Department of Radiology and Diagnostic Imaging, University of Alberta, Edmonton, AB, Canada.
Department of Biomedical Engineering, University of Alberta, Edmonton, AB, Canada.
J Dent Res. 2020 Aug;99(9):1054-1061. doi: 10.1177/0022034520920593. Epub 2020 May 11.
The use of intraoral ultrasound imaging has received great attention recently due to the benefits of being a portable and low-cost imaging solution for initial and continuing care that is noninvasive and free of ionizing radiation. Alveolar bone is an important structure in the periodontal apparatus to support the tooth. Accurate assessment of alveolar bone level is essential for periodontal diagnosis. However, interpretation of alveolar bone structure in ultrasound images is a challenge for clinicians. This work is aimed at automatically segmenting alveolar bone and locating the alveolar crest via a machine learning (ML) approach for intraoral ultrasound images. Three convolutional neural network-based ML methods were trained, validated, and tested with 700, 200, and 200 images, respectively. To improve the robustness of the ML algorithms, a data augmentation approach was introduced, where 2100 additional images were synthesized through vertical and horizontal shifting as well as horizontal flipping during the training process. Quantitative evaluations of 200 images, as compared with an expert clinician, showed that the best ML approach yielded an average Dice score of 85.3%, sensitivity of 88.5%, and specificity of 99.8%, and identified the alveolar crest with a mean difference of 0.20 mm and excellent reliability (intraclass correlation coefficient ≥0.98) in less than a second. This work demonstrated the potential use of ML to assist general dentists and specialists in the visualization of alveolar bone in ultrasound images.
由于其具有便携性和低成本成像解决方案的优势,可用于初始和持续护理,且是非侵入性的,没有电离辐射,因此最近口腔内超声成像受到了广泛关注。牙槽骨是牙周器械中支撑牙齿的重要结构。准确评估牙槽骨水平对于牙周病的诊断至关重要。然而,超声图像中牙槽骨结构的解释对临床医生来说是一个挑战。本研究旨在通过机器学习(ML)方法自动分割牙槽骨并定位牙槽嵴,用于口腔内超声图像。分别使用三个基于卷积神经网络的 ML 方法进行训练、验证和测试,使用了 700、200 和 200 张图像。为了提高 ML 算法的鲁棒性,引入了一种数据增强方法,在训练过程中通过垂直和水平移位以及水平翻转合成了 2100 张额外的图像。与专家临床医生进行的 200 张图像的定量评估相比,最佳 ML 方法的平均骰子分数为 85.3%,灵敏度为 88.5%,特异性为 99.8%,识别牙槽嵴的平均差异为 0.20mm,在不到一秒的时间内具有极好的可靠性(组内相关系数≥0.98)。这项工作表明,ML 可用于辅助普通牙医和专家在超声图像中可视化牙槽骨。