From neural noise to co-adaptability: Rethinking the multifaceted architecture of motor variability

Phys Life Rev. 2023 Dec:47:245-263. doi: 10.1016/j.plrev.2023.10.036. Epub 2023 Oct 31.

Abstract

In the last decade, the source and the functional meaning of motor variability have attracted considerable attention in behavioral and brain sciences. This construct classically combined different levels of description, variable internal robustness or coherence, and multifaceted operational meanings. We provide here a comprehensive review of the literature with the primary aim of building a precise lexicon that goes beyond the generic and monolithic use of motor variability. In the pars destruens of the work, we model three domains of motor variability related to peculiar computational elements that influence fluctuations in motor outputs. Each domain is in turn characterized by multiple sub-domains. We begin with the domains of noise and differentiation. However, the main contribution of our model concerns the domain of adaptability, which refers to variation within the same exact motor representation. In particular, we use the terms learning and (social)fitting to specify the portions of motor variability that depend on our propensity to learn and on our largely constitutive propensity to be influenced by external factors. A particular focus is on motor variability in the context of the sub-domain named co-adaptability. Further groundbreaking challenges arise in the modeling of motor variability. Therefore, in a separate pars construens, we attempt to characterize these challenges, addressing both theoretical and experimental aspects as well as potential clinical implications for neurorehabilitation. All in all, our work suggests that motor variability is neither simply detrimental nor beneficial, and that studying its fluctuations can provide meaningful insights for future research.

Keywords: Co-adaptability; Joint action; Learning; Motor neuroscience; Motor variability, neural variability; Movement kinematics; Plasticity; Predictive coding; Rehabilitation; Theoretical modeling.

Publication types

  • Review

MeSH terms

  • Brain*
  • Learning*