School of Dentistry, Dental Research Institute, Seoul National University, Seoul, Republic of Korea.
Department of Oral and Maxillofacial Surgery, Seoul National University Dental Hospital, Seoul, Republic of Korea.
Sci Rep. 2023 Aug 14;13(1):13232. doi: 10.1038/s41598-023-40472-3.
This study aimed to develop an artificial intelligence (AI) model using deep learning techniques to diagnose dens evaginatus (DE) on periapical radiography (PA) and compare its performance with endodontist evaluations. In total, 402 PA images (138 DE and 264 normal cases) were used. A pre-trained ResNet model, which had the highest AUC of 0.878, was selected due to the small number of data. The PA images were handled in both the full (F model) and cropped (C model) models. There were no significant statistical differences between the C and F model in AI, while there were in endodontists (p = 0.753 and 0.04 in AUC, respectively). The AI model exhibited superior AUC in both the F and C models compared to endodontists. Cohen's kappa demonstrated a substantial level of agreement for the AI model (0.774 in the F model and 0.684 in C) and fair agreement for specialists. The AI's judgment was also based on the coronal pulp area on full PA, as shown by the class activation map. Therefore, these findings suggest that the AI model can improve diagnostic accuracy and support clinicians in diagnosing DE on PA, improving the long-term prognosis of the tooth.
本研究旨在开发一种使用深度学习技术的人工智能 (AI) 模型,用于在根尖片 (PA) 上诊断牙中牙 (DE),并将其性能与牙髓病专家的评估进行比较。共使用了 402 张 PA 图像(138 个 DE 和 264 个正常病例)。由于数据量少,选择了具有最高 AUC 为 0.878 的预训练 ResNet 模型。PA 图像分别在完整(F 模型)和裁剪(C 模型)模型中进行处理。在 AI 中,C 模型和 F 模型之间在 AI 中没有显著的统计学差异,而在牙髓病专家中则存在(AUC 的 p 值分别为 0.753 和 0.04)。与牙髓病专家相比,AI 模型在 F 和 C 模型中均表现出较高的 AUC。Cohen's kappa 表明 AI 模型具有高度的一致性(F 模型中的 0.774 和 C 模型中的 0.684)和专家的一致性。AI 的判断还基于全 PA 的冠髓面积,如类激活图所示。因此,这些发现表明,AI 模型可以提高诊断准确性,并支持临床医生在 PA 上诊断 DE,改善牙齿的长期预后。