Nocturnal Seizure Detection Using Off-the-Shelf WiFi
Belal Korany, Yasamin Mostofi

TL;DR
This paper introduces a novel, non-invasive method using off-the-shelf WiFi signals to detect nocturnal seizures with high accuracy and low false alarms, offering a cost-effective alternative to traditional devices.
Contribution
The study presents a new mathematical model for WiFi signal spectral content during sleep motions and a robust detection pipeline validated through extensive experiments.
Findings
Detects 93.85% of seizures with a mean response time of 5.69 seconds
Achieves a false alarm probability of 0.0097
Validated in 7 bedroom locations with 670 simulated instances
Abstract
Detection of nocturnal seizures in epilepsy patients is essential, both for the quick management of the seizure complications, and for the assessment of the ongoing seizure treatment. Traditional seizure detection products (e.g., wearables), however, are either very costly, uncomfortable, or unreliable. In this paper, we then propose to utilize everyday WiFi signals for robust, fast, and non-invasive detection of nocturnal seizures. We first present a new and rigorous mathematical characterization for the spectral content/bandwidth of the WiFi signal, measured on a WiFi device placed near a sleeping patient, during different kinds of sleep motions: seizures, normal movements (e.g. posture adjustments), and breathing. Based on this mathematical modeling, we propose a novel pipeline for processing the received WiFi signals to robustly detect all nocturnal non-breathing movements, and then…
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