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Additional value of chest CT AI-based quantification of lung involvement in predicting death and ICU admission for COVID-19 patients

Authors :
Eloise Galzin
Laurent Roche
Anna Vlachomitrou
Olivier Nempont
Heike Carolus
Alexander Schmidt-Richberg
Peng Jin
Pedro Rodrigues
Tobias Klinder
Jean-Christophe Richard
Karim Tazarourte
Marion Douplat
Alain Sigal
Maude Bouscambert-Duchamp
Salim Aymeric Si-Mohamed
Sylvain Gouttard
Adeline Mansuy
François Talbot
Jean-Baptiste Pialat
Olivier Rouvière
Laurent Milot
François Cotton
Philippe Douek
Antoine Duclos
Muriel Rabilloud
Loic Boussel
Source :
Research in Diagnostic and Interventional Imaging, Vol 4, Iss , Pp 100018- (2022)
Publication Year :
2022
Publisher :
Elsevier, 2022.

Abstract

Objectives: We evaluated the contribution of lung lesion quantification on chest CT using a clinical Artificial Intelligence (AI) software in predicting death and intensive care units (ICU) admission for COVID-19 patients. Methods: For 349 patients with positive COVID-19-PCR test that underwent a chest CT scan at admittance or during hospitalization, we applied the AI for lung and lung lesion segmentation to obtain lesion volume (LV), and LV/Total Lung Volume (TLV) ratio. ROC analysis was used to extract the best CT criterion in predicting death and ICU admission. Two prognostic models using multivariate logistic regressions were constructed to predict each outcome and were compared using AUC values. The first model (“Clinical”) was based on patients’ characteristics and clinical symptoms only. The second model (“Clinical+LV/TLV”) included also the best CT criterion. Results: LV/TLV ratio demonstrated best performance for both outcomes; AUC of 67.8% (95% CI: 59.5 - 76.1) and 81.1% (95% CI: 75.7 - 86.5) respectively. Regarding death prediction, AUC values were 76.2% (95% CI: 69.9 - 82.6) and 79.9% (95%IC: 74.4 - 85.5) for the “Clinical” and the “Clinical+LV/TLV” models respectively, showing significant performance increase (+ 3.7%; p-value

Details

Language :
English
ISSN :
27726525
Volume :
4
Issue :
100018-
Database :
Directory of Open Access Journals
Journal :
Research in Diagnostic and Interventional Imaging
Publication Type :
Academic Journal
Accession number :
edsdoj.8e12455d383427cb63a5a0ffe30f169
Document Type :
article
Full Text :
https://doi.org/10.1016/j.redii.2022.100018