Department of Oral and Maxillofacial Surgery, Faculty of Dentistry, Ordu University, Ordu 52200, Turkey.
Department of Oral and Maxillofacial Surgery, Faculty of Dentistry, Afyonkarahisar Health Sciences University, Afyon, Turkey.
J Stomatol Oral Maxillofac Surg. 2024 Sep;125(4S):101817. doi: 10.1016/j.jormas.2024.101817. Epub 2024 Mar 7.
The aim of this study is to determine if a deep learning (DL) model can predict the surgical difficulty for impacted maxillary third molar tooth using panoramic images before surgery.
The dataset consists of 708 panoramic radiographs of the patients who applied to the Oral and Maxillofacial Surgery Clinic for various reasons. Each maxillary third molar difficulty was scored based on dept (V), angulation (H), relation with maxillary sinus (S), and relation with ramus (R) on panoramic images. The YoloV5x architecture was used to perform automatic segmentation and classification. To prevent re-testing of images, participate in the training, the data set was subdivided as: 80 % training, 10 % validation, and 10 % test group.
Impacted Upper Third Molar Segmentation model showed best success on sensitivity, precision and F1 score with 0,9705, 0,9428 and 0,9565, respectively. S-model had a lesser sensitivity, precision and F1 score than the other models with 0,8974, 0,6194, 0,7329, respectively.
The results showed that the proposed DL model could be effective for predicting the surgical difficulty of an impacted maxillary third molar tooth using panoramic radiographs and this approach might help as a decision support mechanism for the clinicians in peri‑surgical period.
本研究旨在确定深度学习(DL)模型是否可以使用手术前的全景图像预测上颌第三磨牙阻生的手术难度。
数据集由因各种原因向口腔颌面外科诊所就诊的 708 名患者的全景图像组成。根据深度(V)、角度(H)、与上颌窦的关系(S)和与下颌支的关系(R),对上颌第三磨牙的每个难度进行评分。使用 YoloV5x 架构进行自动分割和分类。为了防止对图像进行重复测试并参与训练,数据集被细分为:80%的训练组、10%的验证组和 10%的测试组。
阻生上颌第三磨牙分割模型在灵敏度、精度和 F1 评分方面表现最佳,分别为 0.9705、0.9428 和 0.9565。S 模型的灵敏度、精度和 F1 评分均低于其他模型,分别为 0.8974、0.6194 和 0.7329。
结果表明,所提出的 DL 模型可以有效地使用全景图像预测上颌第三磨牙阻生的手术难度,这种方法可以帮助临床医生在围手术期作为决策支持机制。