Department of Pediatric Dentistry, School of Dentistry, Pusan National University, 50612 Yangsan, Republic of Korea.
Dental and Life Science Institute & Dental Research Institute, School of Dentistry, Pusan National University, 50612 Yangsan, Republic of Korea.
J Clin Pediatr Dent. 2024 Jul;48(4):191-199. doi: 10.22514/jocpd.2024.093. Epub 2024 Jul 3.
Bone age determination in individuals is important for the diagnosis and treatment of growing children. This study aimed to develop a deep-learning model for bone age estimation using lateral cephalometric radiographs (LCRs) and regions of interest (ROIs) in growing children and evaluate its performance. This retrospective study included 1050 patients aged 4-18 years who underwent LCR and hand-wrist radiography on the same day at Pusan National University Dental Hospital and Ulsan University Hospital between January 2014 and June 2023. Two pretrained convolutional neural networks, InceptionResNet-v2 and NasNet-Large, were employed to develop a deep-learning model for bone age estimation. The LCRs and ROIs, which were designated as the cervical vertebrae areas, were labeled according to the patient's bone age. Bone age was collected from the same patient's hand-wrist radiograph. Deep-learning models trained with five-fold cross-validation were tested using internal and external validations. The LCR-trained model outperformed the ROI-trained models. In addition, visualization of each deep learning model using the gradient-weighted regression activation mapping technique revealed a difference in focus in bone age estimation. The findings of this comparative study are significant because they demonstrate the feasibility of bone age estimation deep learning with craniofacial bones and dentition, in addition to the cervical vertebrae on the LCR of growing children.
骨龄测定对生长发育期儿童的诊断和治疗至关重要。本研究旨在开发一种基于侧位头颅侧位片(LCR)和感兴趣区(ROI)的深度学习模型,用于评估生长发育期儿童的骨龄,并评估其性能。本回顾性研究纳入了 2014 年 1 月至 2023 年 6 月期间在釜山国立大学牙科学院和蔚山大学医院接受 LCR 和双手腕 X 线摄影的 1050 名 4-18 岁患者。使用两种预训练的卷积神经网络(InceptionResNet-v2 和 NasNet-Large)来开发用于骨龄估计的深度学习模型。LCR 和 ROI(被指定为颈椎区域)根据患者的骨龄进行标记。骨龄从同一患者的双手腕 X 线片收集。使用五重交叉验证训练的深度学习模型通过内部和外部验证进行测试。LCR 训练的模型优于 ROI 训练的模型。此外,使用梯度加权回归激活映射技术对每个深度学习模型进行可视化,结果显示在骨龄估计方面存在差异。本比较研究的结果具有重要意义,因为它们证明了除 LCR 上的颈椎外,还可以使用颅面骨和牙齿进行骨龄估计的深度学习的可行性。