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A novel method to generalize time-frequency coherence analysis between EEG or EMG signals during repetitive trials with high intra-subject variability in duration

机译:一种新的方法,以在持续时间内具有高内部对象变异性的重复试验期间EEG或EMG信号之间的时频相干性分析

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Time-frequency coherence analysis between EEG and EMG signals represents a valuable tool to gain insight into neural mechanisms underlying motor control. However, for self-paced movements, the variability of inter-trial duration limits its proper use. To overcome this obstacle, we propose a time-normalizing approach and test it on both simulated and experimental data recorded during elbow extension movements performed by a post-stroke subject. Results show that the proposed time-normalization improves both the consistency and the accuracy of time-frequency coherence calculation, detection and quantification. The proposed time-normalization overcomes a major limitation to generalization of coherence analysis and can be suggested as an essential step to perform for coherence in presence of high intra-subject variability in duration.
机译:EEG和EMG信号之间的时频相干性分析代表了有价值的工具,以获得电机控制下面的神经机制的洞察力。但是,对于自定节奏运动,试验间持续时间的可变性限制了其适当的使用。为了克服这种障碍,我们提出了一种时间正常化方法,并在由行程后对象执行的肘部延伸运动期间记录的模拟和实验数据进行测试。结果表明,所提出的时间归一化提高了时频相干计算,检测和量化的一致性和准确性。所提出的时间正常化克服了对相干性分析的泛化的主要限制,并且可以建议作为在持续时间内以高对象内变异性的相干性的基本步骤。

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