HealthGuard: A Machine Learning-Based Security Framework for Smart Healthcare Systems
AKM Iqtidar Newaz, Amit Kumar Sikder, Mohammad Ashiqur Rahman, A., Selcuk Uluagac

TL;DR
HealthGuard is a machine learning-based security framework designed to detect malicious activities in smart healthcare systems by analyzing vital signs and correlating data from medical devices, achieving high accuracy in identifying threats.
Contribution
This paper introduces HealthGuard, a novel ML-based security framework that effectively detects malicious activities in smart healthcare systems using multiple detection techniques.
Findings
Achieves 91% accuracy in threat detection
Utilizes four ML algorithms for robust detection
Effectively identifies various malicious threats
Abstract
The integration of Internet-of-Things and pervasive computing in medical devices have made the modern healthcare system "smart". Today, the function of the healthcare system is not limited to treat the patients only. With the help of implantable medical devices and wearables, Smart Healthcare System (SHS) can continuously monitor different vital signs of a patient and automatically detect and prevent critical medical conditions. However, these increasing functionalities of SHS raise several security concerns and attackers can exploit the SHS in numerous ways: they can impede normal function of the SHS, inject false data to change vital signs, and tamper a medical device to change the outcome of a medical emergency. In this paper, we propose HealthGuard, a novel machine learning-based security framework to detect malicious activities in a SHS. HealthGuard observes the vital signs of…
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