4.4 Article

Hierarchical clustering to measure connectivity in fMRI resting-state data

Journal

MAGNETIC RESONANCE IMAGING
Volume 20, Issue 4, Pages 305-317

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/S0730-725X(02)00503-9

Keywords

functional imaging; resting-state; physiological fluctuations; clustering

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Low frequency oscillations, which-are temporally correlated in functionally related brain regions, characterize the mammalian brain, even when no explicit cognitive-tasks are performed. Functional connectivity MR imaging is used to map regions of the resting brain showing synchronous, regional and slow fluctuations in cerebral blood flow and oxygenation. In this study, we use a hierarchical clustering method to detect similarities of low-frequency fluctuations. We describe one measure of correlations in the low frequency range for classification of resting-state. fMRI data. Furthermore, we investigate the contribution of motion and hardware instabilities to resting-state correlations and provide a-method to reduce artifacts. For all cortical regions studied and clusters obtained, we quantify the degree of contamination of functional connectivity maps by the respiratory and cardiac cycle. Results indicate that patterns of functional connectivity can be obtained with hierarchical clustering that resemble known neuronal connections. The corresponding voxel time series do not show significant correlations in the respiratory or cardiac frequency band. (C) 2002 Elsevier Science Inc. All rights reserved.

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