Physical Chemistry, Department of Chemistry, Lund University, Lund, Sweden.
NMR Biomed. 2019 May;32(5):e4066. doi: 10.1002/nbm.4066. Epub 2019 Feb 7.
Conventional diffusion MRI yields voxel-averaged parameters that suffer from ambiguities for heterogeneous anisotropic materials such as brain tissue. Using principles from solid-state NMR spectroscopy, we have previously introduced the shape of the diffusion encoding tensor as a separate acquisition dimension that disentangles isotropic and anisotropic contributions to the observed diffusivities, thereby allowing for unconstrained data inversion into diffusion tensor distributions with "size," "shape," and orientation dimensions. Here we combine our recent non-parametric data inversion algorithm and data acquisition protocol with an imaging pulse sequence to demonstrate spatial mapping of diffusion tensor distributions using a previously developed composite phantom with multiple isotropic and anisotropic components. We propose a compact format for visualizing two-dimensional arrays of the distributions, new scalar parameters quantifying intra-voxel heterogeneity, and a binning procedure giving maps of all relevant parameters for each of the components resolved in the multidimensional distribution space.
传统的扩散 MRI 产生体素平均参数,对于脑组织等各向异性不均匀的物质存在模糊性。我们之前基于固态 NMR 光谱学原理,将扩散编码张量的形状作为一个单独的采集维度,将各向同性和各向异性对观察到的扩散率的贡献分离,从而可以不受限制地将数据反演为具有“大小”、“形状”和方向维度的扩散张量分布。在这里,我们将最近的非参数数据反演算法和数据采集协议与成像脉冲序列相结合,使用以前开发的具有多个各向同性和各向异性成分的复合模型来演示扩散张量分布的空间映射。我们提出了一种用于可视化分布二维数组的紧凑格式,以及量化体素内异质性的新标量参数,并提出了一种分箱过程,为在多维分布空间中解析的每个分量提供所有相关参数的映射。