AI Article Synopsis

  • Upper limb impairments after a stroke greatly diminish patients' quality of life, highlighting the need for tailored robotic assistance during rehabilitation.
  • This paper reviews 186 studies on predicting motion intentions of arm joints using Model-Based (MB) and Model-Free (MF) approaches, uncovering ongoing challenges related to subject diversity, algorithm reliability, and practical application.
  • It recommends combining MB and MF strategies with advanced technologies like deep learning and muscle synergy features to enhance prediction accuracy and facilitate faster adaptation of algorithms for individual patients.

Article Abstract

Upper limb functional impairments persisting after stroke significantly affect patients' quality of life. Precise adjustment of robotic assistance levels based on patients' motion intentions using sEMG signals is crucial for active rehabilitation. This paper systematically reviews studies on continuous prediction of upper limb single joints and multi-joint combinations motion intention using Model-Based (MB) and Model-Free (MF) approaches over the past decade, based on 186 relevant studies screened from six major electronic databases. The findings indicate ongoing challenges in terms of subject composition, algorithm robustness and generalization, and algorithm feasibility for practical applications. Moreover, it suggests integrating the strengths of both MB and MF approaches to improve existing algorithms. Therefore, future research should further explore personalized MB-MF combination methods incorporating deep learning, attention mechanisms, muscle synergy features, motor unit features, and closed-loop feedback to achieve precise, real-time, and long-duration prediction of multi-joint complex movements, while further refining the transfer learning strategy for rapid algorithm deployment across days and subjects. Overall, this review summarizes the current research status, significant findings, and challenges, aiming to inspire future research on predicting upper limb motion intentions based on sEMG.

Download full-text PDF

Source
http://dx.doi.org/10.1109/TNSRE.2024.3383857DOI Listing

Publication Analysis

Top Keywords

upper limb
12
motion intention
8
model-based model-free
8
model-free approaches
8
motion intentions
8
continuous motion
4
intention prediction
4
prediction semg
4
semg upper-limb
4
upper-limb rehabilitation
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!