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Transformation and integration of heterogeneous health data in a privacy-preserving distributed learning infrastructure

Authors :
Sun, Chang
Emonet, Vincent
van Soest, Johan
Koster, Annemarie
Dekker, Andre
Dumontier, Michel
Sun, Chang
Emonet, Vincent
van Soest, Johan
Koster, Annemarie
Dekker, Andre
Dumontier, Michel
Source :
Semantic Web Applications and Tools for Health Care and Life Sciences, p.141-142.
Publication Year :
2019

Abstract

Problem statement: A growing volume and variety of personal health data are being collected by different entities, such as healthcare providers, insurance companies, and wearable device manufacturers. Combining heterogeneous health data offers unprecedented opportunities to augment our understanding of human health and disease. However, a major challenge to research lies in the difficulty of accessing and analyzing health data that are dispersed in their format (e.g. CSV, XML), sources (e.g., medical records, laboratory data), representation (unstructured, structured), and governance (e.g., data collection and maintenance)[2]. Such considerations are crucial when we link and use personal health data across multiple legal entities with different data governance and privacy concerns.

Details

Database :
OAIster
Journal :
Semantic Web Applications and Tools for Health Care and Life Sciences, p.141-142.
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1410098032
Document Type :
Electronic Resource