CryptoDNA: A Machine Learning Paradigm for DDoS Detection in Healthcare IoT, Inspired by crypto jacking prevention Models
Zag ElSayed, Ahmed Abdelgawad, Nelly Elsayed

TL;DR
CryptoDNA is a novel machine learning framework inspired by cryptojacking detection techniques, designed to identify DDoS attacks in healthcare IoT environments with high accuracy and low resource consumption.
Contribution
It introduces a new interdisciplinary approach combining cryptojacking detection methods with DDoS detection for healthcare IoT devices, emphasizing lightweight and scalable solutions.
Findings
Achieved over 96% detection accuracy in real-world and synthetic datasets.
Demonstrated robustness against emerging attack vectors.
Ensured minimal computational overhead for resource-constrained devices.
Abstract
The rapid integration of the Internet of Things (IoT) and Internet of Medical (IoM) devices in the healthcare industry has markedly improved patient care and hospital operations but has concurrently brought substantial risks. Distributed Denial-of-Service (DDoS) attacks present significant dangers, jeopardizing operational stability and patient safety. This study introduces CryptoDNA, an innovative machine learning detection framework influenced by cryptojacking detection methods, designed to identify and alleviate DDoS attacks in healthcare IoT settings. The proposed approach relies on behavioral analytics, including atypical resource usage and network activity patterns. Key features derived from cryptojacking-inspired methodologies include entropy-based analysis of traffic, time-series monitoring of device performance, and dynamic anomaly detection. A lightweight architecture ensures…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Advanced Malware Detection Techniques · Digital and Cyber Forensics
