A Secure Authentication Technique in Internet of Medical Things through Machine Learning
Ahmed A. Mawgoud, Ahmed I. Karadawy, Benbella S. Tawfik

TL;DR
This paper discusses the security challenges in the Internet of Medical Things and proposes a machine learning-based authentication method to improve data privacy and security in healthcare IoT systems.
Contribution
It introduces a novel machine learning-based authentication technique specifically designed for securing the Internet of Medical Things.
Findings
Enhanced security through machine learning authentication
Improved protection of patient data privacy
Potential reduction in security breaches
Abstract
The rapid growth of the Internet of Things technology in healthcare domain led to the appearance of many security threats and risks. It became very challenging to provide full protection with the expansion in using sensor objects in medical field, this led to the Internet of Medical Things definition, the security part in IoMT poses a perilous problem that keeps growing, because of the data sensitivity and critical information. The lack of providing a secure environment in IoMT may lead to patients privacy issues, not only leaving the data privacy of the patients at risk but also their lives can be in danger. In this paper, we provide a discussion on both definition and architecture of the Internet of Medical Things and Propose a new authentication approach through machine learning, to enhance the security level.
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Taxonomy
TopicsIoT and Edge/Fog Computing · Blockchain Technology Applications and Security · User Authentication and Security Systems
