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An eFTD-VP framework for efficiently generating patient-specific anatomically detailed facial soft tissue FE mesh for craniomaxillofacial surgery simulation

机译:一个eFTD-VP框架可有效地生成针对患者的解剖学细节的面部软组织有限元网格用于颅颌面外科手术模拟

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摘要

Accurate surgical planning and prediction of craniomaxillofacial surgery outcome requires simulation of soft tissue changes following osteotomy. This can only be achieved by using an anatomically detailed facial soft tissue model. The current state-of-the-art of model generation is not appropriate to clinical applications due to the time-intensive nature of manual segmentation and volumetric mesh generation. The conventional patient-specific finite element (FE) mesh generation methods are to deform a template FE mesh to match the shape of a patient based on registration. However, these methods commonly produce element distortion. Additionally, the mesh density for patients depends on that of the template model. It could not be adjusted to conduct mesh density sensitivity analysis. In this study, we propose a new framework of patient-specific facial soft tissue FE mesh generation. The goal of the developed method is to efficiently generate a high-quality patient-specific hexahedral FE mesh with adjustable mesh density while preserving the accuracy in anatomical structure correspondence. Our FE mesh is generated by eFace template deformation followed by volumetric parametrization. First, the patient-specific anatomically detailed facial soft tissue model (including skin, mucosa, and muscles) is generated by deforming an eFace template model. The adaptation of the eFace template model is achieved by using a hybrid landmark-based morphing and dense surface fitting approach followed by a thin-plate spline interpolation. Then, high-quality hexahedral mesh is constructed by using volumetric parameterization. The user can control the resolution of hexahedron mesh to best reflect clinicians’ need. Our approach was validated using 30 patient models and 4 visible human datasets. The generated patient-specific FE mesh showed high surface matching accuracy, element quality, and internal structure matching accuracy. They can be directly and effectively used for clinical simulation of facial soft tissue change.
机译:准确的外科手术计划和颅颌面外科手术结果的预测需要模拟截骨后软组织的变化。这只能通过使用解剖学上详细的面部软组织模型来实现。由于手动分割和体积网格生成的时间密集性,当前的最新模型生成不适用于临床应用。常规的患者特定的有限元(FE)网格生成方法是基于注册使模板FE网格变形以匹配患者的形状。但是,这些方法通常会产生元素失真。另外,患者的网格密度取决于模板模型的密度。不能进行调整以进行网格密度敏感性分析。在这项研究中,我们提出了针对患者的面部软组织有限元网格生成的新框架。所开发方法的目标是在保持解剖结构对应的准确性的同时,有效地生成具有可调整的网格密度的高质量的患者特定六面体FE网格。我们的FE网格是通过eFace模板变形然后进行体积参数化生成的。首先,通过使e​​Face模板模型变形来生成特定于患者的解剖学详细的面部软组织模型(包括皮肤,粘膜和肌肉)。通过使用基于混合界标的变形和密集表面拟合方法,然后进行薄板样条插值,可以实现eFace模板模型的自适应。然后,通过使用体积参数化构造高质量的六面体网格。用户可以控制六面体网格的分辨率,以最好地反映临床医生的需求。我们的方法已使用30个患者模型和4个可见的人类数据集进行了验证。生成的特定于患者的FE网格显示出较高的表面匹配精度,元素质量和内部结构匹配精度。它们可以直接有效地用于面部软组织变化的临床模拟。

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