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Automated subject-specific, hexahedral mesh generation via image registration

机译:通过图像配准自动生成特定于主题的六面体网格

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Generating subject-specific, all-hexahedral meshes for finite element analysis continues to be of significant interest in biomechanical research communities. To date, most automated methods "morph" an existing atlas mesh to match with a subject anatomy, which usually result in degradation in mesh quality because of mesh distortion. We present an automated meshing technique that produces satisfactory mesh quality and accuracy without mesh repair. An atlas mesh is first developed using a script. A subject-specific mesh is generated with the same script after transforming the geometry into the atlas space following rigid image registration, and is transformed back into the subject space. By meshing the brain in 11 subjects, we demonstrate that the technique's performance is satisfactory in terms of both mesh quality (99.5% of elements had a scaled Jacobian >0.6 while <0.01% were between 0 and 0.2) and accuracy (average distance between mesh boundary and geometrical surface was 0.07 mm while < 1% greater than 0.5 mm). The combined computational cost for image registration and meshing was < 4 min. Our results suggest that the technique is effective for generating subject-specific, all-hexahedral meshes and that it may be useful for meshing a variety of anatomical structures across different biomechanical research fields.
机译:生成特定对象的全六面体网格进行有限元分析仍然是生物力学研究界的重大兴趣。迄今为止,大多数自动化方法都会“变形”现有的图集网格以与主题解剖结构匹配,这通常会由于网格变形而导致网格质量下降。我们提出了一种自动网格划分技术,可在不进行网格修复的情况下产生令人满意的网格质量和准确性。首先使用脚本开发图集网格。在通过刚性图像配准将几何形状转换为地图集空间之后,使用相同的脚本生成特定于对象的网格,然后将其转换回主题空间。通过对11个受试者的大脑进行网格划分,我们证明了该技术在网格质量(99.5%的元素的雅可比比例缩放比例大于0.6,而小于0.01%的比例介于0和0.2之间)和准确性(网格之间的平均距离)方面均令人满意边界和几何表面为0.07毫米,而大于0.5毫米则小于1%)。图像配准和网格划分的总计算成本小于4分钟。我们的结果表明,该技术可有效生成特定于受试者的全六面体网格,并且可能可用于跨不同生物力学研究领域的各种解剖结构网格化。

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