Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/107269
Title: Anonymity preserving IoT-based COVID-19 and other infectious disease contact tracing model
Authors: Garg, Lalit
Chukwu, Emeka
Nasser, Nidal
Chakraborty, Chinmay
Garg, Gaurav
Keywords: Contact tracing (Epidemiology)
Medical technology -- Evaluation
Internet of things
Coronavirus infections -- Transmission -- Prevention
Radio frequency identification systems
Blockchains (Databases) -- Security measures
Smart contracts -- Simulation methods
Issue Date: 2020
Publisher: Institute of Electrical and Electronics Engineers
Citation: Garg, L., Chukwu, E., Nasser, N., Chakraborty, C., & Garg, G. (2020). Anonymity preserving IoT-based COVID-19 and other infectious disease contact tracing model. IEEE Access, 8, 159402-159414.
Abstract: Automated digital contact tracing is effective and ef cient, and one of the non-pharmaceutical complementary approaches to mitigate and manage epidemics like Coronavirus disease 2019 (COVID-19). Despite the advantages of digital contact tracing, it is not widely used in the western world, including the US and Europe, due to strict privacy regulations and patient rights. We categorized the current approaches for contact tracing, namely: mobile service-provider-application, mobile network operators' call detail, citizen- application, and IoT-based. Current measures for infection control and tracing do not include animals and moving objects like cars despite evidence that these moving objects can be infection carriers. In this article, we designed and presented a novel privacy anonymous IoT model. We presented an RFID proof-of-concept for this model. Our model leverages blockchain's trust-oriented decentralization for on-chain data logging and retrieval. Our model solution will allow moving objects to receive or send noti cations when they are close to a agged, probable, or con rmed diseased case, or agged place or object. We implemented and presented three prototype blockchain smart contracts for our model.We then simulated contract deployments and execution of functions. We presented the cost differentials. Our simulation results show less than one- second deployment and call time for smart contracts, though, in real life, it can be up to 25 seconds on Ethereum public blockchain. Our simulation results also show that it costs an average of $1.95 to deploy our prototype smart contracts, and an average of $0.34 to call our functions. Our model will make it easy to identify clusters of infection contacts and help deliver a noti cation for mass isolation while preserving individual privacy. Furthermore, it can be used to understand better human connectivity, model similar other infection spread network, and develop public policies to control the spread of COVID-19 while preparing for future epidemics.
URI: https://www.um.edu.mt/library/oar/handle/123456789/107269
Appears in Collections:Scholarly Works - FacICTCIS



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