TY - JOUR
T1 - Muscle strength assessment system using sEMG-based force prediction method for wrist joint
AU - Zhang, Songyuan
AU - Guo, Shuxiang
AU - Gao, Baofeng
AU - Huang, Qiang
AU - Pang, Muye
AU - Hirata, Hideyuki
AU - Ishihara, Hidenori
N1 - Publisher Copyright:
© Taiwanese Society of Biomedical Engineering 2016.
PY - 2016/2/1
Y1 - 2016/2/1
N2 - Tele-assessment systems are crucial for homebased rehabilitation, as they allow therapists to assess the status of patients and adjust the parameters of various home-based training devices. Traditional force/torque sensors are commonly used in tele-assessment systems to detect muscle strength because such sensors are convenient. However, muscle activity can be measured using surface electromyography (sEMG), which records the activation level of skeleton muscles and is a more accurate method for determining the amount of force exerted. Thus, in this paper, a method for predicting muscle strength using only sEMG signals is proposed. The sEMG signals measure the isometric downward touch motions and are recorded from four muscles of the forearm. The prediction function is derived from a musculoskeletal model. The parameters involved are calibrated using the Bayesian linear regression algorithm. To avoid the complex modeling of the entire movement, a neural network classifier is trained to recognize the force-exerting motion. Experimental results show that the mean root-mean-square error of the proposed method is below 2.5 N. In addition, the effects of the high-pass cutofffrequency and the coactivation of flexors and extensors for EMG force prediction are discussed in this paper. The performance of the proposed method is validated further in real-time by a remote predicted-force evaluation experiment. A haptic device (Phantom Premium) is used to represent the predicted force at the therapist's remote site. Experimental results show that the proposed method can provide acceptable prediction results for tele-assessment systems.
AB - Tele-assessment systems are crucial for homebased rehabilitation, as they allow therapists to assess the status of patients and adjust the parameters of various home-based training devices. Traditional force/torque sensors are commonly used in tele-assessment systems to detect muscle strength because such sensors are convenient. However, muscle activity can be measured using surface electromyography (sEMG), which records the activation level of skeleton muscles and is a more accurate method for determining the amount of force exerted. Thus, in this paper, a method for predicting muscle strength using only sEMG signals is proposed. The sEMG signals measure the isometric downward touch motions and are recorded from four muscles of the forearm. The prediction function is derived from a musculoskeletal model. The parameters involved are calibrated using the Bayesian linear regression algorithm. To avoid the complex modeling of the entire movement, a neural network classifier is trained to recognize the force-exerting motion. Experimental results show that the mean root-mean-square error of the proposed method is below 2.5 N. In addition, the effects of the high-pass cutofffrequency and the coactivation of flexors and extensors for EMG force prediction are discussed in this paper. The performance of the proposed method is validated further in real-time by a remote predicted-force evaluation experiment. A haptic device (Phantom Premium) is used to represent the predicted force at the therapist's remote site. Experimental results show that the proposed method can provide acceptable prediction results for tele-assessment systems.
KW - Bayesian linear regression
KW - Classification
KW - Co-activation
KW - Haptic device
KW - Muscle strength prediction
KW - Surface electromyography
KW - Tele-assessment system
UR - http://www.scopus.com/inward/record.url?scp=84960935381&partnerID=8YFLogxK
U2 - 10.1007/s40846-016-0112-5
DO - 10.1007/s40846-016-0112-5
M3 - Article
AN - SCOPUS:84960935381
SN - 1609-0985
VL - 36
SP - 121
EP - 131
JO - Journal of Medical and Biological Engineering
JF - Journal of Medical and Biological Engineering
IS - 1
ER -