Publication:
FAIRness for FHIR: Towards Making Health Datasets FAIR Using HL7 FHIR.

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Date

2022

Authors

Martinez-Garcia, Alicia
Cangioli, Giorgio
Chronaki, Catherine
Löbe, Matthias
Beyan, Oya
Juehne, Anthony
Parra-Calderon, Carlos Luis

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IOS Press
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Abstract

Medical data science aims to facilitate knowledge discovery assisting in data, algorithms, and results analysis. The FAIR principles aim to guide scientific data management and stewardship, and are relevant to all digital health ecosystem stakeholders. The FAIR4Health project aims to facilitate and encourage the health research community to reuse datasets derived from publicly funded research initiatives using the FAIR principles. The 'FAIRness for FHIR' project aims to provide guidance on how HL7 FHIR could be utilized as a common data model to support the health datasets FAIRification process. This first expected result is an HL7 FHIR Implementation Guide (IG) called FHIR4FAIR, covering how FHIR can be used to cover FAIRification in different scenarios. This IG aims to provide practical underpinnings for the FAIR4Health FAIRification workflow as a domain-specific extension of the GoFAIR process, while simplifying curation, advancing interoperability, and providing insights into a roadmap for health datasets FAIR certification.

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MeSH Terms

Data Management
Ecosystem
Electronic Health Records
Health Level Seven
Workflow

DeCS Terms

Características de la Residencia
Interoperabilidad de la Información en Salud
Telemedicina
Ecosistema
Algoritmos
Investigación

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Keywords

Guideline, Health Information Interoperability, Reference Standards

Citation

Martínez-García A, Cangioli G, Chronaki C, Löbe M, Beyan O, Juehne A, et al. FAIRness for FHIR: Towards Making Health Datasets FAIR Using HL7 FHIR. Stud Health Technol Inform. 2022 Jun 6;290:22-26