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The dual interpretation of edge time series: Time-varying connectivity versus statistical interaction

26 Jan 15:24
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Models time-varying behavior in terms of activity and connectivity

The dual interpretation of edge time series: Time-varying connectivity versus statistical interaction

Haily Merritt, Amanda Mejia, Richard Betzel

Abstract

Functional connectivity (FC) is frequently operationalized as a correlation. Many studies have examined changes in correlation networks across time, claiming to link time-varying fluctuations to ongoing mental operations and physiological processes. Other studies, however, have called these results into question, noting that statistically indistinguishable patterns of time-varying fluctuations can be obtained by windowing synthetic time series generated from ground-truth stationary correlation structure. Recently, we developed a technique for tracking rapid (framewise) fluctuations in network connectivity over time. Here, we show that these “edge time series” are mathematically equivalent to interaction terms in a specific family of general linear models. We exploit this fact to further demonstrate that time-varying connectivity carries explanatory power above and beyond brain activations. This observation suggests that time-varying connectivity is likely more than a statistical artifact.