Kabasawa Hiroyuki, Masutani Yoshitaka, Abe Osamu, Aoki Shigeki, Ohtomo Kuni
Department of Radiology, Graduate School of Medicine, The University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo 113-8655, Japan.
Acad Radiol. 2008 Jan;15(1):84-92. doi: 10.1016/j.acra.2007.07.004.
In regions of intravoxel fiber crossing, the single-tensor model does not provide accurate results. The previously published models could resolve this issue but needed a long scan time and long computational time. This article aims to present the new model, which uses interpolated diffusion tensor orientations and requires the estimation of fewer parameters than the previously published model, where all parameters for the two diffusion ellipsoids have to be estimated.
Fiber orientation information was reconstructed by using the radial basis function-based interpolation technique from tensor information in given seed regions of interest. Synthetic phantom data were generated, and the proposed method was compared with the conventional two-ellipsoid method. Data from one normal volunteer were analyzed to determine the effectiveness of the proposed method. The number of parameters to be estimated could be reduced by using the estimated fiber orientation information so that diffusion parameter calculation at fiber crossing becomes robust.
The human study showed that fractional anisotropy (FA) values estimated by the proposed method (FA = 0.67 for the corpus callosum, 0.65 for the corticospinal tract) were significantly higher than that estimated by the standard single-tensor-based method (FA = 0.35), and the estimated FA value showed good agreement with the FA value in the adjacent fiber bundle.
The proposed radial basis function-based technique could reconstruct diffusion properties at the fiber-crossing volume from sparse sampling of high angular diffusion weighted images.
在体素内纤维交叉区域,单张量模型无法提供准确结果。先前发表的模型虽能解决此问题,但扫描时间长且计算时间久。本文旨在介绍一种新模型,该模型使用插值扩散张量方向,且与先前发表的模型相比,所需估计的参数更少,先前模型需要估计两个扩散椭球体的所有参数。
利用基于径向基函数的插值技术,从给定感兴趣种子区域的张量信息重建纤维方向信息。生成了模拟体模数据,并将所提方法与传统双椭球方法进行比较。分析了一名正常志愿者的数据,以确定所提方法的有效性。利用估计的纤维方向信息可减少待估计参数数量,从而使纤维交叉处的扩散参数计算更稳健。
人体研究表明,所提方法估计的分数各向异性(FA)值(胼胝体的FA = 0.67,皮质脊髓束的FA = 0.65)显著高于基于标准单张量方法估计的值(FA = 0.35),且估计的FA值与相邻纤维束中的FA值吻合良好。
所提基于径向基函数的技术可从高角扩散加权图像的稀疏采样中重建纤维交叉区域的扩散特性。