Intra-oral scan segmentation using deep learning

被引:10
|
作者
Vinayahalingam, Shankeeth [1 ,2 ,3 ]
Kempers, Steven [1 ,2 ]
Schoep, Julian [4 ]
Hsu, Tzu-Ming Harry [5 ]
Moin, David Anssari [4 ]
van Ginneken, Bram [6 ]
Flugge, Tabea [7 ,8 ]
Hanisch, Marcel [3 ,4 ]
Xi, Tong [1 ]
机构
[1] Radboud Univ Nijmegen, Dept Oral & Maxillofacial Surg, Nijmegen Med Ctr, Nijmegen, Netherlands
[2] Radboud Univ Nijmegen, Dept Artificial Intelligence, Nijmegen, Netherlands
[3] Univ Klinikum Munster, Dept Oral & Maxillofacial Surg, Munster, Germany
[4] Promaton Co Ltd, NL-1076 GR Amsterdam, Netherlands
[5] MIT Comp Sci & Artificial Intelligence Lab, 32 Vassar St, Cambridge, MA 02139 USA
[6] Radboud Univ Nijmegen, Dept Radiol, Nijmegen Med Ctr, Nijmegen, Netherlands
[7] Free Univ Berlin, Charite Univ Med Berlin, Hindenburgdamm 30, D-12203 Berlin, Germany
[8] Humboldt Univ, Dept Oral & Maxillofacial Surg, Hindenburgdamm 30, D-12203 Berlin, Germany
关键词
Deep learning; Artificial intelligence; Intra-oral scan; Computer-assisted planning; Digital imaging; ARTIFICIAL-INTELLIGENCE;
D O I
10.1186/s12903-023-03362-8
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
ObjectiveIntra-oral scans and gypsum cast scans (OS) are widely used in orthodontics, prosthetics, implantology, and orthognathic surgery to plan patient-specific treatments, which require teeth segmentations with high accuracy and resolution. Manual teeth segmentation, the gold standard up until now, is time-consuming, tedious, and observer-dependent. This study aims to develop an automated teeth segmentation and labeling system using deep learning.Material and methodsAs a reference, 1750 OS were manually segmented and labeled. A deep-learning approach based on PointCNN and 3D U-net in combination with a rule-based heuristic algorithm and a combinatorial search algorithm was trained and validated on 1400 OS. Subsequently, the trained algorithm was applied to a test set consisting of 350 OS. The intersection over union (IoU), as a measure of accuracy, was calculated to quantify the degree of similarity between the annotated ground truth and the model predictions.ResultsThe model achieved accurate teeth segmentations with a mean IoU score of 0.915. The FDI labels of the teeth were predicted with a mean accuracy of 0.894. The optical inspection showed excellent position agreements between the automatically and manually segmented teeth components. Minor flaws were mostly seen at the edges.ConclusionThe proposed method forms a promising foundation for time-effective and observer-independent teeth segmentation and labeling on intra-oral scans.Clinical significanceDeep learning may assist clinicians in virtual treatment planning in orthodontics, prosthetics, implantology, and orthognathic surgery. The impact of using such models in clinical practice should be explored.
引用
收藏
页数:9
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