Elsevier

NeuroImage

Volume 220, 15 October 2020, 117111
NeuroImage

Single-scale time-dependent window-sizes in sliding-window dynamic functional connectivity analysis: A validation study

https://doi.org/10.1016/j.neuroimage.2020.117111Get rights and content
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Highlights

  • Data-driven SSTD window-sizes are computed for the sliding-window dynamic functional connectivity (dFC) analysis. .

  • SSTD window-sizes capture time-dependent frequency information at every time-point.

  • DFC computed with SSTD achieves a higher accuracy in predicting impairment in fighters and explains more behavioral variance in healthy adults. .

Abstract

During the past ten years, dynamic functional connectivity (FC) has been extensively studied using the sliding-window method. A fixed window-size is usually selected heuristically, since no consensus exists yet on choice of the optimal window-size. Furthermore, without a known ground-truth, the validity of the computed dynamic FC remains unclear and questionable. In this study, we computed single-scale time-dependent (SSTD) window-sizes for the sliding-window method. SSTD window-sizes were based on the frequency content at every time point of a time series and were computed without any prior information. Therefore, they were time-dependent and data-driven. Using simulated sinusoidal time series with frequency shifts, we demonstrated that SSTD window-sizes captured the time-dependent period (inverse of frequency) information at every time point. We further validated the dynamic FC values computed with SSTD window-sizes with both a classification analysis using fMRI data with a low sampling rate and a regression analysis using fMRI data with a high sampling rate. Specifically, we achieved both a higher classification accuracy in predicting cognitive impairment status in fighters and a larger explained behavioral variance in healthy young adults when using dynamic FC matrices computed with SSTD window-sizes as features, as compared to using dynamic FC matrices computed with the conventional fixed window-sizes. Overall, our study computed and validated SSTD window-sizes in the sliding-window method for dynamic FC analysis. Our results demonstrate that dynamic FC matrices computed with SSTD window-sizes can capture more temporal dynamic information related to behavior and cognitive function.

Keywords

Dynamic functional connectivity (FC)
Single-scale time-dependent (SSTD) window-sizes
Sliding-window analysis
Regression and classification analysis
Empirical mode decomposition (EMD)

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1

These authors contributed equally to this manuscript.