Time of day dependent longitudinal changes in resting-state fMRI
Permanent link
https://hdl.handle.net/10037/31130Date
2023-07-05Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Longitudinal studies have become more common in the past years due to
their superiority over cross-sectional samples. In light of the ongoing replication
crisis, the factors that may introduce variability in resting-state networks have
been widely debated. This publication aimed to address the potential sources of
variability, namely, time of day, sex, and age, in longitudinal studies within individual
resting-state fMRI data. DCM was used to analyze the fMRI time series, extracting
EC connectivity measures and parameters that define the BOLD signal. In addition,
a two-way ANOVA was used to assess the change in EC and parameters that
define the BOLD signal between data collection waves. The results indicate that
time of day and gender have significant model evidence for the parameters that
define the BOLD signal but not EC. From the ANOVA analysis, findings indicate
that there was a significant change in the two nodes of the DMN and their
connections with the fronto-parietal network. Overall, these findings suggest that
in addition to age and gender, which are commonly accounted for in the fMRI data
collection, studies should note the time of day, possibly treating it as a covariate
in longitudinal samples.
Publisher
Frontiers MediaCitation
Vaisvilaite, Andersson, Salami, Specht. Time of day dependent longitudinal changes in resting-state fMRI. Frontiers in Neurology. 2023;14Metadata
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