A robust generalizable device-agnostic deep learning model for sleep-wake determination from triaxial wrist accelerometry
Nasim Montazeri, Stone Yang, Dominik Luszczynski, John Zhang, Dharmendra Gurve, Andrew Centen, Maged Goubran, Andrew Lim

TL;DR
This study introduces a deep learning model that accurately detects sleep-wake states from wrist accelerometry data, demonstrating robustness across different devices, diverse populations, and sleep disorders.
Contribution
A novel deep learning approach for sleep-wake detection from wrist accelerometry that generalizes across devices and populations, including those with sleep disorders.
Findings
High accuracy with F1 score of 0.86
Robust performance across three device models
Correlates well with polysomnography in sleep metrics
Abstract
Study Objectives: Wrist accelerometry is widely used for inferring sleep-wake state. Previous works demonstrated poor wake detection, without cross-device generalizability and validation in different age range and sleep disorders. We developed a robust deep learning model for to detect sleep-wakefulness from triaxial accelerometry and evaluated its validity across three devices and in a large adult population spanning a wide range of ages with and without sleep disorders. Methods: We collected wrist accelerometry simultaneous to polysomnography (PSG) in 453 adults undergoing clinical sleep testing at a tertiary care sleep laboratory, using three devices. We extracted features in 30-second epochs and trained a 3-class model to detect wake, sleep, and sleep with arousals, which was then collapsed into wake vs. sleep using a decision tree. To enhance wake detection, the model was…
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Taxonomy
TopicsSleep and related disorders · Restless Legs Syndrome Research · Pressure Ulcer Prevention and Management
