Author
Listed:
- David T Jones
- Prashanthi Vemuri
- Matthew C Murphy
- Jeffrey L Gunter
- Matthew L Senjem
- Mary M Machulda
- Scott A Przybelski
- Brian E Gregg
- Kejal Kantarci
- David S Knopman
- Bradley F Boeve
- Ronald C Petersen
- Clifford R Jack Jr
Abstract
Task-free functional magnetic resonance imaging (TF-fMRI) has great potential for advancing the understanding and treatment of neurologic illness. However, as with all measures of neural activity, variability is a hallmark of intrinsic connectivity networks (ICNs) identified by TF-fMRI. This variability has hampered efforts to define a robust metric of connectivity suitable as a biomarker for neurologic illness. We hypothesized that some of this variability rather than representing noise in the measurement process, is related to a fundamental feature of connectivity within ICNs, which is their non-stationary nature. To test this hypothesis, we used a large (n = 892) population-based sample of older subjects to construct a well characterized atlas of 68 functional regions, which were categorized based on independent component analysis network of origin, anatomical locations, and a functional meta-analysis. These regions were then used to construct dynamic graphical representations of brain connectivity within a sliding time window for each subject. This allowed us to demonstrate the non-stationary nature of the brain’s modular organization and assign each region to a “meta-modular” group. Using this grouping, we then compared dwell time in strong sub-network configurations of the default mode network (DMN) between 28 subjects with Alzheimer’s dementia and 56 cognitively normal elderly subjects matched 1∶2 on age, gender, and education. We found that differences in connectivity we and others have previously observed in Alzheimer’s disease can be explained by differences in dwell time in DMN sub-network configurations, rather than steady state connectivity magnitude. DMN dwell time in specific modular configurations may also underlie the TF-fMRI findings that have been described in mild cognitive impairment and cognitively normal subjects who are at risk for Alzheimer’s dementia.
Suggested Citation
David T Jones & Prashanthi Vemuri & Matthew C Murphy & Jeffrey L Gunter & Matthew L Senjem & Mary M Machulda & Scott A Przybelski & Brian E Gregg & Kejal Kantarci & David S Knopman & Bradley F Boeve &, 2012.
"Non-Stationarity in the “Resting Brain’s” Modular Architecture,"
PLOS ONE, Public Library of Science, vol. 7(6), pages 1-15, June.
Handle:
RePEc:plo:pone00:0039731
DOI: 10.1371/journal.pone.0039731
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