A-phase index: an alternative view for sleep stability analysis based on automatic detection of the A-phases from the cyclic alternating pattern

Author:

Mendonça Fábio12ORCID,Mostafa Sheikh Shanawaz2,Gupta Ankit12,Arnardottir Erna Sif34,Leppänen Timo567ORCID,Morgado-Dias Fernando12,Ravelo-García Antonio G28

Affiliation:

1. University of Madeira , Funchal , Portugal

2. Interactive Technologies Institute (ITI/LARSyS) and M-ITI , Funchal , Portugal

3. Reykjavik University Sleep Institute, Reykjavik University , Reykjavik , Iceland

4. Internal Medicine Services, Landspitali—National University Hospital of Iceland , Reykjavik , Iceland

5. Department of Applied Physics, University of Eastern Finland , Kuopio , Finland

6. Diagnostic Imaging Center, Kuopio University Hospital , Kuopio , Finland

7. School of Information Technology and Electrical Engineering, University of Queensland , Brisbane , Australia

8. Institute for Technological Development and Innovation in Communications, Universidad de Las Palmas de Gran Canaria , Las Palmas de Gran Canaria , Spain

Abstract

Abstract Study Objectives Sleep stability can be studied by evaluating the cyclic alternating pattern (CAP) in electroencephalogram (EEG) signals. The present study presents a novel approach for assessing sleep stability, developing an index based on the CAP A-phase characteristics to display a sleep stability profile for a whole night’s sleep. Methods Two ensemble classifiers were developed to automatically score the signals, one for “A-phase” and the other for “non-rapid eye movement” estimation. Both were based on three one-dimension convolutional neural networks. Six different inputs were produced from the EEG signal to feed the ensembles’ classifiers. A proposed heuristic-oriented search algorithm individually tuned the classifiers’ structures. The outputs of the two ensembles were combined to estimate the A-phase index (API). The models can also assess the A-phase subtypes, their API, and the CAP cycles and rate. Results Four dataset variations were considered, examining healthy and sleep-disordered subjects. The A-phase average estimation’s accuracy, sensitivity, and specificity range was 82%–87%, 72%–80%, and 82%–88%, respectively. A similar performance was attained for the A-phase subtype’s assessments, with an accuracy range of 82%–88%. Furthermore, in the examined dataset’s variations, the API metric’s average error varied from 0.15 to 0.25 (with a median range of 0.11–0.24). These results were attained without manually removing wake or rapid eye movement periods, leading to a methodology suitable to produce a fully automatic CAP scoring algorithm. Conclusions Metrics based on API can be understood as a new view for CAP analysis, where the goal is to produce and examine a sleep stability profile.

Funder

Portuguese Foundation for Science and Technology

Agência Regional para o Desenvolvimento da Investigação, Tecnologia e Inovação

European Social Fund

NordForsk

Business Finland

Academy of Finland

Kuopio University Hospital Catchment Area for the State Research Funding

Finnish Cultural Foundation—North Savo Regional Fund

Tampere Tuberculosis Foundation

Publisher

Oxford University Press (OUP)

Subject

Physiology (medical),Neurology (clinical)

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