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Adaptation of task difficulty in rehabilitation exercises based on the user's motor performance and physiological responses

机译:根据用户的运动表现和生理反应适应康复锻炼中的任务难度

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Although robot-assisted rehabilitation regimens are as effective, functionally, as conventional therapies, they still lack features to increase patients' engagement in the regimen. Providing rehabilitation tasks at a “desirable difficulty” is one of the ways to address this issue and increase the motivation of a patient to continue with the therapy program. Then the problem is to design a system that is capable of estimating the user's desirable difficulty, and ultimately, modifying the task based on this prediction. In this paper we compared the performance of three machine learning algorithms in predicting a user's desirable difficulty during a typical reaching motion rehabilitation task. Different levels of error amplification were used as different levels of task difficulty. We explored the usefulness of using participants' motor performance and physiological signals during the reaching task in prediction of their desirable difficulties. Results showed that a Neural Network approach gives higher prediction accuracy in comparison with models based on k-Nearest Neighbor and Discriminant Analysis methods.
机译:尽管机器人辅助的康复方案在功能上与常规疗法一样有效,但仍缺乏增加患者参与方案的功能。以“理想的难度”提供康复任务是解决此问题并增加患者继续治疗计划的动力的方法之一。然后,问题是设计一种系统,该系统能够估计用户的期望难度,并最终根据此预测来修改任务。在本文中,我们比较了三种机器学习算法在预测用户达到典型运动康复任务所需难度时的性能。不同级别的错误放大被用作不同级别的任务难度。我们探索了在到达任务期间使用参与者的运动表现和生理信号来预测他们所期望的困难的有用性。结果表明,与基于k最近邻和判别分析方法的模型相比,神经网络方法具有更高的预测准确性。

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