Development of a mathematical model that predicts optimal muscle activation patterns by using brief trains

Author:

Ding Jun1,Wexler Anthony S.2,Binder-Macleod Stuart A.3

Affiliation:

1. Interdisciplinary Graduate Program in Biomechanics and Movement Science,

2. Department of Mechanical Engineering, and

3. Department of Physical Therapy, University of Delaware, Newark, Delaware 19716

Abstract

Because muscles must be repetitively activated during functional electrical stimulation, it is desirable to identify the stimulation pattern that produces the most force. Previous experimental work has shown that the optimal pattern contains an initial high-frequency burst of pulses (i.e., an initial doublet or triplet) followed by a low, constant-frequency portion. Pattern optimization is particularly challenging, because a muscle's contractile characteristics and, therefore, the optimal pattern change under different physiological conditions and are different for each person. This work describes the continued development and testing of a mathematical model that predicts isometric forces from fresh and fatigued muscles in response to brief trains of electrical pulses. By use of this model and an optimization algorithm, stimulation patterns that produced maximum forces from each subject were identified.

Publisher

American Physiological Society

Subject

Physiology (medical),Physiology

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