Generation of Combined-Modality Tetrahedral Meshes.

Karli Gillette, Jess Tate, Brianna Kindall, Peter Van Dam, Edward Kholmovski, Robert MacLeod
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引用次数: 1

Abstract

Registering and combining anatomical components from different image modalities, like MRI and CT that have different tissue contrast, could result in patient-specific models that more closely represent underlying anatomical structures. In this study, we combined a pair of CT and MRI scans of a pig thorax to make a tetrahedral mesh and compared different registration techniques including rigid, affine, thin plate spline morphing (TPSM), and iterative closest point (ICP), to superimpose the segmented bones from the CT scan on the soft tissues segmented from the MRI. The TPSM and affine-registered bones remained close to, but not overlapping, important soft tissue. Simulation models, including an ECG forward model and a defibrillation model, were computed on generated multi-modality meshes after TPSM and affine registration and compared to those based on the original torso mesh.

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组合模态四面体网格的生成。
注册和组合来自不同图像模式的解剖成分,如MRI和CT,它们具有不同的组织对比度,可以产生更接近地代表潜在解剖结构的患者特异性模型。在这项研究中,我们结合了对猪胸部的CT和MRI扫描,制作了一个四面体网格,并比较了不同的配准技术,包括刚性、仿射、薄板样条变形(TPSM)和迭代最近点(ICP),将CT扫描的分段骨叠加到MRI分割的软组织上。TPSM和仿射登记骨仍然接近,但不重叠,重要的软组织。仿真模型包括心电正演模型和除颤模型,在TPSM和仿射配准后生成的多模态网格上进行计算,并与基于原始躯干网格的模型进行比较。
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