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Abstract
Machine Learning (ML) algorithms are generally designed for scenarios in
which all data is stored in one data center, where the training is performed.
However, in many applications, e.g., in the healthcare domain, the training
data is distributed among several entities, e.g., different hospitals or
patients' mobile devices/sensors. At the same time, transferring the data to a
central location for learning is certainly not an option, due to privacy
concerns and legal issues, and in certain cases, because of the communication
and computation overheads. Federated Learning (FL) is the state-of-the-art
collaborative ML approach for training an ML model across multiple parties
holding local data samples, without sharing them. However, enabling learning
from distributed data over such edge Internet of Things (IoT) systems (e.g.,
mobile-health and wearable technologies, involving sensitive personal/medical
data) in a privacy-preserving fashion presents a major challenge mainly due to
their stringent resource constraints, i.e., limited computing capacity,
communication bandwidth, memory storage, and battery lifetime. In this paper,
we propose a privacy-preserving edge FL framework for resource-constrained
mobile-health and wearable technologies over the IoT infrastructure. We
evaluate our proposed framework extensively and provide the implementation of
our technique on Amazon's AWS cloud platform based on the seizure detection
application in epilepsy monitoring using wearable technologies.
National health care spending in 2020: Growth driven by federal spending in response to the covid-19 pandemic: National health expenditures study examines us health care spending in 2020.
M. Hartman, A. B. Martin, B. Washington, A. Catlin, N. H. E. A. Team
Published: 2022
Mobile Networks and Applications
Pervasive healthcare and wireless health monitoring
U. Varshney
Published: 2007
IEEE Transactions on Biomedical Circuits and Systems
Online obstructive sleep apnea detection on medical wearable sensors
G. Surrel, A. Aminifar, F. Rincon, S. Murali, D. Atienza
Published: 2018
IEEE Biomedical Circuits and Systems Conference (BioCAS)
Real-time classification technique for early detection and prevention of myocardial infarction on wearable devices
D. Sopic, A. Aminifar, A. Aminifar, D. Atienza
Published: 2017
IEEE Transactions on Biomedical Circuits and Systems
Real-time event-driven classification technique for early detection and prevention of myocardial infarction on wearable systems
D. Sopic, A. Aminifar, A. Aminifar, D. Atienza
Published: 2018
IEEE International Symposium on Circuits and Systems (ISCAS)
e-Glass: a wearable system for real-time detection of epileptic seizures
D. Sopic, A. Aminifar, D. Atienza
Published: 2018
Future Generation Computer Systems
Exploiting smart e-health gateways at the edge of healthcare internet-of-things: A fog computing approach
A. M. Rahmani, T. N. Gia, B. Negash, A. Anzanpour, I. Azimi, M. Jiang, P. Liljeberg
Published: 2018
ACM/Springer Mobile Networks and Applications (MONET)
A self-aware epilepsy monitoring system for real-time epileptic seizure detection
F. Forooghifar, A. Aminifar, L. Cammoun, I. Wisniewski, C. Ciumas, P. Ryvlin, D. Atienza
Published: 2019
Nature medicine
Cardiologist-level arrhythmia detection and classification in ambulatory electrocardiograms using a deep neural network
A. Hannun, P. Rajpurkar, M. Haghpanahi, G. Tison, C. Bourn, M. Turakhia, A. Ng