Abstract

We propose a framework for building electrophysiological predictors of single-trial motor performance variations, exemplified for SVIPT, a sequential isometric force control task suitable for hand motor rehabilitation after stroke. Electroencephalogram (EEG) data of 20 subjects with mean age of 53 years was recorded prior to and during 400 trials of SVIPT. They were executed within a single session with the non-dominant left hand, while receiving continuous visual feedback of the produced force trajectories. The behavioral data showed strong trial-by-trial performance variations for five clinically relevant metrics, which accounted for reaction time as well as for the smoothness and precision of the produced force trajectory. 18 out of 20 tested subjects remained after preprocessing and entered offline analysis. Source Power Comodulation (SPoC) was applied on EEG data of a short time interval prior to the start of each SVIPT trial. For 11 subjects, SPoC revealed robust oscillatory EEG subspace components, whose bandpower activity are predictive for the performance of the upcoming trial. Since SPoC may overfit to non-informative subspaces, we propose to apply three selection criteria accounting for the meaningfulness of the features. Across all subjects, the obtained components were spread along the frequency spectrum and showed a variety of spatial activity patterns. Those containing the highest level of predictive information resided in and close to the alpha band. Their spatial patterns resemble topologies reported for visual attention processes as well as those of imagined or executed hand motor tasks. In summary, we identified subject-specific single predictors that explain up to 36% of the performance fluctuations and may serve for enhancing neuroergonomics of motor rehabilitation scenarios.

Highlights

  • Motor training is utilized in rehabilitation scenarios to accelerate the re-gain of lost motor function after brain injury

  • Its distribution is slight asymmetric, which is caused by a physiological limit for the minimal reaction time (RT)

  • Integrated squared jerk (ISJ) depicted in Figure 3B, and cursor path length (CPL) in Figure 3E both show a strong session trend, which can be explained by the user learning

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Summary

Introduction

Motor training is utilized in rehabilitation scenarios to accelerate the re-gain of lost motor function after brain injury. State-of-the-art rehabilitation concepts are based on repetitive training tasks with the aim to reach a functional gain (Dobkin, 2004; Timmermans et al, 2009; Langhorne et al, 2011). While practicing a motor task over several sessions enables a user for skill acquisition (Lage et al, 2015), trial-by-trial variability of motor performance is a prominent feature which does not fully vanish with training (Cohen and Sternad, 2009; Osu et al, 2015). The underlying neural mechanisms of motor performance fluctuations on short time scales is subject of controversial discussion in literature and is not fully resolved yet (Faisal et al, 2008; Hadjiosif and Smith, 2015; Osu et al, 2015)

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