Self-similar correlation function in brain resting-state fMRI
Paul Expert, Renaud Lambiotte, Dante R. Chialvo, Kim Christensen,, Henrik Jeldtoft Jensen, David J. Sharp, Federico Turkheimer

TL;DR
This paper demonstrates that resting-state fMRI signals exhibit self-similar correlation structures in space and time, revealing the brain's dynamic balance between segregation and integration, which may serve as a marker of brain health.
Contribution
It introduces the concept of self-similar correlation functions in brain activity, providing new insights into the large-scale dynamical properties of resting-state networks.
Findings
Correlation functions show self-similarity in space and time.
Power spectrum exhibits 1/f behavior.
Brain operates in a balanced state between segregation and integration.
Abstract
Adaptive behavior, cognition and emotion are the result of a bewildering variety of brain spatiotemporal activity patterns. An important problem in neuroscience is to understand the mechanism by which the human brain's 100 billion neurons and 100 trillion synapses manage to produce this large repertoire of cortical configurations in a flexible manner. In addition, it is recognized that temporal correlations across such configurations cannot be arbitrary, but they need to meet two conflicting demands: while diverse cortical areas should remain functionally segregated from each other, they must still perform as a collective, i.e., they are functionally integrated. Here, we investigate these large-scale dynamical properties by inspecting the character of the spatiotemporal correlations of brain resting-state activity. In physical systems, these correlations in space and time are captured…
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