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基于 CT 和 MRI 的三个人工智能数据挑战。

Three artificial intelligence data challenges based on CT and MRI.

机构信息

Laboratoire d'Imagerie Biomédicale Multimodale Paris-Saclay, BIOMAPS, UMR 1281, Université Paris-Saclay, Inserm, CNRS, CEA, 94800 Villejuif, France; Department of Imaging, Institut Gustave Roussy, 94800 Villejuif, France.

Direction de la Transformation Numérique et des Systèmes d'Information, Gustave Roussy, 94800 Villejuif, France.

出版信息

Diagn Interv Imaging. 2020 Dec;101(12):783-788. doi: 10.1016/j.diii.2020.03.006. Epub 2020 Mar 31.


DOI:10.1016/j.diii.2020.03.006
PMID:32245723
Abstract

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 11 and October 13 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.

摘要

目的:人工智能(AI)数据挑战赛的第二版由法国放射学会组织,旨在:(i)解决相关公共卫生问题;(ii)构建大型、多中心、高质量的数据库;以及(iii)纳入三维(3D)信息和预后问题。

材料和方法:法国放射学各专业学会提出了相关临床问题。其可行性由 AI 领域的专家进行评估。建立了一个专门的平台,供纳入中心安全地上传其匿名检查,以符合通用数据保护条例。数据库的质量每周由专家检查,并由放射科医生进行注释。多学科团队于 2019 年 9 月 11 日至 10 月 13 日之间进行竞争。

结果:使用不同的成像和评估方式选择了三个问题,包括:从 3D 计算机断层扫描(CT)中检测和分类肺结节、使用 3D 磁共振成像(MRI)预测多发性硬化症的扩展残疾状况量表以及从二维 CT 估计肌肉表面的肌肉减少症分割。共收集了 4347 次检查,其中只有 6%被排除。创建了来自 24 个独立中心的三个独立数据库。共有 143 名参与者分为 20 个多学科团队。

结论:组织了三个数据挑战赛,每个挑战赛有超过 1200 次符合通用数据保护条例的 CT 或 MRI 检查。未来的挑战应该更加复杂,结合组织病理学或遗传信息,以模拟放射科医生在常规实践中面临的实际情况。

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[9]
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[10]
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