Choosing Wavelet Methods, Filters, and Lengths for Functional Brain Network Construction
Zitong Zhang, Qawi K. Telesford, Chad Giusti, Kelvin O. Lim, Danielle, S. Bassett

TL;DR
This study systematically evaluates how different wavelet methods, filters, and lengths affect the construction and analysis of functional brain networks from neuroimaging data, emphasizing their impact on reliability and disease classification.
Contribution
It provides practical guidelines for selecting wavelet parameters to improve the reliability and sensitivity of brain network diagnostics in neuroimaging studies.
Findings
MODWT produces less variable estimates than DWT.
Wavelet length has a greater impact on network diagnostics than wavelet type.
Wavelet length influences sensitivity to disease differences and classification accuracy.
Abstract
Wavelet methods are widely used to decompose fMRI, EEG, or MEG signals into time series representing neurophysiological activity in fixed frequency bands. Using these time series, one can estimate frequency-band specific functional connectivity between sensors or regions of interest, and thereby construct functional brain networks that can be examined from a graph theoretic perspective. Despite their common use, however, practical guidelines for the choice of wavelet method, filter, and length have remained largely undelineated. Here, we explicitly explore the effects of wavelet method (MODWT vs. DWT), wavelet filter (Daubechies Extremal Phase, Daubechies Least Asymmetric, and Coiflet families), and wavelet length (2 to 24) - each essential parameters in wavelet-based methods - on the estimated values of network diagnostics and in their sensitivity to alterations in psychiatric disease.…
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