一种基于特征匹配的自动头部测量叠加方法的评价。

Ling Zhao, Juneng Huang, Min Tang, Xuejun Zhang, Lijuan Xiao, Renchuan Tao
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引用次数: 0

摘要

本研究的目的是建立一种基于特征匹配的头颅自动叠加新方法,并与常用的Sella-Nasion (SN)叠加方法进行比较。收集成人正畸患者治疗前(T1)和治疗后(T2)侧位头颅x线片(lcr) 178对。90个LCR对被用来训练“你只看一次”版本8 (YOLOv8)模型来自动识别稳定的颅骨参考区域。该方法代表了一种基于特征匹配的自动叠加方法。其余88对LCR对由3位正畸专家进行标记识别,评价两种叠加方法的准确性。测量17个硬组织标记点的欧氏距离,并对叠加后的欧氏距离进行统计比较。两种方法在大多数地标的叠加误差上存在显著差异(p
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of an Automatic Cephalometric Superimposition Method Based on Feature Matching.

The objective of the study is to establish a novel method for automatic cephalometric superimposition on the basis of feature matching and compare it with the commonly used Sella-Nasion (SN) superimposition method. A total of 178 pairs of pre- (T1) and post-treatment (T2) lateral cephalometric radiographs (LCRs) from adult orthodontic patients were collected. Ninety LCR pairs were used to train the you only look once version 8 (YOLOv8) model to automatically recognize stable cranial reference areas. This approach represents a novel method for automated superimposition on the basis of feature matching. The remaining 88 LCR pairs were used for landmark identification by three orthodontic experts to evaluate the accuracy of the two superimposition methods. The Euclidean distances of 17 hard tissue landmarks were measured and statistically compared after superimposition. Significant differences were observed in the superimposition error of most landmarks between the two methods (p < 0.05). The successful detection rate (SDR) of automatic superimposition of each landmark within the precision ranges of 1 mm, 2 mm, and 3 mm via the new method was higher than that via the SN method. The new automatic superimposition method is more accurate than the SN method and is a reliable method for superimposing adult LCRs, thus providing support for clinical or research work.

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