During reaching movements in the presence of novel dynamics, participants initially co-contract their
muscles to reduce kinematic errors and improve task performance. As learning proceeds, muscle cocontraction
decreases as an accurate internal model develops. The initial co-contraction could affect the
learning of the internal model in several ways. By ensuring the limb remains close to the target state,
co-contraction could speed up learning. Conversely, by reducing kinematic errors, a key training signal,
it could slow down learning. Alternatively, given that the effects of muscle co-contraction on kinematic
errors are predictable and could be discounted when assessing the internal model error, it could have
no effect on learning. Using a sequence of force pulses, we pretrained two groups to either co-contract
(stiff group) or relax (relaxed group) their arm muscles in the presence of dynamic perturbations. A
third group (control group) was not pretrained. All groups performed reaching movements in a velocitydependent
curl field. We measured adaptation using channel trials and found greater adaptation in the
stiff group during early learning. We also found a positive correlation between muscle co-contraction, as
measured by surface electromyography, and adaptation. These results show that muscle co-contraction
accelerates the rate of dynamic motor learning.
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During reaching movements in the presence of novel dynamics, participants initially co-contract their
muscles to reduce kinematic errors and improve task performance. As learning proceeds, muscle cocontraction
decreases as an accurate internal model develops. The initial co-contraction could affect the
learning of the internal model in several ways. By ensuring the limb remains close to the target state,
co-contraction could speed up learning. Conversely, by reducing kinematic errors, a key...
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