| Literature DB >> 33171345 |
Guillaume Chassagnon1, Maria Vakalopoulou2, Enzo Battistella3, Stergios Christodoulidis4, Trieu-Nghi Hoang-Thi5, Severine Dangeard5, Eric Deutsch6, Fabrice Andre4, Enora Guillo5, Nara Halm5, Stefany El Hajj5, Florian Bompard5, Sophie Neveu5, Chahinez Hani5, Ines Saab5, Aliénor Campredon5, Hasmik Koulakian5, Souhail Bennani5, Gael Freche5, Maxime Barat7, Aurelien Lombard8, Laure Fournier9, Hippolyte Monnier10, Téodor Grand10, Jules Gregory11, Yann Nguyen12, Antoine Khalil13, Elyas Mahdjoub13, Pierre-Yves Brillet14, Stéphane Tran Ba14, Valérie Bousson15, Ahmed Mekki16, Robert-Yves Carlier16, Marie-Pierre Revel1, Nikos Paragios17.
Abstract
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.Entities:
Keywords: Artifial intelligence; Biomarker discovery; COVID 19 pneumonia; Deep learning; Ensemble methods; Prognosis; Staging
Year: 2020 PMID: 33171345 PMCID: PMC7558247 DOI: 10.1016/j.media.2020.101860
Source DB: PubMed Journal: Med Image Anal ISSN: 1361-8415 Impact factor: 8.545