Mamba-based Deep Learning Approach for Sleep Staging on a Wireless Multimodal Wearable System without Electroencephalography
Andrew H. Zhang, Alex He-Mo, Richard Fei Yin, Chunlin Li, Yuzhi Tang, Dharmendra Gurve, Veronique van der Horst, Aron S. Buchman, Nasim Montazeri Ghahjaverestan, Maged Goubran, Bo Wang, Andrew S. P. Lim

TL;DR
This study develops a Mamba-based deep learning model to accurately classify sleep stages using data from a non-intrusive wearable system, eliminating the need for EEG in sleep staging.
Contribution
It introduces a novel deep learning approach trained on multimodal wearable sensor data for sleep staging without EEG, achieving high accuracy in a clinical setting.
Findings
Achieved 84.02% accuracy for 3-class sleep staging.
Successfully classified 4- and 5-class sleep stages with over 65% accuracy.
Demonstrated feasibility of sleep staging using non-intrusive wearable sensors.
Abstract
Study Objectives: We investigate a Mamba-based deep learning approach for sleep staging on signals from ANNE One (Sibel Health, Evanston, IL), a non-intrusive dual-module wireless wearable system measuring chest electrocardiography (ECG), triaxial accelerometry, and chest temperature, and finger photoplethysmography and finger temperature. Methods: We obtained wearable sensor recordings from 357 adults undergoing concurrent polysomnography (PSG) at a tertiary care sleep lab. Each PSG recording was manually scored and these annotations served as ground truth labels for training and evaluation of our models. PSG and wearable sensor data were automatically aligned using their ECG channels with manual confirmation by visual inspection. We trained a Mamba-based recurrent neural network architecture on these recordings. Ensembling of model variants with similar architectures was performed.…
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