Department of Electrical and Computer Engineering, University of Minnesota, Minneapolis, 200 Union St. SE, MN 55455, USA.
Med Image Anal. 2011 Aug;15(4):414-25. doi: 10.1016/j.media.2011.01.003. Epub 2011 Jan 26.
A global probabilistic fiber tracking approach based on the voting process provided by the Hough transform is introduced in this work. The proposed framework tests candidate 3D curves in the volume, assigning to each one a score computed from the diffusion images, and then selects the curves with the highest scores as the potential anatomical connections. The algorithm avoids local minima by performing an exhaustive search at the desired resolution. The technique is easily extended to multiple subjects, considering a single representative volume where the registered high-angular resolution diffusion images (HARDI) from all the subjects are non-linearly combined, thereby obtaining population-representative tracts. The tractography algorithm is run only once for the multiple subjects, and no tract alignment is necessary. We present experimental results on HARDI volumes, ranging from simulated and 1.5T physical phantoms to 7T and 4T human brain and 7T monkey brain datasets.
本文提出了一种基于霍夫变换投票过程的全局概率纤维追踪方法。该框架在体素中测试候选的 3D 曲线,为每条曲线分配一个基于扩散图像计算的得分,然后选择得分最高的曲线作为潜在的解剖连接。该算法通过在期望的分辨率下进行完全搜索来避免局部最小值。该技术很容易扩展到多个对象,只需考虑一个代表体积,其中所有对象的注册高角分辨率扩散图像 (HARDI) 都可以通过非线性组合来获得具有代表性的群体束。对于多个对象,只需运行一次轨迹追踪算法,并且不需要束配准。我们在 HARDI 体素上展示了实验结果,范围包括模拟和 1.5T 物理体模,以及 7T 和 4T 人脑和 7T 猴脑数据集。