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基于深度学习的锥形束计算机断层扫描中混合牙列的全自动三维分割和精细分类方法。

Fully automated method for three-dimensional segmentation and fine classification of mixed dentition in cone-beam computed tomography using deep learning.

机构信息

State Key Laboratory of Oral Diseases & National Center for Stomatology & National Clinical Research Center for Oral Diseases & Department of Oral and Maxillofacial Surgery, West China Hospital of Stomatology, Sichuan University, Chengdu 610041, PR China.

Machine Intelligence Laboratory, College of Computer Science, Sichuan University, No. 24, south section 1 of the first ring road, Chengdu, 610065, PR China.

出版信息

J Dent. 2024 Dec;151:105398. doi: 10.1016/j.jdent.2024.105398. Epub 2024 Oct 22.

Abstract

OBJECTIVE

To establish a high-precision, automated model using deep learning for the fine classification and three-dimensional (3D) segmentation of mixed dentition in cone-beam computed tomography (CBCT) images.

METHODS

A high-precision, automated deep learning model was built based on modified nnU-Net and U-Net networks and was used to classify and segment mixed dentition. It was trained on a series of 336 CBCT scans and tested using 120 mixed dentition CBCT scans from three centers and 143 permanent dentition CBCT scans from a public dataset. The diagnostic performance of the model was assessed and compared with those of two observers with different seniority levels.

RESULTS

The model achieved accurate classification and segmentation of specific tooth positions in the internal and external mixed dentition datasets (Dice similarity coefficient: 0.964 vs. 0.951; Jaccard coefficient: 0.931 vs. 0.921; precision: 0.963 vs. 0.945; recall: 0.945 vs. 0.941; F-1 score: 0.954 vs. 0.943). These indices consistently exceeded 0.9 across multiple conditions, including fillings, malocclusion, and supernumerary tooth, with an average symmetric surface distance of 0.091 ± 0.029 mm. For permanent dentition, the Dice similarity and Jaccard coefficients exceeded 0.90, the average symmetric surface distance was 0.190 ± 0.092 mm, and precision and recall exceeded 0.94. With the aid of the model, the performance of junior dentists in mixed dentition classification and segmentation improved significantly; in contrast, there was no significant improvement in the performance of senior dentists. The speed of segmentation conducted by the dentists increased by 20.9-22.8 times.

CONCLUSION

The artificial intelligence model has strong clinical applicability, robustness, and generalizability for mixed and permanent dentition.

CLINICAL SIGNIFICANCE

The precise classification and 3D segmentation of mixed dentition in dentofacial deformities, supernumerary teeth, and metal artifacts present challenges. This study developed a deep learning approach to analyze CBCT scans, enhancing diagnostic accuracy and efficacy. It facilitates detailed measurements of tooth morphology and movement as well as informed orthodontic planning and orthotic design. Additionally, this method supports dental education by assisting doctors in explaining CBCT images to the families of pediatric patients.

摘要

目的

利用深度学习建立高精度、自动化的模型,对锥形束 CT(CBCT)图像中的混合牙列进行精细分类和三维(3D)分割。

方法

基于改良的 nnU-Net 和 U-Net 网络,建立高精度、自动化的深度学习模型,用于混合牙列分类和分割。该模型在一系列 336 个 CBCT 扫描中进行训练,并在三个中心的 120 个混合牙列 CBCT 扫描和公共数据集的 143 个恒牙列 CBCT 扫描中进行测试。评估模型的诊断性能,并与两位不同资历水平的观察者进行比较。

结果

该模型在内部和外部混合牙列数据集的特定牙齿位置分类和分割方面实现了精确(Dice 相似系数:0.964 对比 0.951;Jaccard 系数:0.931 对比 0.921;精度:0.963 对比 0.945;召回率:0.945 对比 0.941;F1 评分:0.954 对比 0.943)。在多个条件下,包括填充物、错颌畸形和多生牙,该指数均超过 0.9,平均对称表面距离为 0.091±0.029mm。对于恒牙列,Dice 相似系数和 Jaccard 系数超过 0.90,平均对称表面距离为 0.190±0.092mm,精度和召回率超过 0.94。借助该模型,初级牙医在混合牙列分类和分割方面的表现显著提高;相比之下,资深牙医的表现没有显著改善。牙医的分割速度提高了 20.9-22.8 倍。

结论

该人工智能模型对混合牙列和恒牙列具有较强的临床适用性、稳健性和泛化性。

临床意义

在牙颌面畸形、多生牙和金属伪影中,混合牙列的精确分类和 3D 分割具有挑战性。本研究开发了一种深度学习方法来分析 CBCT 扫描,提高了诊断的准确性和效果。它有助于对牙齿形态和运动进行详细测量,并为正畸计划和矫正设计提供信息。此外,该方法还支持牙科教育,帮助医生向儿科患者的家属解释 CBCT 图像。

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