Computer Science and Information Systems 2014 Volume 11, Issue 2, Pages: 525-548
https://doi.org/10.2298/CSIS130120022D
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Cited by
User-centric privacy-preserving statistical analysis of ubiquitous health monitoring data
Drosatos George (Dept. of Electrical and Computer Engineering, Democritus University of Thrace University Campus, Xanthi, Greece)
Efraimidis Pavlos S. (ATHENA, Research & Innovation Center, University Campus, Xanthi, Greece)
In this paper, we propose a user-centric software architecture for managing
Ubiquitous Health Monitoring Data (UHMD) generated from wearable sensors in a
Ubiquitous Health Monitoring System (UHMS), and examine how these data can be
used within privacy-preserving distributed statistical analysis. Two are the
main goals of our approach. First, to enhance the privacy of patients.
Second, to decongest the Health Monitoring Center (HMC) from the enormous
amount of biomedical data generated by the users’ wearable sensors. In our
solution personal software agents are used to receive and manage the personal
medical data of their owners. Moreover, the personal agents can support
privacy-preserving distributed statistical analysis of the health data. To
this end, we present a cryptographic protocol based on secure multi-party
computations that accept as input current or archived values of users’
wearable sensors. We describe a prototype implementation that performs a
statistical analysis on a community of independent personal agents. Finally,
experiments with up to several hundred agents confirm the viability and the
effectiveness of our approach.
Keywords: privacy, ubiquitous health data, privacy-preserving statistical analysis, personal software agent, secure multi-party computation