Feasibility study: Towards Estimation of Fatigue Level in Robot-Assisted Exercise for Cardiac Rehabilitation

A. Aguirre, Jonathan Casas, Nathalia Céspedes, M. Múnera, Mónica Rincon-Roncancio, A. Cuesta-Vargas, C. Cifuentes
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引用次数: 3

Abstract

Socially Assistive Robotics (SAR) has shown to be an important tool to assist patients in physical rehabilitation. SAR is used to provide feedback about patient’s state and performance to users and health professionals, therefore, patients are monitored by means of sensor interfaces. In this context, aiming to avoid over-training conditions, one of the most important parameter to monitor is the fatigue level. However, it is usually measured by subjective scales such as Borg scale, thus, there is a need to develop systems that are able to estimate fatigue with greater accuracy. It has been demonstrated that fatigue can be associated to the decreasing performance of the exercise. Hence, this work carried out a study to determinate which temporal and kinematic features are related to the fatigue level during a sit-to-stand test. The procedure consisted of sitting down and standing up from a chair while kinematic data were measured by a Kinect sensor, in order to relate kinematic data and fatigue. Results show that temporal features (time stand-to-stand and time sit-to-stand) and 3 kinematic features (max vertical-velocity of the spin base, max knee-flexo-extension velocity, and max hip-flexo-extension velocity), have a significant correlation with the fatigue level $(p \lt 0.05)$.
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机器人辅助心脏康复运动疲劳水平评估的可行性研究
社会辅助机器人(SAR)已被证明是一个重要的工具,以协助患者的身体康复。SAR用于向用户和卫生专业人员提供有关患者状态和表现的反馈,因此,通过传感器接口对患者进行监测。在这种情况下,为了避免过度训练的情况,最重要的监测参数之一是疲劳水平。然而,它通常是通过主观尺度(如博格尺度)来测量的,因此,有必要开发能够更准确地估计疲劳的系统。已经证明,疲劳可能与运动表现的下降有关。因此,这项工作进行了一项研究,以确定哪些时间和运动学特征与坐立测试期间的疲劳水平有关。这个过程包括坐下来和从椅子上站起来,同时通过Kinect传感器测量运动学数据,以便将运动学数据与疲劳联系起来。结果表明,时间特征(站立到站立的时间和坐到站立的时间)和3个运动学特征(旋转基座的最大垂直速度、膝关节的最大屈伸速度和髋部的最大屈伸速度)与疲劳水平有显著相关(p \lt 0.05)。
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