PRISC: Privacy-Preserved Pandemic Infection Risk Computation Through Cellular-Enabled IoT Devices

Published: 01 Jan 2023, Last Modified: 01 Aug 2025IEEE Internet Things J. 2023EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: The pandemics, such as COVID-19 are worldwide health risks and result in catastrophic impacts on the global economy. To prevent the spread of pandemics, it is critical to trace the contacts between people to identify the infection chain. Nevertheless, the privacy concern is a great challenge to contact tracing. Moreover, existing contact tracing apps cannot obtain the macro-level infection risk information, e.g., the hotspots where the infection occurs, which, however, is critical to optimize healthcare planning to better control and prevent the outbreak of pandemics. In this article, we develop a novel privacy-preserved pandemic tracing system, privacy-preserved pandemic infection risk computation (PRISC), to compute the infection risk through cellular-enabled IoT devices. In the PRISC system, there are three parties: 1) a mobile network operator (MNO); 2) a social network provider; and 3) the department of health. The physical contact records between users are obtained by the MNO from the users’ cellular-enabled IoT devices. The social contacts are obtained by the social network provider, while the health department has the records of pandemic patients. The three parties work together to compute a heatmap of pandemic infection risk in a region, while fully protecting the data privacy of each other. The heatmap provides both macro and micro-level infection risk information to help control pandemics. The experiment results indicate that PRISC can compute an infection risk score within a couple of seconds and a few mega-bytes (MBs) communication cost, for data sets with 100000 users.
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