Department of Orthopaedic Surgery, Kobe University Graduate School of Medicine, Kobe 650-0017, Japan.
Sensors (Basel). 2024 May 2;24(9):2912. doi: 10.3390/s24092912.
Traditionally, angle measurements have been performed using a goniometer, but the complex motion of shoulder movement has made these measurements intricate. The angle of rotation of the shoulder is particularly difficult to measure from an upright position because of the complicated base and moving axes. In this study, we attempted to estimate the shoulder joint internal/external rotation angle using the combination of pose estimation artificial intelligence (AI) and a machine learning model. Videos of the right shoulder of 10 healthy volunteers (10 males, mean age 37.7 years, mean height 168.3 cm, mean weight 72.7 kg, mean BMI 25.6) were recorded and processed into 10,608 images. Parameters were created using the coordinates measured from the posture estimation AI, and these were used to train the machine learning model. The measured values from the smartphone's angle device were used as the true values to create a machine learning model. When measuring the parameters at each angle, we compared the performance of the machine learning model using both linear regression and Light GBM. When the pose estimation AI was trained using linear regression, a correlation coefficient of 0.971 was achieved, with a mean absolute error (MAE) of 5.778. When trained with Light GBM, the correlation coefficient was 0.999 and the MAE was 0.945. This method enables the estimation of internal and external rotation angles from a direct-facing position. This approach is considered to be valuable for analyzing motor movements during sports and rehabilitation.
传统上,角度测量使用量角器进行,但肩部运动的复杂运动使得这些测量变得复杂。由于肩部的基础和运动轴复杂,因此从直立位置测量旋转角度特别困难。在这项研究中,我们尝试使用姿势估计人工智能(AI)和机器学习模型来估计肩关节的内外旋转角度。记录了 10 名健康志愿者(10 名男性,平均年龄 37.7 岁,平均身高 168.3cm,平均体重 72.7kg,平均 BMI 25.6)的右肩视频,并将其处理成 10608 张图像。使用从姿势估计 AI 测量的坐标创建参数,并使用这些参数来训练机器学习模型。使用智能手机的角度设备测量的值作为真实值来创建机器学习模型。在测量每个角度的参数时,我们比较了使用线性回归和 Light GBM 的机器学习模型的性能。当使用线性回归训练姿势估计 AI 时,达到了 0.971 的相关系数,平均绝对误差(MAE)为 5.778。使用 Light GBM 训练时,相关系数为 0.999,MAE 为 0.945。该方法能够从直面位置估计内外旋转角度。这种方法被认为对分析运动和康复期间的运动非常有价值。