Literature DB >> 31869808

Accurate Deep Learning-Based Sleep Staging in a Clinical Population With Suspected Obstructive Sleep Apnea.

Henri Korkalainen, Juhani Aakko, Sami Nikkonen, Samu Kainulainen, Akseli Leino, Brett Duce, Isaac O Afara, Sami Myllymaa, Juha Toyras, Timo Leppanen.   

Abstract

The identification of sleep stages is essential in the diagnostics of sleep disorders, among which obstructive sleep apnea (OSA) is one of the most prevalent. However, manual scoring of sleep stages is time-consuming, subjective, and costly. To overcome this shortcoming, we aimed to develop an accurate deep learning approach for automatic classification of sleep stages and to study the effect of OSA severity on the classification accuracy. Overnight polysomnographic recordings from a public dataset of healthy individuals (Sleep-EDF, n = 153) and from a clinical dataset (n = 891) of patients with suspected OSA were used to develop a combined convolutional and long short-term memory neural network. On the public dataset, the model achieved sleep staging accuracy of 83.7% (κ = 0.77) with a single frontal EEG channel and 83.9% (κ = 0.78) when supplemented with EOG. For the clinical dataset, the model achieved accuracies of 82.9% (κ = 0.77) and 83.8% (κ = 0.78) with a single EEG channel and two channels (EEG+EOG), respectively. The sleep staging accuracy decreased with increasing OSA severity. The single-channel accuracy ranged from 84.5% (κ = 0.79) for individuals without OSA diagnosis to 76.5% (κ = 0.68) for patients with severe OSA. In conclusion, deep learning enables automatic sleep staging for suspected OSA patients with high accuracy and expectedly, the accuracy decreased with increasing OSA severity. Furthermore, the accuracies achieved in the public dataset were superior to previously published state-of-the-art methods. Adding an EOG channel did not significantly increase the accuracy. The automatic, single-channel-based sleep staging could enable easy, accurate, and cost-efficient integration of EEG recording into diagnostic ambulatory recordings.

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Year:  2019        PMID: 31869808     DOI: 10.1109/JBHI.2019.2951346

Source DB:  PubMed          Journal:  IEEE J Biomed Health Inform        ISSN: 2168-2194            Impact factor:   5.772


  5 in total

1.  Confidence-Based Framework Using Deep Learning for Automated Sleep Stage Scoring.

Authors:  Jung Kyung Hong; Taeyoung Lee; Roben Deocampo Delos Reyes; Joonki Hong; Hai Hong Tran; Dongheon Lee; Jinhwan Jung; In-Young Yoon
Journal:  Nat Sci Sleep       Date:  2021-12-24

2.  Automatic Sleep Stage Classification of Children with Sleep-Disordered Breathing Using the Modularized Network.

Authors:  Huijun Wang; Guodong Lin; Yanru Li; Xiaoqing Zhang; Wen Xu; Xingjun Wang; Demin Han
Journal:  Nat Sci Sleep       Date:  2021-11-30

3.  Deep learning enables sleep staging from photoplethysmogram for patients with suspected sleep apnea.

Authors:  Henri Korkalainen; Juhani Aakko; Brett Duce; Samu Kainulainen; Akseli Leino; Sami Nikkonen; Isaac O Afara; Sami Myllymaa; Juha Töyräs; Timo Leppänen
Journal:  Sleep       Date:  2020-11-12       Impact factor: 5.849

4.  Multi-Level Classification of Driver Drowsiness by Simultaneous Analysis of ECG and Respiration Signals Using Deep Neural Networks.

Authors:  Serajeddin Ebrahimian; Ali Nahvi; Masoumeh Tashakori; Hamed Salmanzadeh; Omid Mohseni; Timo Leppänen
Journal:  Int J Environ Res Public Health       Date:  2022-08-29       Impact factor: 4.614

5.  Apnea Detection in Polysomnographic Recordings Using Machine Learning Techniques.

Authors:  Marek Piorecky; Martin Bartoň; Vlastimil Koudelka; Jitka Buskova; Jana Koprivova; Martin Brunovsky; Vaclava Piorecka
Journal:  Diagnostics (Basel)       Date:  2021-12-08
  5 in total

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