Unravelling Influence Factors in Pattern Recognition Myoelectric Control Systems: The Impact of Limb Positions and Electrode Shifts

Author:

Wang Bingbin1,Li Jinglin1,Hargrove Levi23,Kamavuako Ernest Nlandu14ORCID

Affiliation:

1. Department of Engineering, King′s College London, London WC2R 2LS, UK

2. Center for Bionic Medicine, Shirley Ryan Ability, Chicago, IL 60611, USA

3. Department of Physical Medicine and Rehabilitation, Feinberg School of Medicine, Northwestern University, Chicago, IL 60611, USA

4. Faculté de Médecine, Université de Kindu, Site de Lwama II, Kindu, Maniema, Congo

Abstract

Pattern recognition (PR)-based myoelectric control systems can naturally provide multifunctional and intuitive control of upper limb prostheses and restore lost limb function, but understanding their robustness remains an open scientific question. This study investigates how limb positions and electrode shifts—two factors that have been suggested to cause classification deterioration—affect classifiers’ performance by quantifying changes in the class distribution using each factor as a class and computing the repeatability and modified separability indices. Ten intact-limb participants took part in the study. Linear discriminant analysis (LDA) was used as the classifier. The results confirmed previous studies that limb positions and electrode shifts deteriorate classification performance (14–21% decrease) with no difference between factors (p > 0.05). When considering limb positions and electrode shifts as classes, we could classify them with an accuracy of 96.13 ± 1.44% and 65.40 ± 8.23% for single and all motions, respectively. Testing on five amputees corroborated the above findings. We have demonstrated that each factor introduces changes in the feature space that are statistically new class instances. Thus, the feature space contains two statistically classifiable clusters when the same motion is collected in two different limb positions or electrode shifts. Our results are a step forward in understanding PR schemes’ challenges for myoelectric control of prostheses and further validation needs be conducted on more amputee-related datasets.

Funder

China Scholarship Council

Publisher

MDPI AG

Reference45 articles.

1. Toward higher-performance bionic limbs for wider clinical use;Farina;Nat. Biomed. Eng.,2021

2. Upper limb prosthesis use and abandonment: A survey of the last 25 years;Biddiss;Prosthet. Orthot. Int.,2007

3. Current rates of prosthetic usage in upper-limb amputees—have innovations had an impact on device acceptance?;Salminger;Disabil. Rehabil.,2022

4. Rosen, J., and Ferguson, P.W. (2020). Chapter 19—Upper Limb Active Prosthetic systems—Overview. Wearable Robotics, Academic Press.

5. User performance with a transradial multi-articulating hand prosthesis during pattern recognition and direct control home use;Simon;IEEE Trans. Neural Syst. Rehabil. Eng.,2022

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