Signal and Image Processing Institute, Ming Hsieh Department of Electrical Engineering, University of Southern California, Los Angeles, CA 90089-2564, USA.
Neuroimage. 2013 May 1;71:233-47. doi: 10.1016/j.neuroimage.2013.01.022. Epub 2013 Jan 24.
This paper presents a novel family of linear transforms that can be applied to data collected from the surface of a 2-sphere in three-dimensional Fourier space. This family of transforms generalizes the previously-proposed Funk-Radon Transform (FRT), which was originally developed for estimating the orientations of white matter fibers in the central nervous system from diffusion magnetic resonance imaging data. The new family of transforms is characterized theoretically, and efficient numerical implementations of the transforms are presented for the case when the measured data is represented in a basis of spherical harmonics. After these general discussions, attention is focused on a particular new transform from this family that we name the Funk-Radon and Cosine Transform (FRACT). Based on theoretical arguments, it is expected that FRACT-based analysis should yield significantly better orientation information (e.g., improved accuracy and higher angular resolution) than FRT-based analysis, while maintaining the strong characterizability and computational efficiency of the FRT. Simulations are used to confirm these theoretical characteristics, and the practical significance of the proposed approach is illustrated with real diffusion weighted MRI brain data. These experiments demonstrate that, in addition to having strong theoretical characteristics, the proposed approach can outperform existing state-of-the-art orientation estimation methods with respect to measures such as angular resolution and robustness to noise and modeling errors.
本文提出了一类新的线性变换,可以应用于在三维傅里叶空间中从 2-球表面收集的数据。该变换族推广了先前提出的 Funk-Radon 变换 (FRT),该变换最初是为了从扩散磁共振成像数据中估计中枢神经系统中白质纤维的方向而开发的。该变换族在理论上进行了特征化,并针对测量数据表示为球谐函数基的情况提出了变换的有效数值实现。在进行这些一般性讨论之后,我们将注意力集中在该变换族中的一个特定新变换上,我们将其命名为 Funk-Radon 和余弦变换 (FRACT)。基于理论论据,预计 FRACT 分析应该比 FRT 分析产生明显更好的方向信息(例如,提高准确性和更高的角分辨率),同时保持 FRT 的强可描述性和计算效率。模拟用于确认这些理论特征,并且通过真实的扩散加权 MRI 脑数据说明了所提出方法的实际意义。这些实验表明,除了具有很强的理论特征外,与角度分辨率和对噪声和建模误差的鲁棒性等度量标准相比,所提出的方法可以优于现有的最先进的方向估计方法。