Digital-Twin-Based Patient Evaluation during Stroke Rehabilitation

摘要

Individuals who experience motor impairment after stroke are able to partially restore motor control through rehabilitation, which achieves long-term recovery through repeated short-term adaptation. The customization of rehabilitation tasks is crucial for enhancing the effectiveness of rehabilitation by promoting the patient’s awareness of motor impairments and reducing compensatory behaviors, which is currently dependent on the expertise of physiotherapists. The development of rehabilitation robots aims to alleviate the workload of physiotherapists and has the potential to offer accurate assessments of both short-term adaptation and long-term recovery in stroke patients. In this paper, we propose a framework for automated patient evaluation and task planning during robotic rehabilitation. A motor control model was proposed to capture the patient’s motor control process. By adjusting its state and parameters, a digital twin of the patient can be generated and updated, providing insight into the level of adaptation and rehabilitation progress. The digital twin is then utilized to plan customized rehabilitation tasks, which can effectively reduce uncertainty and ambiguities during patient evaluation, and improves patient’s adaptation during rehabilitation. The digital twin framework and the task planning algorithms were validated using human subject and simulation experiments.

出版物
Proceedings of the ACM/IEEE 14th International Conference on Cyber-Physical Systems
Yilun Chen
Yilun Chen
校友

陈逸伦已毕业,现就职于拼多多。

Wentao Wang
Wentao Wang
硕士研究生

王文涛为上海科技大学计算机科学方向本科生(2019 级)/ 硕士研究生,研究兴趣包括康复与机器人。

Junyu Diao
Junyu Diao
校友

刁俊宇已毕业,现就职于盛趣游戏。

江智浩
江智浩
助理教授

江智浩是上海科技大学人机物融合系统实验室主任。

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