Accepted for/Published in: JMIR Mental Health
Date Submitted: Apr 2, 2024
Open Peer Review Period: Apr 2, 2024 - May 28, 2024
Date Accepted: Oct 8, 2024
(closed for review but you can still tweet)
Barriers and recommendations for implementing FAIR principles in child and adolescent mental health research
ABSTRACT
Background:
The FAIR (Findable, Accessible, Interoperable, Reusable) data principles are a guideline to improve the reusability of data. However, properly implementing these principles is challenging due to a wide range of barriers.
Objective:
To further the field of FAIR data, this study aimed to systematically identify barriers regarding implementing the FAIR principles in the area of child and adolescent mental health research, define the most challenging barriers, and provide recommendations for these barriers.
Methods:
Three sources were used as input to identify barriers: 1) evaluation of the implementation process of the Observational Medical Outcomes Partnership (OMOP) Common Data Model (CDM) by three data managers, 2) interviews with experts on mental health research, reusable health data, and data quality, and 3) a rapid literature review. All barriers were categorized according to Type as described by Cabana et al. (1999), the affected FAIR principle, a category to add detail about the origin of the barrier, and whether a barrier was mental health specific. The barriers were assessed and ranked on impact with the data managers using the Delphi method.
Results:
Thirteen barriers were identified by the data managers, seven were identified by the experts, and 30 barriers were extracted from the literature. This resulted in 45 unique barriers with the following predominant outcomes: the external Type (n=32) (e.g., organizational policy preventing the use of required software); regarding all FAIR principles (n=15); the tooling Category (n=19) (i.e., software and databases); not mental health specific (n=43). Consensus on ranking the scores of the barriers was reached after two rounds of the Delphi method. The most important recommendations to overcome the barriers are adding a FAIR data steward to the research team, accessible step-by-step guides, and ensuring sustainable funding for the implementation and long-term use of FAIR data.
Conclusions:
By systematically listing these barriers and providing recommendations we intend to enhance the awareness of researchers and grant providers that making data FAIR demands specific expertise, available tooling, and proper investments.
Citation
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Copyright
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