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Parcellation of the Thalamus Using Diffusion Tensor Images and a Multi-object Geometric Deformable Model

机译:使用扩散张量图像和多目标几何可变形模型的丘脑局部

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摘要

The thalamus is a sub-cortical gray matter structure that relays signals between the cerebral cortex and midbrain. It can be parcellated into the thalamic nuclei which project to different cortical regions. The ability to automatically parcellate the thalamic nuclei could lead to enhanced diagnosis or prognosis in patients with some brain disease. Previous works have used diffusion tensor images (DTI) to parcellate the thalamus, using either tensor similarity or cortical connectivity as information driving the parcellation. In this paper, we propose a method that uses the diffusion tensors in a different way than previous works to guide a multiple object geometric deformable model (MGDM) for parcellation. The primary eigenvector (PEV) is used to indicate the homogeneity of fiber orientations. To remove the ambiguity due to the fact that the PEV is an orientation, we map the PEV into a 5D space known as the Knutsson space. An edge map is then generated from the 5D vector to show divisions between regions of aligned PEV’s. The generalized gradient vector flow (GGVF) calculated from the edge map drives the evolution of the boundary of each nucleus. Region based force, balloon force, and curvature force are also employed to refine the boundaries. Experiments have been carried out on five real subjects. Quantitative measures show that the automated parcellation agrees with the manual delineation of an expert under a published protocol.
机译:丘脑是皮质下的灰质结构,在大脑皮层和中脑之间传递信号。它可以被分成进入不同皮质区域的丘脑核。自动切除丘脑核的能力可能导致某些脑部疾病的患者增强诊断或预后。先前的工作已经使用扩散张量图像(DTI)分割丘脑,使用张量相似度或皮质连通性作为驱动分割的信息。在本文中,我们提出了一种以不同于先前工作的方式使用扩散张量的方法来指导多对象几何可变形模型(MGDM)的分割。主特征向量(PEV)用于指示纤维方向的均匀性。为了消除由于PEV是方向而造成的歧义,我们将PEV映射到称为Knutsson空间的5D空间中。然后从5D向量生成边缘图,以显示对齐的PEV区域之间的划分。从边缘图计算出的广义梯度矢量流(GGVF)驱动每个原子核边界的演化。还使用基于区域的力,球囊力和曲率力来完善边界。已经对五个真实主题进行了实验。定量测量表明,自动分割与根据已发布的协议对专家的手动描述一致。

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