Assessment of Anesthesia Depth Using Effective Brain Connectivity Based on Transfer Entropy on EEG Signal

Introduction: Ensuring an adequate Depth of Anesthesia (DOA) during surgery is essential for anesthesiologists. Since the effect of anesthetic drugs is on the central nervous system, brain signals such as Electroencephalogram (EEG) can be used for DOA estimation. Anesthesia can interfere among brain...

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Main Authors: Neda Sanjari, Ahmad Shalbaf, Reza Shalbaf, Jamie Sleigh
Format: Article
Language:English
Published: Iran University of Medical Sciences 2021-03-01
Series:Basic and Clinical Neuroscience
Subjects:
Online Access:http://bcn.iums.ac.ir/article-1-1844-en.html
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spelling doaj-a026e055d29f4ae5b9bbabd0779779cc2021-05-26T10:35:49ZengIran University of Medical SciencesBasic and Clinical Neuroscience2008-126X2228-74422021-03-01122269280Assessment of Anesthesia Depth Using Effective Brain Connectivity Based on Transfer Entropy on EEG SignalNeda Sanjari0Ahmad Shalbaf1Reza Shalbaf2Jamie Sleigh3 Department of Medical Physics and Biomedical Engineering, School of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran. Department of Medical Physics and Biomedical Engineering, School of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran. Institute for Cognitive Science Studies, Tehran, Iran. Department of Anesthesia, Waikato Hospital, Hamilton, New Zealand. Introduction: Ensuring an adequate Depth of Anesthesia (DOA) during surgery is essential for anesthesiologists. Since the effect of anesthetic drugs is on the central nervous system, brain signals such as Electroencephalogram (EEG) can be used for DOA estimation. Anesthesia can interfere among brain regions, so the relationship among different areas can be a key factor in the anesthetic process.  Methods: In this paper, by combining the Wiener causality concept and the conditional mutual information, a nonlinear effective connectivity measure called Transfer Entropy (TE) is presented to describe the relationship between EEG signals at frontal and temporal regions from eight volunteers in three anesthetic states (awake, unconscious and recovery). This index is also compared with Granger causality and partial directional coherence methods as common effective connectivity indexes.  Results: Based on a statistical analysis of the probability predictive value and Kruskal-Wallis statistical method, TE can effectively fallow the effect-site concentration of propofol and distinguish the anesthetic states well, and perform better than the other effective connectivity indexes. This index is also better than Bispectral Index (BIS) as commercial DOA monitor because of the faster response and higher correlation with the drug concentration effect-site, less irregularity in the unconscious state and better ability to distinguish three states of anesthestesia. Conclusion: TE index is a confident indicator for designing a new monitoring system of the two EEG channels for DOA estimation.http://bcn.iums.ac.ir/article-1-1844-en.htmlelectroencephalographyanesthesia depthtransfer entropybispectral index (bis)
collection DOAJ
language English
format Article
sources DOAJ
author Neda Sanjari
Ahmad Shalbaf
Reza Shalbaf
Jamie Sleigh
spellingShingle Neda Sanjari
Ahmad Shalbaf
Reza Shalbaf
Jamie Sleigh
Assessment of Anesthesia Depth Using Effective Brain Connectivity Based on Transfer Entropy on EEG Signal
Basic and Clinical Neuroscience
electroencephalography
anesthesia depth
transfer entropy
bispectral index (bis)
author_facet Neda Sanjari
Ahmad Shalbaf
Reza Shalbaf
Jamie Sleigh
author_sort Neda Sanjari
title Assessment of Anesthesia Depth Using Effective Brain Connectivity Based on Transfer Entropy on EEG Signal
title_short Assessment of Anesthesia Depth Using Effective Brain Connectivity Based on Transfer Entropy on EEG Signal
title_full Assessment of Anesthesia Depth Using Effective Brain Connectivity Based on Transfer Entropy on EEG Signal
title_fullStr Assessment of Anesthesia Depth Using Effective Brain Connectivity Based on Transfer Entropy on EEG Signal
title_full_unstemmed Assessment of Anesthesia Depth Using Effective Brain Connectivity Based on Transfer Entropy on EEG Signal
title_sort assessment of anesthesia depth using effective brain connectivity based on transfer entropy on eeg signal
publisher Iran University of Medical Sciences
series Basic and Clinical Neuroscience
issn 2008-126X
2228-7442
publishDate 2021-03-01
description Introduction: Ensuring an adequate Depth of Anesthesia (DOA) during surgery is essential for anesthesiologists. Since the effect of anesthetic drugs is on the central nervous system, brain signals such as Electroencephalogram (EEG) can be used for DOA estimation. Anesthesia can interfere among brain regions, so the relationship among different areas can be a key factor in the anesthetic process.  Methods: In this paper, by combining the Wiener causality concept and the conditional mutual information, a nonlinear effective connectivity measure called Transfer Entropy (TE) is presented to describe the relationship between EEG signals at frontal and temporal regions from eight volunteers in three anesthetic states (awake, unconscious and recovery). This index is also compared with Granger causality and partial directional coherence methods as common effective connectivity indexes.  Results: Based on a statistical analysis of the probability predictive value and Kruskal-Wallis statistical method, TE can effectively fallow the effect-site concentration of propofol and distinguish the anesthetic states well, and perform better than the other effective connectivity indexes. This index is also better than Bispectral Index (BIS) as commercial DOA monitor because of the faster response and higher correlation with the drug concentration effect-site, less irregularity in the unconscious state and better ability to distinguish three states of anesthestesia. Conclusion: TE index is a confident indicator for designing a new monitoring system of the two EEG channels for DOA estimation.
topic electroencephalography
anesthesia depth
transfer entropy
bispectral index (bis)
url http://bcn.iums.ac.ir/article-1-1844-en.html
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