Abstract:
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As many US states begin to reopen more fully, lifting mask mandates, travel restrictions and distancing guidelines that were initially implemented to reduce the spread of COVID-19, we explore the spatiality of COVID-19 case infection rate synchrony among regions of neighboring US states. Synchrony is roughly defined as the way two interacting processes or systems are patterned or synchronized in timing and in form in a nonrandom way and can occur with a dynamic lag such that there is a direction of entrainment whereby one system entrains the other. Tschacher and Haken (2019) proposed the use of the surrogate synchrony (SUSY) algorithm to estimate the dyadic coupling between two simultaneous processes based upon time-lagged cross-correlations, with significance assessed utilizing permutation. Using Fisher’s Z transformation to allow for aggregation, we extend the SUSY algorithm to provide an estimate of in-phase synchrony between each US state and its contiguous neighbors. The spatially-varying estimates are then mapped to allow for visualization of regional COVID-19 synchrony, including directionality, which can assist policy makers provide targeted, systematic interventions.
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