基于局部约束区域的DW-MRI分割方法。

John Melonakos, Marc Niethammer, Vandana Mohan, Marek Kubicki, James V Miller, Allen Tannenbaum
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引用次数: 15

摘要

本文描述了一种基于局部约束区域的方法从扩散加权磁共振图像中分割纤维束的方法。从预先计算的最优路径开始,该算法向外传播,只捕获那些局部连接到光纤束的体素。这种方法不是试图找到大量的开放曲线或单个纤维,它们单独具有可疑的意义,而是将整个纤维束区域分割。这种方法的优点包括易于使用,计算速度快,并且适用于广泛的光纤束。在这项工作中,我们展示了分割扣带束的结果。最后,我们解释了这种方法及其扩展如何克服典型的基于区域的流在试图分割神经纤维束时遇到的主要问题。
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Locally-Constrained Region-Based Methods for DW-MRI Segmentation.

In this paper, we describe a method for segmenting fiber bundles from diffusion-weighted magnetic resonance images using a locally-constrained region based approach. From a pre-computed optimal path, the algorithm propagates outward capturing only those voxels which are locally connected to the fiber bundle. Rather than attempting to find large numbers of open curves or single fibers, which individually have questionable meaning, this method segments the full fiber bundle region. The strengths of this approach include its ease-of-use, computational speed, and applicability to a wide range of fiber bundles. In this work, we show results for segmenting the cingulum bundle. Finally, we explain how this approach and extensions thereto overcome a major problem that typical region-based flows experience when attempting to segment neural fiber bundles.

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