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首页> 外文期刊>Frontiers in Human Neuroscience >Pre-Trial EEG-Based Single-Trial Motor Performance Prediction to Enhance Neuroergonomics for a Hand Force Task
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Pre-Trial EEG-Based Single-Trial Motor Performance Prediction to Enhance Neuroergonomics for a Hand Force Task

机译:基于脑电图的预试验单次运动性能预测,以增强手部任务的神经工程学

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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.
机译:我们提出了一个框架,用于构建单次运动性能变化的电生理预测指标,以SVIPT为例,SVIPT是一种顺序等距测力控制任务,适用于中风后手部运动的康复。在SVIPT的400次试验之前和期间,记录了20名平均年龄为53岁的受试者的脑电图(EEG)数据。它们在不占优势​​的左手的单个会话中执行,同时收到所产生的力轨迹的连续视觉反馈。行为数据显示,五个临床相关指标的逐项试验性能差异很大,这些指标说明了反应时间以及所产生的力轨迹的平滑度和精确度。在进行预处理并进入离线分析后,剩下20名测试受试者中的18名。在每次SVIPT试验开始之前的短时间间隔的EEG数据上应用了源功率共调制(SPoC)。对于11位受试者,SPoC揭示了稳健的振荡EEG子空间分量,其频带功率活动可预测即将进行的试验的性能。由于SPoC可能会过度适合非信息子空间,因此我们建议应用三个选择标准来考虑特征的意义。在所有受试者中,获得的成分沿频谱分布,并显示出各种空间活动模式。那些包含最高级别的预测信息的数据位于和靠近alpha波段。它们的空间模式类似于为视觉注意力过程以及想象或执行的手部运动任务所报告的拓扑。总而言之,我们确定了特定于受试者的单一预测因子​​,可以解释多达36%的性能波动,并且可能有助于增强运动康复情景的神经工程学。

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