Cargando…

A hierarchical dynamic Bayesian learning network for EMG-based early prediction of voluntary movement intention

Decoding human action intention prior to motion onset with surface electromyograms (sEMG) is an emerging neuroengineering topic with interesting clinical applications such as intelligent control of powered prosthesis/exoskeleton devices. Despite extensive prior works in the related fields, it remain...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Yongming, Zhang, Haihong, Wang, Chuanchu, Ang, Kai Keng, Ng, Soon Huat, Jin, Huiwen, Lin, Zhiping
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10036485/
https://www.ncbi.nlm.nih.gov/pubmed/36959307
http://dx.doi.org/10.1038/s41598-023-30716-7
_version_ 1784911665304698880
author Chen, Yongming
Zhang, Haihong
Wang, Chuanchu
Ang, Kai Keng
Ng, Soon Huat
Jin, Huiwen
Lin, Zhiping
author_facet Chen, Yongming
Zhang, Haihong
Wang, Chuanchu
Ang, Kai Keng
Ng, Soon Huat
Jin, Huiwen
Lin, Zhiping
author_sort Chen, Yongming
collection PubMed
description Decoding human action intention prior to motion onset with surface electromyograms (sEMG) is an emerging neuroengineering topic with interesting clinical applications such as intelligent control of powered prosthesis/exoskeleton devices. Despite extensive prior works in the related fields, it remains a technical challenge due to considerable variability of complex multi-muscle activation patterns in terms of volatile spatio-temporal characteristics. To address this issue, we first hypothesize that the inherent variability of the idle state immediately preceding the motion initiation needs to be addressed explicitly. We therefore design a hierarchical dynamic Bayesian learning network model that integrates an array of Gaussian mixture model – hidden Markov models (GMM-HMMs), where each GMM-HMM learns the multi-sEMG processes either during the idle state, or during the motion initiation phase of a particular motion task. To test the hypothesis and evaluate the new learning network, we design and build a upper-limb sEMG-joystick motion study system, and collect data from 11 healthy volunteers. The data collection protocol adapted from the psychomotor vigilance task includes repeated and randomized binary hand motion tasks (push or pull) starting from either of two designated idle states: relaxed (with minimal muscle tones), or prepared (with muscle tones). We run a series of cross-validation tests to examine the performance of the method in comparison with the conventional techniques. The results suggest that the idle state recognition favors the dynamic Bayesian model over a static classification model. The results also show a statistically significant improvement in motion prediction accuracy by the proposed method (93.83±6.41%) in comparison with the conventional GMM-HMM method (89.71±8.98%) that does not explicitly account for the idle state. Moreover, we examine the progress of prediction accuracy over the course of motion initiation and identify the important hidden states that warrant future research.
format Online
Article
Text
id pubmed-10036485
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-100364852023-03-25 A hierarchical dynamic Bayesian learning network for EMG-based early prediction of voluntary movement intention Chen, Yongming Zhang, Haihong Wang, Chuanchu Ang, Kai Keng Ng, Soon Huat Jin, Huiwen Lin, Zhiping Sci Rep Article Decoding human action intention prior to motion onset with surface electromyograms (sEMG) is an emerging neuroengineering topic with interesting clinical applications such as intelligent control of powered prosthesis/exoskeleton devices. Despite extensive prior works in the related fields, it remains a technical challenge due to considerable variability of complex multi-muscle activation patterns in terms of volatile spatio-temporal characteristics. To address this issue, we first hypothesize that the inherent variability of the idle state immediately preceding the motion initiation needs to be addressed explicitly. We therefore design a hierarchical dynamic Bayesian learning network model that integrates an array of Gaussian mixture model – hidden Markov models (GMM-HMMs), where each GMM-HMM learns the multi-sEMG processes either during the idle state, or during the motion initiation phase of a particular motion task. To test the hypothesis and evaluate the new learning network, we design and build a upper-limb sEMG-joystick motion study system, and collect data from 11 healthy volunteers. The data collection protocol adapted from the psychomotor vigilance task includes repeated and randomized binary hand motion tasks (push or pull) starting from either of two designated idle states: relaxed (with minimal muscle tones), or prepared (with muscle tones). We run a series of cross-validation tests to examine the performance of the method in comparison with the conventional techniques. The results suggest that the idle state recognition favors the dynamic Bayesian model over a static classification model. The results also show a statistically significant improvement in motion prediction accuracy by the proposed method (93.83±6.41%) in comparison with the conventional GMM-HMM method (89.71±8.98%) that does not explicitly account for the idle state. Moreover, we examine the progress of prediction accuracy over the course of motion initiation and identify the important hidden states that warrant future research. Nature Publishing Group UK 2023-03-23 /pmc/articles/PMC10036485/ /pubmed/36959307 http://dx.doi.org/10.1038/s41598-023-30716-7 Text en © The Author(s) 2023 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Chen, Yongming
Zhang, Haihong
Wang, Chuanchu
Ang, Kai Keng
Ng, Soon Huat
Jin, Huiwen
Lin, Zhiping
A hierarchical dynamic Bayesian learning network for EMG-based early prediction of voluntary movement intention
title A hierarchical dynamic Bayesian learning network for EMG-based early prediction of voluntary movement intention
title_full A hierarchical dynamic Bayesian learning network for EMG-based early prediction of voluntary movement intention
title_fullStr A hierarchical dynamic Bayesian learning network for EMG-based early prediction of voluntary movement intention
title_full_unstemmed A hierarchical dynamic Bayesian learning network for EMG-based early prediction of voluntary movement intention
title_short A hierarchical dynamic Bayesian learning network for EMG-based early prediction of voluntary movement intention
title_sort hierarchical dynamic bayesian learning network for emg-based early prediction of voluntary movement intention
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10036485/
https://www.ncbi.nlm.nih.gov/pubmed/36959307
http://dx.doi.org/10.1038/s41598-023-30716-7
work_keys_str_mv AT chenyongming ahierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT zhanghaihong ahierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT wangchuanchu ahierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT angkaikeng ahierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT ngsoonhuat ahierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT jinhuiwen ahierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT linzhiping ahierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT chenyongming hierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT zhanghaihong hierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT wangchuanchu hierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT angkaikeng hierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT ngsoonhuat hierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT jinhuiwen hierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention
AT linzhiping hierarchicaldynamicbayesianlearningnetworkforemgbasedearlypredictionofvoluntarymovementintention