Title :
A Comparison of Day-Long Recording Stability and Muscle Force Prediction between BSN-Based Mechanomyography and Electromyography
Author :
Gavriel, Constantinos ; Faisal, A.A.
Author_Institution :
Dept. of Comput., Imperial Coll. London, London, UK
Abstract :
Day-long continuous monitoring requires stable sensors that can minimise the effects of drift and maintain high accuracy and precision over time. We have recently shown that our inertial motion tracking system can capture stable kinematic data, calibrated against ground-truth over a long period of time. However, for many clinical and daily life activities, it is also essential to monitor the muscle-activity. In this study, we evaluate the long-term recording stability of our prototype mechanomyography (MMG) sensors as an extension to our existing ETHO1 body sensor network platform. We attached the MMG sensors along with commercial high-accuracy EMG electrodes on the arm muscles of 5 subjects throughout a working day of 9 hours. The subjects followed their daily routine but they had to perform a multi-level force-matching task through flexion and extension of their arm during four short sessions of the day, as measures of practical signal quality. We designed a force predictor that used either EMG or MMG signals to predict the forces generated by subjects. Our prototype low-cost MMG channels have shown comparable results (RMSE: 23N and R2: 0.91) in predicting the force levels applied when compared against the commercial high-accuracy EMG sensor (RMSE: 19N and R2: 0.95).
Keywords :
biomechanics; biomedical electrodes; body sensor networks; electromyography; mean square error methods; patient monitoring; BSN-based electromyography; BSN-based mechanomyography; EMG electrodes; EMG signal; ETHO1 body sensor network platform; MMG sensor; MMG signal; RMSE; arm extension; arm flexion; arm muscles; clinical activities; daily life activities; daily routine; day-long continuous monitoring; day-long recording stability; drift effects; force level prediction; ground-truth; high-accuracy EMG sensor; inertial motion tracking system; long-term recording stability; low-cost MMG channel; mechanomyography sensor; multilevel force-matching task; muscle force prediction; muscle-activity monitoring; practical signal quality; stable kinematic data; stable sensor; time 9 h; Body sensor networks; Electromyography; Force; Kinematics; Monitoring; Muscles; Sensors; BSN-based MMG; electromyography; force prediction; long-term comparison; mechanomyography;
Conference_Titel :
Wearable and Implantable Body Sensor Networks (BSN), 2014 11th International Conference on
Conference_Location :
Zurich
Print_ISBN :
978-1-4799-4932-8
DOI :
10.1109/BSN.2014.23