Developing a Rigorous Method for Detecting Power-Law Scaling and Critical Dynamics in fMRI Brain Signals

Erhan Asad Javed, University of British Columbia, Vancouver, Canada; BC Children’s Hospital Research Institute, Vancouver, Canada; Alexander Weber, University of British Columbia, Vancouver, Canada

Presentation Info

Conference: Cognitive Neuroscience Society (CNS) 2026
Poster: F97
Series: Sketchpad Series
Poster Session: F
Date: Tuesday, March 10, 2026
Time: 8:00 – 10:00 am PDT
Location: Fairview/Kitsilano Ballrooms
Topic Area: METHODS: Neuroimaging

Abstract

The Critical Brain Theory suggests the brain evolved to operate in a critical state, balanced between order and disorder. Critical systems show scale-invariance and long-range temporal correlations. Accurately measuring these scale-free dynamics can deepen our understanding of brain function and health; however, current estimation methods are often inconsistent, sensitive to preprocessing choices, and insufficiently rigorous. This project aimed to create a Python-based signal-processing tool to (1) test for power-law distributions (scale-invariance), (2) classify signals as fractional Gaussian noise (fGn) or fractional Brownian motion (fBm), and (3) estimate the Hurst exponent (H), which quantifies long-range temporal correlations, in both simulated and fMRI brain signals. Simulated time series with known H values were used to benchmark and validate estimation accuracy, preprocessing strategies, and classification performance. Power spectral density (PSD) analysis and log-log regression extracted scaling exponents, while automated frequency-window selection and Monte Carlo testing validated power-law fits and robustness. Results show that preprocessing has a substantial impact on power-law detection and parameter estimation. In particular, “Bridge Window Detrend” preprocessing combined with PSD-based slope estimation most accurately classified fGn versus fBm, achieving over 90% classification accuracy and stable H estimates across signal lengths. Application of the validated pipeline to voxel-wise resting-state fMRI data revealed reproducible detection of region-specific temporal dynamics consistent with scale-free behavior. Future work will extend this framework to study spatial correlations, brain-state transitions, and their links to neural criticality. Together, these results establish a robust and validated framework for detecting power-law scaling and long-range temporal correlations in fMRI brain signals.

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