451. Cross-Border Medical Research using Multi-Layered and Distributed Knowledge
- Author
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Bella, Gabor, Elliott, Liz, Das, Subhashis, Pavis, Stephen, Turra, Ettore, Robertson, David, Giunchiglia, Fausto, De Giacomo, Giuseppe, Catala, Alejandro, Dilkina, Bistra, Milano, Michela, Barro, Senén, Bugarín, Alberto, and Lang, Jérôme
- Abstract
As medical research becomes ever finer-grained, experiments require healthcare data in quantities that single countries cannot provide. Cross-jurisdictional data collection remains, however, extremely challenging due to the diverging legal, professional, linguistic, normative, and technological contexts of the participating countries. Medical data heterogeneity, in particular, is still a largely unsolved problem on the international level, due to the complexity of data combined with strict precision and data protection constraints. We propose a scalable solution based on a novel knowledge architecture and the corresponding knowledge graph integration methodology. Medical knowledge that drives the scalable integration process is divided into multiple functional layers and is maintained in a distributed manner across participating countries. We successfully applied the approach in the context of a research experiment across Scotland and Italy, and are currently adapting it within other initiatives of Europe-wide health data interoperability.
- Published
- 2020
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