Department of Oral and Maxillofacial Surgery, Dalian Stomatological Hospital, Dalian, China; Division for Globalization Initiative, Liaison Center for Innovative Dentistry, Graduate School of Dentistry, Tohoku University, Sendai, Japan.
School of Optical-Electrical and Computer Engineering, University of Shanghai for Science and Technology, Shanghai, China.
Oral Surg Oral Med Oral Pathol Oral Radiol. 2024 May;137(5):554-562. doi: 10.1016/j.oooo.2024.02.003. Epub 2024 Feb 12.
We examined the effectiveness and feasibility of the Mask Region-based Convolutional Neural Network (Mask R-CNN) for automatic detection of cephalometric landmarks on lateral cephalometric radiographs (LCRs).
In total, 400 LCRs, each with 19 manually identified landmarks, were collected. Of this total, 320 images were randomly selected as the training dataset for Mask R-CNN, and the remaining 80 images were used for testing the automatic detection of the 19 cephalometric landmarks, for a total of 1520 landmarks. Detection rate, average error, and detection accuracy rate were calculated to assess Mask R-CNN performance.
Of the 1520 landmarks, 1494 were detected, for a detection rate of 98.29%. The average error, or linear deviation distance between the detected points and the originally marked points of each detected landmark, ranged from 0.56 to 9.51 mm, with an average of 2.19 mm. For detection accuracy rate, 649 landmarks (43.44%) had a linear deviation distance less than 1 mm, 1020 (68.27%) less than 2 mm, and 1281 (85.74%) less than 4 mm in deviation from the manually marked point. The average detection time was 1.48 seconds per image.
Deep learning Mask R-CNN shows promise in enhancing cephalometric analysis by automating landmark detection on LCRs, addressing the limitations of manual analysis, and demonstrating effectiveness and feasibility.
我们研究了基于掩模区域的卷积神经网络(Mask R-CNN)在自动检测侧位头颅侧位片(LCR)上的头影测量标志点中的有效性和可行性。
共收集了 400 张 LCR,每张都有 19 个手动识别的标志点。其中 320 张图像被随机选择作为 Mask R-CNN 的训练数据集,其余 80 张图像用于测试 19 个头影测量标志点的自动检测,共 1520 个标志点。计算检测率、平均误差和检测准确率来评估 Mask R-CNN 的性能。
在 1520 个标志点中,检测到 1494 个,检测率为 98.29%。每个检测标志点的检测点与原始标记点之间的平均误差(或线性偏差距离)在 0.56 到 9.51 毫米之间,平均为 2.19 毫米。在检测准确率方面,649 个标志点(43.44%)的线性偏差距离小于 1 毫米,1020 个标志点(68.27%)的线性偏差距离小于 2 毫米,1281 个标志点(85.74%)的线性偏差距离小于 4 毫米。平均每张图像的检测时间为 1.48 秒。
深度学习 Mask R-CNN 通过自动检测 LCR 上的标志点,为头影测量分析提供了增强,解决了手动分析的局限性,并展示了有效性和可行性。