Continuous Locomotion-mode Identification for Prosthetic Legs Based on Neuromuscular-mechanical Fusion
Overview
Biophysics
Affiliations
In this study, we developed an algorithm based on neuromuscular-mechanical fusion to continuously recognize a variety of locomotion modes performed by patients with transfemoral (TF) amputations. Electromyographic (EMG) signals recorded from gluteal and residual thigh muscles and ground reaction forces/moments measured from the prosthetic pylon were used as inputs to a phase-dependent pattern classifier for continuous locomotion-mode identification. The algorithm was evaluated using data collected from five patients with TF amputations. The results showed that neuromuscular-mechanical fusion outperformed methods that used only EMG signals or mechanical information. For continuous performance of one walking mode (i.e., static state), the interface based on neuromuscular-mechanical fusion and a support vector machine (SVM) algorithm produced 99% or higher accuracy in the stance phase and 95% accuracy in the swing phase for locomotion-mode recognition. During mode transitions, the fusion-based SVM method correctly recognized all transitions with a sufficient predication time. These promising results demonstrate the potential of the continuous locomotion-mode classifier based on neuromuscular-mechanical fusion for neural control of prosthetic legs.
Mengarelli A, Tigrini A, Scattolini M, Mobarak R, Burattini L, Fioretti S Sensors (Basel). 2024; 24(23).
PMID: 39686306 PMC: 11645049. DOI: 10.3390/s24237768.
Tigrini A, Mobarak R, Mengarelli A, Khushaba R, Al-Timemy A, Verdini F Sensors (Basel). 2024; 24(17).
PMID: 39275739 PMC: 11397962. DOI: 10.3390/s24175828.
Le D, Cheng S, Gregg R, Ghaffari M IEEE Robot Autom Lett. 2024; 9(5):4321-4328.
PMID: 39081804 PMC: 11286256. DOI: 10.1109/lra.2024.3379800.
Continuous neural control of a bionic limb restores biomimetic gait after amputation.
Song H, Hsieh T, Yeon S, Shu T, Nawrot M, Landis C Nat Med. 2024; 30(7):2010-2019.
PMID: 38951635 PMC: 11271427. DOI: 10.1038/s41591-024-02994-9.
Lorenz D, van den Bogert A PeerJ. 2024; 12:e17256.
PMID: 38699182 PMC: 11064863. DOI: 10.7717/peerj.17256.