4.5 Article

Three artificial intelligence data challenges based on CT and MRI

Journal

DIAGNOSTIC AND INTERVENTIONAL IMAGING
Volume 101, Issue 12, Pages 783-788

Publisher

ELSEVIER MASSON, CORP OFF
DOI: 10.1016/j.diii.2020.03.006

Keywords

Artificial intelligence (AI); Machine learning; Deep learning; Magnetic resonance imaging (MRI); Computed tomography (CT)

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Purpose: The second edition of the artificial intelligence (AI) data challenge was organized by the French Society of Radiology with the aim to: (i), work on relevant public health issues; (ii), build large, multicentre, high quality databases; and (iii), include three-dimensional (3D) information and prognostic questions. Materials and methods: Relevant clinical questions were proposed by French subspecialty colleges of radiology. Their feasibility was assessed by experts in the field of AI. A dedicated platform was set up for inclusion centers to safely upload their anonymized examinations in compliance with general data protection regulation. The quality of the database was checked by experts weekly with annotations performed by radiologists. Multidisciplinary teams competed between September 11th and October 13th 2019. Results: Three questions were selected using different imaging and evaluation modalities, including: pulmonary nodule detection and classification from 3D computed tomography (CT), prediction of expanded disability status scale in multiple sclerosis using 3D magnetic resonance imaging (MRI) and segmentation of muscular surface for sarcopenia estimation from two-dimensional CT. A total of 4347 examinations were gathered of which only 6% were excluded. Three independent databases from 24 individual centers were created. A total of 143 participants were split into 20 multidisciplinary teams. Conclusion: Three data challenges with over 1200 general data protection regulation compliant CT or MRI examinations each were organized. Future challenges should be made with more complex situations combining histopathological or genetic information to resemble real life situations faced by radiologists in routine practice. (C) 2020 Societe francaise de radiologie. Published by Elsevier Masson SAS. All rights reserved.

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