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Main Authors: Khatun, Mirza Akhi, Memon, Sanober Farheen, Eising, Ciarán, Dhirani, Lubna Luxmi
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.09124
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author Khatun, Mirza Akhi
Memon, Sanober Farheen
Eising, Ciarán
Dhirani, Lubna Luxmi
author_facet Khatun, Mirza Akhi
Memon, Sanober Farheen
Eising, Ciarán
Dhirani, Lubna Luxmi
contents The Healthcare Internet-of-Things (H-IoT), commonly known as Digital Healthcare, is a data-driven infrastructure that highly relies on smart sensing devices (i.e., blood pressure monitors, temperature sensors, etc.) for faster response time, treatments, and diagnosis. However, with the evolving cyber threat landscape, IoT devices have become more vulnerable to the broader risk surface (e.g., risks associated with generative AI, 5G-IoT, etc.), which, if exploited, may lead to data breaches, unauthorized access, and lack of command and control and potential harm. This paper reviews the fundamentals of healthcare IoT, its privacy, and data security challenges associated with machine learning and H-IoT devices. The paper further emphasizes the importance of monitoring healthcare IoT layers such as perception, network, cloud, and application. Detecting and responding to anomalies involves various cyber-attacks and protocols such as Wi-Fi 6, Narrowband Internet of Things (NB-IoT), Bluetooth, ZigBee, LoRa, and 5G New Radio (5G NR). A robust authentication mechanism based on machine learning and deep learning techniques is required to protect and mitigate H-IoT devices from increasing cybersecurity vulnerabilities. Hence, in this review paper, security and privacy challenges and risk mitigation strategies for building resilience in H-IoT are explored and reported.
format Preprint
id arxiv_https___arxiv_org_abs_2401_09124
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Machine Learning for Healthcare-IoT Security: A Review and Risk Mitigation
Khatun, Mirza Akhi
Memon, Sanober Farheen
Eising, Ciarán
Dhirani, Lubna Luxmi
Cryptography and Security
The Healthcare Internet-of-Things (H-IoT), commonly known as Digital Healthcare, is a data-driven infrastructure that highly relies on smart sensing devices (i.e., blood pressure monitors, temperature sensors, etc.) for faster response time, treatments, and diagnosis. However, with the evolving cyber threat landscape, IoT devices have become more vulnerable to the broader risk surface (e.g., risks associated with generative AI, 5G-IoT, etc.), which, if exploited, may lead to data breaches, unauthorized access, and lack of command and control and potential harm. This paper reviews the fundamentals of healthcare IoT, its privacy, and data security challenges associated with machine learning and H-IoT devices. The paper further emphasizes the importance of monitoring healthcare IoT layers such as perception, network, cloud, and application. Detecting and responding to anomalies involves various cyber-attacks and protocols such as Wi-Fi 6, Narrowband Internet of Things (NB-IoT), Bluetooth, ZigBee, LoRa, and 5G New Radio (5G NR). A robust authentication mechanism based on machine learning and deep learning techniques is required to protect and mitigate H-IoT devices from increasing cybersecurity vulnerabilities. Hence, in this review paper, security and privacy challenges and risk mitigation strategies for building resilience in H-IoT are explored and reported.
title Machine Learning for Healthcare-IoT Security: A Review and Risk Mitigation
topic Cryptography and Security
url https://arxiv.org/abs/2401.09124