Implementing a Biomedical Data Warehouse From Blueprint to Bedside in a Regional French University Hospital Setting: Unveiling Processes, Overcoming Challenges, and Extracting Clinical Insight

Author:

Karakachoff MatildeORCID,Goronflot ThomasORCID,Coudol SandrineORCID,Toublant DelphineORCID,Bazoge AdrienORCID,Constant Dit Beaufils PacômeORCID,Varey EmilieORCID,Leux ChristopheORCID,Mauduit NicolasORCID,Wargny MatthieuORCID,Gourraud Pierre-AntoineORCID

Abstract

Abstract Background Biomedical data warehouses (BDWs) have become an essential tool to facilitate the reuse of health data for both research and decisional applications. Beyond technical issues, the implementation of BDWs requires strong institutional data governance and operational knowledge of the European and national legal framework for the management of research data access and use. Objective In this paper, we describe the compound process of implementation and the contents of a regional university hospital BDW. Methods We present the actions and challenges regarding organizational changes, technical architecture, and shared governance that took place to develop the Nantes BDW. We describe the process to access clinical contents, give details about patient data protection, and use examples to illustrate merging clinical insights. Implementation (Results) More than 68 million textual documents and 543 million pieces of coded information concerning approximately 1.5 million patients admitted to CHUN between 2002 and 2022 can be queried and transformed to be made available to investigators. Since its creation in 2018, 269 projects have benefited from the Nantes BDW. Access to data is organized according to data use and regulatory requirements. Conclusions Data use is entirely determined by the scientific question posed. It is the vector of legitimacy of data access for secondary use. Enabling access to a BDW is a game changer for research and all operational situations in need of data. Finally, data governance must prevail over technical issues in institution data strategy vis-à-vis care professionals and patients alike.

Publisher

JMIR Publications Inc.

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