Measuring human trainers' skill for the design of better robot control algorithms for gait training after spinal cord injury

J. Galvez, G. Kerdanyan, S. Maneekobkunwong, R. Weber, M. Scott, S. Harkema, D. Reinkensmeyer
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引用次数: 35

Abstract

This paper presents work towards quantifying the manual assistance provided by therapists during locomotor training for people with spinal cord injury. The final goal is to translate human trainers' skill into gait-training robot algorithms. Locomotor training is a rehabilitation technique in which three therapists assist the legs and hip of the patient to walk on a treadmill while part of the patient's body weight is supported by an overhead harness. We have developed a sensorized orthosis that measures shank kinematics and therapist forces during locomotor training. The orthosis is attached to one of the legs, so that one of the therapists assists through the orthotic interface. This interface is similar to how a locomotor-training robot is attached to the patient's shank. However, the force and intelligence behind the orthosis is not robotic, but human. Our intention is to quantify and analyze the human therapists' intelligence and expertise to help design better gait-training robot control algorithms. In this paper we present some preliminary results from the first locomotor training sessions with spinal cord injured patients using this sensor system. A key initial finding is that even skilled trainers assist with substantial differences in terms of both forces and motions. With the same patient, same stepping speed and same body weight support, the differences in peak forces applied to the knee between trainers were up to 100% in some sessions.
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测量人类训练者的技能,设计更好的脊髓损伤后步态训练机器人控制算法
本文提出了量化工作,在运动训练期间,治疗师为脊髓损伤患者提供的手动协助。最终目标是将人类训练师的技能转化为步态训练机器人算法。运动训练是一种康复技术,其中三名治疗师协助患者的腿和臀部在跑步机上行走,而患者的部分体重由头顶的安全带支撑。我们已经开发了一种传感矫形器,测量运动训练过程中小腿的运动学和治疗师的力量。矫形器连接在一条腿上,这样治疗师就可以通过矫形器界面进行辅助。这个界面类似于运动训练机器人附着在病人小腿上的方式。然而,矫形器背后的力量和智能不是机器人,而是人类。我们的目的是量化和分析人类治疗师的智力和专业知识,以帮助设计更好的步态训练机器人控制算法。在本文中,我们介绍了使用该传感器系统对脊髓损伤患者进行第一次运动训练的初步结果。一个关键的初步发现是,即使是熟练的训练师也会在力量和动作方面提供实质性的差异。在相同的病人,相同的步速和相同的体重支持下,训练者之间施加在膝盖上的峰值力的差异在某些训练中高达100%。
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