Xia Kang, Chang Xue-Dong, Liu Chong-Shuai, Yan Yu-Hang, Sun Han, Wang Yi-Min, Wang Xin-Wei
College of Mechanical & Electrical Engineering, Hohai University, Nanjing, 210098, People's Republic of China.
Articular Orthopaedics, The Third Affiliated Hospital of Soochow University, Changzhou, 213003, China.
J Neuroeng Rehabil. 2025 Jul 4;22(1):144. doi: 10.1186/s12984-025-01680-2.
Stroke and its related complications, place significant burdens on human society in the twenty-first century, and lead to substantial demands for upper limb rehabilitation. To fulfill the rehabilitation needs, human-machine interaction (HMI) technology strives continuously. Depends on the involvement of subject, HMI strategy can be classified as passive or active. Compare to passive modalities, active strategies are believed to be more effective in promoting neuroplasticity and motor recovery for post-stroke survivors in sub-acute and chronic phase. However, post-stroke survivors usually experience weak upper arms, limited range of motion (ROM) and involuntary excessive movement patterns. Distinguishing between complex subtle motion intentions and excessive involuntary movements in real-time remains a challenge in current research, which impedes the application of active HMI strategies in clinical practice.
An Up-limb Rehabilitation Device and Utility System (UarDus) is proposed along with 3 HMI strategies namely robot-in-charge, therapist-in-charge and patient-in-charge. Based on physiological structure of human upper-limb and scapulohumeral rhythm (SHR) of shoulder, a base exoskeleton with 14 degrees of freedoms (DoFs) is designed as foundation of the 3 strategies. Passive robot-in-charge and therapist-in-charge strategies provides fully-assisted rehabilitation options. The active patient-in-charge strategy incorporates data acquisition matrices and a new deep learning model, which is developed based on Convolutional Neural Network (CNN) and Transformer structure, aims to capture subtle motion intentions. Motors' current is monitored and the surge in the current is identified adopting Discrete Wavelet Transform (DWT) method for safety concerns.
Kinematically, the work space of the base exoskeleton is presented first. Utilizing motion capture technology, the glenohumeral joint (GH) centers of both human and exoskeleton exhibit well-matched motion curves, suggesting a comfortable dynamic wear experience. For robot-in-charge and therapist-in-charge strategy, the desired and measured angle-time curve present good correlation, with low phase difference, which serve the purpose of real-time control. Featuring the patient-in-charge strategy, Kernel Density Estimation (KDE) result suggesting reasonable sensor-machine-human synergy. Applying K-fold (K = 10) cross-validation method, the classification accuracy of the proposed model with outstanding response time achieves an average of 99.7% for the designated 15 actions, signifies its capability for subtle motion intention recognition in real-time. Additionally, signal surge is easily identified with DWT.
An upper-limb exoskeleton hardware device named UarDus is constructed, along with three HMI modalities, offering both passive and active rehabilitation approaches. The proposed system is validated through a proof-of-concept study on a subject who underwent a craniotomy for a hemorrhagic stroke, demonstrating the possibility for post-stroke individuals to engage in safe, personalized rehabilitation training in real-time, with a dynamically comfortable wear experience.
中风及其相关并发症在21世纪给人类社会带来了沉重负担,并引发了对上肢康复的大量需求。为满足康复需求,人机交互(HMI)技术不断发展。根据主体的参与程度,HMI策略可分为被动式和主动式。与被动模式相比,主动策略被认为在促进亚急性期和慢性期中风幸存者的神经可塑性和运动恢复方面更有效。然而,中风幸存者通常存在上臂无力、运动范围(ROM)受限和不自主过度运动模式。实时区分复杂的细微运动意图和过度的不自主运动仍是当前研究中的一项挑战,这阻碍了主动HMI策略在临床实践中的应用。
提出了一种上肢康复设备与实用系统(UarDus)以及三种HMI策略,即机器人主导、治疗师主导和患者主导。基于人体上肢的生理结构和肩部的肩肱节律(SHR),设计了一种具有14个自由度(DoF)的基础外骨骼作为这三种策略的基础。被动的机器人主导和治疗师主导策略提供了完全辅助的康复选项。主动的患者主导策略结合了数据采集矩阵和一种基于卷积神经网络(CNN)和Transformer结构开发的新深度学习模型,旨在捕捉细微的运动意图。出于安全考虑,通过离散小波变换(DWT)方法监测电机电流并识别电流激增。
在运动学方面,首先展示了基础外骨骼的工作空间。利用运动捕捉技术,人体和外骨骼的肱骨头(GH)中心呈现出匹配良好的运动曲线,表明动态佩戴体验舒适。对于机器人主导和治疗师主导策略,期望角度与测量角度的时间曲线具有良好的相关性,相位差较小,可用于实时控制。以患者主导策略为例,核密度估计(KDE)结果表明传感器 - 机器 - 人之间的协同合理。应用K折(K = 10)交叉验证方法,所提出模型在指定的15种动作上具有出色的响应时间,分类准确率平均达到99.7%,表明其具有实时识别细微运动意图的能力。此外,通过DWT可以轻松识别信号激增。
构建了一种名为UarDus的上肢外骨骼硬件设备以及三种HMI模式,提供了被动和主动康复方法。通过对一名因出血性中风接受开颅手术的受试者进行的概念验证研究,验证了所提出的系统,证明了中风患者有可能实时进行安全、个性化的康复训练,并具有动态舒适的佩戴体验。