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Automated spatial localization of ankle muscle sites and model-based estimation of joint torque post-stroke via a wearable sensorised leg garment

Authors :
Simonetti, D.
Hendriks, M.M.S.
Herijgers, J.
Cuerdo del Rio, C.
Koopman, H.F.J.M.
Keijsers, N.L.W.
Sartori, M.
Simonetti, D.
Hendriks, M.M.S.
Herijgers, J.
Cuerdo del Rio, C.
Koopman, H.F.J.M.
Keijsers, N.L.W.
Sartori, M.
Source :
Journal of Electromyography and Kinesiology; 1050-6411; 72; 102808; ~Journal of Electromyography and Kinesiology~~~~~1050-6411~~72~~102808
Publication Year :
2023

Abstract

Contains fulltext : 296350.pdf (Publisher’s version ) (Open Access)<br />Assessing a patient's musculoskeletal function during over-ground walking is a primary objective in post-stroke rehabilitation, due to the importance of walking recovery for everyday life. However, the quantitative assessment of musculoskeletal function currently requires lab-constrained equipment, and labor-intensive analyses, which hampers assessment in standard clinical settings. The development of fully wearable systems for the online estimation of muscle-tendon forces and resulting joint torque would aid clinical assessment of motor recovery, it would enhance the detection of neuro-muscular anomalies and it would consequently enable highly personalized treatments. Here, we present a wearable technology that combines (1) a soft garment for the human leg sensorized with 64 flexible and dry electromyography (EMG) electrodes, (2) a generalized and automated algorithm for the localization of leg muscle sites, and (3) an EMG-driven musculoskeletal modeling framework for the estimation of ankle dorsi-plantar flexion torques. Our results showed that the automated clustering algorithm could detect muscle locations in both healthy and post-stroke individuals. The estimated muscle-specific EMG envelopes could be used to drive forward person-specific musculoskeletal models and estimate resulting joint torques accurately across all healthy and post-stroke individuals and across different walking speeds (R2 > 0.82 and RMSD < 0.16). The technology we proposed opens new avenues for automated muscle localization and quantitative musculoskeletal function assessment during gait in both healthy and neurologically impaired individuals.

Details

Database :
OAIster
Journal :
Journal of Electromyography and Kinesiology; 1050-6411; 72; 102808; ~Journal of Electromyography and Kinesiology~~~~~1050-6411~~72~~102808
Publication Type :
Electronic Resource
Accession number :
edsoai.on1399414378
Document Type :
Electronic Resource