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Magn Reson Imaging. 2009 Jun;27(5):691-700. doi: 10.1016/j.mri.2008.09.002. Epub 2008 Nov 25.

Surface-based functional magnetic resonance imaging analysis of partial brain echo planar imaging data at 1.5 T.

Author information

1
Department of Biomedical Engineering, Hanyang University, P.O. Box 55, Sungdong, Seoul 133-605, South Korea.

Abstract

Surface-based functional magnetic resonance imaging (fMRI) analysis is more sensitive and accurate than volume-based analysis for detecting neural activation. However, these advantages are less important in practical fMRI experiments with commonly used 1.5-T magnetic resonance devices because of the resolution gap between the echo planar imaging data and the cortical surface models. We expected high-resolution segmented partial brain echo planar imaging (EPI) data to overcome this problem, and the activation patterns of the high-resolution data could be different from the low-resolution data. For the practical applications of surface-based fMRI analysis using segmented EPI techniques, the effects of some important factors (e.g., activation patterns, registration and local distortions) should be intensively evaluated because the results of surface-based fMRI analyses could be influenced by them. In this study, we demonstrated the difference between activations detected from low-resolution EPI data, which were covering whole brain, and high-resolution segmented EPI data covering partial brain by volume- and surface-based analysis methods. First, we compared the activation maps of low- and high-resolution EPI datasets detected by volume- and surface-based analyses, with the spatial patterns of activation clusters, and analyzed the distributions of activations in occipital lobes. We also analyzed the high-resolution EPI data covering motor areas and fusiform gyri of human brain, and presented the differences of activations detected by volume- and surface-based methods.

PMID:
19036544
DOI:
10.1016/j.mri.2008.09.002
[Indexed for MEDLINE]

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