Reznick Emma, Embry Kyle, Gregg Robert D
Department of Bioengineering at the University of Texas at Dallas, Richardson, TX 75080, USA.
Department of Mechanical Engineering at the University of Texas at Dallas, Richardson, TX 75080, USA.
Proc IEEE RAS EMBS Int Conf Biomed Robot Biomechatron. 2020 Nov-Dec;2020:666-672. doi: 10.1109/biorob49111.2020.9224413. Epub 2020 Oct 15.
Individuality in clinical gait analysis is often quantified by an individual's kinematic deviation from the norm, but it is unclear how these deviations generalize across different walking speeds and ground slopes. Understanding individuality across tasks has important implications in the tuning of prosthetic legs, where clinicians have limited time and resources to personalize the kinematic motion of the leg to therapeutically enhance the wearer's gait. This study seeks to determine an efficient way to predictively model an individual's kinematics over a continuous range of slopes and speeds given only one personalized task at level ground. We were able to predict the kinematics of able-bodied individuals at a wide variety of conditions that were not specifically tuned. Applied to 10 human subjects, the individualization method reduced the RMSE between the model and subject's kinematics over all tasks by an average of 2% (max 52%) at the ankle, 27% (max 59%) at the knee, and 45% (max 83%) at the hip. Our results indicate that knowing how an individual subject differs from the average subject at level ground alone is enough information to improve kinematic predictions across all tasks. This research offers a new method for personalizing robotic prosthetic legs over a variety of tasks without the need of an engineer, which could make these complex devices more clinically viable.
临床步态分析中的个体差异通常通过个体运动学与标准的偏差来量化,但尚不清楚这些偏差如何在不同步行速度和地面坡度下泛化。了解不同任务中的个体差异对假肢调整具有重要意义,因为临床医生在个性化腿部运动学以治疗性改善佩戴者步态方面的时间和资源有限。本研究旨在确定一种有效的方法,在仅给定一个平地个性化任务的情况下,对个体在连续坡度和速度范围内的运动学进行预测建模。我们能够在未进行专门调整的各种条件下预测健全个体的运动学。应用于10名人类受试者,这种个体化方法使模型与受试者在所有任务中的运动学之间的均方根误差在脚踝处平均降低了2%(最大52%),在膝盖处降低了27%(最大59%),在臀部处降低了45%(最大83%)。我们的结果表明,仅了解个体受试者与平地平均受试者的差异就足以改善所有任务中的运动学预测。这项研究提供了一种无需工程师即可在各种任务中个性化机器人假肢腿的新方法,这可能使这些复杂设备在临床上更具可行性。