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使用深度学习技术自动测量单侧下肢 X 光片中的髋膝踝角度。

Automated measurement of hip-knee-ankle angle on the unilateral lower limb X-rays using deep learning.

机构信息

State Key Laboratory of Integrated Optoelectronics, College of Electronic Science and Engineering, Jilin University, Changchun, China.

Department of Orthopedics, The Second Hospital of Jilin University, Changchun, China.

出版信息

Phys Eng Sci Med. 2021 Mar;44(1):53-62. doi: 10.1007/s13246-020-00951-7. Epub 2020 Nov 30.

Abstract

Significant inherent extra-articular varus angulation is associated with abnormal postoperative hip-knee-ankle (HKA) angle. At present, HKA is manually measured by orthopedic surgeons and it increases the doctors' workload. To automatically determine HKA, a deep learning-based automated method for measuring HKA on the unilateral lower limb X-rays was developed and validated. This study retrospectively selected 398 double lower limbs X-rays during 2018 and 2020 from Jilin University Second Hospital. The images (n = 398) were cropped into unilateral lower limb images (n = 796). The deep neural network was used to segment the head of hip, the knee, and the ankle in the same image, respectively. Then, the mean square error of distance between each internal point of each organ and the organ's boundary was calculated. The point with the minimum mean square error was set as the central point of the organ. HKA was determined using the coordinates of three organs' central points according to the law of cosines. In a quantitative analysis, HKA was measured manually by three orthopedic surgeons with a high consistency (176.90 °  ± 12.18°, 176.95 °  ± 12.23°, 176.87 °  ± 12.25°) as evidenced by the Kandall's W of 0.999 (p < 0.001). Of note, the average measured HKA by them (176.90 °  ± 12.22°) served as the ground truth. The automatically measured HKA by the proposed method (176.41 °  ± 12.08°) was close to the ground truth, showing no significant difference. In addition, intraclass correlation coefficient (ICC) between them is 0.999 (p < 0.001). The average of difference between prediction and ground truth is 0.49°. The proposed method indicates a high feasibility and reliability in clinical practice.

摘要

显著的关节外内翻角度与术后髋膝踝角(HKA)异常有关。目前,HKA 由矫形外科医生手动测量,这增加了医生的工作量。为了自动确定 HKA,开发并验证了一种基于深度学习的单侧下肢 X 射线 HKA 自动测量方法。本研究回顾性地从吉林大学第二医院选择了 2018 年和 2020 年期间的 398 对双下肢 X 射线。将图像(n=398)裁剪成单侧下肢图像(n=796)。使用深度神经网络分别对髋关节头、膝关节和踝关节进行分割。然后,计算每个器官内部点与器官边界之间距离的均方误差。具有最小均方误差的点被设置为器官的中心点。根据余弦定律,使用三个器官中心点的坐标确定 HKA。在定量分析中,由三名矫形外科医生手动测量 HKA,一致性很高(176.90°±12.18°、176.95°±12.23°、176.87°±12.25°),Kandall's W 为 0.999(p<0.001)。值得注意的是,他们平均测量的 HKA(176.90°±12.22°)作为真实值。该方法自动测量的 HKA(176.41°±12.08°)接近真实值,无显著差异。此外,两者之间的组内相关系数(ICC)为 0.999(p<0.001)。预测值与真实值之间的差异平均值为 0.49°。该方法在临床实践中具有较高的可行性和可靠性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c23/7701936/604f4c776a3d/13246_2020_951_Fig1_HTML.jpg

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