Published July 11, 2024 | Version v1
Lesson Open

Making the metadata machine-readable to increase FAIRness of medical data in Poland

Description

A team from the Medical University of Gdansk (MUG) Main Library increased the FAIRness and machine readability of their repository datasets with the help of the F-UJI tool.

We assessed the FAIRness of two different datasets in our repository using F-UJI. Both datasets were described with the RDF metadata, and one had a PID and one did not, for comparison. However, both initial assessment scores were very low (35% and 4%).

Supported applicant: Jakub Rusakow, Joanna Osika, Paulina Biczkowska | Medical University of Gdansk Main Library

FAIR-IMPACT Support: Clara Linés and Agnes Jasinska | Digital Curation Centre (DCC)

Files

FI_ImplementationStory_81_Jul2024.pdf

Files (1.6 MB)

Name Size Download all
md5:449dfc6c9db5dbc584f4b9ae7e8eefe7
1.6 MB Preview Download

Additional details

Funding

FAIR-IMPACT – Expanding FAIR Solutions across EOSC 101057344
European Commission