基于深度学习的四种方法对伴有或不伴有罕见疾病的多颗埋伏牙进行自动锥束计算机断层扫描分割的评估
Automated Cone Beam Computed Tomography Segmentation of Multiple Impacted Teeth With or Without Association to Rare Diseases: Evaluation of Four Deep Learning-Based Methods.
作者信息
Sinard Eloi, Gajny Laurent, de La Dure-Molla Muriel, Felizardo Rufino, Dot Gauthier
机构信息
UFR Odontologie, Université Paris Cité, Paris, France.
Service de Medecine Bucco-Dentaire, AP-HP, Hopital Pitie Salpetriere, Paris, France.
出版信息
Orthod Craniofac Res. 2025 Jun;28(3):433-440. doi: 10.1111/ocr.12890. Epub 2025 Jan 2.
OBJECTIVE
To assess the accuracy of three commercially available and one open-source deep learning (DL) solutions for automatic tooth segmentation in cone beam computed tomography (CBCT) images of patients with multiple dental impactions.
MATERIALS AND METHODS
Twenty patients (20 CBCT scans) were selected from a retrospective cohort of individuals with multiple dental impactions. For each CBCT scan, one reference segmentation and four DL segmentations of the maxillary and mandibular teeth were obtained. Reference segmentations were generated by experts using a semi-automatic process. DL segmentations were automatically generated according to the manufacturer's instructions. Quantitative and qualitative evaluations of each DL segmentation were performed by comparing it with expert-generated segmentation. The quantitative metrics used were Dice similarity coefficient (DSC) and the normalized surface distance (NSD).
RESULTS
The patients had an average of 12 retained teeth, with 12 of them diagnosed with a rare disease. DSC values ranged from 88.5% ± 3.2% to 95.6% ± 1.2%, and NSD values ranged from 95.3% ± 2.7% to 97.4% ± 6.5%. The number of completely unsegmented teeth ranged from 1 (0.1%) to 41 (6.0%). Two solutions (Diagnocat and DentalSegmentator) outperformed the others across all tested parameters.
CONCLUSION
All the tested methods showed a mean NSD of approximately 95%, proving their overall efficiency for tooth segmentation. The accuracy of the methods varied among the four tested solutions owing to the presence of impacted teeth in our CBCT scans. DL solutions are evolving rapidly, and their future performance cannot be predicted based on our results.
目的
评估三种商用和一种开源深度学习(DL)解决方案在多位牙阻生患者锥形束计算机断层扫描(CBCT)图像中自动牙齿分割的准确性。
材料与方法
从多位牙阻生个体的回顾性队列中选取20例患者(20次CBCT扫描)。对于每次CBCT扫描,获得上颌和下颌牙齿的一个参考分割和四个DL分割。参考分割由专家使用半自动流程生成。DL分割根据制造商说明自动生成。通过将每个DL分割与专家生成的分割进行比较,对其进行定量和定性评估。使用的定量指标为骰子相似系数(DSC)和归一化表面距离(NSD)。
结果
患者平均有12颗存留牙,其中12颗被诊断患有一种罕见疾病。DSC值范围为88.5%±3.2%至95.6%±1.2%,NSD值范围为95.3%±2.7%至97.4%±6.5%。完全未分割的牙齿数量范围为1颗(0.1%)至41颗(6.0%)。在所有测试参数中,两种解决方案(Diagnocat和DentalSegmentator)表现优于其他方案。
结论
所有测试方法的平均NSD约为95%,证明了它们在牙齿分割方面的整体效率。由于我们的CBCT扫描中存在阻生牙,四种测试解决方案的方法准确性有所不同。DL解决方案正在迅速发展,基于我们的结果无法预测其未来性能。