Division of Biomedical Physics, Office of Science and Engineering Laboratories, Center for Devices and Radiological Health, Food and Drug Administration, Silver Spring, Maryland, United States of America.
Department of Bioengineering, University of Maryland, College Park, Maryland, United States of America.
PLoS One. 2021 Feb 11;16(2):e0246795. doi: 10.1371/journal.pone.0246795. eCollection 2021.
To evaluate movement quality of upper limb (UL) prosthesis users, performance-based outcome measures have been developed that examine the normalcy of movement as compared to a person with a sound, intact hand. However, the broad definition of "normal movement" and the subjective nature of scoring can make it difficult to know which areas of the body to evaluate, and the expected magnitude of deviation from normative movement. To provide a more robust approach to characterizing movement differences, the goals of this work are to identify degrees of freedom (DOFs) that will inform abnormal movement for several tasks using unsupervised machine learning (clustering methods) and elucidate the variations in movement approach across two upper-limb prosthesis devices with varying DOFs as compared to healthy controls. 24 participants with no UL disability or impairment were recruited for this study and trained on the use of a body-powered bypass (n = 6) or the DEKA limb bypass (n = 6) prosthetic devices or included as normative controls. 3D motion capture data were collected from all participants as they performed the Jebsen-Taylor Hand Function Test (JHFT) and targeted Box and Blocks Test (tBBT). Range of Motion, peak angle, angular path length, mean angle, peak angular velocity, and number of zero crossings were calculated from joint angle data for the right/left elbows, right/left shoulders, torso, and neck and fed into a K-means clustering algorithm. Results show right shoulder and torso DOFs to be most informative in distinguishing between bypass user and norm group movement. The JHFT page turning task and the seated tBBT elicit movements from bypass users that are most distinctive from the norm group. Results can be used to inform the development of movement quality scoring methodology for UL performance-based outcome measures. Identifying tasks across two different devices with known variations in movement can inform the best tasks to perform in a rehabilitation setting that challenge the prosthesis user's ability to achieve normative movement.
为了评估上肢(UL)假肢使用者的运动质量,已经开发了基于性能的结果测量方法,这些方法将运动的正常性与具有健全、完整手部的人进行比较。然而,“正常运动”的广泛定义和评分的主观性使得很难知道要评估身体的哪些部位,以及与正常运动的预期偏差幅度。为了提供一种更强大的方法来描述运动差异,这项工作的目标是使用无监督机器学习(聚类方法)确定几个任务的自由度(DOFs),这些自由度将告知异常运动,并阐明与健康对照相比,两种具有不同自由度的上肢假肢装置在运动方法上的变化。本研究招募了 24 名无上肢残疾或损伤的参与者,并对他们进行了身体动力旁路(n=6)或 DEKA 肢体旁路(n=6)假肢装置的使用培训,或作为正常对照组纳入。所有参与者都使用 3D 运动捕捉数据,当他们执行 Jebsen-Taylor 手功能测试(JHFT)和有针对性的箱子和方块测试(tBBT)时。从关节角度数据计算右侧/左侧肘部、右侧/左侧肩部、躯干和颈部的运动范围、峰值角度、角路径长度、平均角度、峰值角速度和过零点数量,并将其输入 K-均值聚类算法。结果表明,右侧肩部和躯干 DOFs 最能区分旁路使用者和正常组的运动。JHFT 翻页任务和坐姿 tBBT 会引起旁路使用者的运动,与正常组最不同。结果可用于为 UL 基于性能的结果测量方法的运动质量评分方法提供信息。确定两种具有已知运动变化的不同装置之间的任务可以为康复环境中的最佳任务提供信息,这些任务挑战假肢使用者实现正常运动的能力。