Enabling Patient- and Teleoperator-led Robotic Physiotherapy via Strain Map Segmentation and Shared-authority

Stephan Balvert, J. M. Prendergast, Italo Belli, A. Seth, L. Peternel
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引用次数: 2

Abstract

In this work, we propose a method for monitoring and managing rotator-cuff (RC) tendon strains in human-robot collaborative physical therapy for shoulder rehabilitation. We integrate a high-resolution biomechanical model with a collaborative industrial robot arm and an impedance controller to provide feedback to a human subject, therapist or both, which prevents the subject from entering unsafe poses during rehabilitation. The biomechanical model estimates RC tendon strain as a function of human shoulder configuration, muscle activation and applied external forces. Subject- and injury-specific data are model estimates of strain that compose strain maps, which capture the relationship between the RC strains and movement of the shoulder degrees of freedom (DoF). High-strain regions of the strain map are identified as unsafe zones by clustering and ellipse fitting to smoothly demarcate these zones. These unsafe areas, which reflect increased risks of (re-)injury, are used to define parameters of an impedance controller and reference pose for real-time biomechanical safety control. Using strain maps we demonstrate both safe patient-led movements and teleoperated movements that prevent the subject from entering unsafe zones. In the teleoperated case, the physical therapist leads the patient remotely using a haptic device. The proposed method has the potential to improve the safety, range of motion, and volume of activity that a patient receives through robot-mediated physical therapy. We validated our approach using three experiments that demonstrate shoulder joint torques of less than 1 Nm during free motion with larger torques occurring only when the subject was asked to actively push into the unsafe boundary or, in the case of teleoperation, to resist the physical therapist.
通过应变图分割和共享权限实现患者和远程操作员主导的机器人物理治疗
在这项工作中,我们提出了一种在人机协作物理治疗中监测和管理肩袖肌腱拉伤的方法。我们将高分辨率生物力学模型与协作工业机械臂和阻抗控制器集成在一起,为人类受试者、治疗师或两者提供反馈,从而防止受试者在康复过程中进入不安全的姿势。生物力学模型估计RC肌腱应变是人体肩部结构、肌肉激活和施加外力的函数。受试者和损伤特定数据是应变的模型估计,构成应变图,捕捉RC应变和肩部自由度(DoF)运动之间的关系。通过聚类和椭圆拟合的方法,将应变图中的高应变区域识别为不安全区域,并对这些区域进行平滑划分。这些不安全区域反映了(再)损伤的风险增加,用于定义阻抗控制器的参数和实时生物力学安全控制的参考姿态。使用应变图,我们展示了安全的病人主导的运动和远程操作的运动,防止受试者进入不安全区域。在远程手术病例中,物理治疗师使用触觉设备远程引导患者。提出的方法有可能通过机器人介导的物理治疗提高患者的安全性、活动范围和活动量。我们通过三个实验验证了我们的方法,这些实验表明,在自由运动期间,肩关节扭矩小于1nm,只有当受试者被要求主动推入不安全边界时,或者在远程操作的情况下,抵抗物理治疗师时,才会出现较大的扭矩。
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