Landscape analysis of available European data sources amenable for machine learning and recommendations on usability for rare diseases screening

Ralitsa Raycheva,Kostadin Kostadinov, Elena Mitova,Georgi Iskrov,Georgi Stefanov, Merja Vakevainen,Kaisa Elomaa, Yuen-Sum Man, Edith Gross, Jana Zschüntzsch,Richard Röttger,Rumen Stefanov

Orphanet Journal of Rare Diseases(2024)

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摘要
Patient registries and databases are essential tools for advancing clinical research in the area of rare diseases, as well as for enhancing patient care and healthcare planning. The primary aim of this study is a landscape analysis of available European data sources amenable to machine learning (ML) and their usability for Rare Diseases screening, in terms of findable, accessible, interoperable, reusable(FAIR), legal, and business considerations. Second, recommendations will be proposed to provide a better understanding of the health data ecosystem. In the period of March 2022 to December 2022, a cross-sectional study using a semi-structured questionnaire was conducted among potential respondents, identified as main contact person of a health-related databases. The design of the self-completed questionnaire survey instrument was based on information drawn from relevant scientific publications, quantitative and qualitative research, and scoping review on challenges in mapping European rare disease (RD) databases. To determine database characteristics associated with the adherence to the FAIR principles, legal and business aspects of database management Bayesian models were fitted. In total, 330 unique replies were processed and analyzed, reflecting the same number of distinct databases (no duplicates included). In terms of geographical scope, we observed 24.2
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关键词
Databases,Health data,Electronic health records,ERNs,Rare diseases,Machine learning (ML),Artificial intelligence (AI),FAIR,Legislation,Consent
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