Position of the AI for Health Imaging (AI4HI) network on metadata models for imaging biobanks

Author:

Kondylakis Haridimos,Ciarrocchi EstherORCID,Cerda-Alberich Leonor,Chouvarda Ioanna,Fromont Lauren A.,Garcia-Aznar Jose Manuel,Kalokyri Varvara,Kosvyra Alexandra,Walker Dawn,Yang Guang,Neri Emanuele,

Abstract

AbstractA 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.

Funder

Horizon 2020

Publisher

Springer Science and Business Media LLC

Subject

Radiology, Nuclear Medicine and imaging

Reference70 articles.

1. Kohli MD, Summers RM, Geis JR (2017) Medical image data and datasets in the era of machine learning - whitepaper from the 2016 C-MIMI meeting dataset session. J Digit Imaging 30:392–399. https://doi.org/10.1007/s10278-017-9976-3

2. Jimenez-del-Toro O, Cirujeda P, Müller H (2017) Combining radiology images and clinical metadata for multimodal medical case-based retrieval. Cloud-based benchmarking of medical image analysis. Springer International Publishing, Cham, pp 221–236

3. Martí-Bonmatí L, Alberich-Bayarri Á, Ladenstein R, et al (2020) PRIMAGE project: predictive in silico multiscale analytics to support childhood cancer personalised evaluation empowered by imaging biomarkers. Eur Radiol Exp 4:22. https://doi.org/10.1186/s41747-020-00150-9

4. The PRIMAGE project (2021). https://www.primageproject.eu/. Accessed 22 Dec 2021

5. The EuCanImage project (2021). https://eucanimage.eu/. Accessed 22 Dec 2021

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