Jiang Fulin, Abdulqader Abbas Ahmed, Yan Yan, Cheng Fangyuan, Xiang Tao, Yu Jinghong, Li Juan, Qiu Yong, Chen Xin
College of Computer Science, Chongqing University, Chongqing University Three Gorges Hospital, Chongqing, 400044, China.
State Key Laboratory of Oral Diseases, West China School of Stomatology, West China Hospital of Stomatology, Sichuan University, Chengdu, 610041, China.
Head Face Med. 2025 Mar 26;21(1):20. doi: 10.1186/s13005-025-00498-6.
This study aimed to enhance clinical diagnostics for quantitative cervical vertebral maturation (QCVM) staging with precise landmark localization. Existing methods are often subjective and time-consuming, while deep learning alternatives withstand the complex anatomical variations. Therefore, we designed an advanced two-stage convolutional neural network customized for improved accuracy in cervical vertebrae analysis.
This study analyzed 2100 cephalometric images. The data distribution to an 8:1:1 for training, validation, and testing. The CVnet system was designed as a two-step method with a comprehensive evaluation of various regions of interest (ROI) sizes to locate 19 cervical vertebral landmarks and classify precision maturation stages. The accuracy of landmark localization was assessed by success detection rate and student t-test. The QCVM diagnostic accuracy test was conducted to evaluate the assistant performances of our system for six junior orthodontists.
Upon precise calibration with optimal ROI size, the landmark localization registered an average error of 0.66 ± 0.46 mm and a success detection rate of 98.10% within 2 mm. Additionally, the identification accuracy of QCVM stages was 69.52%, resulting in an enhancement of 10.95% in the staging accuracy of junior orthodontists in the diagnostic test.
This study presented a two-stage neural network that successfully automated the identification of cervical vertebral landmarks and the staging of QCVM. By streamlining the workflow and enhancing the accuracy of skeletal maturation estimation, this method offered valuable clinical support, particularly for practitioners with limited experience or access to advanced diagnostic resources, facilitating more consistent and reliable treatment planning.
本研究旨在通过精确的标志点定位来加强定量颈椎成熟度(QCVM)分期的临床诊断。现有方法往往主观且耗时,而深度学习方法能够应对复杂的解剖变异。因此,我们设计了一种先进的两阶段卷积神经网络,以提高颈椎分析的准确性。
本研究分析了2100张头颅侧位片。数据按照8:1:1的比例分配用于训练、验证和测试。CVnet系统被设计为一种两步法,通过全面评估各种感兴趣区域(ROI)大小来定位19个颈椎标志点并分类精确的成熟阶段。通过成功检测率和学生t检验评估标志点定位的准确性。对六名初级正畸医生进行QCVM诊断准确性测试,以评估我们系统的辅助性能。
在使用最佳ROI大小进行精确校准后,标志点定位的平均误差为0.66±0.46毫米,在2毫米范围内的成功检测率为98.10%。此外,QCVM阶段的识别准确率为69.52%,在诊断测试中初级正畸医生的分期准确率提高了10.95%。
本研究提出了一种两阶段神经网络,成功实现了颈椎标志点的自动识别和QCVM分期。通过简化工作流程并提高骨骼成熟度估计的准确性,该方法提供了有价值的临床支持,特别是对于经验有限或无法获得先进诊断资源的从业者,有助于制定更一致、可靠的治疗计划。