Accurate and automatic segmentation of three-dimensional (3D) individual teeth from cone-beam computerized tomography (CBCT) images is a challenging problem because of the difficulty in separating an individual tooth from adjacent teeth and its surrounding alveolar bone. Thus, this paper proposes a fully automated method of identifying and segmenting 3D individual teeth from dental CBCT images. The proposed method addresses the aforementioned difficulty by developing a deep learning-based hierarchical multi-step model. First, it automatically generates upper and lower jaws panoramic images to overcome the computational complexity caused by high-dimensional data and the curse of dimensionality associated with limited training dataset. The obtained 2D panoramic images are then used to identify 2D individual teeth and capture loose- and tight- regions of interest (ROIs) of 3D individual teeth. Finally, accurate 3D individual tooth segmentation is achieved using both loose and tight ROIs. Experimental results showed that the proposed method achieved an F1-score of 93.35% for tooth identification and a Dice similarity coefficient of 94.79% for individual 3D tooth segmentation. The results demonstrate that the proposed method provides an effective clinical and practical framework for digital dentistry.
翻译:3维(3D)个人牙齿的精确和自动分解三维(3D)个人牙齿从锥形-波束计算机化断层成像(CBCT)图像中取出,这是一个具有挑战性的问题,因为很难将个别牙齿与相邻牙齿及其周围的长颈骨分离,因此,本文件建议采用完全自动化的方法,从牙科CBCT图像中识别和分解3D个人牙齿。拟议方法通过开发一个深层次的基于学习的多步骤等级模型,解决上述困难。首先,它自动生成上下两下两下两下双下双下双下下下下下下下下部的全口形图象,以克服高维数据和与有限培训数据集相关的维度诅咒造成的计算复杂性。获得的2D全景图象随后用于识别2D个人牙齿,并捕获3D个人牙齿的松紧区域。最后,3D个人牙片分解的准确的单切3D个人牙分解方法是使用松紧的。实验结果显示,拟议的方法在牙齿识别方面达到了93-35%的F1核心和94.79%的有效数字牙科截断面框架。结果表明,拟议的方法提供了数字临床和数字临床框架。