Title of article :
Relating biceps EMG to elbow kinematics during self-paced arm flexions
Author/Authors :
Natarajan، نويسنده , , Gautam S. and Wininger، نويسنده , , Michael and Kim، نويسنده , , Nam H. and Craelius، نويسنده , , William، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Repetitive reaching movements to a fixed target can be generally characterized by bell-shaped velocity profiles and sigmoidal trajectories with variable morphologies across multiple repetitions. A neuromuscular correspondence of these kinematic variations has thus far eluded electromyographic (EMG) analysis. We recorded EMG and elbow kinematics from fourteen healthy individuals performing repetitive, self-paced, isolated elbow flexions, with their arms supported against gravity. The global kinematic pattern of each flexion was classified as either sigmoidal (S) or non-sigmoidal (NS), based on goodness of fit with analytical curves. Ten of the fourteen subjects generated an approximately equal number of S and NS types (383 movement cycles). Trajectories of the other four subjects were not classifiable or did not vary sufficiently and were excluded from subsequent analysis. A post hoc predictor of trajectory type was derived by testing linear support vector machines trained with a strategically selected 3-feature sub-space of the early phase of enveloped biceps EMG during a leave-one-out cross-validation paradigm. Results showed that EMG features predicted kinematic morphology with sensitivity and specificity both exceeding 80%. The high predictive accuracy suggests neuromotor signals coding for subtle variations in elbow kinematics during self-paced, unloaded motions, can be deciphered from the biceps EMG.
Keywords :
ARM , Variability , EMG , Kinematics , Elbow , Trajectory prediction , flexion , Prosthetic control , Support Vector Machines , reaching
Journal title :
Medical Engineering and Physics
Journal title :
Medical Engineering and Physics