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锥形束计算机断层扫描成像中人工智能生成的与传统的STL模型:关于测量准确性和可靠性的初步研究

AI-Generated vs. Traditional STL Models in CBCT Imaging: A Pilot Study on Measurements Accuracy and Reliability.

作者信息

Ersalıcı İsmet, Aksoy Secil, Kamiloglu Beste, Orhan Kaan

机构信息

Department of Orthodontics, Faculty of Dentistry, Near East University, Nicosia, Cyprus.

Department of Dentomaxillofacial Radiology, Faculty of Dentistry, Near East University, Nicosia, Cyprus.

出版信息

J Imaging Inform Med. 2025 Apr 16. doi: 10.1007/s10278-025-01502-w.

Abstract

The aim of this study is to assess the reliability of linear measurements obtained from STL models and three-dimensional hard-tissue models of the maxilla and mandible, both derived from CBCT images. The STL models are generated using both a software program and a web-based AI diagnostic tool, and these measurements are compared to those from the hard tissue models. One hundred CBCT scans were included in this study. DICOM files were imported into Maxilim® software to create hard-tissue models. An AI algorithm and Mimics software were also used to generate STL images. Five mandibular and three maxillary measurements were taken. Pairwise comparisons were made by performing the Tukey test, and absolute agreement among the three programs was assessed by using the intraclass correlation coefficient (ICC). The repeated measurements demonstrated high reliability for mandibular measurements (ICC: 0.902-0.999), while maxillary measurements showed more variability (ICC: 0.456-0.997), with poor reliability in DFPM using Mimics-STL (p = 0.071). ICC and Pearson correlation values were moderate for DIM, while others were good to excellent. Maxillary distances were less reliable, particularly for DFPM (Mimics-STL vs. Maxilim) and DSN (Mimics-STL vs. AI-STL). ANOVA revealed significant differences in DCP, DSN, DFI, DMF, and DFPM, with Maxilim yielding the highest mean values, except for DMF. 3D hard-tissue models provided higher measurement values than STL models. The significant variability observed in STL maxillary measurements suggests that anatomical complexity and segmentation algorithms influence measurement consistency. These findings highlight the importance of carefully selecting segmentation methodologies in clinical and research settings.

摘要

本研究的目的是评估从CBCT图像衍生而来的上颌骨和下颌骨的STL模型及三维硬组织模型所获得的线性测量值的可靠性。STL模型是使用软件程序和基于网络的人工智能诊断工具生成的,并将这些测量值与硬组织模型的测量值进行比较。本研究纳入了100例CBCT扫描。将DICOM文件导入Maxilim®软件以创建硬组织模型。还使用了一种人工智能算法和Mimics软件来生成STL图像。进行了五项下颌测量和三项上颌测量。通过进行Tukey检验进行成对比较,并使用组内相关系数(ICC)评估三个程序之间的绝对一致性。重复测量结果表明,下颌测量具有较高的可靠性(ICC:0.902 - 0.999),而上颌测量的变异性更大(ICC:0.456 - 0.997),使用Mimics - STL进行DFPM测量时可靠性较差(p = 0.071)。对于DIM,ICC和Pearson相关值为中等,而其他值则为良好至优秀。上颌距离的可靠性较低,特别是对于DFPM(Mimics - STL与Maxilim)和DSN(Mimics - STL与AI - STL)。方差分析显示,DCP、DSN、DFI、DMF和DFPM存在显著差异,除DMF外,Maxilim得出的平均值最高。三维硬组织模型提供的测量值高于STL模型。在STL上颌测量中观察到的显著变异性表明,解剖复杂性和分割算法会影响测量一致性。这些发现突出了在临床和研究环境中仔细选择分割方法的重要性。

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