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Modeling Personalized Difficulty of Rehabilitation Exercises Using Causal Trees

Modeling Personalized Difficulty of Rehabilitation Exercises Using Causal Trees

来源:Arxiv_logoArxiv
英文摘要

Rehabilitation robots are often used in game-like interactions for rehabilitation to increase a person's motivation to complete rehabilitation exercises. By adjusting exercise difficulty for a specific user throughout the exercise interaction, robots can maximize both the user's rehabilitation outcomes and the their motivation throughout the exercise. Previous approaches have assumed exercises have generic difficulty values that apply to all users equally, however, we identified that stroke survivors have varied and unique perceptions of exercise difficulty. For example, some stroke survivors found reaching vertically more difficult than reaching farther but lower while others found reaching farther more challenging than reaching vertically. In this paper, we formulate a causal tree-based method to calculate exercise difficulty based on the user's performance. We find that this approach accurately models exercise difficulty and provides a readily interpretable model of why that exercise is difficult for both users and caretakers.

Nathaniel Dennler、Zhonghao Shi、Uksang Yoo、Stefanos Nikolaidis、Maja Matari?

医药卫生理论医学研究方法

Nathaniel Dennler,Zhonghao Shi,Uksang Yoo,Stefanos Nikolaidis,Maja Matari?.Modeling Personalized Difficulty of Rehabilitation Exercises Using Causal Trees[EB/OL].(2025-05-07)[2025-05-28].https://arxiv.org/abs/2505.04583.点此复制

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