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基于人工智能的侧位颅面测量的自动化骨骼分类。

Automated Skeletal Classification with Lateral Cephalometry Based on Artificial Intelligence.

机构信息

School of Mechanical Engineering, Yonsei University, Seoul, Republic of Korea.

Department of Oral and Maxillofacial Surgery, School of Medicine, Ewha Womans University, Seoul, Republic of Korea.

出版信息

J Dent Res. 2020 Mar;99(3):249-256. doi: 10.1177/0022034520901715. Epub 2020 Jan 24.

Abstract

Lateral cephalometry has been widely used for skeletal classification in orthodontic diagnosis and treatment planning. However, this conventional system, requiring manual tracing of individual landmarks, contains possible errors of inter- and intravariability and is highly time-consuming. This study aims to provide an accurate and robust skeletal diagnostic system by incorporating a convolutional neural network (CNN) into a 1-step, end-to-end diagnostic system with lateral cephalograms. A multimodal CNN model was constructed on the basis of 5,890 lateral cephalograms and demographic data as an input. The model was optimized with transfer learning and data augmentation techniques. Diagnostic performance was evaluated with statistical analysis. The proposed system exhibited >90% sensitivity, specificity, and accuracy for vertical and sagittal skeletal diagnosis. Clinical performance of the vertical classification showed the highest accuracy at 96.40 (95% CI, 93.06 to 98.39; model III). The receiver operating characteristic curve and the area under the curve both demonstrated the excellent performance of the system, with a mean area under the curve >95%. The heat maps of cephalograms were also provided for deeper understanding of the quality of the learned model by visually representing the region of the cephalogram that is most informative in distinguishing skeletal classes. In addition, we present broad applicability of this system through subtasks. The proposed CNN-incorporated system showed potential for skeletal orthodontic diagnosis without the need for intermediary steps requiring complicated diagnostic procedures.

摘要

侧颅面测量已广泛用于正畸诊断和治疗计划中的骨骼分类。然而,这种传统的系统需要手动追踪个体标志点,存在着可能的个体间和个体内变异性误差,且非常耗时。本研究旨在通过将卷积神经网络(CNN)纳入一个 1 步、端到端的侧颅面影像诊断系统,为骨骼诊断提供一个准确、稳健的系统。基于 5890 张侧颅面影像和人口统计学数据构建了一个多模态 CNN 模型作为输入。该模型采用迁移学习和数据增强技术进行了优化。通过统计分析评估了诊断性能。该系统对垂直和矢状骨骼诊断的灵敏度、特异性和准确性均>90%。垂直分类的临床性能显示出最高的准确性,为 96.40%(95%置信区间,93.06%至 98.39%;模型 III)。受试者工作特征曲线和曲线下面积均表明系统具有优异的性能,平均曲线下面积>95%。还通过子任务展示了该系统的广泛适用性。该研究提出的基于 CNN 的系统显示出在无需复杂诊断程序的中介步骤的情况下进行骨骼正畸诊断的潜力。

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