A novel framework for designing a multi-DoF prosthetic wrist control using machine learning

Abstract Prosthetic arms can significantly increase the upper limb function of individuals with upper limb loss, however despite the development of various multi-DoF prosthetic arms the rate of prosthesis abandonment is still high. One of the major challenges is to design a multi-DoF controller that...

Full description

Bibliographic Details
Main Authors: Chinmay P. Swami, Nicholas Lenhard, Jiyeon Kang
Format: Article
Language:English
Published: Nature Publishing Group 2021-07-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-94449-1
id doaj-953a1e54993e49fdbb8bfe8df58aa54d
record_format Article
spelling doaj-953a1e54993e49fdbb8bfe8df58aa54d2021-07-25T11:26:01ZengNature Publishing GroupScientific Reports2045-23222021-07-0111111310.1038/s41598-021-94449-1A novel framework for designing a multi-DoF prosthetic wrist control using machine learningChinmay P. Swami0Nicholas Lenhard1Jiyeon Kang2Department of Mechanical and Aerospace Engineering, University at BuffaloDepartment of Biomedical Engineering, University at BuffaloDepartment of Mechanical and Aerospace Engineering, University at BuffaloAbstract Prosthetic arms can significantly increase the upper limb function of individuals with upper limb loss, however despite the development of various multi-DoF prosthetic arms the rate of prosthesis abandonment is still high. One of the major challenges is to design a multi-DoF controller that has high precision, robustness, and intuitiveness for daily use. The present study demonstrates a novel framework for developing a controller leveraging machine learning algorithms and movement synergies to implement natural control of a 2-DoF prosthetic wrist for activities of daily living (ADL). The data was collected during ADL tasks of ten individuals with a wrist brace emulating the absence of wrist function. Using this data, the neural network classifies the movement and then random forest regression computes the desired velocity of the prosthetic wrist. The models were trained/tested with ADLs where their robustness was tested using cross-validation and holdout data sets. The proposed framework demonstrated high accuracy (F-1 score of 99% for the classifier and Pearson’s correlation of 0.98 for the regression). Additionally, the interpretable nature of random forest regression was used to verify the targeted movement synergies. The present work provides a novel and effective framework to develop an intuitive control for multi-DoF prosthetic devices.https://doi.org/10.1038/s41598-021-94449-1
collection DOAJ
language English
format Article
sources DOAJ
author Chinmay P. Swami
Nicholas Lenhard
Jiyeon Kang
spellingShingle Chinmay P. Swami
Nicholas Lenhard
Jiyeon Kang
A novel framework for designing a multi-DoF prosthetic wrist control using machine learning
Scientific Reports
author_facet Chinmay P. Swami
Nicholas Lenhard
Jiyeon Kang
author_sort Chinmay P. Swami
title A novel framework for designing a multi-DoF prosthetic wrist control using machine learning
title_short A novel framework for designing a multi-DoF prosthetic wrist control using machine learning
title_full A novel framework for designing a multi-DoF prosthetic wrist control using machine learning
title_fullStr A novel framework for designing a multi-DoF prosthetic wrist control using machine learning
title_full_unstemmed A novel framework for designing a multi-DoF prosthetic wrist control using machine learning
title_sort novel framework for designing a multi-dof prosthetic wrist control using machine learning
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-07-01
description Abstract Prosthetic arms can significantly increase the upper limb function of individuals with upper limb loss, however despite the development of various multi-DoF prosthetic arms the rate of prosthesis abandonment is still high. One of the major challenges is to design a multi-DoF controller that has high precision, robustness, and intuitiveness for daily use. The present study demonstrates a novel framework for developing a controller leveraging machine learning algorithms and movement synergies to implement natural control of a 2-DoF prosthetic wrist for activities of daily living (ADL). The data was collected during ADL tasks of ten individuals with a wrist brace emulating the absence of wrist function. Using this data, the neural network classifies the movement and then random forest regression computes the desired velocity of the prosthetic wrist. The models were trained/tested with ADLs where their robustness was tested using cross-validation and holdout data sets. The proposed framework demonstrated high accuracy (F-1 score of 99% for the classifier and Pearson’s correlation of 0.98 for the regression). Additionally, the interpretable nature of random forest regression was used to verify the targeted movement synergies. The present work provides a novel and effective framework to develop an intuitive control for multi-DoF prosthetic devices.
url https://doi.org/10.1038/s41598-021-94449-1
work_keys_str_mv AT chinmaypswami anovelframeworkfordesigningamultidofprostheticwristcontrolusingmachinelearning
AT nicholaslenhard anovelframeworkfordesigningamultidofprostheticwristcontrolusingmachinelearning
AT jiyeonkang anovelframeworkfordesigningamultidofprostheticwristcontrolusingmachinelearning
AT chinmaypswami novelframeworkfordesigningamultidofprostheticwristcontrolusingmachinelearning
AT nicholaslenhard novelframeworkfordesigningamultidofprostheticwristcontrolusingmachinelearning
AT jiyeonkang novelframeworkfordesigningamultidofprostheticwristcontrolusingmachinelearning
_version_ 1721283209061203968