Literature DB >> 27076473

Cardiorespiratory Sleep Stage Detection Using Conditional Random Fields.

Pedro Fonseca, Niek den Teuling, Xi Long, Ronald M Aarts.   

Abstract

This paper explores the probabilistic properties of sleep stage sequences and transitions to improve the performance of sleep stage detection using cardiorespiratory features. A new classifier, based on conditional random fields, is used in different sleep stage detection tasks (N3, NREM, REM, and wake) in night-time recordings of electrocardiogram and respiratory inductance plethysmography of healthy subjects. Using a dataset of 342 polysomnographic recordings of healthy subjects, among which 135 with regular sleep architecture, it outperforms hidden Markov models and Bayesian linear discriminants in all tasks, achieving an average accuracy of 87.38% and kappa of 0.41 (87.27% and 0.49 for regular subjects) for N3 detection, 78.71% and 0.55 (80.34% and 0.56 for regular subjects) for NREM detection, 88.49% and 0.51 (87.35% and 0.57 for regular subjects) for REM, and 85.69% and 0.51 (90.42% and 0.52 for regular subjects) for wake. In comparison with the state of the art, and having been tested on a much larger dataset, the classifier was found to outperform most of the work reported in the literature for some of the tasks, in particular for subjects with regular sleep architecture. It achieves a comparable accuracy for N3, higher accuracy and kappa for REM, and higher accuracy and comparable kappa for NREM than the best performing classifiers described in the literature.

Mesh:

Year:  2016        PMID: 27076473     DOI: 10.1109/JBHI.2016.2550104

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


  6 in total

1.  Deep learning in the cross-time frequency domain for sleep staging from a single-lead electrocardiogram.

Authors:  Qiao Li; Qichen Li; Chengyu Liu; Supreeth P Shashikumar; Shamim Nemati; Gari D Clifford
Journal:  Physiol Meas       Date:  2018-12-21       Impact factor: 2.833

Review 2.  Automatic sleep staging by cardiorespiratory signals: a systematic review.

Authors:  Farideh Ebrahimi; Iman Alizadeh
Journal:  Sleep Breath       Date:  2021-07-29       Impact factor: 2.816

3.  Sleep stage classification from heart-rate variability using long short-term memory neural networks.

Authors:  Mustafa Radha; Pedro Fonseca; Arnaud Moreau; Marco Ross; Andreas Cerny; Peter Anderer; Xi Long; Ronald M Aarts
Journal:  Sci Rep       Date:  2019-10-02       Impact factor: 4.379

4.  Direct application of an ECG-based sleep staging algorithm on reflective photoplethysmography data decreases performance.

Authors:  M M van Gilst; B M Wulterkens; P Fonseca; M Radha; M Ross; A Moreau; A Cerny; P Anderer; X Long; J P van Dijk; S Overeem
Journal:  BMC Res Notes       Date:  2020-11-10

5.  Wearable monitoring of sleep-disordered breathing: estimation of the apnea-hypopnea index using wrist-worn reflective photoplethysmography.

Authors:  Gabriele B Papini; Pedro Fonseca; Merel M van Gilst; Jan W M Bergmans; Rik Vullings; Sebastiaan Overeem
Journal:  Sci Rep       Date:  2020-08-11       Impact factor: 4.379

6.  EOGNET: A Novel Deep Learning Model for Sleep Stage Classification Based on Single-Channel EOG Signal.

Authors:  Jiahao Fan; Chenglu Sun; Meng Long; Chen Chen; Wei Chen
Journal:  Front Neurosci       Date:  2021-07-12       Impact factor: 4.677

  6 in total

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