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Predictability of arousal in mouse slow wave sleep by accelerometer data

Arousals can be roughly characterized by punctual intrusions of wakefulness into sleep. In a standard perspective, using human electroencephalography (EEG) data, arousals are associated to slow-wave rhythms and K-complex brain activity. The physiological mechanisms that give rise to arousals during...

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Autores principales: Lima, Gustavo Zampier dos Santos, Lopes, Sergio Roberto, Prado, Thiago Lima, Lobao-Soares, Bruno, do Nascimento, George C., Fontenele-Araujo, John, Corso, Gilberto
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5436652/
https://www.ncbi.nlm.nih.gov/pubmed/28545123
http://dx.doi.org/10.1371/journal.pone.0176761
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author Lima, Gustavo Zampier dos Santos
Lopes, Sergio Roberto
Prado, Thiago Lima
Lobao-Soares, Bruno
do Nascimento, George C.
Fontenele-Araujo, John
Corso, Gilberto
author_facet Lima, Gustavo Zampier dos Santos
Lopes, Sergio Roberto
Prado, Thiago Lima
Lobao-Soares, Bruno
do Nascimento, George C.
Fontenele-Araujo, John
Corso, Gilberto
author_sort Lima, Gustavo Zampier dos Santos
collection PubMed
description Arousals can be roughly characterized by punctual intrusions of wakefulness into sleep. In a standard perspective, using human electroencephalography (EEG) data, arousals are associated to slow-wave rhythms and K-complex brain activity. The physiological mechanisms that give rise to arousals during sleep are not yet fully understood. Moreover, subtle body movement patterns, which may characterize arousals both in human and in animals, are usually not detectable by eye perception and are not in general present in sleep studies. In this paper, we focus attention on accelerometer records (AR) to characterize and predict arousal during slow wave sleep (SWS) stage of mice. Furthermore, we recorded the local field potentials (LFP) from the CA1 region in the hippocampus and paired with accelerometer data. The hippocampus signal was also used here to identify the SWS stage. We analyzed the AR dynamics of consecutive arousals using recurrence technique and the determinism (DET) quantifier. Recurrence is a fundamental property of dynamical systems, which can be exploited to characterize time series properties. The DET index evaluates how similar are the evolution of close trajectories: in this sense, it computes how accurate are predictions based on past trajectories. For all analyzed mice in this work, we observed, for the first time, the occurrence of a universal dynamic pattern a few seconds that precedes the arousals during SWS sleep stage based only on the AR signal. The predictability success of an arousal using DET from AR is nearly 90%, while similar analysis using LFP of hippocampus brain region reveal 88% of success. Noteworthy, our findings suggest an unique dynamical behavior pattern preceding an arousal of AR data during sleep. Thus, the employment of this technique applied to AR data may provide useful information about the dynamics of neuronal activities that control sleep-waking switch during SWS sleep period. We argue that the predictability of arousals observed through DET(AR) can be functionally explained by a respiratory-driven modification of neural states. Finally, we believe that the method associating AR data with other physiologic events such as neural rhythms can become an accurate, convenient and non-invasive way of studying the physiology and physiopathology of movement and respiratory processes during sleep.
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spelling pubmed-54366522017-05-27 Predictability of arousal in mouse slow wave sleep by accelerometer data Lima, Gustavo Zampier dos Santos Lopes, Sergio Roberto Prado, Thiago Lima Lobao-Soares, Bruno do Nascimento, George C. Fontenele-Araujo, John Corso, Gilberto PLoS One Research Article Arousals can be roughly characterized by punctual intrusions of wakefulness into sleep. In a standard perspective, using human electroencephalography (EEG) data, arousals are associated to slow-wave rhythms and K-complex brain activity. The physiological mechanisms that give rise to arousals during sleep are not yet fully understood. Moreover, subtle body movement patterns, which may characterize arousals both in human and in animals, are usually not detectable by eye perception and are not in general present in sleep studies. In this paper, we focus attention on accelerometer records (AR) to characterize and predict arousal during slow wave sleep (SWS) stage of mice. Furthermore, we recorded the local field potentials (LFP) from the CA1 region in the hippocampus and paired with accelerometer data. The hippocampus signal was also used here to identify the SWS stage. We analyzed the AR dynamics of consecutive arousals using recurrence technique and the determinism (DET) quantifier. Recurrence is a fundamental property of dynamical systems, which can be exploited to characterize time series properties. The DET index evaluates how similar are the evolution of close trajectories: in this sense, it computes how accurate are predictions based on past trajectories. For all analyzed mice in this work, we observed, for the first time, the occurrence of a universal dynamic pattern a few seconds that precedes the arousals during SWS sleep stage based only on the AR signal. The predictability success of an arousal using DET from AR is nearly 90%, while similar analysis using LFP of hippocampus brain region reveal 88% of success. Noteworthy, our findings suggest an unique dynamical behavior pattern preceding an arousal of AR data during sleep. Thus, the employment of this technique applied to AR data may provide useful information about the dynamics of neuronal activities that control sleep-waking switch during SWS sleep period. We argue that the predictability of arousals observed through DET(AR) can be functionally explained by a respiratory-driven modification of neural states. Finally, we believe that the method associating AR data with other physiologic events such as neural rhythms can become an accurate, convenient and non-invasive way of studying the physiology and physiopathology of movement and respiratory processes during sleep. Public Library of Science 2017-05-18 /pmc/articles/PMC5436652/ /pubmed/28545123 http://dx.doi.org/10.1371/journal.pone.0176761 Text en © 2017 Lima et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Lima, Gustavo Zampier dos Santos
Lopes, Sergio Roberto
Prado, Thiago Lima
Lobao-Soares, Bruno
do Nascimento, George C.
Fontenele-Araujo, John
Corso, Gilberto
Predictability of arousal in mouse slow wave sleep by accelerometer data
title Predictability of arousal in mouse slow wave sleep by accelerometer data
title_full Predictability of arousal in mouse slow wave sleep by accelerometer data
title_fullStr Predictability of arousal in mouse slow wave sleep by accelerometer data
title_full_unstemmed Predictability of arousal in mouse slow wave sleep by accelerometer data
title_short Predictability of arousal in mouse slow wave sleep by accelerometer data
title_sort predictability of arousal in mouse slow wave sleep by accelerometer data
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5436652/
https://www.ncbi.nlm.nih.gov/pubmed/28545123
http://dx.doi.org/10.1371/journal.pone.0176761
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