Predicting wrist kinematics from motor unit discharge timings for the control of active prostheses

2019 | journal article. A publication with affiliation to the University of Göttingen.

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​Predicting wrist kinematics from motor unit discharge timings for the control of active prostheses​
Kapelner, T.; Vujaklija, I.; Jiang, N.; Negro, F.; Aszmann, O. C.; Principe, J. & Farina, D.​ (2019) 
Journal of NeuroEngineering and Rehabilitation16(1) art. 47​.​ DOI: https://doi.org/10.1186/s12984-019-0516-x 

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Authors
Kapelner, Tamás; Vujaklija, Ivan; Jiang, Ning; Negro, Francesco; Aszmann, Oskar C.; Principe, Jose; Farina, Dario
Abstract
BACKGROUND: Current myoelectric control algorithms for active prostheses map time- and frequency-domain features of the interference EMG signal into prosthesis commands. With this approach, only a fraction of the available information content of the EMG is used and the resulting control fails to satisfy the majority of users. In this study, we predict joint angles of the three degrees of freedom of the wrist from motor unit discharge timings identified by decomposition of high-density surface EMG. METHODS: We recorded wrist kinematics and high-density surface EMG signals from six able-bodied individuals and one patient with limb deficiency while they performed movements of three degrees of freedom of the wrist at three different speeds. We compared the performance of linear regression to predict the observed individual wrist joint angles from, either traditional time domain features of the interference EMG or from motor unit discharge timings (which we termed neural features) obtained by EMG decomposition. In addition, we propose and test a simple model-based dimensionality reduction, based on the physiological notion that the discharge timings of motor units are partly correlated. RESULTS: The regression approach using neural features outperformed regression on classic global EMG features (average R2 for neural features 0.77 and 0.64, for able-bodied subjects and patients, respectively; for time-domain features 0.70 and 0.52). CONCLUSIONS: These results indicate that the use of neural information extracted from EMG decomposition can advance man-machine interfacing for prosthesis control.
Issue Date
2019
Journal
Journal of NeuroEngineering and Rehabilitation 
Project
info:eu-repo/grantAgreement/EC/FP7/267888/EU//DEMOVE
info:eu-repo/grantAgreement/EC/H2020/737570/EU//INTERSPINE
info:eu-repo/grantAgreement/EC/H2020/702491/EU//NeuralCon
Language
English

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