FAIR-Checker: supporting digital resource findability and reuse with Knowledge Graphs and Semantic Web standards

Author:

Gaignard AlbanORCID,Rosnet ThomasORCID,De Lamotte FrédéricORCID,Lefort VincentORCID,Devignes Marie-DominiqueORCID

Abstract

AbstractThe current rise of Open Science and Reproducibility in the Life Sciences requires the creation of rich, machine-actionable metadata in order to better share and reuse biological digital resources such as datasets, bioinformatics tools, training materials, etc. For this purpose, FAIR principles have been defined for both data and metadata and adopted by large communities, leading to the definition of specific metrics. However, automatic FAIRness assessment is still difficult because computational evaluations frequently require technical expertise and can be time-consuming. As a first step to address these issues, we propose FAIR-Checker, a web-based tool to assess the FAIRness of metadata presented by digital resources. FAIR-Checker offers two main facets: a “Check” module providing a thorough metadata evaluation and recommendations, and an “Inspect” module which assists users in improving metadata quality and therefore the FAIRness of their resource. FAIR-Checker leverages Semantic Web standards and technologies such as SPARQL queries and SHACL constraints to automatically assess FAIR metrics. Users are notified of missing, necessary, or recommended metadata for various resource categories. We evaluate FAIR-Checker in the context of improving the FAIRification of individual resources, through better metadata, as well as analyzing the FAIRness of more than 25 thousand bioinformatics software descriptions.

Publisher

Springer Science and Business Media LLC

Subject

Computer Networks and Communications,Health Informatics,Computer Science Applications,Information Systems

Cited by 3 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Monograph in 'BID' on data webs and knowledge graphs;BID-TEXTOS UNIV BIBL;2023

2. Monogràfic a 'BID' sobre webs de dades i grafs de coneixements;BiD: textos universitaris de biblioteconomia i documentació;2023-12

3. Automatic transparency evaluation for open knowledge extraction systems;Journal of Biomedical Semantics;2023-08-31

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