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Sleep in patients with disorders of consciousness characterized by means of machine learning

Sleep has been proposed to indicate preserved residual brain functioning in patients suffering from disorders of consciousness (DOC) after awakening from coma. However, a reliable characterization of sleep patterns in this clinical population continues to be challenging given severely altered brain...

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Autores principales: Wielek, Tomasz, Lechinger, Julia, Wislowska, Malgorzata, Blume, Christine, Ott, Peter, Wegenkittl, Stefan, del Giudice, Renata, Heib, Dominik P. J., Mayer, Helmut A., Laureys, Steven, Pichler, Gerald, Schabus, Manuel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5749793/
https://www.ncbi.nlm.nih.gov/pubmed/29293607
http://dx.doi.org/10.1371/journal.pone.0190458
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author Wielek, Tomasz
Lechinger, Julia
Wislowska, Malgorzata
Blume, Christine
Ott, Peter
Wegenkittl, Stefan
del Giudice, Renata
Heib, Dominik P. J.
Mayer, Helmut A.
Laureys, Steven
Pichler, Gerald
Schabus, Manuel
author_facet Wielek, Tomasz
Lechinger, Julia
Wislowska, Malgorzata
Blume, Christine
Ott, Peter
Wegenkittl, Stefan
del Giudice, Renata
Heib, Dominik P. J.
Mayer, Helmut A.
Laureys, Steven
Pichler, Gerald
Schabus, Manuel
author_sort Wielek, Tomasz
collection PubMed
description Sleep has been proposed to indicate preserved residual brain functioning in patients suffering from disorders of consciousness (DOC) after awakening from coma. However, a reliable characterization of sleep patterns in this clinical population continues to be challenging given severely altered brain oscillations, frequent and extended artifacts in clinical recordings and the absence of established staging criteria. In the present study, we try to address these issues and investigate the usefulness of a multivariate machine learning technique based on permutation entropy, a complexity measure. Specifically, we used long-term polysomnography (PSG), along with video recordings in day and night periods in a sample of 23 DOC; 12 patients were diagnosed as Unresponsive Wakefulness Syndrome (UWS) and 11 were diagnosed as Minimally Conscious State (MCS). Eight hour PSG recordings of healthy sleepers (N = 26) were additionally used for training and setting parameters of supervised and unsupervised model, respectively. In DOC, the supervised classification (wake, N1, N2, N3 or REM) was validated using simultaneous videos which identified periods with prolonged eye opening or eye closure.The supervised classification revealed that out of the 23 subjects, 11 patients (5 MCS and 6 UWS) yielded highly accurate classification with an average F1-score of 0.87 representing high overlap between the classifier predicting sleep (i.e. one of the 4 sleep stages) and closed eyes. Furthermore, the unsupervised approach revealed a more complex pattern of sleep-wake stages during the night period in the MCS group, as evidenced by the presence of several distinct clusters. In contrast, in UWS patients no such clustering was found. Altogether, we present a novel data-driven method, based on machine learning that can be used to gain new and unambiguous insights into sleep organization and residual brain functioning of patients with DOC.
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spelling pubmed-57497932018-01-26 Sleep in patients with disorders of consciousness characterized by means of machine learning Wielek, Tomasz Lechinger, Julia Wislowska, Malgorzata Blume, Christine Ott, Peter Wegenkittl, Stefan del Giudice, Renata Heib, Dominik P. J. Mayer, Helmut A. Laureys, Steven Pichler, Gerald Schabus, Manuel PLoS One Research Article Sleep has been proposed to indicate preserved residual brain functioning in patients suffering from disorders of consciousness (DOC) after awakening from coma. However, a reliable characterization of sleep patterns in this clinical population continues to be challenging given severely altered brain oscillations, frequent and extended artifacts in clinical recordings and the absence of established staging criteria. In the present study, we try to address these issues and investigate the usefulness of a multivariate machine learning technique based on permutation entropy, a complexity measure. Specifically, we used long-term polysomnography (PSG), along with video recordings in day and night periods in a sample of 23 DOC; 12 patients were diagnosed as Unresponsive Wakefulness Syndrome (UWS) and 11 were diagnosed as Minimally Conscious State (MCS). Eight hour PSG recordings of healthy sleepers (N = 26) were additionally used for training and setting parameters of supervised and unsupervised model, respectively. In DOC, the supervised classification (wake, N1, N2, N3 or REM) was validated using simultaneous videos which identified periods with prolonged eye opening or eye closure.The supervised classification revealed that out of the 23 subjects, 11 patients (5 MCS and 6 UWS) yielded highly accurate classification with an average F1-score of 0.87 representing high overlap between the classifier predicting sleep (i.e. one of the 4 sleep stages) and closed eyes. Furthermore, the unsupervised approach revealed a more complex pattern of sleep-wake stages during the night period in the MCS group, as evidenced by the presence of several distinct clusters. In contrast, in UWS patients no such clustering was found. Altogether, we present a novel data-driven method, based on machine learning that can be used to gain new and unambiguous insights into sleep organization and residual brain functioning of patients with DOC. Public Library of Science 2018-01-02 /pmc/articles/PMC5749793/ /pubmed/29293607 http://dx.doi.org/10.1371/journal.pone.0190458 Text en © 2018 Wielek 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
Wielek, Tomasz
Lechinger, Julia
Wislowska, Malgorzata
Blume, Christine
Ott, Peter
Wegenkittl, Stefan
del Giudice, Renata
Heib, Dominik P. J.
Mayer, Helmut A.
Laureys, Steven
Pichler, Gerald
Schabus, Manuel
Sleep in patients with disorders of consciousness characterized by means of machine learning
title Sleep in patients with disorders of consciousness characterized by means of machine learning
title_full Sleep in patients with disorders of consciousness characterized by means of machine learning
title_fullStr Sleep in patients with disorders of consciousness characterized by means of machine learning
title_full_unstemmed Sleep in patients with disorders of consciousness characterized by means of machine learning
title_short Sleep in patients with disorders of consciousness characterized by means of machine learning
title_sort sleep in patients with disorders of consciousness characterized by means of machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5749793/
https://www.ncbi.nlm.nih.gov/pubmed/29293607
http://dx.doi.org/10.1371/journal.pone.0190458
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