2023
DOI: 10.1101/2023.10.13.562264
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EEG spectral attractors identify a geometric core of resting brain activity

Parham Pourdavood,
Michael S. Jacob

Abstract: Spectral analysis of electroencephalographic (EEG) data simplifies the characterization of periodic band parameters but can obscure underlying dynamics. By contrast, reconstruction of neural activity in state-space preserves geometric complexity in the form of a multidimensional, global attractor. Here we combine these perspectives, inferring complexity and shared dynamics from eigen-time-delay embedding of periodic and aperiodic spectral parameters to yield unique dynamical attractors for each EEG parameter. … Show more

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