Variability of model-free and model-based quantitative measures of EEG
Sacha Jennifer van Albada, Christopher J. Rennie, Peter A. Robinson

TL;DR
This study quantifies intra- and inter-individual variability in EEG measures and model parameters, providing insights into the time scales of change and the reliability of different EEG features over short and long periods.
Contribution
It introduces a comprehensive analysis of variability in classical and model-based EEG measures, highlighting the reproducibility of specific spectral features and model parameters over time.
Findings
Theta, alpha, and beta powers are most reproducible.
Most spectral parameter changes occur within minutes.
Repeat recordings capture the majority of variability in resting EEG.
Abstract
The extent of intra-individual and inter-individual variability is an important factor in determining the statistical, and hence possibly clinical, significance of observed differences in the EEG. This study investigates the changes in classical quantitative EEG (qEEG) measures, as well as of parameters obtained by fitting frequency spectra to a continuum model of brain electrical activity. These parameters may have extra variability due to model selection and fitting. Besides estimating levels of intra-individual and inter-individual variability, we determine approximate time scales for change in qEEG measures and model parameters. This provides an estimate of the recording length needed to capture a given percentage of the total intra-individual variability. Also, if more precise time scales can be obtained in future, these may aid the characterization of physiological processes…
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