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Sleep staging in the ICU with heart rate variability and breathing signals. An exploratory cross-sectional study using deep neural networks

Introduction: To measure sleep in the intensive care unit (ICU), full polysomnography is impractical, while activity monitoring and subjective assessments are severely confounded. However, sleep is an intensely networked state, and reflected in numerous signals. Here, we explore the feasibility of e...

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Autores principales: Ganglberger, Wolfgang, Krishnamurthy, Parimala Velpula, Quadri, Syed A., Tesh, Ryan A., Bucklin, Abigail A., Adra, Noor, Da Silva Cardoso, Madalena, Leone, Michael J., Hemmige, Aashritha, Rajan, Subapriya, Panneerselvam, Ezhil, Paixao, Luis, Higgins, Jasmine, Ayub, Muhammad Abubakar, Shao, Yu-Ping, Coughlin, Brian, Sun, Haoqi, Ye, Elissa M., Cash, Sydney S., Thompson, B. Taylor, Akeju, Oluwaseun, Kuller, David, Thomas, Robert J., Westover, M. Brandon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10013021/
https://www.ncbi.nlm.nih.gov/pubmed/36926545
http://dx.doi.org/10.3389/fnetp.2023.1120390
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author Ganglberger, Wolfgang
Krishnamurthy, Parimala Velpula
Quadri, Syed A.
Tesh, Ryan A.
Bucklin, Abigail A.
Adra, Noor
Da Silva Cardoso, Madalena
Leone, Michael J.
Hemmige, Aashritha
Rajan, Subapriya
Panneerselvam, Ezhil
Paixao, Luis
Higgins, Jasmine
Ayub, Muhammad Abubakar
Shao, Yu-Ping
Coughlin, Brian
Sun, Haoqi
Ye, Elissa M.
Cash, Sydney S.
Thompson, B. Taylor
Akeju, Oluwaseun
Kuller, David
Thomas, Robert J.
Westover, M. Brandon
author_facet Ganglberger, Wolfgang
Krishnamurthy, Parimala Velpula
Quadri, Syed A.
Tesh, Ryan A.
Bucklin, Abigail A.
Adra, Noor
Da Silva Cardoso, Madalena
Leone, Michael J.
Hemmige, Aashritha
Rajan, Subapriya
Panneerselvam, Ezhil
Paixao, Luis
Higgins, Jasmine
Ayub, Muhammad Abubakar
Shao, Yu-Ping
Coughlin, Brian
Sun, Haoqi
Ye, Elissa M.
Cash, Sydney S.
Thompson, B. Taylor
Akeju, Oluwaseun
Kuller, David
Thomas, Robert J.
Westover, M. Brandon
author_sort Ganglberger, Wolfgang
collection PubMed
description Introduction: To measure sleep in the intensive care unit (ICU), full polysomnography is impractical, while activity monitoring and subjective assessments are severely confounded. However, sleep is an intensely networked state, and reflected in numerous signals. Here, we explore the feasibility of estimating conventional sleep indices in the ICU with heart rate variability (HRV) and respiration signals using artificial intelligence methods Methods: We used deep learning models to stage sleep with HRV (through electrocardiogram) and respiratory effort (through a wearable belt) signals in critically ill adult patients admitted to surgical and medical ICUs, and in age and sex-matched sleep laboratory patients Results: We studied 102 adult patients in the ICU across multiple days and nights, and 220 patients in a clinical sleep laboratory. We found that sleep stages predicted by HRV- and breathing-based models showed agreement in 60% of the ICU data and in 81% of the sleep laboratory data. In the ICU, deep NREM (N2 + N3) proportion of total sleep duration was reduced (ICU 39%, sleep laboratory 57%, p < 0.01), REM proportion showed heavy-tailed distribution, and the number of wake transitions per hour of sleep (median 3.6) was comparable to sleep laboratory patients with sleep-disordered breathing (median 3.9). Sleep in the ICU was also fragmented, with 38% of sleep occurring during daytime hours. Finally, patients in the ICU showed faster and less variable breathing patterns compared to sleep laboratory patients Conclusion: The cardiovascular and respiratory networks encode sleep state information, which, together with artificial intelligence methods, can be utilized to measure sleep state in the ICU
