FORTH-ICS, Heraklion, Greece.
Department of Translational Research, University of Pisa, Pisa, Italy.
Eur Radiol Exp. 2022 Jul 1;6(1):29. doi: 10.1186/s41747-022-00281-1.
A huge amount of imaging data is becoming available worldwide and an incredible range of possible improvements can be provided by artificial intelligence algorithms in clinical care for diagnosis and decision support. In this context, it has become essential to properly manage and handle these medical images and to define which metadata have to be considered, in order for the images to provide their full potential. Metadata are additional data associated with the images, which provide a complete description of the image acquisition, curation, analysis, and of the relevant clinical variables associated with the images. Currently, several data models are available to describe one or more subcategories of metadata, but a unique, common, and standard data model capable of fully representing the heterogeneity of medical metadata has not been yet developed. This paper reports the state of the art on metadata models for medical imaging, the current limitations and further developments, and describes the strategy adopted by the Horizon 2020 "AI for Health Imaging" projects, which are all dedicated to the creation of imaging biobanks.
全球产生了大量的医学影像数据,人工智能算法在临床诊断和决策支持方面可以提供令人难以置信的多种改进可能。在这种背景下,对这些医学图像进行妥善管理和处理,以及定义必须考虑哪些元数据,以使其充分发挥潜力,已经变得至关重要。元数据是与图像相关联的附加数据,为图像采集、管理、分析以及与图像相关的相关临床变量提供了完整的描述。目前,有多种数据模型可用于描述一个或多个元数据子类,但尚未开发出一个能够充分表示医学元数据异质性的独特、通用和标准的数据模型。本文报告了医学成像元数据模型的最新技术、当前的局限性和进一步的发展,并描述了 2020 年地平线计划“医疗成像人工智能”项目所采用的策略,这些项目都致力于创建成像生物库。