Recognition of Patient Groups with Sleep Related Disorders using
Bio-signal Processing and Deep Learning
- URL: http://arxiv.org/abs/2111.05917v1
- Date: Wed, 10 Nov 2021 20:19:15 GMT
- Title: Recognition of Patient Groups with Sleep Related Disorders using
Bio-signal Processing and Deep Learning
- Authors: Delaram Jarchi, Javier Andreu-Perez, Mehrin Kiani, Oldrich Vysata,
Jiri Kuchynka, Ales Prochazka, Saeid Sane
- Abstract summary: Electrocardiography (ECG) and electromayography (EMG) have been used for recognition of breathing and movement-related sleep disorders.
A deep learning framework has been designed to incorporate EMG and ECG features.
The framework has been used to classify four groups: healthy subjects, patients with obstructive sleep apnea (OSA), patients with restless leg syndrome (RLS) and patients with both OSA and RLS.
- Score: 2.552015272583579
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Accurately diagnosing sleep disorders is essential for clinical assessments
and treatments. Polysomnography (PSG) has long been used for detection of
various sleep disorders. In this research, electrocardiography (ECG) and
electromayography (EMG) have been used for recognition of breathing and
movement-related sleep disorders. Bio-signal processing has been performed by
extracting EMG features exploiting entropy and statistical moments, in addition
to developing an iterative pulse peak detection algorithm using synchrosqueezed
wavelet transform (SSWT) for reliable extraction of heart rate and
breathing-related features from ECG. A deep learning framework has been
designed to incorporate EMG and ECG features. The framework has been used to
classify four groups: healthy subjects, patients with obstructive sleep apnea
(OSA), patients with restless leg syndrome (RLS) and patients with both OSA and
RLS. The proposed deep learning framework produced a mean accuracy of 72% and
weighted F1 score of 0.57 across subjects for our formulated four-class
problem.
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