Literature DB >> 27272750

Effect of clinical parameters on the control of myoelectric robotic prosthetic hands.

Manfredo Atzori1, Arjan Gijsberts, Claudio Castellini, Barbara Caputo, Anne-Gabrielle Mittaz Hager, Simone Elsig, Giorgio Giatsidis, Franco Bassetto, Henning Müller.   

Abstract

Improving the functionality of prosthetic hands with noninvasive techniques is still a challenge. Surface electromyography (sEMG) currently gives limited control capabilities; however, the application of machine learning to the analysis of sEMG signals is promising and has recently been applied in practice, but many questions still remain. In this study, we recorded the sEMG activity of the forearm of 11 male subjects with transradial amputation who were mentally performing 40 hand and wrist movements. The classification performance and the number of independent movements (defined as the subset of movements that could be distinguished with >90% accuracy) were studied in relationship to clinical parameters related to the amputation. The analysis showed that classification accuracy and the number of independent movements increased significantly with phantom limb sensation intensity, remaining forearm percentage, and temporal distance to the amputation. The classification results suggest the possibility of naturally controlling up to 11 movements of a robotic prosthetic hand with almost no training. Knowledge of the relationship between classification accuracy and clinical parameters adds new information regarding the nature of phantom limb pain as well as other clinical parameters, and it can lay the foundations for future "functional amputation" procedures in surgery.

Entities:  

Keywords:  myoelectric prosthesis; phantom limb pain; phantom limb sensation; prosthesis; prosthetic hand; residual limb; residual limb length; robotic prosthesis; sEMG; transradial amputation

Mesh:

Year:  2016        PMID: 27272750     DOI: 10.1682/JRRD.2014.09.0218

Source DB:  PubMed          Journal:  J Rehabil Res Dev        ISSN: 0748-7711


  7 in total

1.  Muscle Synergy Analysis of a Hand-Grasp Dataset: A Limited Subset of Motor Modules May Underlie a Large Variety of Grasps.

Authors:  Alessandro Scano; Andrea Chiavenna; Lorenzo Molinari Tosatti; Henning Müller; Manfredo Atzori
Journal:  Front Neurorobot       Date:  2018-09-25       Impact factor: 2.650

2.  Dimensionality analysis of forearm muscle activation for myoelectric control in transradial amputees.

Authors:  Alexander McClanahan; Matthew Moench; Qiushi Fu
Journal:  PLoS One       Date:  2020-12-03       Impact factor: 3.240

3.  Deep Learning with Convolutional Neural Networks Applied to Electromyography Data: A Resource for the Classification of Movements for Prosthetic Hands.

Authors:  Manfredo Atzori; Matteo Cognolato; Henning Müller
Journal:  Front Neurorobot       Date:  2016-09-07       Impact factor: 2.650

Review 4.  Machine learning in pain research.

Authors:  Jörn Lötsch; Alfred Ultsch
Journal:  Pain       Date:  2018-04       Impact factor: 6.961

5.  Comparison of six electromyography acquisition setups on hand movement classification tasks.

Authors:  Stefano Pizzolato; Luca Tagliapietra; Matteo Cognolato; Monica Reggiani; Henning Müller; Manfredo Atzori
Journal:  PLoS One       Date:  2017-10-12       Impact factor: 3.240

6.  Characteristics of phantom upper limb mobility encourage phantom-mobility-based prosthesis control.

Authors:  Amélie Touillet; Laetitia Peultier-Celli; Caroline Nicol; Nathanaël Jarrassé; Isabelle Loiret; Noël Martinet; Jean Paysant; Jozina B De Graaf
Journal:  Sci Rep       Date:  2018-10-18       Impact factor: 4.379

7.  A novel concatenate feature fusion RCNN architecture for sEMG-based hand gesture recognition.

Authors:  Pufan Xu; Fei Li; Haipeng Wang
Journal:  PLoS One       Date:  2022-01-20       Impact factor: 3.240

  7 in total

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