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Developing a prototype for federated analysis to enhance privacy and enable trustworthy access to COVID-19 research data
2
Zitationen
29
Autoren
2024
Jahr
Abstract
BACKGROUND: The use of federated networks can reduce the risk of disclosure for sensitive datasets by removing the requirement to physically transfer data. Federated networks support federated analytics, a type of privacy-enhancing technology, enabling trustworthy data analysis without the movement of source data. OBJECTIVES: To set out the methodology used by the International COVID-19 Data Alliance (ICODA) and its partners, the Secure Anonymised Information Linkage (SAIL) Databank and Aridhia Informatics in piloting a federated network infrastructure and consequently testing federated analytics using test data provided from an ICODA project, the International Perinatal Outcome in the Pandemic (iPOP) Study. To share the challenges and benefits of using a federated network infrastructure to enable trustworthy analysis of health-related data from multiple countries and sources. RESULTS: This project successfully developed a federated network between the SAIL Databank and the ICODA Workbench and piloted the use of federated analysis using aggregate-level model outputs as test data from the iPOP Study, a one-year, multi-country COVID-19 research project. This integration is a first step in implementing the necessary technical, governance and user experiences for future research studies to build upon, including those using individual-level datasets from multiple data nodes. CONCLUSIONS: Creating federated networks requires extensive investment from a data governance, technology, training, resources, timing and funding perspective. For future initiatives, the establishment of a federated network should be built into medium to long term plans to provide researchers with a secure and robust data analysis platform to perform joint multi-site collaboration. Federated networks can unlock the enormous potential of national and international health datasets through enabling collaborative research that addresses critical public health challenges, whilst maintaining privacy and trustworthiness by preventing direct access to the source data.
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Autoren
- Solmaz Eradat Oskoui
- Matthew Retford
- Eoghan Forde
- Rodrigo Barnes
- Karen J. Hunter
- Anne Wozencraft
- Simon Thompson
- Chris Orton
- David Ford
- Sharon Heys
- Julie Kennedy
- Cynthia McNerney
- Jeffrey Peng
- Hamed Ghanbariadolat
- Sarah Rees
- Rachel Mulholland
- Aziz Sheikh
- David Burgner
- Meredith Brockway
- Meghan B. Azad
- Natalie Rodriguez
- Helga Zoëga
- Sarah J. Stock
- Clara Calvert
- Jessica E. Miller
- Nicole Fiorentino
- Amy Racine
- Jonas Häggström
- Neil Postlethwaite
Institutionen
- Aridhia (United Kingdom)(GB)
- Health Data Research UK(GB)
- Swansea University(GB)
- University of Edinburgh(GB)
- Royal Children's Hospital(AU)
- Alberta Children's Hospital(CA)
- Children's Hospital Research Institute of Manitoba(CA)
- University of Iceland(IS)
- University of London(GB)
- London School of Hygiene & Tropical Medicine(GB)
- University of Manitoba(CA)
- Cytel (United States)(US)