Tamantini Christian, Patrice Langlois Kevin, de Winter Joris, Ali Mohamadi Parham Haji, Beckwée David, Swinnen Eva, Verstraten Tom, Vanderborght Bram, Zollo Loredana
Research Unit of Advanced Robotics and Human-Centred Technologies, Università Campus Bio-Medico di Roma, Rome, Italy.
Institute of Cognitive Sciences and Technologies, National Research Council of Italy, Rome, Italy.
Front Digit Health. 2025 Feb 21;7:1559796. doi: 10.3389/fdgth.2025.1559796. eCollection 2025.
Active patient participation is crucial for effective robot-assisted rehabilitation. Quantifying the user's Active Level of Participation (ALP) during therapy and developing human-robot interaction strategies that promote engagement can improve rehabilitation outcomes. However, existing methods for estimating participation are often unimodal and do not provide continuous participation assessment.
This study proposes a novel approach for estimating ALP during upper-limb robot-aided rehabilitation by leveraging machine learning within a multimodal framework. The system integrates pressure sensing at the human-robot interface and muscle activity monitoring to provide a more comprehensive assessment of user participation. The estimated ALP is used to dynamically adapt task execution time, enabling an adaptive ALP-driven impedance control strategy. The proposed approach was tested in a laboratory setting using a collaborative robot equipped with the sensorized interface. A comparative analysis was conducted against a conventional impedance controller, commonly used in robot-aided rehabilitation scenarios.
The results demonstrated that participants using the ALP-driven impedance control exhibited significantly higher positive mechanical work and greater muscle activation compared to the control group. Additionally, subjective feedback indicated increased engagement and confidence when interacting with the adaptive system.
Closing the robot's control loop by adapting to ALP effectively enhanced human-robot interaction and motivated participants to engage more actively in their therapy. These findings suggest that ALP-driven control strategies may improve user involvement in robot-assisted rehabilitation, warranting further investigation in clinically relevant settings.
患者的积极参与对于有效的机器人辅助康复至关重要。在治疗过程中量化用户的积极参与水平(ALP)并制定促进参与的人机交互策略可以改善康复效果。然而,现有的参与度估计方法往往是单峰的,无法提供持续的参与度评估。
本研究提出了一种新颖的方法,通过在多模态框架内利用机器学习来估计上肢机器人辅助康复过程中的ALP。该系统集成了人机界面处的压力传感和肌肉活动监测,以提供对用户参与度更全面的评估。估计的ALP用于动态调整任务执行时间,实现自适应的ALP驱动阻抗控制策略。所提出的方法在实验室环境中使用配备了传感界面的协作机器人进行了测试。针对机器人辅助康复场景中常用的传统阻抗控制器进行了对比分析。
结果表明,与对照组相比,使用ALP驱动阻抗控制的参与者表现出显著更高的正向机械功和更大的肌肉激活。此外,主观反馈表明,与自适应系统交互时,参与度和信心有所提高。
通过适应ALP来闭合机器人的控制回路有效地增强了人机交互,并促使参与者更积极地参与治疗。这些发现表明,ALP驱动的控制策略可能会提高用户在机器人辅助康复中的参与度,值得在临床相关环境中进一步研究。