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基于深度学习的整合口内扫描和 CBCT 扫描的牙齿模型的准确性,用于正畸治疗中根位置的 3D 评估。

Accuracy of deep learning-based integrated tooth models by merging intraoral scans and CBCT scans for 3D evaluation of root position during orthodontic treatment.

机构信息

, Gwangju, Korea.

Department of Orthodontics, School of Dentistry, Chonnam National University, 33 Yongbong-ro, Buk-gu, Gwangju, 61186, Korea.

出版信息

Prog Orthod. 2022 May 9;23(1):15. doi: 10.1186/s40510-022-00410-x.

Abstract

OBJECTIVE

This study aimed to evaluate the accuracy of deep learning-based integrated tooth models (ITMs) by merging intraoral scans and cone-beam computed tomography (CBCT) scans for three-dimensional (3D) evaluation of root position during orthodontic treatment and to compare the fabrication process of integrated tooth models (ITMs) with manual method.

MATERIAL AND METHODS

Intraoral scans and corresponding CBCT scans before and after treatment were obtained from 15 patients who completed orthodontic treatment with premolar extraction. A total of 600 ITMs were generated using deep learning technology and manual methods by merging the intraoral scans and CBCT scans at pretreatment. Posttreatment intraoral scans were integrated into the tooth model, and the resulting estimated root positions were compared with the actual root position at posttreatment CBCT. Discrepancies between the estimated and actual root position including average surface differences, arch widths, inter-root distances, and root axis angles were obtained in both the deep learning and manual method, and these measurements were compared between the two methods.

RESULTS

The average surface differences of estimated and actual ITMs in the manual method were 0.02 mm and 0.03 mm for the maxillary and mandibular arches, respectively. In the deep learning method, the discrepancies were 0.07 mm and 0.08 mm for the maxillary and mandibular arches, respectively. For the measurements of arch widths, inter-root distances, and root axis angles, there were no significant differences between estimated and actual models both in the manual and in the deep learning methods, except for some measurements. Comparing the two methods, only three measurements showed significant differences. The procedure times taken to obtain the measurements were longer in the manual method than in the deep learning method.

CONCLUSION

Both deep learning and manual methods showed similar accuracy in the integration of intraoral scans and CBCT images. Considering time and efficiency, the deep learning automatic method for ITMs is highly recommended for clinical practice.

摘要

目的

本研究旨在评估基于深度学习的整合牙模型(ITM)的准确性,该模型通过合并口内扫描和锥形束计算机断层扫描(CBCT)扫描,用于正畸治疗期间三维(3D)评估牙根位置,并比较整合牙模型(ITM)的制作工艺与手动方法。

材料与方法

从完成正畸治疗并拔除前磨牙的 15 名患者中获得治疗前和治疗后的口内扫描和相应的 CBCT 扫描。共生成 600 个 ITM,使用深度学习技术和手动方法通过合并治疗前的口内扫描和 CBCT 扫描来生成。将治疗后的口内扫描整合到牙模型中,并将估计的牙根位置与治疗后 CBCT 的实际牙根位置进行比较。在深度学习和手动方法中,获得了估计和实际牙根位置之间的差异,包括平均表面差异、牙弓宽度、牙根间距离和牙根轴角度,并比较了两种方法之间的差异。

结果

手动方法中估计和实际 ITM 的平均表面差异分别为上颌和下颌的 0.02mm 和 0.03mm。在深度学习方法中,上颌和下颌的差异分别为 0.07mm 和 0.08mm。对于牙弓宽度、牙根间距离和牙根轴角度的测量值,手动和深度学习方法中,除了一些测量值外,估计模型和实际模型之间没有显著差异。比较两种方法,只有三个测量值有显著差异。手动方法获取测量值所需的时间长于深度学习方法。

结论

深度学习和手动方法在整合口内扫描和 CBCT 图像方面均具有相似的准确性。考虑到时间和效率,建议在临床实践中使用深度学习自动 ITM 方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bad7/9081076/78a82cb4106f/40510_2022_410_Fig1_HTML.jpg

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