Learning accountable governance: Challenges and perspectives for data-intensive health research networks

Publication date

2022-11-10

Authors

Muller, Sam H.A.ORCID 0000-0003-1800-5443
Mostert, Menno
van Delden, HansISNI 000000002992622X
Schillemans, Thomas
van Thiel, Ghislaine J W MORCID 0000-0003-1799-1894ISNI 000000039033919X

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Advisors

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Document Type

Article

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License

cc_by

Abstract

Current challenges to sustaining public support for health data research have directed attention to the governance of data-intensive health research networks. Accountability is hailed as an important element of trustworthy governance frameworks for data-intensive health research networks. Yet the extent to which adequate accountability regimes in data-intensive health research networks are currently realized is questionable. Current governance of data-intensive health research networks is dominated by the limitations of a drawing board approach. As a way forward, we propose a stronger focus on accountability as learning to achieve accountable governance. As an important step in that direction, we provide two pathways: (1) developing an integrated structure for decision-making and (2) establishing a dialogue in ongoing deliberative processes. Suitable places for learning accountability to thrive are dedicated governing bodies as well as specialized committees, panels or boards which bear and guide the development of governance in data-intensive health research networks. A continuous accountability process which comprises learning and interaction accommodates the diversity of expectations, responsibilities and tasks in data-intensive health research networks to achieve responsible and effective governance.

Keywords

accountability, data linkage, ethics, governance, health data research, networks, Information Systems, Communication, Computer Science Applications, Information Systems and Management, Library and Information Sciences

Citation

Muller, S H A, Mostert, M, van Delden, J J M, Schillemans, T & van Thiel, G J M W 2022, 'Learning accountable governance : Challenges and perspectives for data-intensive health research networks', Big Data and Society, vol. 9, no. 2. https://doi.org/10.1177/20539517221136078