Automatic detection of microsleep episodes with feature-based machine learning

Author:

Skorucak Jelena123ORCID,Hertig-Godeschalk Anneke45,Schreier David R456ORCID,Malafeev Alexander12,Mathis Johannes4,Achermann Peter1237ORCID

Affiliation:

1. Institute of Pharmacology and Toxicology, University of Zurich, Zurich, Switzerland

2. Neuroscience Center Zurich, University of Zurich and ETH Zurich, Zurich, Switzerland

3. Sleep and Health Zurich, University of Zurich, Zurich, Switzerland

4. Department of Neurology, Inselspital, Bern University Hospital, University of Bern, Bern, Switzerland

5. Graduate School for Health Sciences, University of Bern, Bern, Switzerland

6. Department of Medicine, Spital STS AG Thun, Switzerland

7. The KEY Institute for Brain‑Mind Research, Department of Psychiatry, Psychotherapy and Psychosomatics, University Hospital of Psychiatry, Zurich, Switzerland

Abstract

AbstractStudy ObjectivesMicrosleep episodes (MSEs) are brief episodes of sleep, mostly defined to be shorter than 15 s. In the electroencephalogram (EEG), MSEs are mainly characterized by a slowing in frequency. The identification of early signs of sleepiness and sleep (e.g. MSEs) is of considerable clinical and practical relevance. Under laboratory conditions, the maintenance of wakefulness test (MWT) is often used for assessing vigilance.MethodsWe analyzed MWT recordings of 76 patients referred to the Sleep-Wake-Epilepsy-Center. MSEs were scored by experts defined by the occurrence of theta dominance on ≥1 occipital derivation lasting 1–15 s, whereas the eyes were at least 80% closed. We calculated spectrograms using an autoregressive model of order 16 of 1 s epochs moved in 200 ms steps in order to visualize oscillatory activity and derived seven features per derivation: power in delta, theta, alpha and beta bands, ratio theta/(alpha + beta), quantified eye movements, and median frequency. Three algorithms were used for MSE classification: support vector machine (SVM), random forest (RF), and an artificial neural network (long short-term memory [LSTM] network). Data of 53 patients were used for the training of the classifiers, and 23 for testing.ResultsMSEs were identified with a high performance (sensitivity, specificity, precision, accuracy, and Cohen’s kappa coefficient). Training revealed that delta power and the ratio theta/(alpha + beta) were most relevant features for the RF classifier and eye movements for the LSTM network.ConclusionsThe automatic detection of MSEs was successful for our EEG-based definition of MSEs, with good performance of all algorithms applied.

Funder

Swiss National Science Foundation

Publisher

Oxford University Press (OUP)

Subject

Physiology (medical),Neurology (clinical)

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