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Temporal Feature Extraction and Machine Learning for Classification of Sleep Stages Using Telemetry Polysomnography

Overview
Journal Brain Sci
Publisher MDPI
Date 2023 Aug 26
PMID 37626557
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Abstract

Accurate sleep stage detection is crucial for diagnosing sleep disorders and tailoring treatment plans. Polysomnography (PSG) is considered the gold standard for sleep assessment since it captures a diverse set of physiological signals. While various studies have employed complex neural networks for sleep staging using PSG, our research emphasises the efficacy of a simpler and more efficient architecture. We aimed to integrate a diverse set of feature extraction measures with straightforward machine learning, potentially offering a more efficient avenue for sleep staging. We also aimed to conduct a comprehensive comparative analysis of feature extraction measures, including the power spectral density, Higuchi fractal dimension, singular value decomposition entropy, permutation entropy, and detrended fluctuation analysis, coupled with several machine-learning models, including XGBoost, Extra Trees, Random Forest, and LightGBM. Furthermore, data augmentation methods like the Synthetic Minority Oversampling Technique were also employed to rectify the inherent class imbalance in sleep data. The subsequent results highlighted that the XGBoost classifier, when used with a combination of all feature extraction measures as an ensemble, achieved the highest performance, with accuracies of 87%, 90%, 93%, 96%, and 97% and average F1-scores of 84.6%, 89%, 90.33%, 93.5%, and 93.5% for distinguishing between five-stage, four-stage, three-stage, and two distinct two-stage sleep configurations, respectively. This combined feature extraction technique represents a novel addition to the body of research since it achieves higher performance than many recently developed deep neural networks by utilising simpler machine-learning models.

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References
1.
Kuula L, Pesonen A . Heart Rate Variability and Firstbeat Method for Detecting Sleep Stages in Healthy Young Adults: Feasibility Study. JMIR Mhealth Uhealth. 2021; 9(2):e24704. PMC: 7889416. DOI: 10.2196/24704. View

2.
Bandt C, Pompe B . Permutation entropy: a natural complexity measure for time series. Phys Rev Lett. 2002; 88(17):174102. DOI: 10.1103/PhysRevLett.88.174102. View

3.
Mousavi S, Afghah F, Rajendra Acharya U . SleepEEGNet: Automated sleep stage scoring with sequence to sequence deep learning approach. PLoS One. 2019; 14(5):e0216456. PMC: 6504038. DOI: 10.1371/journal.pone.0216456. View

4.
Hanke J, Schindler K, Seiler A . On the relationships between epilepsy, sleep, and Alzheimer's disease: A narrative review. Epilepsy Behav. 2022; 129:108609. DOI: 10.1016/j.yebeh.2022.108609. View

5.
Hirshkowitz M, Whiton K, Albert S, Alessi C, Bruni O, DonCarlos L . National Sleep Foundation's updated sleep duration recommendations: final report. Sleep Health. 2017; 1(4):233-243. DOI: 10.1016/j.sleh.2015.10.004. View