Automatic determination of pubertal growth spurts based on the cervical vertebral maturation staging using deep convolutional neural networks

IF 2.6 Q1 DENTISTRY, ORAL SURGERY & MEDICINE
Maryam Khazaei , Vahid Mollabashi , Hassan Khotanlou , Maryam Farhadian
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Abstract

Background

This study aimed to develop a deep convolutional neural network (CNN) for automatic classification of pubertal growth spurts using cervical vertebral maturation (CVM) staging based on the lateral cephalograms of an Iranian subpopulation.

Material and Methods

Cephalometric radiographs were collected from 1846 eligible patients (aged 5–18 years) referred to the orthodontic department of Hamadan University of Medical Sciences. These images were labeled by two experienced orthodontists. Two scenarios, including two- and three-class (pubertal growth spurts using CVM), were considered as the output for the classification task. The cropped image of the second to fourth cervical vertebrae was used as input to the network. After the preprocessing, the augmentation step, and hyperparameter tuning, the networks were trained with initial random weighting and transfer learning. Finally, the best architecture among the different architectures was determined based on the accuracy and F-score criteria.

Results

The CNN based on the ConvNeXtBase-296 architecture had the highest accuracy for automatically assessing pubertal growth spurts based on CVM staging in both three-class (82% accuracy) and two-class (93% accuracy) scenarios. Given the limited amount of data available for training the target networks for most of the architectures in use, transfer learning improves predictive performance.

Conclusions

The results of this study confirm the potential of CNNs as an auxiliary diagnostic tool for intelligent assessment of skeletal maturation staging with high accuracy even with a relatively small number of images. Considering the development of orthodontic science toward digitalization, the development of such intelligent decision systems is proposed.

基于颈椎成熟分期的深度卷积神经网络自动测定青春期生长高峰
背景本研究旨在开发一种深度卷积神经网络(CNN),用于根据伊朗亚群的侧方头影图,使用颈椎成熟度(CVM)分期对青春期生长突进行自动分类。材料和方法收集了1846名符合条件的患者(年龄5-18岁)的头部X线片,这些患者被转诊到哈马丹医科大学正畸系。这些图像由两位经验丰富的正畸医生标记。两种场景,包括两类和三类(使用CVM的青春期生长刺激),被认为是分类任务的输出。第二至第四颈椎的裁剪图像被用作网络的输入。在预处理、增强步骤和超参数调整之后,使用初始随机加权和迁移学习对网络进行训练。最后,根据准确性和F评分标准,确定了不同体系结构中的最佳体系结构。结果基于ConvNeXtBase-296架构的CNN在三类(82%准确率)和两类(93%准确率)场景中基于CVM分期自动评估青春期生长突的准确率最高。鉴于可用于训练大多数使用中的架构的目标网络的数据量有限,迁移学习提高了预测性能。结论本研究结果证实了细胞神经网络作为一种辅助诊断工具的潜力,即使图像数量相对较少,也能高精度地智能评估骨骼成熟分期。考虑到正畸科学向数字化发展,提出了开发这种智能决策系统的建议。
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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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