4.5 Article

Toward a unifying framework for the modeling and identification of motor primitives

期刊

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fncom.2022.926345

关键词

motor primitives; muscle synergies; Fourier-based Anechoic Demixing Algorithm (FADA); anechoic mixture model; dimensionality reduction; motor redundancy

资金

  1. German Federal Ministry of Education and Research
  2. Human Frontiers Science Program [BMBF FKZ 01GQ1704]
  3. German Research Foundation [HFSP RGP0036/2016]
  4. European Research Council [DFG GZ: KA 1258/15- 1]
  5. European Union Horizon 2020 Programme [856495]
  6. [CogIMon H2020 ICT-23-2014/644727]

向作者/读者索取更多资源

A unified framework for modeling and identifying different classes of motor primitives is introduced. The anechoic mixture model and the Fourier-based Anechoic Demixing Algorithm were used to successfully identify qualitatively different motor primitives, showing comparable or better reconstruction performance compared to traditional model-specific algorithms.
A large body of evidence suggests that human and animal movements, despite their apparent complexity and flexibility, are remarkably structured. Quantitative analyses of various classes of motor behaviors consistently identify spatial and temporal features that are invariant across movements. Such invariant features have been observed at different levels of organization in the motor system, including the electromyographic, kinematic, and kinetic levels, and are thought to reflect fixed modules-named motor primitives-that the brain uses to simplify the construction of movement. However, motor primitives across space, time, and organization levels are often described with ad-hoc mathematical models that tend to be domain-specific. This, in turn, generates the need to use model-specific algorithms for the identification of both the motor primitives and additional model parameters. The lack of a comprehensive framework complicates the comparison and interpretation of the results obtained across different domains and studies. In this work, we take the first steps toward addressing these issues, by introducing a unifying framework for the modeling and identification of qualitatively different classes of motor primitives. Specifically, we show that a single model, the anechoic mixture model, subsumes many popular classes of motor primitive models. Moreover, we exploit the flexibility of the anechoic mixture model to develop a new class of identification algorithms based on the Fourier-based Anechoic Demixing Algorithm (FADA). We validate our framework by identifying eight qualitatively different classes of motor primitives from both simulated and experimental data. We show that, compared to established model-specific algorithms for the identification of motor primitives, our flexible framework reaches overall comparable and sometimes superior reconstruction performance. The identification framework is publicly released as a MATLAB toolbox (FADA-T, https://tinyurl.com/compsens) to facilitate the identification and comparison of different motor primitive models.

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