Shimamura Yui, Tachiki Chie, Takahashi Kaisei, Matsunaga Satoru, Takaki Takashi, Hagiwara Masafumi, Nishii Yasushi
Department of Orthodontics, Tokyo Dental College, 2-9-18, Kandamisaki-Cho, Chiyoda- Ku, Tokyo, 101-006, Japan.
Department of Information and Computer Science, Faculty of Science and Technology, Keio University, 4-1-1, Hiyoshi, Kouhoku-Ku, Yokohama-Shi, Kanagawa, 223-8522, Japan.
Sci Rep. 2024 Dec 28;14(1):31089. doi: 10.1038/s41598-024-82230-z.
Cephalometric analysis is the primary diagnosis method in orthodontics. In our previous study, the algorithm was developed to estimate cephalometric landmarks from lateral facial photographs of patients with normal occlusion. This study evaluates the estimation accuracy by the algorithm trained on a dataset of 2320 patients with added malocclusion patients and the analysis values. The landmarks were estimated from the input of lateral facial photographs as training data using trained CNN-based algorithms. The success detection rate (SDR) was calculated based on the mean radial error (MRE) of the distance between the estimated and actual coordinates. Furthermore, the estimated landmarks were used to measure angles and distances as a cephalometric analysis. In the skeletal Class II malocclusion, MRE was 0.42 ± 0.15 mm, and in the skeletal Class III malocclusion, MRE was 0.46 ± 0.16 mm. We conducted a cephalometric analysis using the estimated landmarks and examined the differences with actual data. In both groups, no significant differences were observed for any of the data. Our new algorithm for estimating the landmarks from lateral facial photographs of malocclusion patients resulted in an error of less than 0.5 mm; the error in cephalometric analysis was less than 0.5°. Therefore, the algorithm can be clinically valuable.
头影测量分析是正畸学中的主要诊断方法。在我们之前的研究中,开发了一种算法,用于从正常咬合患者的侧面面部照片中估计头影测量标志点。本研究通过在包含2320例患者(增加了错颌患者和分析值)的数据集上训练的算法来评估估计准确性。使用经过训练的基于卷积神经网络(CNN)的算法,从侧面面部照片的输入作为训练数据来估计标志点。成功检测率(SDR)是根据估计坐标与实际坐标之间距离的平均径向误差(MRE)来计算的。此外,将估计的标志点用于测量角度和距离,作为头影测量分析。在骨性II类错颌中,MRE为0.42±0.15毫米,在骨性III类错颌中,MRE为0.46±0.16毫米。我们使用估计的标志点进行了头影测量分析,并检查了与实际数据的差异。在两组中,任何数据均未观察到显著差异。我们用于从未经治疗的错颌患者侧面面部照片中估计标志点的新算法产生的误差小于0.5毫米;头影测量分析中的误差小于0.5°。因此,该算法在临床上可能具有价值。