Namikawa Yasuko, Kawamoto Hiroaki, Uehara Akira, Sankai Yoshiyuki
Degree Programs in Systems and Information Engineering, University of Tsukuba, Tsukuba, Japan.
Institute of Systems and Information Engineering, University of Tsukuba, Tsukuba, Japan.
Front Med Technol. 2024 Dec 16;6:1448317. doi: 10.3389/fmedt.2024.1448317. eCollection 2024.
The wearable cyborg Hybrid Assistive Limb (HAL) is a therapeutic exoskeletal device that provides voluntary gait assistance using kinematic/kinetic gait data and bioelectrical signals. By utilizing the gait data automatically measured by HAL, we are developing a system to analyze the wearer's gait during the intervention, unlike conventional evaluations that compare pre- and post-treatment gait test results. Despite the potential use of the gait data from the HAL's sensor information, there is still a lack of analysis using such gait data and knowledge of gait patterns during HAL use. This study aimed to cluster gait patterns into subgroups based on the gait data that the HAL automatically collected during treatment and to investigate their characteristics.
Gait data acquired by HAL, including ground reaction forces, joint angles, trunk angles, and HAL joint torques, were analyzed in individuals with progressive neuromuscular diseases. For each measured item, principal component analysis was applied to the gait time-series data to extract the features of the gait patterns, followed by hierarchical cluster analysis to generate subgroups based on the principal component scores. Bayesian regression analysis was conducted to identify the influence of the wearer's attributes on the clustered gait patterns.
The gait patterns of 13,710 gait cycles from 457 treatments among 48 individuals were divided into 5-10 clusters for each measured item. The clusters revealed a variety of gait patterns when wearing the HAL and identified the characteristics of multiple sub-group types. Bayesian regression models explained the influence of the wearer's disease type and gait ability on the distribution of gait patterns to subgroups.
These results revealed key differences in gait patterns related to the wearer's condition, demonstrating the importance of monitoring HAL-assisted walking to provide appropriate interventions. Furthermore, our approach highlights the usefulness of the gait data that HAL automatically measures during the intervention. We anticipate that the HAL, designed as a therapeutic device, will expand its role as a data measurement device for analysis and evaluation that provides gait data simultaneously with interventions, creating a novel cybernics treatment system that facilitates a multi-faceted understanding of the wearer's gait.
可穿戴半机械人混合辅助肢体(HAL)是一种治疗性外骨骼装置,它利用运动学/动力学步态数据和生物电信号提供自愿性步态辅助。通过利用HAL自动测量的步态数据,我们正在开发一个系统,以分析穿戴者在干预过程中的步态,这与比较治疗前后步态测试结果的传统评估方法不同。尽管HAL的传感器信息所提供的步态数据有潜在用途,但仍缺乏对这些步态数据的分析以及对HAL使用过程中步态模式的了解。本研究旨在根据HAL在治疗过程中自动收集的步态数据,将步态模式聚类为亚组,并研究其特征。
对患有进行性神经肌肉疾病的个体分析HAL获取的步态数据,包括地面反作用力、关节角度、躯干角度和HAL关节扭矩。对于每个测量项目,对步态时间序列数据应用主成分分析以提取步态模式的特征,然后进行层次聚类分析以基于主成分得分生成亚组。进行贝叶斯回归分析以确定穿戴者属性对聚类步态模式的影响。
48名个体457次治疗中的13710个步态周期的步态模式,针对每个测量项目被分为5 - 10个聚类。这些聚类揭示了穿戴HAL时的各种步态模式,并确定了多种亚组类型的特征。贝叶斯回归模型解释了穿戴者的疾病类型和步态能力对步态模式在亚组中分布的影响。
这些结果揭示了与穿戴者状况相关的步态模式的关键差异,证明了监测HAL辅助行走以提供适当干预的重要性。此外,我们的方法突出了HAL在干预过程中自动测量的步态数据的有用性。我们预计,作为一种治疗装置设计的HAL,将扩大其作为数据测量装置的作用,用于分析和评估,在干预的同时提供步态数据,创建一个新型的控制论治疗系统,有助于多方面理解穿戴者的步态。