4.7 Article

Brain fingerprint is based on the aperiodic, scale-free, neuronal activity

Journal

NEUROIMAGE
Volume 277, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2023.120260

Keywords

Neuronal Avalanches; Brain Dynamics; Brain Differentiability; Transition Matrices; Magnetoencephalography

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This study demonstrates that the non-linear part of brain signals carries individual-specific information, playing a crucial role in differentiation. By using neuronal avalanches to characterize fast dynamics between individuals, and comparing with Pearson's correlation, the study shows that selecting the moments and places where neuronal avalanches spread can improve differentiation.
Subject differentiation bears the possibility to individualize brain analyses. However, the nature of the processes generating subject-specific features remains unknown. Most of the current literature uses techniques that assume stationarity (e.g., Pearson's correlation), which might fail to capture the non-linear nature of brain activity. We hypothesize that non-linear perturbations (defined as neuronal avalanches in the context of critical dynamics) spread across the brain and carry subject-specific information, contributing the most to differentiability. To test this hypothesis, we compute the avalanche transition matrix (ATM) from source-reconstructed magnetoencephalographic data, as to characterize subject-specific fast dynamics. We perform differentiability analysis based on the ATMs, and compare the performance to that obtained using Pearson's correlation (which assumes stationarity). We demonstrate that selecting the moments and places where neuronal avalanches spread improves differentiation ( P < 0.0001, permutation testing), despite the fact that most of the data (i.e., the linear part) are discarded. Our results show that the non-linear part of the brain signals carries most of the subject-specific information, thereby clarifying the nature of the processes that underlie individual differentiation. Borrowing from statistical mechanics, we provide a principled way to link emergent large-scale personalized activations to non observable, microscopic processes.

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