Lin Hsiu-Hsia, Chiang Wen-Chung, Yang Chao-Tung, Cheng Chun-Tse, Zhang Tianyi, Lo Lun-Jou
Imaging Laboratory, Craniofacial Research Center, Chang Gung Memorial Hospital, Taoyuan, Taiwan (R.O.C.).
Department of Tourism and Recreation Management, Hsiuping University of Science and Technology, Taiwan (R.O.C.).
Comput Methods Programs Biomed. 2021 Mar;200:105928. doi: 10.1016/j.cmpb.2021.105928. Epub 2021 Jan 9.
Orthognathic surgery (OGS) is frequently used to correct facial deformities associated with skeletal malocclusion and facial asymmetry. An accurate evaluation of facial symmetry is a critical for precise surgical planning and the execution of OGS. However, no facial symmetry scoring standard is available. Typically, orthodontists or physicians simply judge facial symmetry. Therefore, maintaining accuracy is difficult. We propose a convolutional neural network with a transfer learning approach for facial symmetry assessment based on 3-dimensional (3D) features to assist physicians in enhancing medical treatments. We trained a new model to score facial symmetry using transfer learning. Cone-beam computed tomography scans in 3D were transformed into contour maps that preserved 3D characteristics. We used various data preprocessing and amplification methods to determine the optimal results. The original data were enlarged by 100 times. We compared the quality of the four models in our experiment, and the neural network architecture was used in the analysis to import the pretraining model. We also increased the number of layers, and the classification layer was fully connected. We input random deformation data during training and dropout to prevent the model from overfitting. In our experimental results, the Xception model and the constant data amplification approach achieved an accuracy rate of 90%.
正颌外科手术(OGS)常用于矫正与骨骼错颌畸形和面部不对称相关的面部畸形。对面部对称性进行准确评估对于正颌外科手术的精确规划和实施至关重要。然而,目前尚无面部对称性评分标准。通常情况下,正畸医生或医生只是简单地判断面部对称性。因此,保持准确性很困难。我们提出一种基于三维(3D)特征的采用迁移学习方法的卷积神经网络用于面部对称性评估,以协助医生改进治疗。我们使用迁移学习训练了一个用于对面部对称性进行评分的新模型。将3D锥形束计算机断层扫描转换为保留3D特征的轮廓图。我们使用了各种数据预处理和增强方法来确定最佳结果。原始数据放大了100倍。我们在实验中比较了四个模型的质量,并在分析中使用神经网络架构导入预训练模型。我们还增加了层数,分类层为全连接层。在训练期间输入随机变形数据并采用随机失活以防止模型过度拟合。在我们的实验结果中,Xception模型和恒定数据增强方法实现了90%的准确率。