Marking stages of REM and non-REM sleep using recurrent analysis

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Abstract

The purpose of this study — to develop a simple technique for labeling sleep stages according to EEG data obtained from half-somnography recordings. To test the work of the method, it will be applied to three groups of subjects: conditionally healthy, patients with Parkinson’s disease, patients with sleep apnea. Methods. In this work, to recognize sleep stages, we use the calculation of a recurrent indicator and its subsequent assessment. It is shown that the stages of REM (Rapid Eye Movement) and non-REM sleep demonstrate different values of the recurrent index. Results. Depending on the range in which the recurrent indicator falls, the stages of REM and non-REM sleep were determined for the subjects, according to their nightly polysomnographic records. For three groups of subjects, the average knowledge of the accuracy of the method was calculated, which for all groups exceeded 72.5%. Conclusion. It is shown that on the basis of recurrent analysis it is possible to create a simple and effective method for recognizing sleep stages. For patients with apnea, the average accuracy of the method is higher than for apparently healthy subjects, for whom, in turn, this value was higher than for patients with Parkinson’s disease. This can be explained by the fact that the variability in the group of statistical characteristics of sleep stages in patients with apnea is lower, and in patients with Parkinson’s disease is higher, compared with apparently healthy subjects.

About the authors

Elizaveta Petrovna Emelyanova

Saratov State University

ORCID iD: 0000-0001-5535-8921
SPIN-code: 6722-8649
ul. Astrakhanskaya, 83, Saratov, 410012, Russia

Anton Olegovich Selskii

Saratov State University

ORCID iD: 0000-0003-3175-895X
SPIN-code: 7269-0414
Scopus Author ID: 54882328300
ResearcherId: A-9503-2015
ul. Astrakhanskaya, 83, Saratov, 410012, Russia

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