Zhang Xiaoyan, Tang Zhen, Liebschner Michael A K, Kim Daeseung, Shen Shunyao, Chang Chien-Ming, Yuan Peng, Zhang Guangming, Gateno Jaime, Zhou Xiaobo, Zhang Shao-Xiang, Xia James J
Department of Oral and Maxillofacial Surgery, Houston Methodist Research Institute, 6560 Fannin Street, Suite 1280, Houston, TX, 77030, USA.
Department of Neurosurgery, Baylor College of Medicine, Houston, TX, USA.
Ann Biomed Eng. 2016 May;44(5):1656-71. doi: 10.1007/s10439-015-1480-7. Epub 2015 Oct 13.
Accurate surgical planning and prediction of craniomaxillofacial surgery outcome requires simulation of soft-tissue changes following osteotomy. This can only be accomplished on an anatomically-detailed facial soft tissue model. However, current anatomically-detailed facial soft tissue model generation is not appropriate for clinical applications due to the time intensive nature of manual segmentation and volumetric mesh generation. This paper presents a novel semi-automatic approach, named eFace-template method, for efficiently and accurately generating a patient-specific facial soft tissue model. Our novel approach is based on the volumetric deformation of an anatomically-detailed template to be fitted to the shape of each individual patient. The adaptation of the template is achieved by using a hybrid landmark-based morphing and dense surface fitting approach followed by a thin-plate spline interpolation. This methodology was validated using 4 visible human datasets (regarded as gold standards) and 30 patient models. The results indicated that our approach can accurately preserve the internal anatomical correspondence (i.e., muscles) for finite element modeling. Additionally, our hybrid approach was able to achieve an optimal balance among the patient shape fitting accuracy, anatomical correspondence and mesh quality. Furthermore, the statistical analysis showed that our hybrid approach was superior to two previously published methods: mesh-matching and landmark-based transformation. Ultimately, our eFace-template method can be directly and effectively used clinically to simulate the facial soft tissue changes in the clinical application.
精确的外科手术规划和颅颌面外科手术结果预测需要模拟截骨术后的软组织变化。这只能在解剖结构详细的面部软组织模型上完成。然而,由于手动分割和体积网格生成耗时较长,目前生成解剖结构详细的面部软组织模型并不适用于临床应用。本文提出了一种名为eFace模板法的新型半自动方法,用于高效、准确地生成患者特异性面部软组织模型。我们的新方法基于对解剖结构详细的模板进行体积变形,使其适配每个患者的形状。通过使用基于混合标志点的变形和密集表面拟合方法,随后进行薄板样条插值来实现模板的适配。该方法使用4个可视人体数据集(视为金标准)和30个患者模型进行了验证。结果表明,我们的方法能够为有限元建模准确保留内部解剖对应关系(即肌肉)。此外,我们的混合方法能够在患者形状拟合精度、解剖对应关系和网格质量之间实现最佳平衡。此外,统计分析表明,我们的混合方法优于之前发表的两种方法:网格匹配和基于标志点的变换。最终,我们的eFace模板法可直接有效地应用于临床,以模拟临床应用中的面部软组织变化。