Vinayahalingam Shankeeth, Berends Bo, Baan Frank, Moin David Anssari, van Luijn Rik, Bergé Stefaan, Xi Tong
Department of Oral and Maxillofacial Surgery, Radboud University Nijmegen Medical Centre, P.O. Box 9101, Postal number 590, Nijmegen, HB 6500, The Netherlands.
Department of Oral and Maxillofacial Surgery, Radboud University Nijmegen Medical Centre, P.O. Box 9101, Postal number 590, Nijmegen, HB 6500, The Netherlands; Radboudumc 3DLab, Radboud University Nijmegen Medical Centre, Nijmegen, The Netherlands.
J Dent. 2023 May;132:104475. doi: 10.1016/j.jdent.2023.104475. Epub 2023 Mar 2.
Quantitative analysis of the volume and shape of the temporomandibular joint (TMJ) using cone-beam computed tomography (CBCT) requires accurate segmentation of the mandibular condyles and the glenoid fossae. This study aimed to develop and validate an automated segmentation tool based on a deep learning algorithm for accurate 3D reconstruction of the TMJ.
A three-step deep-learning approach based on a 3D U-net was developed to segment the condyles and glenoid fossae on CBCT datasets. Three 3D U-Nets were utilized for region of interest (ROI) determination, bone segmentation, and TMJ classification. The AI-based algorithm was trained and validated on 154 manually segmented CBCT images. Two independent observers and the AI algorithm segmented the TMJs of a test set of 8 CBCTs. The time required for the segmentation and accuracy metrics (intersection of union, DICE, etc.) was calculated to quantify the degree of similarity between the manual segmentations (ground truth) and the performances of the AI models.
The AI segmentation achieved an intersection over union (IoU) of 0.955 and 0.935 for the condyles and glenoid fossa, respectively. The IoU of the two independent observers for manual condyle segmentation were 0.895 and 0.928, respectively (p<0.05). The mean time required for the AI segmentation was 3.6 s (SD 0.9), whereas the two observers needed 378.9 s (SD 204.9) and 571.6 s (SD 257.4), respectively (p<0.001).
The AI-based automated segmentation tool segmented the mandibular condyles and glenoid fossae with high accuracy, speed, and consistency. Potential limited robustness and generalizability are risks that cannot be ruled out, as the algorithms were trained on scans from orthognathic surgery patients derived from just one type of CBCT scanner.
The incorporation of the AI-based segmentation tool into diagnostic software could facilitate 3D qualitative and quantitative analysis of TMJs in a clinical setting, particularly for the diagnosis of TMJ disorders and longitudinal follow-up.
使用锥形束计算机断层扫描(CBCT)对颞下颌关节(TMJ)的体积和形状进行定量分析,需要准确分割下颌髁突和关节窝。本研究旨在开发并验证一种基于深度学习算法的自动分割工具,用于TMJ的精确三维重建。
开发了一种基于三维U-net的三步深度学习方法,用于在CBCT数据集上分割髁突和关节窝。使用三个三维U-Net进行感兴趣区域(ROI)确定、骨分割和TMJ分类。基于人工智能的算法在154张手动分割的CBCT图像上进行训练和验证。两名独立观察者和人工智能算法对8个CBCT测试集的TMJ进行分割。计算分割所需时间和准确性指标(交并比、DICE等),以量化手动分割(真实值)与人工智能模型性能之间的相似程度。
人工智能分割对髁突和关节窝的交并比(IoU)分别达到0.955和0.935。两名独立观察者手动分割髁突的IoU分别为0.895和0.928(p<0.05)。人工智能分割的平均所需时间为3.6秒(标准差0.9),而两名观察者分别需要378.9秒(标准差204.9)和571.6秒(标准差257.4)(p<0.001)。
基于人工智能的自动分割工具对下颌髁突和关节窝的分割具有高精度、高速度和一致性。由于算法是在仅来自一种类型CBCT扫描仪的正颌手术患者的扫描图像上进行训练的,因此不能排除潜在的有限鲁棒性和通用性风险。
将基于人工智能的分割工具纳入诊断软件,可在临床环境中促进TMJ的三维定性和定量分析,特别是用于TMJ疾病的诊断和纵向随访。