Automated brain MRI metrics in the EPIRMEX cohort of preterm newborns: Correlation with the neurodevelopmental outcome at 2 years

Diagnostic and interventional imaging - Tập 102 - Trang 225-232 - 2021
Baptiste Morel1,2, Pierre Bertault2, Géraldine Favrais3, Elsa Tavernier4, Barthelemy Tosello5,6, Nathalie Bednarek7, Laurent Barantin2, Alexandra Chadie8, Maia Proisy9, Yongchao Xu10, Isabelle Bloch11, Dominique Sirinelli1,2, Catherine Adamsbaum12,13, Clovis Tauber2, Elie Saliba2,3
1Pediatric Radiology Department, Clocheville Hospital, CHRU of Tours, 37000 Tours, France
2UMR 1253, iBrain, Université de Tours, Inserm, 37000 Tours, France
3Neonatology Department, Clocheville Hospital, CHRU of Tours, 37000 Tours, France
4Universities of Tours and Nantes, INSERM 1246-SPHERE, Clinical Investigation Center, INSERM 1415, CHRU de Tours, 37000 Tours, France
5Department of Neonatology, North Hospital, APHM University Hospital, 13015 Marseille, France
6Aix-Marseille Univ, CNRS, EFS, ADES, 13000 Marseille, France
7CReSTIC, Champagne-Ardennes University, EA3804, 51100 Reims, France
8INSERM U1245, Genetics and Pathophysiology of Neurodevelopment Disorders Team, Faculty of Medicine, Institute of Research and Innovation in Biomedicine, Normandy University, 76000 Rouen, France
9Department of Radiology, Rennes University Hospital, CHU Hôpital Sud, 35000 Rennes, France
10School of EIC, Huazhong University of Science and Technology (HUST), Wuhan, China
11LTCI, Télécom Paris, Institut Polytechnique de Paris, 75013 Paris, France
12Paris-Sud University, School of Medicine, 94270 Le Kremlin-Bicêtre, France
13Assistance-Publique Hopitaux de Paris, Bicetre Hospital, 94270 Le Kremlin-Bicêtre, France

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