Automated Tooth Segmentation in Magnetic Resonance Scans Using Deep Learning.

IF 2.9 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE Dento maxillo facial radiology Pub Date : 2024-11-26 DOI:10.1093/dmfr/twae059
Tabea Flügge, Shankeeth Vinayahalingam, Niels van Nistelrooij, Stefanie Kellner, Tong Xi, Bram van Ginneken, Stefaan Bergé, Max Heiland, Florian Kernen, Ute Ludwig, Kento Odaka
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Abstract

Objectives: The main objective was to develop and evaluate an artificial intelligence (AI) model for tooth segmentation in magnetic resonance (MR) scans.

Material and methods: MR scans of 20 patients performed with a commercial 64-channel head coil with a T1-weighted 3D-SPACE (Sampling Perfection with Application Optimized Contrasts using different flip angle Evolution) sequence were included. 16 datasets were used for model training and 4 for accuracy evaluation. Two clinicians segmented and annotated the teeth in each dataset. A segmentation model was trained using the nnU-Net framework.The manual reference tooth segmentation and the inferred tooth segmentation were superimposed and compared by computing precision, sensitivity, and Dice-Sørensen coefficient. Surface meshes were extracted from the segmentations, and the distances between points on each mesh and their closest counterparts on the other mesh were computed, of which the mean (average symmetric surface distance, ASSD) and 95th percentile (Hausdorff distance 95%, HD95) were reported.

Results: The model achieved an overall precision of 0.867, a sensitivity of 0.926, a Dice-Sørensen coefficient of 0.895, and a 95% Hausdorff distance of 0.91 mm. The model predictions were less accurate for datasets containing dental restorations due to image artefacts.

Conclusions: The current study developed an automated method for tooth segmentation in MR scans with moderate to high effectiveness for scans with respectively without artefacts.

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利用深度学习在磁共振扫描中自动进行牙齿分割。
目的主要目的是开发和评估用于磁共振(MR)扫描中牙齿分割的人工智能(AI)模型:使用商用 64 通道头部线圈和 T1 加权 3D-SPACE (使用不同翻转角的完美采样与应用优化对比)序列对 20 名患者进行磁共振扫描。16 个数据集用于模型训练,4 个数据集用于准确性评估。每个数据集中由两名临床医生对牙齿进行分割和标注。通过计算精确度、灵敏度和狄斯-索伦森系数,对人工参考牙齿分割和推断的牙齿分割进行叠加和比较。从分割中提取表面网格,计算每个网格上的点与另一个网格上最接近的点之间的距离,并报告平均值(平均对称表面距离,ASSD)和第 95 百分位数(豪斯多夫距离 95%,HD95):该模型的总体精度为 0.867,灵敏度为 0.926,狄斯-索伦森系数为 0.895,95% 的豪斯多夫距离为 0.91 毫米。由于图像伪影的存在,模型对包含牙科修复体的数据集的预测准确度较低:目前的研究开发了一种自动方法,用于磁共振扫描中的牙齿分割,对有无伪影的扫描均有中等至较高的效果。
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来源期刊
CiteScore
5.60
自引率
9.10%
发文量
65
审稿时长
4-8 weeks
期刊介绍: Dentomaxillofacial Radiology (DMFR) is the journal of the International Association of Dentomaxillofacial Radiology (IADMFR) and covers the closely related fields of oral radiology and head and neck imaging. Established in 1972, DMFR is a key resource keeping dentists, radiologists and clinicians and scientists with an interest in Head and Neck imaging abreast of important research and developments in oral and maxillofacial radiology. The DMFR editorial board features a panel of international experts including Editor-in-Chief Professor Ralf Schulze. Our editorial board provide their expertise and guidance in shaping the content and direction of the journal. Quick Facts: - 2015 Impact Factor - 1.919 - Receipt to first decision - average of 3 weeks - Acceptance to online publication - average of 3 weeks - Open access option - ISSN: 0250-832X - eISSN: 1476-542X
期刊最新文献
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