Multi-scale wavelet coherence
Haibo Wu, Marina I. Knight, Hernando Ombao

TL;DR
This paper introduces a wavelet-based statistical framework for analyzing multi-scale, time-varying cross-oscillatory interactions in brain signals, improving understanding of functional connectivity, especially in ADHD diagnosis.
Contribution
It develops a new multivariate locally stationary wavelet process model that captures cross-scale dependencies and provides a spectral domain measure for dynamic brain connectivity analysis.
Findings
Identified novel cross-scale interactions in EEG data.
Differentiated ADHD and control groups based on brain connectivity.
Demonstrated robustness of the method in complex dependence scenarios.
Abstract
This paper develops a novel statistical approach to characterize temporally localised cross-oscillatory interactions between channels in a functional brain network. Brain signals are generally nonstationary and the proposed framework uses wavelets as an effective tool for capturing (i) single-scale channel transient features, due to their adaptiveness to the dynamic signal properties, and (ii) cross-scale channel interactions, due to their multi-scale nature. Our approach formalises scale-specific subprocesses and cross-scale (CS) dependencies for a new class of multivariate locally stationary (MvLSW) wavelet processes that we refer to as CS-MvLSW. Under this model, we develop a novel spectral domain time-varying cross-scale dependence measure and its appropriate estimation. Extensive simulation studies demonstrate that the theoretically established properties hold in practice. The…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Neural Networks and Applications · Neural dynamics and brain function
