Deep learning for automated segmentation of the temporomandibular joint

被引:39
作者
Vinayahalingam, Shankeeth [1 ]
Berends, Bo [1 ,2 ]
Baan, Frank [1 ,2 ]
Moin, David Anssari [3 ]
van Luijn, Rik [1 ]
Berge, Stefaan [1 ]
Xi, Tong [1 ]
机构
[1] Radboud Univ Nijmegen Med Ctr, Dept Oral & Maxillofacial Surg, POB 9101,Postal 590, NL-6500 HB Nijmegen, Netherlands
[2] Radboud Univ Nijmegen Med Ctr, Radboudumc 3DLab, Nijmegen, Netherlands
[3] Promaton Co Ltd, NL-1076 GR Amsterdam, Netherlands
关键词
Deep learning; Artificial intelligence; Cone-beam computed tomography; Computer-assisted planning; Digital imaging; BEAM COMPUTED-TOMOGRAPHY;
D O I
10.1016/j.jdent.2023.104475
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Objective: 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. Materials and methods: 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.Results: 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).Conclusion: 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. Clinical significance: 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 dis-orders and longitudinal follow-up.
引用
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页数:6
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