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Analysis of rat electroencephalogram under slow wave sleep using wavelet transform

机译:小波变换分析慢波睡眠下大鼠脑电图

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The dynamic features of rat EEG collected under slow wave sleep were investigated in both time domain and frequency domain using wavelet transform based on multiresolution signal decomposition. EEGs of freely moving rats were recorded with implanted electrodes and were decomposed into four components of delta, theta, alpha and beta by wavelet transform. The power and power percentage of each component were calculated as functions of time. The results show that under slow wave sleep there existed as much as 26.2/spl plusmn/7.7% of EEG period during which the delta power percentage was less than 50%. The powers of other three components during small delta EEG were significantly larger than those during large delta EEG. Comparatively, the conventional FFT method could only show a delta power (percentage of 70.6/spl plusmn/6.4%) dominating spectrum. Therefore, the method of wavelet transform is useful in developing new quantitative time-frequency measures of EEG.
机译:利用基于多分辨率信号分解的小波变换,研究了慢波睡眠条件下大鼠脑电图的时域和频域动态特征。用植入的电极记录自由运动大鼠的脑电图,并通过小波变换将其分解为δ,θ,α和β的四个分量。计算每个组件的功率和功率百分比作为时间的函数。结果表明,在慢波睡眠条件下,脑电图期间存在高达26.2 / spl加/7.7%的时间,在此期间,德尔塔功率百分比小于50%。小三角脑电图期间其他三个分量的功率显着大于大三角脑电图期间的功率。相比之下,传统的FFT方法只能显示出增量功率(占百分比的70.6 / spl plusmn / 6.4%)。因此,小波变换方法在开发新的脑电图定量时频测量方法中很有用。

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