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Spectral decomposition of EEG microstates in post-traumatic stress disorder

Braeden A. Terpou, Saurabh Bhaskar Shaw, Jean Théberge, Victor Férat, Christoph M. Michel, Margaret C. McKinnon, Ruth A. Lanius, Tomas Ros

2022NeuroImage Clinical33 citationsDOIOpen Access PDF

Abstract

Microstates offer a promising framework to study fast-scale brain dynamics in the resting-state electroencephalogram (EEG). However, microstate dynamics have yet to be investigated in post-traumatic stress disorder (PTSD), despite research demonstrating resting-state alterations in PTSD. We performed microstate-based segmentation of resting-state EEG in a clinical population of participants with PTSD (N = 61) and a non-traumatized, healthy control group (N = 61). Microstate-based measures (i.e., occurrence, mean duration, time coverage) were compared group-wise using broadband (1-30 Hz) and frequency-specific (i.e., delta, theta, alpha, beta bands) decompositions. In the broadband comparisons, the centro-posterior maximum microstate (map E) occurred significantly less frequently (d = -0.64, pFWE = 0.03) and had a significantly shorter mean duration in participants with PTSD as compared to controls (d = -0.71, pFWE < 0.01). These differences were reflected in the narrow frequency bands as well, with lower frequency bands like delta (d = -0.78, pFWE < 0.01), theta (d = -0.74, pFWE = 0.01), and alpha (d = -0.65, pFWE = 0.02) repeating these group-level trends, only with larger effect sizes. Interestingly, a support vector machine classification analysis comparing broadband and frequency-specific measures revealed that models containing only alpha band features significantly out-perform broadband models. When classifying PTSD, the classification accuracy was 76 % and 65 % for the alpha band and the broadband model, respectively (p = 0.03). Taken together, we provide original evidence supporting the clinical utility of microstates as diagnostic markers of PTSD and demonstrate that filtering EEG into distinct frequency bands significantly improves microstate-based classification of a psychiatric disorder.

Topics & Concepts

MinistateElectroencephalographyPattern recognition (psychology)Resting state fMRIArtificial intelligenceFrequency bandPsychologyNuclear magnetic resonancePhysicsNeuroscienceComputer scienceBandwidth (computing)Computer networkFunctional Brain Connectivity StudiesEEG and Brain-Computer InterfacesNeural dynamics and brain function
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