IEEE Trans Med Imaging. 2023 Feb;42(2):336-345. doi: 10.1109/TMI.2022.3180078. Epub 2023 Feb 2.
Orthognathic surgery corrects jaw deformities to improve aesthetics and functions. Due to the complexity of the craniomaxillofacial (CMF) anatomy, orthognathic surgery requires precise surgical planning, which involves predicting postoperative changes in facial appearance. To this end, most conventional methods involve simulation with biomechanical modeling methods, which are labor intensive and computationally expensive. Here we introduce a learning-based framework to speed up the simulation of postoperative facial appearances. Specifically, we introduce a facial shape change prediction network (FSC-Net) to learn the nonlinear mapping from bony shape changes to facial shape changes. FSC-Net is a point transform network weakly-supervised by paired preoperative and postoperative data without point-wise correspondence. In FSC-Net, a distance-guided shape loss places more emphasis on the jaw region. A local point constraint loss restricts point displacements to preserve the topology and smoothness of the surface mesh after point transformation. Evaluation results indicate that FSC-Net achieves 15× speedup with accuracy comparable to a state-of-the-art (SOTA) finite-element modeling (FEM) method.
正颌手术通过矫正颌骨畸形来改善面部美观和功能。由于颅面(CMF)解剖结构的复杂性,正颌手术需要精确的手术规划,这涉及到预测术后面部外观的变化。为此,大多数传统方法都涉及到使用生物力学建模方法进行模拟,而这些方法既费时又昂贵。在这里,我们引入了一个基于学习的框架来加速术后面部外观的模拟。具体来说,我们引入了一个面部形状变化预测网络(FSC-Net),以学习从骨形状变化到面部形状变化的非线性映射。FSC-Net 是一个弱监督的点变换网络,通过配对的术前和术后数据进行监督,而无需点对应。在 FSC-Net 中,距离引导的形状损失更注重颌骨区域。局部点约束损失限制点位移,以保持点变换后曲面网格的拓扑结构和光滑性。评估结果表明,FSC-Net 的速度提高了 15 倍,并且与最先进的有限元建模(FEM)方法的精度相当。