Yang Changzhi, Wei Linyu, Huang Xi, Tu Lili, Xu Yanjia, Li Xiaolong, Hu Zhe
Shandong Sport University, Jinan, 250000, China.
School of Physical Education, Southwest Medical University, Luzhou, China.
Sci Rep. 2025 May 27;15(1):18552. doi: 10.1038/s41598-025-02739-9.
Markerless motion capture (ML) systems, which utilize deep learning algorithms, have significantly expanded the applications of biomechanical analysis. Jump tests are now essential tools for athlete monitoring and injury prevention. However, the validity of kinematic and kinetic parameters derived from ML for lower limb joints requires further validation in populations engaged in high-intensity jumping sports. The purpose of this study was to compare lower limb kinematic and kinetic estimates between marker-based (MB) and ML motion capture systems during jumps. Fourteen male Division I movement collegiate athletes performed a minimum of three squat jumps (SJ), drop jumps (DJ), and countermovement jumps (CMJ) in a fixed sequence. The movements were synchronized using ten infrared cameras, six high-resolution cameras, and two force measurement platforms, all controlled by Vicon Nexus software. Motion data were collected, and the angles, moments, and power at the hip, knee, and ankle joints were calculated using Theia3D software. These results were then compared with those obtained from the Vicon system. Comparative analyses included Pearson correlation coefficients (r), root mean square differences (RMSD), extreme error values, and statistical parametric mapping (SPM).SPM analysis of the three movements in the sagittal plane revealed significant differences in hip joint angles, with joint angle RMSD ≤ 5.6°, hip joint moments RMSD ≤ 0.26 N·M/kg, and power RMSD ≤ 2.12 W/kg showing considerable variation, though not reaching statistical significance. ML systems demonstrate high measurement accuracy in estimating knee and ankle kinematics and kinetics in the sagittal plane during these conventional jump tests; however, the accuracy of hip joint kinematic measurements in the sagittal plane requires further validation.
利用深度学习算法的无标记运动捕捉(ML)系统显著扩展了生物力学分析的应用。跳跃测试如今是运动员监测和损伤预防的重要工具。然而,从ML得出的下肢关节运动学和动力学参数在从事高强度跳跃运动人群中的有效性需要进一步验证。本研究的目的是比较基于标记(MB)和ML运动捕捉系统在跳跃过程中的下肢运动学和动力学估计值。14名男子一级联盟大学运动专业运动员按固定顺序至少进行了三次深蹲跳(SJ)、下落跳(DJ)和反向运动跳(CMJ)。运动通过十台红外摄像机、六台高分辨率摄像机和两个力测量平台进行同步,所有这些都由Vicon Nexus软件控制。收集运动数据,并使用Theia3D软件计算髋、膝和踝关节的角度、力矩和功率。然后将这些结果与从Vicon系统获得的结果进行比较。比较分析包括皮尔逊相关系数(r)、均方根差(RMSD)、极端误差值和统计参数映射(SPM)。矢状面内三个动作的SPM分析显示髋关节角度存在显著差异,关节角度RMSD≤5.6°,髋关节力矩RMSD≤0.26 N·M/kg,功率RMSD≤2.12 W/kg,虽有相当大的变化,但未达到统计学意义。在这些传统跳跃测试中,ML系统在估计矢状面内膝关节和踝关节的运动学和动力学方面显示出较高的测量精度;然而,矢状面内髋关节运动学测量的准确性需要进一步验证。