Delivering on NIH data sharing requirements: avoiding Open Data in Appearance Only

Author:

Watson Hope,Gallifant JackORCID,Lai Yuan,Radunsky Alexander P,Villanueva Cleva,Martinez Nicole,Gichoya JudyORCID,Huynh Uyen Kim,Celi Leo AnthonyORCID

Abstract

IntroductionIn January, the National Institutes of Health (NIH) implemented a Data Management and Sharing Policy aiming to leverage data collected during NIH-funded research. The COVID-19 pandemic illustrated that this practice is equally vital for augmenting patient research. In addition, data sharing acts as a necessary safeguard against the introduction of analytical biases. While the pandemic provided an opportunity to curtail critical research issues such as reproducibility and validity through data sharing, this did not materialise in practice and became an example of ‘Open Data in Appearance Only’ (ODIAO). Here, we define ODIAO as the intent of data sharing without the occurrence of actual data sharing (eg, material or digital data transfers).ObjectivePropose a framework that states the main risks associated with data sharing, systematically present risk mitigation strategies and provide examples through a healthcare lens.MethodsThis framework was informed by critical aspects of both the Open Data Institute and the NIH’s 2023 Data Management and Sharing Policy plan guidelines.ResultsThrough our examination of legal, technical, reputational and commercial categories, we find barriers to data sharing ranging from misinterpretation of General Data Privacy Rule to lack of technical personnel able to execute large data transfers. From this, we deduce that at numerous touchpoints, data sharing is presently too disincentivised to become the norm.ConclusionIn order to move towards Open Data, we propose the creation of mechanisms for incentivisation, beginning with recentring data sharing on patient benefits, additional clauses in grant requirements and committees to encourage adherence to data reporting practices.

Publisher

BMJ

Subject

Health Information Management,Health Informatics,Computer Science Applications

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