MedCity21, Division of Premier Preventive Medicine, Osaka City University Hospital, Abeno Harukasu 21F, Abenosuji 1-1-43, Abeno-ku Osaka, Osaka 545-8545, Japan.
Department of Radiology, Osaka University Hospital, Yamadaoka 2-15, Suita, Osaka 565-0871, Japan.
Radiography (Lond). 2021 Nov;27(4):1110-1117. doi: 10.1016/j.radi.2021.05.002. Epub 2021 Jun 3.
Lateral radiography of the knee joint is frequently performed; however, the retake rate is high owing to positioning errors. Therefore, in this study, to reduce the required number and time of image retakes, we developed a system that can classify the tilting directions of lateral knee radiographs and evaluated the accuracy of the proposed method.
Using our system, the tilting directions of a lateral knee radiographs were classified into four direction categories. The system was developed by training the DCNN based on 50 cases of Raysum images and tested on three types test dataset; ten more cases of Raysum images, one case of flexed knee joint phantom images and 14 rejected knee joint radiographs. To train a deep convolutional neural network (DCNN), we employed Raysum images created via three-dimensional (3D) X-ray computed tomography (CT); 11 520 Raysum images were created from 60 cases of 3D CT data by changing the projection angles. Thereby, we obtained pseudo images attached with correct labels that are essential for training.
The overall accuracy on each test dataset was 88.5 ± 7.0% (mean ± standard deviation), 81.4 ± 11.2%, and 73.3 ± 9.2%. The larger the tilting degree of the knee joint, the higher the classification accuracy.
DCNN could classify the tilting directions of a knee joint from lateral knee radiographs. Using Raysum images made it possible to facilitate creating dataset for training DCNN. The possibility was indicated for using support system of lateral knee radiographs.
The system may also reduce the burden on patients and increase the work efficiency of radiological technologists.
膝关节的侧位 X 光摄影经常进行;然而,由于定位错误,重拍率很高。因此,在这项研究中,为了减少所需的重拍次数和时间,我们开发了一种能够对侧膝关节 X 光片倾斜方向进行分类的系统,并评估了该方法的准确性。
使用我们的系统,将侧膝关节 X 光片的倾斜方向分为四个方向类别。该系统是通过基于 50 例 Raysum 图像的 DCNN 进行训练开发的,并在三种测试数据集上进行了测试:10 例更多的 Raysum 图像、1 例弯曲膝关节体模图像和 14 例不合格的膝关节 X 光片。为了训练深度卷积神经网络(DCNN),我们使用通过三维(3D)X 射线计算机断层扫描(CT)创建的 Raysum 图像;通过改变投影角度,从 60 例 3D CT 数据中创建了 11520 例 Raysum 图像,从而获得了带有正确标签的伪图像,这些标签对于训练是必不可少的。
在每个测试数据集上的整体准确率分别为 88.5±7.0%(平均值±标准差)、81.4±11.2%和 73.3±9.2%。膝关节倾斜度越大,分类准确率越高。
DCNN 可以从侧膝关节 X 光片中分类出膝关节的倾斜方向。使用 Raysum 图像使得为 DCNN 训练创建数据集变得可行。表明有可能使用侧膝关节 X 光片的支持系统。
该系统还可以减轻患者的负担,提高放射技术人员的工作效率。