Measuring the time/frequency dependence of diffusion MRI is a promising approach to distinguish between the effects of different tissue microenvironments, such as membrane restriction, tissue heterogeneity, and compartmental water exchange. In this study, we measure the frequency dependence of diffusivity (D) and kurtosis (K) with oscillating gradient diffusion encoding waveforms and a diffusion kurtosis imaging (DKI) model in human brains using a high-performance, head-only MAGNUS gradient system, with a combination of b-values, oscillating frequencies (f), and echo time that has not been achieved in human studies before. Frequency dependence of diffusivity and kurtosis are observed in both global and local white matter (WM) and gray matter (GM) regions and characterized with a power-law model â¼Î*f(θ). The frequency dependences of diffusivity and kurtosis (including changes between f(min) and f(max), Î, and θ) vary over different WM and GM regions, indicating potential microstructural differences between regions. A trend of decreasing kurtosis over frequency in the short-time limit is successfully captured for in vivo human brains. The effects of gradient nonlinearity (GNL) on frequency-dependent diffusivity and kurtosis measurements are investigated and corrected. Our results show that the GNL has prominent scaling effects on the measured diffusivity values (3.5â¼5.5% difference in the global WM and 6â¼8% difference in the global cortex) and subsequently affects the corresponding power-law parameters (Î, θ) while having a marginal influence on the measured kurtosis values (<0.05% difference) and power-law parameters (Î, θ). This study expands previous OGSE studies and further demonstrates the translatability of frequency-dependent diffusivity and kurtosis measurements to human brains, which may provide new opportunities to probe human brain microstructure in health and disease.
Frequency-dependent diffusion kurtosis imaging in the human brain using an oscillating gradient spin echo sequence and a high-performance head-only gradient.
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作者:Dai Erpeng, Zhu Ante, Yang Grant K, Quah Kristin, Tan Ek T, Fiveland Eric, Foo Thomas K F, McNab Jennifer A
| 期刊: | Neuroimage | 影响因子: | 4.500 |
| 时间: | 2023 | 起止号: | 2023 Oct 1; 279:120328 |
| doi: | 10.1016/j.neuroimage.2023.120328 | ||
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