Abstract

Prior research has shown that during development, there is increased segregation between, and increased integration within, prototypical resting-state functional brain networks. Functional networks are typically defined by static functional connectivity over extended periods of rest. However, little is known about how time-varying properties of functional networks change with age. Likewise, a comparison of standard approaches to functional connectivity may provide a nuanced view of how network integration and segregation are reflected across the lifespan. Therefore, this exploratory study evaluated common approaches to static and dynamic functional network connectivity in a publicly available dataset of subjects ranging from 8 to 75 years of age. Analyses evaluated relationships between age and static resting-state functional connectivity, variability (standard deviation) of connectivity, and mean dwell time of functional network states defined by recurring patterns of whole-brain connectivity. Results showed that older age was associated with decreased static connectivity between nodes of different canonical networks, particularly between the visual system and nodes in other networks. Age was not significantly related to variability of connectivity. Mean dwell time of a network state reflecting high connectivity between visual regions decreased with age, but older age was also associated with increased mean dwell time of a network state reflecting high connectivity within and between canonical sensorimotor and visual networks. Results support a model of increased network segregation over the lifespan and also highlight potential pathways of top-down regulation among networks.

Highlights

  • The organization of the human brain includes distinct functional brain networks that are implicated in different cognitive functions (Fox et al, 2005)

  • The most basic distinction between these terms is that static restingstate functional connectivity (rsFC) refers to properties that do not vary over time, whereas dynamic rsFC refers to properties that vary over time or capture variance in static rsFC over time

  • These approaches each provided a different measure of how brain networks function, which we linked to age-related differences across the lifespan

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Summary

Introduction

The organization of the human brain includes distinct functional brain networks that are implicated in different cognitive functions (Fox et al, 2005). Prior work has demonstrated that restingstate functional connectivity (rsFC) can be used to identify several canonical brain networks that are reliably observed within and between individual subjects (Damoiseaux et al, 2006). Two dimensions of rsFC may contain complementary information about intrinsic properties of network functioning: static rsFC and dynamic rsFC. There is considerable debate regarding how best to disentangle meaningful dynamic signal from measurement noise (Hindriks et al, 2016), dynamic properties may represent the processes by which network form, dissolve, and interact with one another over time (Hutchison et al, 2013; Kaiser et al, 2016)

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