Error propagation from sleep stage classification to derived sleep parameters in machine learning on data from wearables
Error propagation from sleep stage classification to derived sleep parameters in machine learning on data from wearables
Purpose of Review:: Automatic analysis of sleep is an important and active area of research. Machine learning models are commonly developed to classify time segments into sleep stages. The sleep stages can be used to calculate various sleep parameters, such as sleep efficiency and total sleep time. The machine learning models are typically trained to minimize the sleep stage classification error, but little is known about how error propagates from sleep stages to derived sleep parameters. Recent findings:: We review recently published studies where machine learning was used to classify sleep stages using data from wearable devices. Using classification error statistics from these studies, we perform a Monte Carlo simulation to estimate sleep parameter error in a dataset of 197 hypnograms. This is, to our knowledge, the first attempt at evaluating how robust sleep parameter estimation is to misclassification of sleep stages. Summary:: Our analysis suggests that a machine learning model capable of 90% accurate sleep stage classification (surpassing current state-of-art in wearable sleep tracking) may perform worse than a random guess in estimating some sleep parameters. Our analysis also indicates that sleep stage classification may not be a relevant target variable for machine learning on wearable sleep data and that regression models may be better suited to estimating sleep parameters. Finally, we propose a baseline model to use as a reference for sleep stage estimation accuracy.
Machine learning, Sleep, Sleep parameters, Sleep staging, Wearables
140-151
Hardarson, Emil
bbdcb067-9e1b-4995-9340-cab3e48b981e
Islind, Anna Sigridur
46e6353f-a1b6-4628-916c-18e817695d03
Arnardottir, Erna Sif
9bfbbe32-8214-47a9-86ba-43be85458830
Óskarsdóttir, María
d159ed8f-9dd3-4ff3-8b00-d43579ab71be
1 September 2023
Hardarson, Emil
bbdcb067-9e1b-4995-9340-cab3e48b981e
Islind, Anna Sigridur
46e6353f-a1b6-4628-916c-18e817695d03
Arnardottir, Erna Sif
9bfbbe32-8214-47a9-86ba-43be85458830
Óskarsdóttir, María
d159ed8f-9dd3-4ff3-8b00-d43579ab71be
Hardarson, Emil, Islind, Anna Sigridur, Arnardottir, Erna Sif and Óskarsdóttir, María
(2023)
Error propagation from sleep stage classification to derived sleep parameters in machine learning on data from wearables.
Current Sleep Medicine Reports, 9 (3), .
(doi:10.1007/s40675-023-00253-w).
Abstract
Purpose of Review:: Automatic analysis of sleep is an important and active area of research. Machine learning models are commonly developed to classify time segments into sleep stages. The sleep stages can be used to calculate various sleep parameters, such as sleep efficiency and total sleep time. The machine learning models are typically trained to minimize the sleep stage classification error, but little is known about how error propagates from sleep stages to derived sleep parameters. Recent findings:: We review recently published studies where machine learning was used to classify sleep stages using data from wearable devices. Using classification error statistics from these studies, we perform a Monte Carlo simulation to estimate sleep parameter error in a dataset of 197 hypnograms. This is, to our knowledge, the first attempt at evaluating how robust sleep parameter estimation is to misclassification of sleep stages. Summary:: Our analysis suggests that a machine learning model capable of 90% accurate sleep stage classification (surpassing current state-of-art in wearable sleep tracking) may perform worse than a random guess in estimating some sleep parameters. Our analysis also indicates that sleep stage classification may not be a relevant target variable for machine learning on wearable sleep data and that regression models may be better suited to estimating sleep parameters. Finally, we propose a baseline model to use as a reference for sleep stage estimation accuracy.
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Published date: 1 September 2023
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Publisher Copyright:
© 2023, The Author(s).
Keywords:
Machine learning, Sleep, Sleep parameters, Sleep staging, Wearables
Identifiers
Local EPrints ID: 507845
URI: http://eprints.soton.ac.uk/id/eprint/507845
PURE UUID: 9948d867-31c8-4f55-af17-17be1a52527d
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Date deposited: 06 Jan 2026 18:03
Last modified: 08 Jan 2026 03:27
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Contributors
Author:
Emil Hardarson
Author:
Anna Sigridur Islind
Author:
Erna Sif Arnardottir
Author:
María Óskarsdóttir
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