These labels were automatically added by AI and may be inaccurate. For details, see About Literature Database.
Abstract
Smart healthcare systems (SHSs) are providing fast and efficient disease
treatment leveraging wireless body sensor networks (WBSNs) and implantable
medical devices (IMDs)-based internet of medical things (IoMT). In addition,
IoMT-based SHSs are enabling automated medication, allowing communication among
myriad healthcare sensor devices. However, adversaries can launch various
attacks on the communication network and the hardware/firmware to introduce
false data or cause data unavailability to the automatic medication system
endangering the patient's life. In this paper, we propose SHChecker, a novel
threat analysis framework that integrates machine learning and formal analysis
capabilities to identify potential attacks and corresponding effects on an
IoMT-based SHS. Our framework can provide us with all potential attack vectors,
each representing a set of sensor measurements to be altered, for an SHS given
a specific set of attack attributes, allowing us to realize the system's
resiliency, thus the insight to enhance the robustness of the model. We
implement SHChecker on a synthetic and a real dataset, which affirms that our
framework can reveal potential attack vectors in an IoMT system. This is a
novel effort to formally analyze supervised and unsupervised machine learning
models for black-box SHS threat analysis.