Deep learning-based automated detection of the dental crown finish line: An accuracy study.

IF 4.3 2区 医学 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Journal of Prosthetic Dentistry Pub Date : 2024-12-01 Epub Date: 2023-12-13 DOI:10.1016/j.prosdent.2023.11.018
Jinhyeok Choi, Junseong Ahn, Ji-Man Park
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引用次数: 0

Abstract

Statement of problem: The marginal fit of dental prostheses is a clinically significant issue, and dental computer-aided design software programs use automated methods to expedite the extraction of finish lines. The accuracy of these automated methods should be evaluated.

Purpose: The purpose of this study was to compare the accuracy of a new hybrid method with existing software programs that extract finish lines using fully automated and semiautomated methods.

Material and methods: A total of 182 jaw scans containing at least 1 natural tooth abutment were collected and divided into 2 groups depending on how the digital data were created. Group DS used desktop scanners to scan casts trimmed for improved finish line visibility, while Group IS used intraoral scans. The method from Dentbird was compared using 3 software packages from 3Shape, exocad, and MEDIT. The Hausdorff and Chamfer distances were used in this study. Three dental laboratory technicians experienced in the digital workflow evaluated clinical finish line acceptance and its Hausdorff and Chamfer distances. For statistical analysis, t tests were performed after the outliers had been removed using the Tukey interquartile range method (α=.05).

Results: Outliers identified by using the Tukey interquartile range method were more numerous in the semiautomatic methods than in the automatic methods. When considering data without outliers, the software performance was found to be similar for desktop scans of the trimmed casts. However, the method from Dentbird demonstrated statistically better results (P<.05) for the posterior tooth with finish lines in concave regions than the 3Shape, exocad, and MEDIT software programs. Furthermore, thresholds coherent with clinical acceptance were determined for the Hausdorff and Chamfer distances. The Hausdorff distance threshold was 0.366 mm for desktop scans and 0.566 mm for intraoral scans. For the Chamfer distance, the threshold was 0.026 for desktop scans and 0.100 for intraoral scans.

Conclusions: The method from Dentbird demonstrated a comparable or better performance than the other software solutions, particularly excelling in finish line extraction for intraoral scans. Using a hybrid method combining deep learning and computer-aided design approaches enables the robust and accurate extraction of finish lines.

基于深度学习的牙冠终点线自动检测:准确性研究
问题简介:牙科修复体的边缘密合度是临床上的一个重要问题,牙科计算机辅助设计软件程序使用自动方法来加速提取边缘线。目的:本研究的目的是比较一种新的混合方法和现有的使用全自动和半自动方法提取边缘线的软件程序的准确性:共收集了 182 份至少包含一个天然牙基台的颌骨扫描图像,并根据数字数据的创建方式分为两组。DS组使用台式扫描仪扫描经过修整的铸型,以提高终点线的可视性,而IS组则使用口内扫描。我们使用 3Shape、exocad 和 MEDIT 三种软件包对 Dentbird 的方法进行了比较。本研究使用的是豪斯多夫距离和倒角距离。三位在数字化工作流程方面经验丰富的牙科技工对临床终点线验收及其豪斯多夫距离和倒角距离进行了评估。统计分析采用 Tukey 四分位距法(α=.05)去除异常值后进行 t 检验:结果:使用 Tukey 四分位数间距法确定的异常值在半自动方法中比在自动方法中更多。在考虑无异常值的数据时,发现软件性能与修剪石膏的桌面扫描类似。不过,Dentbird 的方法在统计上显示出更好的结果(PConclusions:Dentbird 的方法显示出与其他软件解决方案相当或更好的性能,尤其是在口内扫描的终点线提取方面表现出色。使用结合了深度学习和计算机辅助设计方法的混合方法可以稳健、准确地提取终点线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Prosthetic Dentistry
Journal of Prosthetic Dentistry 医学-牙科与口腔外科
CiteScore
7.00
自引率
13.00%
发文量
599
审稿时长
69 days
期刊介绍: The Journal of Prosthetic Dentistry is the leading professional journal devoted exclusively to prosthetic and restorative dentistry. The Journal is the official publication for 24 leading U.S. international prosthodontic organizations. The monthly publication features timely, original peer-reviewed articles on the newest techniques, dental materials, and research findings. The Journal serves prosthodontists and dentists in advanced practice, and features color photos that illustrate many step-by-step procedures. The Journal of Prosthetic Dentistry is included in Index Medicus and CINAHL.
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