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Effect of independent component analysis on multifractality of EEG during visual-motor task

机译:视觉运动任务中独立成分分析对脑电多形性的影响

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摘要

In visual-motor task, blinks, muscle and other short-term artifacts may corrupt the correct determination of the fractal properties of the brain signals that reflect task performance. We tested whether independent component analysis (ICA) is a necessary preprocessing tool to determine fractal properties of amplitudes of decomposed EEG records in theta, alpha, beta and gamma oscillations. The subjects were required to track a moving spot on a city map displayed on a computer screen by pushing forward a joystick in two experimental conditions: the spot moved in steps either with constant or fractal time intervals. The wavelet transform modulus maxima (WTMM) method was applied to estimate the local fractal dimensions D(h) for recovered EEG via reduced independent components (ICs) localized inside and outside the brain. The measure of fractality, i.e. the Hoelder exponent h_(Dmax) was statistically estimated among experimental conditions. We established multifractality for extracted IC per se, specific for filtered oscillations in both experimental conditions: long-range correlation for theta and alpha, and anticorrelation for beta and gamma. Similar results were obtained for filtered versions of recovered EEG. Multifractal scaling, specific for lower and higher EEG oscillations, proved to be very stable intrinsic feature for the activity of large brain areas. The external events (task conditions) and the extended number of ICs, including those at the boundary line of the brain, did not have influence upon the scaling, although their effects might be statistically different for a given filtered oscillation.
机译:在视觉运动任务中,眨眼,肌肉和其他短期伪像可能会破坏对反映任务绩效的大脑信号的分形特性的正确确定。我们测试了独立成分分析(ICA)是否是确定θ,α,β和γ振荡中分解的EEG记录振幅的分形特性是否必要的预处理工具。通过在两个实验条件下向前推动操纵杆,受试者需要在计算机屏幕上显示的城市地图上跟踪移动的地点:该地点以固定或分形的时间间隔逐步移动。应用小波变换模极大值(WTMM)方法通过减少位于大脑内外的独立分量(IC)来估计回收的脑电图的局部分形维数D(h)。在实验条件下,统计地估计了分形性的度量,即Hoelder指数h_(Dmax)。我们为提取的IC本身建立了多重分形性,特定于两种实验条件下的滤波振荡:θ和α的远程相关性,以及β和γ的反相关性。对于过滤后的回收型脑电图,获得了相似的结果。多重分形定标,专门针对较低和较高的EEG振荡,被证明是大脑区域活动非常稳定的内在特征。外部事件(任务条件)和扩展的IC数量(包括大脑边界线处的IC)对缩放没有影响,尽管对于给定的滤波振荡,它们的影响可能在统计上有所不同。

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