A Privacy-Preserving Distributed Analytics Platform for Health Care Data

Author:

Welten Sascha1,Mou Yongli1,Neumann Laurenz1,Jaberansary Mehrshad1,Yediel Ucer Yeliz2,Kirsten Toralf3,Decker Stefan12,Beyan Oya24

Affiliation:

1. Chair of Computer Science 5, RWTH Aachen University, Aachen, Germany

2. Department of Data Science and Artificial Intelligence, Fraunhofer FIT, Sankt Augustin, Germany

3. Department of Medical Data Science, University Medical Center Leipzig, Leipzig, Germany

4. Institute for Medical Informatics, Faculty of Medicine, University Hospital Cologne, University of Cologne, Cologne, Germany

Abstract

Abstract Background In recent years, data-driven medicine has gained increasing importance in terms of diagnosis, treatment, and research due to the exponential growth of health care data. However, data protection regulations prohibit data centralisation for analysis purposes because of potential privacy risks like the accidental disclosure of data to third parties. Therefore, alternative data usage policies, which comply with present privacy guidelines, are of particular interest. Objective We aim to enable analyses on sensitive patient data by simultaneously complying with local data protection regulations using an approach called the Personal Health Train (PHT), which is a paradigm that utilises distributed analytics (DA) methods. The main principle of the PHT is that the analytical task is brought to the data provider and the data instances remain in their original location. Methods In this work, we present our implementation of the PHT paradigm, which preserves the sovereignty and autonomy of the data providers and operates with a limited number of communication channels. We further conduct a DA use case on data stored in three different and distributed data providers. Results We show that our infrastructure enables the training of data models based on distributed data sources. Conclusion Our work presents the capabilities of DA infrastructures in the health care sector, which lower the regulatory obstacles of sharing patient data. We further demonstrate its ability to fuel medical science by making distributed data sets available for scientists or health care practitioners.

Publisher

Georg Thieme Verlag KG

Subject

Health Information Management,Advanced and Specialized Nursing,Health Informatics

Reference21 articles.

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3. Federated learning in medicine: facilitating multi-institutional collaborations without sharing patient data;M J Sheller;Sci Rep,2020

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