Please use this identifier to cite or link to this item: 10.1177/00220345221101321
Title: Dental Research Data Availability and Quality According to the FAIR Principles
Authors: Uribe, Sergio E.
Sofi-Mahmudi, Ahmad
Raittio, Eero
Maldupa, Ilze
Vilne, Baiba
Department of Conservative Dentistry and Oral Health
Bioinformatics Group
Keywords: Deep learning;Machine learning;open data;dental informatics;electronic dental records;outcomes research;3.3 Health sciences;3.4 Medical biotechnology;1.1. Scientific article indexed in Web of Science and/or Scopus database
Issue Date: Oct-2022
Citation: Uribe , S E , Sofi-Mahmudi , A , Raittio , E , Maldupa , I & Vilne , B 2022 , ' Dental Research Data Availability and Quality According to the FAIR Principles ' , Journal of Dental Research , vol. 101 , no. 11 , pp. 1307-1313 . https://doi.org/10.1177/00220345221101321
Abstract: According to the FAIR principles, data produced by scientific research should be findable, accessible, interoperable, and reusable—for instance, to be used in machine learning algorithms. However, to date, there is no estimate of the quantity or quality of dental research data evaluated via the FAIR principles. We aimed to determine the availability of open data in dental research and to assess compliance with the FAIR principles (or FAIRness) of shared dental research data. We downloaded all available articles published in PubMed-indexed dental journals from 2016 to 2021 as open access from Europe PubMed Central. In addition, we took a random sample of 500 dental articles that were not open access through Europe PubMed Central. We assessed data sharing in the articles and compliance of shared data to the FAIR principles programmatically. Results showed that of 7,509 investigated articles, 112 (1.5%) shared data. The average (SD) level of compliance with the FAIR metrics was 32.6% (31.9%). The average for each metric was as follows: findability, 3.4 (2.7) of 7; accessibility, 1.0 (1.0) of 3; interoperability, 1.1 (1.2) of 4; and reusability, 2.4 (2.6) of 10. No considerable changes in data sharing or quality of shared data occurred over the years. Our findings indicated that dental researchers rarely shared data, and when they did share, the FAIR quality was suboptimal. Machine learning algorithms could understand 1% of available dental research data. These undermine the reproducibility of dental research and hinder gaining the knowledge that can be gleaned from machine learning algorithms and applications.
Description: Funding Information: The authors disclosed receipt of the following financial support for the research, authorship, and/or publication of this article: This research was funded by MikroTik-RSU to S.E. Uribe (toward implementing the RSU data repository and the FAIR data management principles). S.E. Uribe also acknowledges financial support from the European Union’s Horizon 2020 Research and Innovation Programme (grant 857287). Publisher Copyright: © International Association for Dental Research and American Association for Dental, Oral, and Craniofacial Research 2022.
DOI: 10.1177/00220345221101321
ISSN: 0022-0345
Appears in Collections:Research outputs from Pure / Zinātniskās darbības rezultāti no ZDIS Pure

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