Literature DB >> 32844179

Automatic sleep stage classification with deep residual networks in a mixed-cohort setting.

Alexander Neergaard Olesen1,2,3, Poul Jørgen Jennum3, Emmanuel Mignot2, Helge Bjarup Dissing Sorensen1.   

Abstract

STUDY
OBJECTIVES: Sleep stage scoring is performed manually by sleep experts and is prone to subjective interpretation of scoring rules with low intra- and interscorer reliability. Many automatic systems rely on few small-scale databases for developing models, and generalizability to new datasets is thus unknown. We investigated a novel deep neural network to assess the generalizability of several large-scale cohorts.
METHODS: A deep neural network model was developed using 15,684 polysomnography studies from five different cohorts. We applied four different scenarios: (1) impact of varying timescales in the model; (2) performance of a single cohort on other cohorts of smaller, greater, or equal size relative to the performance of other cohorts on a single cohort; (3) varying the fraction of mixed-cohort training data compared with using single-origin data; and (4) comparing models trained on combinations of data from 2, 3, and 4 cohorts.
RESULTS: Overall classification accuracy improved with increasing fractions of training data (0.25%: 0.782 ± 0.097, 95% CI [0.777-0.787]; 100%: 0.869 ± 0.064, 95% CI [0.864-0.872]), and with increasing number of data sources (2: 0.788 ± 0.102, 95% CI [0.787-0.790]; 3: 0.808 ± 0.092, 95% CI [0.807-0.810]; 4: 0.821 ± 0.085, 95% CI [0.819-0.823]). Different cohorts show varying levels of generalization to other cohorts.
CONCLUSIONS: Automatic sleep stage scoring systems based on deep learning algorithms should consider as much data as possible from as many sources available to ensure proper generalization. Public datasets for benchmarking should be made available for future research. © Sleep Research Society 2020. Published by Oxford University Press on behalf of the Sleep Research Society. All rights reserved. For permissions, please e-mail journals.permissions@oup.com.

Keywords:  automatic sleep stage classification; computational sleep science; deep learning; machine learning

Year:  2021        PMID: 32844179     DOI: 10.1093/sleep/zsaa161

Source DB:  PubMed          Journal:  Sleep        ISSN: 0161-8105            Impact factor:   5.849


  6 in total

1.  Sleep Stage Classification Based on Multi-Centers: Comparison Between Different Ages, Mental Health Conditions and Acquisition Devices.

Authors:  Ziliang Xu; Yuanqiang Zhu; Hongliang Zhao; Fan Guo; Huaning Wang; Minwen Zheng
Journal:  Nat Sci Sleep       Date:  2022-05-24

2.  Sleep and Big Data: harnessing data, technology, and analytics for monitoring sleep and improving diagnostics, prediction, and interventions-an era for Sleep-Omics?

Authors:  Susan Redline; Shaun M Purcell
Journal:  Sleep       Date:  2021-06-11       Impact factor: 6.313

3.  Inter-database validation of a deep learning approach for automatic sleep scoring.

Authors:  Diego Alvarez-Estevez; Roselyne M Rijsman
Journal:  PLoS One       Date:  2021-08-16       Impact factor: 3.240

Review 4.  Clinical applications of artificial intelligence in sleep medicine: a sleep clinician's perspective.

Authors:  Anuja Bandyopadhyay; Cathy Goldstein
Journal:  Sleep Breath       Date:  2022-03-09       Impact factor: 2.816

5.  Age estimation from sleep studies using deep learning predicts life expectancy.

Authors:  Poul Jennum; Helge B D Sorensen; Emmanuel Mignot; Andreas Brink-Kjaer; Eileen B Leary; Haoqi Sun; M Brandon Westover; Katie L Stone; Paul E Peppard; Nancy E Lane; Peggy M Cawthon; Susan Redline
Journal:  NPJ Digit Med       Date:  2022-07-22

6.  Sleep scoring moving from visual scoring towards automated scoring.

Authors:  Thomas Penzel
Journal:  Sleep       Date:  2022-10-10       Impact factor: 6.313

  6 in total

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