On stabilizing the variance of dynamic functional brain connectivity time series
William Hedley Thompson, Peter Fransson

TL;DR
This paper evaluates variance stabilization methods for dynamic functional brain connectivity time series, revealing that combining Fisher and Box-Cox transforms improves Gaussianity and stability, aiding subsequent analyses.
Contribution
It systematically compares variance stabilization strategies, showing that combining Fisher and Box-Cox transforms enhances the Gaussianity and stability of connectivity time series.
Findings
Fisher transform alone may distort Gaussianity in dFC time series.
Adding Box-Cox after Fisher transform improves variance stabilization.
Combined transforms outperform individual methods in simulations and fMRI data.
Abstract
Assessment of dynamic functional brain connectivity (dFC) based on fMRI data is an increasingly popular strategy to investigate temporal dynamics of the brain's large-scale network architecture. Current practice when deriving connectivity estimates over time is to use the Fisher transform which aims to stabilize the variance of correlation values that fluctuate around varying true correlation values. It is however unclear how well the stabilization of signal variance performed by the Fisher transform works for each connectivity time series, when the true correlation is assumed to be fluctuating. This is of importance because many subsequent analyses either assume or perform better when the time series have stable variance or adheres to an approximate Gaussian distribution. In this paper, using simulations and analysis of resting-state fMRI data, we analyze the effect of applying…
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