Microstate la gi

Microstate la gi

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Highlights

EEG microstates capture discrete spatiotemporal patterns of global neuronal activity.

We studied their temporal dynamics in relation to different states of consciousness.

We estimate the complexity of microstates sequences.

With moderate sedation complexity increases then decreases with full sedation.

Complexity of microstate sequences is sensitive to altered states of consciousness.

Abstract

Evidence suggests that the stream of consciousness is parsed into transient brain states manifesting themselves as discrete spatiotemporal patterns of global neuronal activity. Electroencephalographical (EEG) microstates are proposed as the neurophysiological correlates of these transiently stable brain states that last for fractions of seconds. To further understand the link between EEG microstate dynamics and consciousness, we continuously recorded high-density EEG in 23 surgical patients from their awake state to unconsciousness, induced by step-wise increasing concentrations of the intravenous anesthetic propofol. Besides the conventional parameters of microstate dynamics, we introduce a new implementation of a method to estimate the complexity of microstate sequences. The brain activity under the surgical anesthesia showed a decreased sequence complexity of the stereotypical microstates, which became sparser and longer-lasting. However, we observed an initial increase in microstates’ temporal dynamics and complexity with increasing depth of sedation leading to a distinctive “U-shape” that may be linked to the paradoxical excitation induced by moderate levels of propofol. Our results support the idea that the brain is in a metastable state under normal conditions, balancing between order and chaos in order to flexibly switch from one state to another. The temporal dynamics of EEG microstates indicate changes of this critical balance between stability and transition that lead to altered states of consciousness.

Keywords

Propofol

General anesthesia

EEG

Microstates

Lempel-Ziv complexity

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© 2022 Published by Elsevier Inc.

  • PDFView PDF

Under a Creative Commons license

Open access

Highlights

+microstate is a toolbox for M/EEG microstate analysis in sensor/source space

It is open-access and freely-available, and implemented in MATLAB

It includes preprocessing, microstate analysis, statistics, and visualisation

Advancements include source-space, simulations, and new statistical tools

Validation examples are presented using freely-available data and tutorial scripts

Abstract

+microstate is a MATLAB toolbox for brain functional microstate analysis. It builds upon previous EEG microstate literature and toolboxes by including algorithms for source-space microstate analysis. +microstate includes codes for performing individual- and group-level brain microstate analysis in resting-state and task-based data including event-related potentials/fields. Functions are included to visualise and perform statistical analysis of microstate sequences, including novel advanced statistical approaches such as statistical testing for associated functional connectivity patterns, cluster-permutation topographic ANOVAs, and χ2 analysis of microstate probabilities in response to stimuli. Additionally, codes for simulating microstate sequences and their associated M/EEG data are included in the toolbox, which can be used to generate artificial data with ground truth microstates and to validate the methodology. +microstate integrates with widely used toolboxes for M/EEG processing including Fieldtrip, SPM, LORETA/sLORETA, EEGLAB, and Brainstorm to aid with accessibility, and includes wrappers for pre-existing toolboxes for brain-state estimation such as Hidden Markov modelling (HMM-MAR) and independent component analysis (FastICA) to aid with direct comparison with these techniques. In this paper, we first introduce +microstate before subsequently performing example analyses using open access datasets to demonstrate and validate the methodology. MATLAB live scripts for each of these analyses are included in +microstate, to act as a tutorial and to aid with reproduction of the results presented in this manuscript.

Keywords

Microstate Analysis

Electroencephalography

Magnetoencephalography

Functional Connectivity Dynamics

Toolbox

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© 2022 The Authors. Published by Elsevier Inc.