DocumentCode :
58901
Title :
Assess Sleep Stage by Modern Signal Processing Techniques
Author :
Hau-tieng Wu ; Talmon, Ronen ; Yu-Lun Lo
Volume :
62
Issue :
4
fYear :
2015
fDate :
Apr-15
Firstpage :
1159
Lastpage :
1168
Abstract :
In this paper, two modern adaptive signal processing techniques, empirical intrinsic geometry and synchrosqueezing transform, are applied to quantify different dynamical features of the respiratory and electroencephalographic signals. We show that the proposed features are theoretically rigorously supported, as well as capture the sleep information hidden inside the signals. The features are used as input to multiclass support vector machines with the radial basis function to automatically classify sleep stages. The effectiveness of the classification based on the proposed features is shown to be comparable to human expert classification—the proposed classification of awake, REM, N1, N2, and N3 sleeping stages based on the respiratory signal (resp. respiratory and EEG signals) has the overall accuracy 81.7% (resp. 89.3% ) in the relatively normal subject group. In addition, by examining the combination of the respiratory signal with the electroencephalographic signal, we conclude that the respiratory signal consists of ample sleep information, which supplements to the information stored in the electroencephalographic signal.
Keywords :
adaptive signal processing; electroencephalography; feature extraction; medical signal processing; patient diagnosis; pneumodynamics; signal classification; sleep; support vector machines; EEG signal-hidden sleep information; N1 sleeping stage classification; N2 sleeping stage classification; N3 sleeping stage classification; REM sleeping stage classification; adaptive signal processing techniques; automatic sleep stage classification; awake sleeping stage classification; classification technique effectiveness; deep sleep stage N3; electroencephalographic signal dynamical features; electroencephalographic signal-hidden sleep information; empirical intrinsic geometry; human expert classification; modern signal processing techniques; multiclass SVM; multiclass support vector machines; radial basis function; rapid eye movement sleeping stage classification; respiratory signal dynamical features; respiratory signal-hidden sleep information; respiratory-EEG signal classification; rigorously-supported features; shallow sleep stage N1; shallow sleep stage N2; sleep stage assessment; synchrosqueezing transform; theoretically-supported features; Electroencephalography; Feature extraction; Mathematical model; Noise; Sleep; Time-frequency analysis; Transforms; Breathing pattern variability; Empirical Intrinsic Geometry; Sleep Stage; Synchrosqueezing transform; breathing pattern variability; empirical intrinsic geometry (EIG); sleep stage; synchrosqueezing transform (ST);
fLanguage :
English
Journal_Title :
Biomedical Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9294
Type :
jour
DOI :
10.1109/TBME.2014.2375292
Filename :
6967703
Link To Document :
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