Multifractal Dynamics in Executive Control When Adapting to Concurrent Motor Tasks
There is some evidence that an improved understanding of executive control in the human movement system could be gained from explorations based on scale-free, fractal analysis of cyclic motor time series. Such analyses capture non-linear fractal dynamics in temporal fluctuations of motor instances t...
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doaj-f39697edf831434299e0ea4bb85bad712021-04-16T04:46:44ZengFrontiers Media S.A.Frontiers in Physiology1664-042X2021-04-011210.3389/fphys.2021.662076662076Multifractal Dynamics in Executive Control When Adapting to Concurrent Motor TasksLaurent M. ArsacThere is some evidence that an improved understanding of executive control in the human movement system could be gained from explorations based on scale-free, fractal analysis of cyclic motor time series. Such analyses capture non-linear fractal dynamics in temporal fluctuations of motor instances that are believed to reflect how executive control enlist a coordination of multiple interactions across temporal scales between the brain, the body and the task environment, an essential architecture for adaptation. Here by recruiting elite rugby players with high motor skills and submitting them to the execution of rhythmic motor tasks involving legs and arms concurrently, the main attempt was to build on the multifractal formalism of movement control to show a marginal need of effective adaptation in concurrent tasks, and a preserved adaptability despite complexified motor execution. The present study applied a multifractal analytical approach to experimental time series and added surrogate data testing based on shuffled, ARFIMA, Davies&Harte and phase-randomized surrogates, for assessing scale-free behavior in repeated motor time series obtained while combining cycling with finger tapping and with circling. Single-tasking was analyzed comparatively. A focus-based multifractal-DFA approach provided Hurst exponents (H) of individual time series over a range of statistical moments H(q), q = [−15 15]. H(2) quantified monofractality and H(-15)-H(15) provided an index of multifractality. Despite concurrent tasking, participants showed great capacity to keep the target rhythm. Surrogate data testing showed reasonable reliability in using multifractal formalism to decipher movement control behavior. The global (i.e., monofractal) behavior in single-tasks did not change when adapting to dual-task. Multifractality dominated in cycling and did not change when cycling was challenged by upper limb movements. Likewise, tapping and circling behaviors were preserved despite concurrent cycling. It is concluded that the coordinated executive control when adapting to dual-motor tasking is not modified in people having developed great motor skills through physical training. Executive control likely emerged from multiplicative interactions across temporal scales which puts emphasis on multifractal approaches of the movement system to get critical cues on adaptation. Extending such analyses to less skilled people is appealing in the context of exploring healthy and diseased movement systems.https://www.frontiersin.org/articles/10.3389/fphys.2021.662076/fullmultifractalitymovementmotor controlvariabilitysystem complexity |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Laurent M. Arsac |
spellingShingle |
Laurent M. Arsac Multifractal Dynamics in Executive Control When Adapting to Concurrent Motor Tasks Frontiers in Physiology multifractality movement motor control variability system complexity |
author_facet |
Laurent M. Arsac |
author_sort |
Laurent M. Arsac |
title |
Multifractal Dynamics in Executive Control When Adapting to Concurrent Motor Tasks |
title_short |
Multifractal Dynamics in Executive Control When Adapting to Concurrent Motor Tasks |
title_full |
Multifractal Dynamics in Executive Control When Adapting to Concurrent Motor Tasks |
title_fullStr |
Multifractal Dynamics in Executive Control When Adapting to Concurrent Motor Tasks |
title_full_unstemmed |
Multifractal Dynamics in Executive Control When Adapting to Concurrent Motor Tasks |
title_sort |
multifractal dynamics in executive control when adapting to concurrent motor tasks |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Physiology |
issn |
1664-042X |
publishDate |
2021-04-01 |
description |
There is some evidence that an improved understanding of executive control in the human movement system could be gained from explorations based on scale-free, fractal analysis of cyclic motor time series. Such analyses capture non-linear fractal dynamics in temporal fluctuations of motor instances that are believed to reflect how executive control enlist a coordination of multiple interactions across temporal scales between the brain, the body and the task environment, an essential architecture for adaptation. Here by recruiting elite rugby players with high motor skills and submitting them to the execution of rhythmic motor tasks involving legs and arms concurrently, the main attempt was to build on the multifractal formalism of movement control to show a marginal need of effective adaptation in concurrent tasks, and a preserved adaptability despite complexified motor execution. The present study applied a multifractal analytical approach to experimental time series and added surrogate data testing based on shuffled, ARFIMA, Davies&Harte and phase-randomized surrogates, for assessing scale-free behavior in repeated motor time series obtained while combining cycling with finger tapping and with circling. Single-tasking was analyzed comparatively. A focus-based multifractal-DFA approach provided Hurst exponents (H) of individual time series over a range of statistical moments H(q), q = [−15 15]. H(2) quantified monofractality and H(-15)-H(15) provided an index of multifractality. Despite concurrent tasking, participants showed great capacity to keep the target rhythm. Surrogate data testing showed reasonable reliability in using multifractal formalism to decipher movement control behavior. The global (i.e., monofractal) behavior in single-tasks did not change when adapting to dual-task. Multifractality dominated in cycling and did not change when cycling was challenged by upper limb movements. Likewise, tapping and circling behaviors were preserved despite concurrent cycling. It is concluded that the coordinated executive control when adapting to dual-motor tasking is not modified in people having developed great motor skills through physical training. Executive control likely emerged from multiplicative interactions across temporal scales which puts emphasis on multifractal approaches of the movement system to get critical cues on adaptation. Extending such analyses to less skilled people is appealing in the context of exploring healthy and diseased movement systems. |
topic |
multifractality movement motor control variability system complexity |
url |
https://www.frontiersin.org/articles/10.3389/fphys.2021.662076/full |
work_keys_str_mv |
AT laurentmarsac multifractaldynamicsinexecutivecontrolwhenadaptingtoconcurrentmotortasks |
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