Kim Eun-Gyeong, Oh Il-Seok, So Jeong-Eun, Kang Junhyeok, Le Van Nhat Thang, Tak Min-Kyung, Lee Dae-Woo
Division of Computer Science and Engineering, Jeonbuk National University, Jeonju 54907, Korea.
Department of Pediatric Dentistry, Research Institute of Clinical Medicine, Jeonbuk National University, Jeonju 54907, Korea.
J Clin Med. 2021 Nov 19;10(22):5400. doi: 10.3390/jcm10225400.
Recently, the estimation of bone maturation using deep learning has been actively conducted. However, many studies have considered hand-wrist radiographs, while a few studies have focused on estimating cervical vertebral maturation (CVM) using lateral cephalograms. This study proposes the use of deep learning models for estimating CVM from lateral cephalograms. As the second, third, and fourth cervical vertebral regions (denoted as C2, C3, and C4, respectively) are considerably smaller than the whole image, we propose a stepwise segmentation-based model that focuses on the C2-C4 regions. We propose three convolutional neural network-based classification models: a one-step model with only CVM classification, a two-step model with region of interest (ROI) detection and CVM classification, and a three-step model with ROI detection, cervical segmentation, and CVM classification. Our dataset contains 600 lateral cephalogram images, comprising six classes with 100 images each. The three-step segmentation-based model produced the best accuracy (62.5%) compared to the models that were not segmentation-based.
最近,利用深度学习对骨骼成熟度进行评估的研究正在积极开展。然而,许多研究关注的是手部腕部X光片,而少数研究聚焦于使用头颅侧位片来评估颈椎成熟度(CVM)。本研究提出使用深度学习模型从头颅侧位片中评估CVM。由于第二、第三和第四颈椎区域(分别记为C2、C3和C4)比整个图像小得多,我们提出了一种基于逐步分割的模型,该模型聚焦于C2 - C4区域。我们提出了三种基于卷积神经网络的分类模型:仅进行CVM分类的一步模型、具有感兴趣区域(ROI)检测和CVM分类的两步模型,以及具有ROI检测、颈椎分割和CVM分类的三步模型。我们的数据集包含600张头颅侧位片图像,分为六个类别,每个类别有100张图像。与非基于分割的模型相比,基于三步分割的模型产生了最佳准确率(62.5%)。