The effectiveness of robotic training depends on motor task characteristics

被引:0
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作者
Laura Marchal-Crespo
Nicole Rappo
Robert Riener
机构
[1] Institute of Robotics and Intelligent Systems (IRIS),Sensory
[2] ETH Zurich,Motor Systems (SMS) Lab, Department of Health Sciences and Technology (D
[3] University of Zurich,HEST)
[4] University of Bern,Reharobotics Group, Medical Faculty, Balgrist University Hospital, Spinal Cord Injury Center
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关键词
Motor learning; Haptic guidance; Error amplification; Motivation; Rehabilitation robotics; Feedback motor control; Feedforward motor control; Discrete task; Continuous task; Task characteristics;
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摘要
Previous research suggests that the effectiveness of robotic training depends on the motor task to be learned. However, it is still an open question which specific task’s characteristics influence the efficacy of error-modulating training strategies. Motor tasks can be classified based on the time characteristics of the task, in particular the task’s duration (discrete vs. continuous). Continuous tasks require movements without distinct beginning or end. Discrete tasks require fast movements that include well-defined postures at the beginning and the end. We developed two games, one that requires a continuous movement—a tracking task—and one that requires discrete movements—a fast reaching task. We conducted an experiment with thirty healthy subjects to evaluate the effectiveness of three error-modulating training strategies—no guidance, error amplification (i.e., repulsive forces proportional to errors) and haptic guidance—on self-reported motivation and learning of the continuous and discrete games. Training with error amplification resulted in better motor learning than haptic guidance, besides the fact that error amplification reduced subjects’ interest/enjoyment and perceived competence during training. Only subjects trained with error amplification improved their performance after training the discrete game. In fact, subjects trained without guidance improved the performance in the continuous game significantly more than in the discrete game, probably because the continuous task required greater attentional levels. Error-amplifying training strategies have a great potential to provoke better motor learning in continuous and discrete tasks. However, their long-lasting negative effects on motivation might limit their applicability in intense neurorehabilitation programs.
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页码:3799 / 3816
页数:17
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