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一种用于增强正畸中牙根外吸收体积定量的人工智能辅助三维方法的验证

Validation of an AI-aided 3D method for enhanced volumetric quantification of external root resorption in orthodontics.

作者信息

Baena-de la Iglesia Teresa, Navarro-Fraile Estrella, Iglesias-Linares Alejandro

机构信息

PhD Student, School of Dentistry, Complutense University of Madrid; and Private Practice, Madrid, Spain.

Full Professor and Chair, Department of Orthodontics, Complutense University of Madrid, School of Dentistry. Madrid, Spain.

出版信息

Angle Orthod. 2025 Jun 6;95(5):474-482. doi: 10.2319/092324-781.1. eCollection 2025 Sep.

Abstract

OBJECTIVES

To compare and validate two tridimensional diagnostic methods for quantifying and categorizing external root resorption using an artificial intelligence (AI)-aided, automatic, or manual digital segmentation process.

MATERIALS AND METHODS

40 teeth were segmented from 10 cone beam computed tomography (CBCT) records from five patients. Stereolithographic files were created, and automatic, manual, or AI-aided segmentation of each incisor was performed by two double-blinded operators. Two quantification methods were used and compared by analyzing final segmented regions of the tooth. This study followed QAREL (Quality Appraisal of Diagnostic Reliability) and COSMIN (COnsensus-based Standards for the selection of health Measurement Instruments) guidelines. Reproducibility was assessed using the Dahlberg formula, coefficient of variation, and intraclass correlation coefficient (ICC) ( value < .05).

RESULTS

Intra- and interobserver correlations were high (ICC: > 0.736; < .01). Statistically significant differences were found between the two measurement methods for high-quality CBCT images of central incisors, mainly at the level of the apical third. Specific differences were found between methods when root resorption was evaluated in the middle and apical thirds using AI segmentation of the central incisor ( = .043). When referring to total volume loss of the lateral incisor, differences ( = .021) were observed between methods when segmented by manual or AI-aided procedures. Highest specificity (100%) was observed for AI-aided segmentation and Method 2 for evaluation of root resorption at the apical third volume.

CONCLUSIONS

Assessment of root resorption with CBCT is highly dependent on CBCT definition, type of segmentation, and measurement method. Three-dimensional (3D) measurement method described by three landmark points yielded satisfactory results using any tested segmentations.

摘要

目的

使用人工智能(AI)辅助、自动或手动数字分割过程,比较和验证两种用于定量和分类外吸收的三维诊断方法。

材料与方法

从五名患者的10份锥形束计算机断层扫描(CBCT)记录中分割出40颗牙齿。创建立体光刻文件,由两名双盲操作员对每颗切牙进行自动、手动或AI辅助分割。使用两种定量方法,并通过分析牙齿的最终分割区域进行比较。本研究遵循QAREL(诊断可靠性质量评估)和COSMIN(基于共识的健康测量工具选择标准)指南。使用达尔伯格公式、变异系数和组内相关系数(ICC)(值<0.05)评估再现性。

结果

观察者内和观察者间的相关性很高(ICC:>0.736;P<0.01)。在中切牙高质量CBCT图像的两种测量方法之间发现了统计学上的显著差异,主要在根尖三分之一水平。当使用中切牙的AI分割在中三分之一和根尖三分之一评估牙根吸收时,方法之间发现了特定差异(P = 0.043)。当提及侧切牙的总体积损失时,在通过手动或AI辅助程序分割时,方法之间观察到差异(P = 0.021)。在评估根尖三分之一体积的牙根吸收时,AI辅助分割和方法2的特异性最高(100%)。

结论

CBCT对牙根吸收的评估高度依赖于CBCT的清晰度、分割类型和测量方法。使用任何测试分割方法,由三个界标点描述的三维(3D)测量方法都产生了令人满意的结果。

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