Coronavirus disease 2019 (COVID-19) emerged in 2019 and disseminated around the world rapidly. Computed tomography (CT) imaging has been proven to be an important tool for screening, disease quantification and staging. The latter is of extreme importance for organizational anticipation (availability of intensive care unit beds, patient management planning) as well as to accelerate drug development through rapid, reproducible and quantified assessment of treatment response. Even if currently there are no specific guidelines for the staging of the patients, CT together with some clinical and biological biomarkers are used. In this study, we collected a multi-center cohort and we investigated the use of medical imaging and artificial intelligence for disease quantification, staging and outcome prediction. Our approach relies on automatic deep learning-based disease quantification using an ensemble of architectures, and a data-driven consensus for the staging and outcome prediction of the patients fusing imaging biomarkers with clinical and biological attributes. Highly promising results on multiple external/independent evaluation cohorts as well as comparisons with expert human readers demonstrate the potentials of our approach.Copyright © 2020 The Author(s). Published by Elsevier B.V. All rights reserved.
About The Expert
Guillaume Chassagnon
Maria Vakalopoulou
Enzo Battistella
Stergios Christodoulidis
Trieu-Nghi Hoang-Thi
Severine Dangeard
Eric Deutsch
Fabrice Andre
Enora Guillo
Nara Halm
Stefany El Hajj
Florian Bompard
Sophie Neveu
Chahinez Hani
Ines Saab
Aliénor Campredon
Hasmik Koulakian
Souhail Bennani
Gael Freche
Maxime Barat
Aurelien Lombard
Laure Fournier
Hippolyte Monnier
Téodor Grand
Jules Gregory
Yann Nguyen
Antoine Khalil
Elyas Mahdjoub
Pierre-Yves Brillet
Stéphane Tran Ba
Valérie Bousson
Ahmed Mekki
Robert-Yves Carlier
Marie-Pierre Revel
Nikos Paragios
References
PubMed