CDSNet:基于深度学习的自动方法,可从侧位头颅影像的不同解剖区域评估生长阶段。

IF 2.6 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Yuchen Zhang, Zhen Lu, Jianglin Zhou, Yi Sun, Wuci Yi, Juan Wang, Tianjing Du, Dongning Li, Xinyan Zhao, Yifei Xu, Chen Li, Kun Qi
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引用次数: 0

摘要

背景:生长阶段的评估通常由颈椎成熟度(CVM)决定,在正畸学中起着至关重要的作用。然而,在使用 CVM 时,有可能与实际生长阶段存在偏差。本研究旨在引入 CDSNet,这是一种可解释的深度学习模型,用于根据侧位头颅影像中的颈椎、牙齿和额窦评估生长阶段:由四位牙医对接受正畸治疗的患者的 1,732 对侧头影和手-腕部 X 光片数据集进行注释。使用 CVM 和逻辑回归进行了基准测试。实验旨在评估 CDSNet 使用各种方法和解剖区域评估生长阶段的性能:与基于 CVM 的方法相比,CDSNet 在评估生长突增方面取得了显著的准确率(90.99%)、精确率(89.98%)、召回率(92.50%)和 F-1 分数(91.22%),分别提高了 26.56%、27.96%、30.26% 和 29.30%。此外,与基于颈椎的深度学习方法相比,也分别提高了 12.25%、11.40%、14.14% 和 12.56%。可解释模块的侧输出显示,颈椎、牙齿和额窦参与了对生长突增的评估:结论:在临床领域,CDSNet 能够帮助临床医生确定患者的生长阶段,尤其是那些接近两个阶段之间边界且特征不明显的患者。这项研究证明了可解释深度学习在研究颅面生长外部表现方面的作用。事实证明,整合算法或临床研究来分析侧位头颅照片上的多个特征是一种可行的方法,可以帮助正畸医生并提高诊断效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CDSNet: An automated method for assessing growth stages from various anatomical regions in lateral cephalograms based on deep learning.

Background: The assessment of growth stages, typically determined by Cervical Vertebrae Maturation (CVM), plays a crucial role in orthodontics. However, there is a potential deviation from actual growth stages when using CVM. This study aimed to introduce CDSNet, an interpretable deep learning model for assessing growth stages based on cervical vertebrae, dentition, and frontal sinus in lateral cephalograms.

Methods: A dataset of 1,732 pairs of lateral cephalograms and hand-wrist radiographs from patients who underwent orthodontic treatment was annotated by four dentists. Benchmarks were conducted using CVM and logistic regression. Experiments were designed to evaluate CDSNet's performance in assessing growth stages using various methods and anatomical regions.

Results: CDSNet achieved remarkable Accuracy (90.99%), Precision (89.98%), Recall (92.50%), and F-1 Score (91.22%) in assessing growth spurt, representing significant improvements of 26.56%, 27.96%, 30.26%, and 29.30% compared to the CVM-based method. Additionally, when compared to a deep learning method based on cervical vertebrae, improvements of 12.25%, 11.40%, 14.14%, and 12.56% were observed. The interpretable module's side output revealed the involvement of cervical vertebrae, dentition, and frontal sinus in assessing growth spurt.

Conclusions: In the clinical domain, CDSNet is able to assist clinicians in determining patients' growth stages, particularly those near the boundary between two stages with less distinct features. This study demonstrated the role of interpretable deep learning in investigating the external manifestations of craniofacial growth. Integrating algorithmic or clinical research to analyze multiple features on lateral cephalograms proved a feasible approach to assist orthodontists and improve diagnostic efficacy.

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来源期刊
Journal of the World Federation of Orthodontists
Journal of the World Federation of Orthodontists DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
3.80
自引率
4.80%
发文量
34
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