MuscleRehab: Improving Unsupervised Physical Rehabilitation by Monitoring and Visualizing Muscle Engagement

要旨

Unsupervised physical rehabilitation traditionally has used motion tracking to determine correct exercise execution. However, motion tracking is not representative of the assessment of physical therapists, which focus on muscle engagement. In this paper, we investigate if monitoring and visualizing muscle engagement during unsupervised physical rehabilitation improves the execution accuracy of therapeutic exercises by showing users whether they target the right muscle groups. To accomplish this, we use wearable electrical impedance tomography (EIT) to monitor the muscle engagement and visualize the current state on a virtual muscle-skeleton avatar. We use additional optical motion tracking to also monitor the user's movement. We run a user study with 10 participants that compares exercise execution while seeing muscle + motion data vs. motion data only, and also present the recorded data to a group of physical therapists for post-rehabilitation analysis. The results indicate that monitoring and visualizing muscle engagement can improve both the therapeutic exercise accuracy for users during rehabilitation, and post-rehabilitation evaluation for physical therapists.

著者
Junyi Zhu
MIT CSAIL, Cambridge, Massachusetts, United States
Yuxuan Lei
Massachusetts Institute of Technology, Cambridge, Massachusetts, United States
Aashini Shah
MIT CSAIL, Cambridge, Massachusetts, United States
Gila Schein
MIT CSAIL, Cambridge, Massachusetts, United States
Hamid Ghaednia
Massachusetts General Hospital, Boston, Massachusetts, United States
Joseph H. Schwab
Massachusetts General Hospital , Boston, Massachusetts, United States
Casper Harteveld
Northeastern University, Boston, Massachusetts, United States
Stefanie Mueller
MIT CSAIL, Cambridge, Massachusetts, United States
論文URL

https://doi.org/10.1145/3526113.3545705

会議: UIST 2022

The ACM Symposium on User Interface Software and Technology

セッション: Information and Visualization Interfaces

6 件の発表
2022-11-01 01:30:00
2022-11-01 03:00:00