High-resolution MR imaging and spectroscopic imaging were used to study differences in proton spectra between cortical gray matter and subcortical white matter in 23 normal volunteers using a 1.5 T scanner and surface coil receivers. A point-resolved spectroscopy (PRESS) volume with an 8 x 8 x 8 pha
Nuclear relaxation of human brain gray and white matter: Analysis of field dependence and implications for MRI
✍ Scribed by Helmut W. Fischer; Peter A. Rinck; Yves van Haverbeke; Robert N. Muller
- Publisher
- John Wiley and Sons
- Year
- 1990
- Tongue
- English
- Weight
- 993 KB
- Volume
- 16
- Category
- Article
- ISSN
- 0740-3194
No coin nor oath required. For personal study only.
✦ Synopsis
Abstract
The dependence of 1 / T~1~ on the magnetic field strength (the relaxation dispersion) has been measured at 37°C on autopsy samples of human brain gray and white matter at field strengths corresponding to proton Larmor frequencies between 10 kHz and 50 MHz (0.0002‐1.2 T). Additional measurements of 1 / T~1~ and 1 / T~2~ have been performed at 200 MHz (4.7 T) and 20 MHz (0.47 T), respectively. Absolute signal amplitudes are found to be proportional to the sample water content, not to the “proton density,” and it is concluded that the myelin lipids do not contribute to the signal. Transverse magnetization decay data can be fitted with a triple exponential function, giving characteristic results for each tissue type, and are insensitive to variations of the pulse spacing interval. The longitudinal relaxation dispersion curves show characteristic shapes for each tissue type. The most striking difference is a large dispersion for white matter at very high fields. As a consequence, the relative difference in 1 / T~1~ between gray and white matter shows a marked maximum around 10 MHz. Possible implications for MRI are discussed. A weighted least‐squares fit of the dispersions has been performed using a four‐parameter function of the form
The quality of the fit is superior to that of other functions proposed previously. The results of these fits are used to predict image contrast between gray and white matter at different field strengths. © 1990 Academic Press, Inc.
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