Department of Kinesiology and Sport Sciences, School of Education & Human Development, University of Miami, Coral Gables, FL 33143, USA.
Department of Kinesiology, School of Education, Michigan State University, East Lansing, MI 48824, USA.
Gait Posture. 2022 Jun;95:49-55. doi: 10.1016/j.gaitpost.2022.04.005. Epub 2022 Apr 9.
Gait analysis is burdened by time and equipment costs, interpretation, and accessibility of three-dimensional motion analysis systems. Evidence suggests growing adoption of gait testing in the shift toward evidence-based medicine. Further developments addressing these barriers will aid its efficacy in clinical practice. Previous research aiming to develop gait analysis systems for kinetics estimation using the Kinect V2 have provided promising results yet modified approaches using the latest hardware may further aid kinetics estimation accuracy RESEARCH QUESTION: Can a single Azure Kinect sensor combined with a musculoskeletal modeling approach provide kinetics estimations during gait similar to those obtained from marker-based systems with embedded force platforms?
Ten subjects were recruited to perform three walking trials at their normal speed. Trials were recorded using an eight-camera optoelectronic system with two embedded force plates and a single Azure Kinect sensor. Marker and depth data were both used to drive a musculoskeletal model using the AnyBody Modeling System. Predicted kinetics from the Azure Kinect-driven model, including ground reaction force (GRF) and joint moments, were compared to measured values using root meansquared error (RMSE), normalized RMSE, Pearson correlation, concordance correlation, and statistical parametric mapping RESULTS: High to very high correlations were observed for anteroposterior GRF (ρ = 0.889), vertical GRF (ρ = 0.940), and sagittal hip (ρ = 0.805) and ankle (ρ = 0.876) moments. RMSEs were 1.2 ± 2.2 (%BW), 3.2 ± 5.7 (%BW), 0.7 ± 0.1.3 (%BWH), and 0.6 ± 1.0 (%BWH) SIGNIFICANCE: The proposed approach using the Azure Kinect provided higher accuracy compared to previous studies using the Kinect V2 potentially due to improved foot tracking by the Azure Kinect. Future studies should seek to optimize ground contact parameters and focus on regions of error between predicted and measured kinetics highlighted currently for further improvements in kinetic estimations.
步态分析受到时间和设备成本、解释以及三维运动分析系统的可及性的限制。有证据表明,随着循证医学的发展,步态测试的应用越来越广泛。进一步开发解决这些障碍的方法将有助于提高其在临床实践中的效果。先前的研究旨在使用 Kinect V2 开发用于动力学估计的步态分析系统,这些研究提供了有希望的结果,但使用最新硬件修改的方法可能会进一步提高动力学估计的准确性。
单个 Azure Kinect 传感器与肌肉骨骼建模方法相结合,是否可以在步态期间提供类似于使用嵌入式力台的基于标记系统获得的动力学估计?
招募了 10 名受试者以正常速度进行三次步行试验。使用带有两个嵌入式力板和单个 Azure Kinect 传感器的八相机光电系统记录试验。使用 AnyBody 建模系统,使用标记和深度数据来驱动肌肉骨骼模型。使用均方根误差 (RMSE)、归一化 RMSE、皮尔逊相关系数、一致性相关系数和统计参数映射来比较 Azure Kinect 驱动模型预测的动力学(包括地面反作用力 (GRF) 和关节力矩)与测量值。
观察到前-后 GRF (ρ=0.889)、垂直 GRF (ρ=0.940) 和矢状髋 (ρ=0.805) 和踝 (ρ=0.876) 力矩的高度到非常高的相关性。RMSE 分别为 1.2±2.2(%BW)、3.2±5.7(%BW)、0.7±0.1.3(%BWH)和 0.6±1.0(%BWH)。
与先前使用 Kinect V2 的研究相比,使用 Azure Kinect 的提出的方法具有更高的准确性,这可能是由于 Azure Kinect 对脚部的跟踪得到了改善。未来的研究应寻求优化地面接触参数,并专注于当前预测和测量动力学之间的误差区域,以进一步提高动力学估计的准确性。