Real-time gait metric estimation for everyday gait training with wearable devices in people poststroke.

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Wearable technologies Pub Date : 2021-01-01 Epub Date: 2021-03-25 DOI:10.1017/wtc.2020.11
Philipp Arens, Christopher Siviy, Jaehyun Bae, Dabin K Choe, Nikos Karavas, Teresa Baker, Terry D Ellis, Louis N Awad, Conor J Walsh
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引用次数: 13

Abstract

Hemiparetic walking after stroke is typically slow, asymmetric, and inefficient, significantly impacting activities of daily living. Extensive research shows that functional, intensive, and task-specific gait training is instrumental for effective gait rehabilitation, characteristics that our group aims to encourage with soft robotic exosuits. However, standard clinical assessments may lack the precision and frequency to detect subtle changes in intervention efficacy during both conventional and exosuit-assisted gait training, potentially impeding targeted therapy regimes. In this paper, we use exosuit-integrated inertial sensors to reconstruct three clinically meaningful gait metrics related to circumduction, foot clearance, and stride length. Our method corrects sensor drift using instantaneous information from both sides of the body. This approach makes our method robust to irregular walking conditions poststroke as well as usable in real-time applications, such as real-time movement monitoring, exosuit assistance control, and biofeedback. We validate our algorithm in eight people poststroke in comparison to lab-based optical motion capture. Mean errors were below 0.2 cm (9.9%) for circumduction, -0.6 cm (-3.5%) for foot clearance, and 3.8 cm (3.6%) for stride length. A single-participant case study shows our technique's promise in daily-living environments by detecting exosuit-induced changes in gait while walking in a busy outdoor plaza.

Abstract Image

Abstract Image

Abstract Image

脑卒中后可穿戴设备日常步态训练的实时步态度量估计。
中风后的偏瘫行走通常缓慢、不对称、效率低下,严重影响日常生活活动。广泛的研究表明,功能性、高强度和特定任务的步态训练有助于有效的步态康复,这是我们小组旨在鼓励软性机器人外骨骼的特点。然而,标准的临床评估可能缺乏准确性和频率来检测在常规和外骨骼辅助步态训练期间干预效果的细微变化,这可能会阻碍靶向治疗方案。在本文中,我们使用外部服集成惯性传感器来重建与绕行、足部间隙和步幅有关的三个临床有意义的步态指标。我们的方法使用来自身体两侧的瞬时信息来纠正传感器漂移。这种方法使我们的方法对中风后的不规则行走条件具有鲁棒性,并且可用于实时应用,例如实时运动监测,外骨骼辅助控制和生物反馈。与实验室光学运动捕捉相比,我们在八个人中风后验证了我们的算法。绕行的平均误差小于0.2 cm(9.9%),足部间隙的平均误差小于0.6 cm(-3.5%),步幅的平均误差小于3.8 cm(3.6%)。一项单参与者案例研究表明,我们的技术可以在日常生活环境中检测出在繁忙的户外广场行走时由外骨骼引起的步态变化。
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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来源期刊
CiteScore
5.80
自引率
0.00%
发文量
0
审稿时长
11 weeks
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