quantified on an initial CT scan using a 3D automatic AI-based software. The outcome was known for all these patients. 85 (26.3%) patients died or experienced clinical deterioration, defined as intensive care unit admission. In multivariate regression based on clinical, biological and CT parameters, the extent of all opacities, and extent of consolidation were independent predictors of adverse outcomes, as were diabetes, heart disease, C-reactive protein, and neutrophils/lymphocytes ratio. The association of CT-derived measures with clinical and biological parameters significantly improved the risk prediction (<i>p</i> = 0.049). Automated quantification of lung disease at CT in COVID-19 pneumonia is useful to predict clinical deterioration or in-hospital death. Its combination with clinical and biological data improves risk prediction.https://www.mdpi.com/2075-4418/11/5/878COVID-19pneumoniaquantitative CTartificial intelligenceoutcome predictionmultivariate analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Marie Laure Chabi Ophélie Dana Titouan Kennel Alexia Gence-Breney Hélène Salvator Marie Christine Ballester Marc Vasse Anne Laure Brun François Mellot Philippe A. Grenier |
spellingShingle |
Marie Laure Chabi Ophélie Dana Titouan Kennel Alexia Gence-Breney Hélène Salvator Marie Christine Ballester Marc Vasse Anne Laure Brun François Mellot Philippe A. Grenier Automated AI-Driven CT Quantification of Lung Disease Predicts Adverse Outcomes in Patients Hospitalized for COVID-19 Pneumonia Diagnostics COVID-19 pneumonia quantitative CT artificial intelligence outcome prediction multivariate analysis |
author_facet |
Marie Laure Chabi Ophélie Dana Titouan Kennel Alexia Gence-Breney Hélène Salvator Marie Christine Ballester Marc Vasse Anne Laure Brun François Mellot Philippe A. Grenier |
author_sort |
Marie Laure Chabi |
title |
Automated AI-Driven CT Quantification of Lung Disease Predicts Adverse Outcomes in Patients Hospitalized for COVID-19 Pneumonia |
title_short |
Automated AI-Driven CT Quantification of Lung Disease Predicts Adverse Outcomes in Patients Hospitalized for COVID-19 Pneumonia |
title_full |
Automated AI-Driven CT Quantification of Lung Disease Predicts Adverse Outcomes in Patients Hospitalized for COVID-19 Pneumonia |
title_fullStr |
Automated AI-Driven CT Quantification of Lung Disease Predicts Adverse Outcomes in Patients Hospitalized for COVID-19 Pneumonia |
title_full_unstemmed |
Automated AI-Driven CT Quantification of Lung Disease Predicts Adverse Outcomes in Patients Hospitalized for COVID-19 Pneumonia |
title_sort |
automated ai-driven ct quantification of lung disease predicts adverse outcomes in patients hospitalized for covid-19 pneumonia |
publisher |
MDPI AG |
series |
Diagnostics |
issn |
2075-4418 |
publishDate |
2021-05-01 |
description |
The purpose of our work was to assess the independent and incremental value of AI-derived quantitative determination of lung lesions extent on initial CT scan for the prediction of clinical deterioration or death in patients hospitalized with COVID-19 pneumonia. 323 consecutive patients (mean age 65 ± 15 years, 192 men), with laboratory-confirmed COVID-19 and an abnormal chest CT scan, were admitted to the hospital between March and December 2020. The extent of consolidation and all lung opacities were quantified on an initial CT scan using a 3D automatic AI-based software. The outcome was known for all these patients. 85 (26.3%) patients died or experienced clinical deterioration, defined as intensive care unit admission. In multivariate regression based on clinical, biological and CT parameters, the extent of all opacities, and extent of consolidation were independent predictors of adverse outcomes, as were diabetes, heart disease, C-reactive protein, and neutrophils/lymphocytes ratio. The association of CT-derived measures with clinical and biological parameters significantly improved the risk prediction (<i>p</i> = 0.049). Automated quantification of lung disease at CT in COVID-19 pneumonia is useful to predict clinical deterioration or in-hospital death. Its combination with clinical and biological data improves risk prediction. |
topic |
COVID-19 pneumonia quantitative CT artificial intelligence outcome prediction multivariate analysis |
url |
https://www.mdpi.com/2075-4418/11/5/878 |
work_keys_str_mv |
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