Evaluating Joint Angle Data for Clinical Assessment Using Multidimensional Inverse Kinematics with Average Segment Morphometry.

Rachel I Taitano, Valeriya Gritsenko
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Abstract

Movement analysis is a critical tool in understanding and addressing various disabilities associated with movement deficits. By analyzing movement patterns, healthcare professionals can identify the root causes of these alterations, which is essential for preventing, diagnosing, and rehabilitating a broad spectrum of medical conditions, disabilities, and injuries. With the advent of affordable motion capture technologies, quantitative data on patient movement is more accessible to clinicians, enhancing the quality of care. Nonetheless, it is crucial that these technologies undergo rigorous validation to ensure their accuracy in collecting and monitoring patient movements, particularly for remote healthcare services where direct patient observation is not possible. In this study, motion capture technology was used to track upper extremity movements during a reaching task presented in virtual reality. Kinematic data was then calculated for each participant using a scaled dynamic inertial model. The goal was to evaluate the accuracy of joint angle calculations using inverse kinematics from motion capture relative to the typical movement redundancy. Shoulder, elbow, radioulnar, and wrist joint angles were calculated with models scaled using either direct measurements of each individual’s arm segment lengths or those lengths were calculated from individual height using published average proportions. The errors in joint angle trajectories calculated using the two methods of model scaling were compared to the inter-trial variability of those trajectories. The variance of this error was primarily within the normal range of variability between repetitions of the same movements. This suggests that arm joint angles can be inferred with good enough accuracy from motion capture data and individual height to be useful for the clinical assessment of motor deficits.
利用多维逆运动学和平均节段形态测量法评估关节角度数据,以进行临床评估。
运动分析是了解和解决与运动障碍相关的各种残疾问题的重要工具。通过分析运动模式,医护人员可以找出这些改变的根本原因,这对于预防、诊断和康复各种病症、残疾和损伤至关重要。随着经济实惠的运动捕捉技术的出现,临床医生更容易获得患者运动的定量数据,从而提高医疗质量。然而,这些技术必须经过严格的验证,以确保其在收集和监测患者运动方面的准确性,尤其是在无法直接观察患者的远程医疗服务中。在这项研究中,运动捕捉技术被用于追踪在虚拟现实中呈现的伸手任务中的上肢运动。然后使用按比例动态惯性模型计算每位参与者的运动数据。目的是评估使用运动捕捉的逆运动学计算关节角度的准确性与典型的运动冗余度。肩关节、肘关节、桡侧关节和腕关节的角度是通过直接测量每个人的臂段长度或使用已公布的平均比例根据个人身高计算出的臂段长度的缩放模型计算得出的。使用这两种模型缩放方法计算出的关节角度轨迹误差与这些轨迹的试验间变异性进行了比较。这种误差的变异主要在重复相同动作的正常变异范围内。这表明,从运动捕捉数据和个体身高推断出的手臂关节角度具有足够高的准确性,可用于运动障碍的临床评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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