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Neuromotor Noise, Error Tolerance and Velocity-Dependent Costs in Skilled Performance

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  • Dagmar Sternad
  • Masaki O Abe
  • Xiaogang Hu
  • Hermann Müller

Abstract

In motor tasks with redundancy neuromotor noise can lead to variations in execution while achieving relative invariance in the result. The present study examined whether humans find solutions that are tolerant to intrinsic noise. Using a throwing task in a virtual set-up where an infinite set of angle and velocity combinations at ball release yield throwing accuracy, our computational approach permitted quantitative predictions about solution strategies that are tolerant to noise. Based on a mathematical model of the task expected results were computed and provided predictions about error-tolerant strategies (Hypothesis 1). As strategies can take on a large range of velocities, a second hypothesis was that subjects select strategies that minimize velocity at release to avoid costs associated with signal- or velocity-dependent noise or higher energy demands (Hypothesis 2). Two experiments with different target constellations tested these two hypotheses. Results of Experiment 1 showed that subjects chose solutions with high error-tolerance, although these solutions also had relatively low velocity. These two benefits seemed to outweigh that for many subjects these solutions were close to a high-penalty area, i.e. they were risky. Experiment 2 dissociated the two hypotheses. Results showed that individuals were consistent with Hypothesis 1 although their solutions were distributed over a range of velocities. Additional analyses revealed that a velocity-dependent increase in variability was absent, probably due to the presence of a solution manifold that channeled variability in a task-specific manner. Hence, the general acceptance of signal-dependent noise may need some qualification. These findings have significance for the fundamental understanding of how the central nervous system deals with its inherent neuromotor noise. Author Summary: It is widely recognized that variability or noise is present at all levels of the sensorimotor system. How the central nervous system generates functional behavior with a sufficient degree of accuracy in the face of this noise remains an open question. This is specifically relevant when the motor task is redundant, i.e., where many different executions can achieve the same task goal. Using an experimentally controlled throwing movement as model task we examined how humans acquire movement strategies that are tolerant to intrinsic noise. Based on a new computational approach that parses variability based on an analysis of task redundancy, we tested two hypotheses: 1) Subjects are sensitive to noise and seek solutions that are tolerant to this noise. 2) Subjects avoid solutions with high velocities and the costs associated with high velocities. Analysis of the distributional properties of variability in two experiments revealed that humans select those strategies that maximize error-tolerance. These findings have significance for fundamental understanding of the central nervous system and for learning in the context of rehabilitation.

Suggested Citation

  • Dagmar Sternad & Masaki O Abe & Xiaogang Hu & Hermann Müller, 2011. "Neuromotor Noise, Error Tolerance and Velocity-Dependent Costs in Skilled Performance," PLOS Computational Biology, Public Library of Science, vol. 7(9), pages 1-15, September.
  • Handle: RePEc:plo:pcbi00:1002159
    DOI: 10.1371/journal.pcbi.1002159
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    References listed on IDEAS

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    1. Dagmar Sternad & Se-Woong Park & Hermann Müller & Neville Hogan, 2010. "Coordinate Dependence of Variability Analysis," PLOS Computational Biology, Public Library of Science, vol. 6(4), pages 1-16, April.
    2. Arne J Nagengast & Daniel A Braun & Daniel M Wolpert, 2010. "Risk-Sensitive Optimal Feedback Control Accounts for Sensorimotor Behavior under Uncertainty," PLOS Computational Biology, Public Library of Science, vol. 6(7), pages 1-15, July.
    3. Leslie C. Osborne & Stephen G. Lisberger & William Bialek, 2005. "A sensory source for motor variation," Nature, Nature, vol. 437(7057), pages 412-416, September.
    4. Christopher M. Harris & Daniel M. Wolpert, 1998. "Signal-dependent noise determines motor planning," Nature, Nature, vol. 394(6695), pages 780-784, August.
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    3. Bao Nguyen Tran & Shiro Yano & Toshiyuki Kondo, 2019. "Coordination of human movements resulting in motor strategies exploited by skilled players during a throwing task," PLOS ONE, Public Library of Science, vol. 14(10), pages 1-16, October.
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    5. Christopher J Hasson & Zhaoran Zhang & Masaki O Abe & Dagmar Sternad, 2016. "Neuromotor Noise Is Malleable by Amplifying Perceived Errors," PLOS Computational Biology, Public Library of Science, vol. 12(8), pages 1-28, August.

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