Differential Privacy for Secure Machine Learning in Healthcare IoT-Cloud Systems
N Mangala, Murtaza Rangwala, S Aishwarya, B Eswara Reddy, Rajkumar Buyya, KR Venugopal, SS Iyengar, LM Patnaik

TL;DR
This paper presents a multi-layer IoT-Edge-Cloud architecture for healthcare that integrates differential privacy and blockchain to enhance emergency response and protect patient data.
Contribution
It introduces a novel hierarchical architecture combining differential privacy, blockchain, and edge computing for secure, efficient healthcare IoT systems.
Findings
Supervised machine learning models achieved up to 83.6% accuracy with differential privacy.
Hybrid Laplace-Gaussian noise mechanism balances privacy and utility effectively.
Edge computing reduces emergency response latency by 8 times.
Abstract
Healthcare has become exceptionally sophisticated, as wearables and connected medical devices revolutionize remote patient monitoring, emergency response, medication management, diagnosis, and predictive and prescriptive analytics. Internet of Things and Cloud computing integrated systems (IoT-Cloud) facilitate sensing, automation, and processing for these healthcare applications. While real-time response is crucial for alleviating patient emergencies, protecting patient privacy is paramount in data-driven healthcare. In this paper, we propose a multi-layer IoT, Edge, and Cloud architecture to enhance emergency healthcare response times by distributing tasks based on response criticality and data permanence requirements. We ensure patient privacy through a Differential Privacy framework applied across several machine learning models: K-means, Logistic Regression, Random Forest, and…
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