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spelling pubmed-100130212023-03-15 Sleep staging in the ICU with heart rate variability and breathing signals. An exploratory cross-sectional study using deep neural networks Ganglberger, Wolfgang Krishnamurthy, Parimala Velpula Quadri, Syed A. Tesh, Ryan A. Bucklin, Abigail A. Adra, Noor Da Silva Cardoso, Madalena Leone, Michael J. Hemmige, Aashritha Rajan, Subapriya Panneerselvam, Ezhil Paixao, Luis Higgins, Jasmine Ayub, Muhammad Abubakar Shao, Yu-Ping Coughlin, Brian Sun, Haoqi Ye, Elissa M. Cash, Sydney S. Thompson, B. Taylor Akeju, Oluwaseun Kuller, David Thomas, Robert J. Westover, M. Brandon Front Netw Physiol Network Physiology Introduction: To measure sleep in the intensive care unit (ICU), full polysomnography is impractical, while activity monitoring and subjective assessments are severely confounded. However, sleep is an intensely networked state, and reflected in numerous signals. Here, we explore the feasibility of estimating conventional sleep indices in the ICU with heart rate variability (HRV) and respiration signals using artificial intelligence methods Methods: We used deep learning models to stage sleep with HRV (through electrocardiogram) and respiratory effort (through a wearable belt) signals in critically ill adult patients admitted to surgical and medical ICUs, and in age and sex-matched sleep laboratory patients Results: We studied 102 adult patients in the ICU across multiple days and nights, and 220 patients in a clinical sleep laboratory. We found that sleep stages predicted by HRV- and breathing-based models showed agreement in 60% of the ICU data and in 81% of the sleep laboratory data. In the ICU, deep NREM (N2 + N3) proportion of total sleep duration was reduced (ICU 39%, sleep laboratory 57%, p < 0.01), REM proportion showed heavy-tailed distribution, and the number of wake transitions per hour of sleep (median 3.6) was comparable to sleep laboratory patients with sleep-disordered breathing (median 3.9). Sleep in the ICU was also fragmented, with 38% of sleep occurring during daytime hours. Finally, patients in the ICU showed faster and less variable breathing patterns compared to sleep laboratory patients Conclusion: The cardiovascular and respiratory networks encode sleep state information, which, together with artificial intelligence methods, can be utilized to measure sleep state in the ICU Frontiers Media S.A. 2023-02-27 /pmc/articles/PMC10013021/ /pubmed/36926545 http://dx.doi.org/10.3389/fnetp.2023.1120390 Text en Copyright © 2023 Ganglberger, Krishnamurthy, Quadri, Tesh, Bucklin, Adra, Da Silva Cardoso, Leone, Hemmige, Rajan, Panneerselvam, Paixao, Higgins, Ayub, Shao, Coughlin, Sun, Ye, Cash, Thompson, Akeju, Kuller, Thomas and Westover. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Network Physiology
Ganglberger, Wolfgang
Krishnamurthy, Parimala Velpula
Quadri, Syed A.
Tesh, Ryan A.
Bucklin, Abigail A.
Adra, Noor
Da Silva Cardoso, Madalena
Leone, Michael J.
Hemmige, Aashritha
Rajan, Subapriya
Panneerselvam, Ezhil
Paixao, Luis
Higgins, Jasmine
Ayub, Muhammad Abubakar
Shao, Yu-Ping
Coughlin, Brian
Sun, Haoqi
Ye, Elissa M.
Cash, Sydney S.
Thompson, B. Taylor
Akeju, Oluwaseun
Kuller, David
Thomas, Robert J.
Westover, M. Brandon
Sleep staging in the ICU with heart rate variability and breathing signals. An exploratory cross-sectional study using deep neural networks
title Sleep staging in the ICU with heart rate variability and breathing signals. An exploratory cross-sectional study using deep neural networks
title_full Sleep staging in the ICU with heart rate variability and breathing signals. An exploratory cross-sectional study using deep neural networks
title_fullStr Sleep staging in the ICU with heart rate variability and breathing signals. An exploratory cross-sectional study using deep neural networks
title_full_unstemmed Sleep staging in the ICU with heart rate variability and breathing signals. An exploratory cross-sectional study using deep neural networks
title_short Sleep staging in the ICU with heart rate variability and breathing signals. An exploratory cross-sectional study using deep neural networks
title_sort sleep staging in the icu with heart rate variability and breathing signals. an exploratory cross-sectional study using deep neural networks
topic Network Physiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10013021/
https://www.ncbi.nlm.nih.gov/pubmed/36926545
http://dx.doi.org/10.3389/fnetp.2023.1120390
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