As the most economical and routine auxiliary examination in the diagnosis of root canal treatment, oral X-ray has been widely used by stomatologists. It is still challenging to segment the tooth root with a blurry boundary for the traditional image segmentation method. To this end, we propose a model for high-resolution segmentation based on polynomial curve fitting with landmark detection (HS-PCL). It is based on detecting multiple landmarks evenly distributed on the edge of the tooth root to fit a smooth polynomial curve as the segmentation of the tooth root, thereby solving the problem of fuzzy edge. In our model, a maximum number of the shortest distances algorithm (MNSDA) is proposed to automatically reduce the negative influence of the wrong landmarks which are detected incorrectly and deviate from the tooth root on the fitting result. Our numerical experiments demonstrate that the proposed approach not only reduces Hausdorff95 (HD95) by 33.9% and Average Surface Distance (ASD) by 42.1% compared with the state-of-the-art method, but it also achieves excellent results on the minute quantity of datasets, which greatly improves the feasibility of automatic root canal therapy evaluation by medical image computing.
翻译:作为诊断根管治疗的最经济、最常规的辅助性检查,口腔X光被动物学家广泛使用,将牙根与传统图像分解法的模糊界限分隔开来,仍然很困难。为此,我们提出一个基于多面曲线的高分辨率分解模式,与里程碑检测(HS-PCL)相匹配。它基于探测在牙根边缘平均分布的多个里程碑,以适应牙根分解的平稳多面曲线,从而解决烟雾边缘问题。在我们的模式中,提议最短距离算法(MNSDA)的最大数量将自动减少错误地标点的消极影响,这些标点被错误地检测出并偏离了牙根的适切结果。我们的数字实验表明,拟议方法不仅将Hausdorf95(HD95)和平均表面距离(ASD)减少33.9%,而且比最新方法减少42.1%,而且还在数据集的微量上取得了极好的结果,通过计算可大大改进自动根疗法的可行性。