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An unobtrusive and lightweight ear-worn system for continuous epileptic seizure detection

Aziz, Abdul, Pham, Nhat, Vora, Neel, Reynolds, Cody, Lehnen, Jaime, Venkatesh, Pooja, Yao, Zhuoran, Harvey, Jay, Vu, Tam, Ding, Kan and Nguyen, Phuc 2024. An unobtrusive and lightweight ear-worn system for continuous epileptic seizure detection. ACM Transactions on Computing for Healthcare 10.1145/3703164

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Abstract

Epilepsy is one of the most common neurological diseases globally (around 50M people globally). Fortunately, up to 70% of people with epilepsy could live seizure-free if properly diagnosed and treated, and a reliable technique to monitor the onset of seizures could improve the quality of life of patients who are constantly facing the fear of random seizure attacks. The current gold standard, video-EEG (v-EEG), involves attaching over 20 electrodes to the scalp, is costly, requires hospitalization, trained professionals, and is uncomfortable for patients. To address this gap, we developed EarSD , a lightweight and unobtrusive ear-worn system to detect seizure onsets by measuring physiological signals behind the ears. This system can be integrated into earphones, headphones, or hearing aids, providing a convenient solution for continuous monitoring. EarSD is an integrated custom-built sensing - computing - communication ear-worn platform to capture seizure signals, remove the noises caused by motion artifacts and environmental impacts, and stream the collected data wirelessly to the computer/mobile phone nearby. EarSD 's ML algorithm, running on a server, identifies seizure-associated signatures and detects onset events. We evaluated the proposed system in both in-lab and in-hospital experiments at the University of Texas Southwestern Medical Center with epileptic seizure patients, confirming its usability and practicality.

Item Type: Article
Date Type: Published Online
Status: In Press
Schools: Computer Science & Informatics
ISSN: 2637-8051
Date of Acceptance: 25 October 2024
Last Modified: 09 Dec 2024 16:45
URI: https://orca.cardiff.ac.uk/id/eprint/174027

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