Comparison of automated deep neural network against manual sleep stage scoring in clinical data

被引:0
|
作者
Cheng H. [1 ]
Yang Y. [2 ]
Shi J. [2 ]
Li Z. [3 ]
Feng Y. [2 ]
Wang X. [2 ]
机构
[1] Department of Sleep Medicine, Institute of Respiratory Diseases, Shenzhen People's Hospital, The Second Clinical Medical College of Jinan University, The First Affiliated Hospital of Southern University of Science and Technology, Shenzhen
[2] Tsinghua Shenzhen International Graduate School, Tsinghua University, Shenzhen
[3] Shenzhen Gianta Information Technology Co., LTD, Shenzhen
关键词
Deep learning; Obstructive sleep apnea (OSA); Polysomnography (PSG); Sleep staging;
D O I
10.1016/j.compbiomed.2024.108855
中图分类号
学科分类号
摘要
Objective: To compare the accuracy and generalizability of an automated deep neural network and the Philip Sleepware G3™ Somnolyzer system (Somnolyzer) for sleep stage scoring using American Academy of Sleep Medicine (AASM) guidelines. Methods: Sleep recordings from 104 participants were analyzed by a convolutional neural network (CNN), the Somnolyzer and skillful technicians. Evaluation metrics were derived for different combinations of sleep stages. A further comparison between the Somnolyzer and the CNN model using a single-channel signal as input was also performed. Sleep recordings from 263 participants with a lower prevalence of OSA served as a cross-validation dataset to validate the generalizability of the CNN model. Results: The overall agreement between automated and manual scoring for sleep staging in 104 participants outperformed that of the Somnolyzer according to various metrics (accuracy: 81.81 % vs. 77.07 %; F1: 76.36 % vs. 73.80 %; Cohen's kappa: 0.7403 vs. 0.6848). The results showed that the left electrooculography (EOG) single-channel model had minor advantages over the Somnolyzer. In terms of consistency with manual sleep staging, the CNN model demonstrated superior performance in identifying more pronounced sleep transitions, particularly in the N2 stage and sleep latency metrics. Conversely, the Somnolyzer showed enhanced proficiency in the analysis of REM stages, notably in measuring REM latency. The accuracy in the cross-validation set of 263 participants was also above 80 %. Conclusions: The CNN-based automated deep neural network outperformed the Somnolyzer and is sufficiently accurate for sleep study analyses using the AASM classification criteria. © 2024 The Authors
引用
收藏
相关论文
共 50 条
  • [1] Automated multi-model deep neural network for sleep stage scoring with unfiltered clinical data
    Xiaoqing Zhang
    Mingkai Xu
    Yanru Li
    Minmin Su
    Ziyao Xu
    Chunyan Wang
    Dan Kang
    Hongguang Li
    Xin Mu
    Xiu Ding
    Wen Xu
    Xingjun Wang
    Demin Han
    Sleep and Breathing, 2020, 24 : 581 - 590
  • [2] Automated multi-model deep neural network for sleep stage scoring with unfiltered clinical data
    Zhang, Xiaoqing
    Xu, Mingkai
    Li, Yanru
    Su, Minmin
    Xu, Ziyao
    Wang, Chunyan
    Kang, Dan
    Li, Hongguang
    Mu, Xin
    Ding, Xiu
    Xu, Wen
    Wang, Xingjun
    Han, Demin
    SLEEP AND BREATHING, 2020, 24 (02) : 581 - 590
  • [3] Analysis of sleep stage using a neural network: Comparison to manual scoring in patients with obstructive sleep apnoea (OSA)
    Buchanan, F
    Wiltshire, N
    Catterall, JR
    Kendrick, AH
    THORAX, 2002, 57
  • [4] Comparison of manual sleep staging with automated neural network-based analysis in clinical practice
    Caffarel, Jennifer
    Gibson, G. John
    Harrison, J. Phil
    Griffiths, Clive J.
    Drinnan, Michael J.
    MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING, 2006, 44 (1-2) : 105 - 110
  • [5] Comparison of manual sleep staging with automated neural network-based analysis in clinical practice
    Jennifer Caffarel
    G. John Gibson
    J. Phil Harrison
    Clive J. Griffiths
    Michael J. Drinnan
    Medical and Biological Engineering and Computing, 2006, 44 : 105 - 110
  • [6] Automated sleep stage scoring of the Sleep Heart Health Study using deep neural networks
    Zhang, Linda
    Fabbri, Daniel
    Upender, Raghu
    Kent, David
    SLEEP, 2019, 42 (11)
  • [7] VALIDATION STUDY OF NEURAL NETWORK ALGORITHM FOR AUTOMATED SLEEP STAGE SCORING: STAGENET
    Choi, J.
    Moon, J.
    SLEEP, 2020, 43 : A169 - A169
  • [8] AUTOMATED SLEEP STAGE SCORING USING DEEP LEARNING
    Zhang, L.
    Fabbri, D.
    Upender, R.
    Kent, D.
    SLEEP, 2018, 41 : A118 - A118
  • [9] Automated Sleep Stage Scoring Using Time-Frequency Spectra Convolution Neural Network
    Jadhav, Pankaj
    Mukhopadhyay, Siddhartha
    IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2022, 71
  • [10] ASSESSING COMPETENCY OF Z3SCORE AUTOMATED SLEEP STAGE SCORING SYSTEM WITH MANUAL SLEEP STAGE SCORING BY MULTIPLE SCORERS
    Tay, J. Y.
    Toh, S. T.
    Leow, L. C.
    Senin, S. R.
    SLEEP MEDICINE, 2017, 40 : E326 - E326