Back to Search Start Over

K-space reconstruction of magnetic resonance inverse imaging (K-InI) of human visuomotor systems

Authors :
Fa-Hsuan Lin
Wen Jui Kuo
Thomas Witzel
John W. Belliveau
Yen-Hsiang Wang
Kevin Tsai
Wei-Tang Chang
Source :
NeuroImage. 49:3086-3098
Publication Year :
2010
Publisher :
Elsevier BV, 2010.

Abstract

Using simultaneous measurements from multiple channels of a radio-frequency coil array, magnetic resonance inverse imaging (InI) can achieve ultra-fast dynamic functional imaging of the human with whole-brain coverage and a good spatial resolution. Mathematically, the InI reconstruction is a generalization of parallel MRI (pMRI), which includes image space and k-space reconstructions. Because of the auto-calibration technique, the pMRI k-space reconstruction offers more robust and adaptive reconstructions compared to the image space algorithm. Here we present the k-space InI (K-InI) reconstructions to reconstruct the highly accelerated BOLD-contrast fMRI data of the human brain to achieve 100 ms temporal resolution. Simulations show that K-InI reconstructions can offer 3D image reconstructions at each time frame with reasonable spatial resolution, which cannot be obtained using the previously proposed image space minimum-norm estimates (MNE) or linear constraint minimum variance (LCMV) spatial filtering reconstructions. The InI reconstructions of in vivo BOLD-contrast fMRI data during a visuomotor task show that K-InI offer 3 to 5 fold more sensitive detection of the brain activation than MNE and a comparable detection sensitivity to the LCMV reconstructions. The group average of the high temporal resolution K-InI reconstructions of the hemodynamic response also shows a relative onset timing difference between the visual (first) and somatomotor (second) cortices by 400 ms (600 ms time-to-peak timing difference). This robust and sensitive K-InI reconstruction can be applied to dynamic MRI acquisitions using a large-n coil array to improve the spatiotemporal resolution.

Details

ISSN :
10538119
Volume :
49
Database :
OpenAIRE
Journal :
NeuroImage
Accession number :
edsair.doi.dedup.....dcc54ddbbc189a69e71ab5a6be456ff6