Du Mingjun, Wu Xueying, Ye Ye, Fang Shuobo, Zhang Hengwei, Chen Ming
Institute of Biomedical Manufacturing and Life Quality Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
Department of Prosthodontics, Shanghai Stomatological Hospital & School of Stomatology, Fudan University and Shanghai Key Laboratory of Craniomaxillofacial Development and Diseases, Fudan University, Shanghai 200040, China.
Diagnostics (Basel). 2022 Jul 10;12(7):1679. doi: 10.3390/diagnostics12071679.
Teeth detection and tooth segmentation are essential for processing Cone Beam Computed Tomography (CBCT) images. The accuracy decides the credibility of the subsequent applications, such as diagnosis, treatment plans in clinical practice or other research that is dependent on automatic dental identification. The main problems are complex noises and metal artefacts which would affect the accuracy of teeth detection and segmentation with traditional algorithms. In this study, we proposed a teeth-detection method to avoid the problems above and to accelerate the operation speed. In our method, (1) a Convolutional Neural Network (CNN) was employed to classify layer classes; (2) images were chosen to perform Region of Interest (ROI) cropping; (3) in ROI regions, we used a YOLO v3 and multi-level combined teeth detection method to locate each tooth bounding box; (4) we obtained tooth bounding boxes on all layers. We compared our method with a Faster R-CNN method which was commonly used in previous studies. The training and prediction time were shortened by 80% and 62% in our method, respectively. The Object Inclusion Ratio (OIR) metric of our method was 96.27%, while for the Faster R-CNN method, it was 91.40%. When testing images with severe noise or with different missing teeth, our method promises a stable result. In conclusion, our method of teeth detection on dental CBCT is practical and reliable for its high prediction speed and robust detection.
牙齿检测和牙体分割对于锥束计算机断层扫描(CBCT)图像的处理至关重要。其准确性决定了后续应用的可信度,如临床实践中的诊断、治疗方案或其他依赖自动牙齿识别的研究。主要问题是复杂的噪声和金属伪影,这会影响传统算法进行牙齿检测和分割的准确性。在本研究中,我们提出了一种牙齿检测方法,以避免上述问题并加快运算速度。在我们的方法中,(1)使用卷积神经网络(CNN)对层类别进行分类;(2)选择图像进行感兴趣区域(ROI)裁剪;(3)在ROI区域中,我们使用YOLO v3和多级联合牙齿检测方法来定位每个牙齿的边界框;(4)我们在所有层上获得牙齿边界框。我们将我们的方法与先前研究中常用的Faster R-CNN方法进行了比较。我们的方法在训练和预测时间上分别缩短了80%和62%。我们方法的目标包含率(OIR)指标为96.27%,而Faster R-CNN方法的该指标为91.40%。当测试具有严重噪声或不同缺牙情况的图像时,我们的方法保证了稳定的结果。总之,我们在牙科CBCT上的牙齿检测方法因其高预测速度和强大的检测能力而实用可靠。