Department of Orthodontics, Shanghai Ninth People's Hospital affiliated to Shanghai Jiao Tong University School of Medicine, Shanghai, 200011, China.
Chohotech Inc, Hangzhou, China.
BMC Oral Health. 2023 Aug 12;23(1):557. doi: 10.1186/s12903-023-03266-7.
Many scholars have proven cervical vertebral maturation (CVM) method can predict the growth and development and assist in choosing the best time for treatment. However, assessing CVM is a complex process. The experience and seniority of the clinicians have an enormous impact on judgment. This study aims to establish a fully automated, high-accuracy CVM assessment system called the psc-CVM assessment system, based on deep learning, to provide valuable reference information for the growth period determination.
This study used 10,200 lateral cephalograms as the data set (7111 in train set, 1544 in validation set and 1545 in test set) to train the system. The psc-CVM assessment system is designed as three parts with different roles, each operating in a specific order. 1) Position Network for locating the position of cervical vertebrae; 2) Shape Recognition Network for recognizing and extracting the shapes of cervical vertebrae; and 3) CVM Assessment Network for assessing CVM according to the shapes of cervical vertebrae. Statistical analysis was conducted to detect the performance of the system and the agreement of CVM assessment between the system and the expert panel. Heat maps were analyzed to understand better what the system had learned. The area of the third (C3), fourth (C4) cervical vertebrae and the lower edge of second (C2) cervical vertebrae were activated when the system was assessing the images.
The system has achieved good performance for CVM assessment with an average AUC (the area under the curve) of 0.94 and total accuracy of 70.42%, as evaluated on the test set. The Cohen's Kappa between the system and the expert panel is 0.645. The weighted Kappa between the system and the expert panel is 0.844. The overall ICC between the psc-CVM assessment system and the expert panel was 0.946. The F1 score rank for the psc-CVM assessment system was: CVS (cervical vertebral maturation stage) 6 > CVS1 > CVS4 > CVS5 > CVS3 > CVS2.
The results showed that the psc-CVM assessment system achieved high accuracy in CVM assessment. The system in this study was significantly consistent with expert panels in CVM assessment, indicating that the system can be used as an efficient, accurate, and stable diagnostic aid to provide a clinical aid for determining growth and developmental stages by CVM.
许多学者已经证明颈椎成熟度(CVM)方法可以预测生长发育,并有助于选择最佳治疗时机。然而,评估 CVM 是一个复杂的过程。临床医生的经验和资历对判断有很大的影响。本研究旨在建立一个基于深度学习的全自动、高精度 CVM 评估系统,称为 psc-CVM 评估系统,为生长期的确定提供有价值的参考信息。
本研究使用了 10200 张侧位头颅侧位片作为数据集(训练集 7111 张,验证集 1544 张,测试集 1545 张)来训练系统。该 psc-CVM 评估系统设计为三个具有不同角色的部分,每个部分都按特定顺序运行。1)定位网络,用于定位颈椎位置;2)形状识别网络,用于识别和提取颈椎形状;3)CVM 评估网络,根据颈椎形状进行 CVM 评估。对系统进行了统计分析,以检测系统的性能和系统与专家小组对 CVM 评估的一致性。分析了热图,以更好地了解系统的学习内容。当系统评估图像时,第三颈椎(C3)、第四颈椎(C4)和第二颈椎(C2)的下边缘被激活。
该系统在测试集上的平均 AUC(曲线下面积)为 0.94,总准确率为 70.42%,对 CVM 评估取得了良好的效果。系统与专家小组之间的 Cohen's Kappa 为 0.645。系统与专家小组之间的加权 Kappa 为 0.844。psc-CVM 评估系统与专家小组之间的总体 ICC 为 0.946。psc-CVM 评估系统的 F1 评分等级为:CVS(颈椎成熟度阶段)6>CVS1>CVS4>CVS5>CVS3>CVS2。
结果表明,psc-CVM 评估系统在 CVM 评估中具有很高的准确性。本研究中的系统在 CVM 评估方面与专家小组显著一致,表明该系统可作为一种高效、准确、稳定的诊断辅助工具,通过 CVM 为确定生长发育阶段提供临床辅助。