Department of Neurophysiology and Pathophysiology, University Medical Center Hamburg-Eppendorf, Hamburg, Germany.
Palestinian Neuroscience Initiative, Al-Quds University, Abu Dis, Jerusalem, Palestine.
Sci Rep. 2019 Apr 19;9(1):6339. doi: 10.1038/s41598-019-42732-7.
Detrended fluctuation analysis (DFA) is a popular method to analyze long-range temporal correlations in time series of many different research areas but in particular also for electrophysiological recordings. Using the classical DFA method, the cumulative sum of data are divided into segments, and the variance of these sums is studied as a function of segment length after linearly detrending them in each segment. The starting point of the proposed new method is the observation that the classical method is inherently non-stationary without justification by a corresponding non-stationarity of the data. This leads to unstable estimates of fluctuations to the extent that it is impossible to estimate slopes of the fluctuations other than by fitting a line over a wide range of temporal scales. We here use a modification of the classical method by formulating the detrending as a strictly stationary operation. With this modification the detrended fluctuations can be expressed as a weighted average across the power spectrum of a signal. Most importantly, we can also express the slopes, calculated as analytic derivatives of the fluctuations with respect to the scales, as statistically robust weighted averages across the power spectra. The method is applied to amplitudes of brain oscillations measured with magnetoencephalography in resting state condition. We found for envelopes of the the alpha rhythm that fluctuations as a function of time scales in a double-logarithmic plot differ substantially from a linear relation for time scales below 10 seconds. In particular we will show that model selections fail to determine accurate scaling laws, and that standard parameter settings are likely to yield results depending on signal to noise ratios than on true long range temporal correlations.
去趋势波动分析(DFA)是一种流行的方法,可用于分析来自多个不同研究领域的时间序列中的长程时间相关性,但特别是在电生理记录中也很有用。使用经典的 DFA 方法,将数据的累积和分成段,并且在每个段中对它们进行线性去趋势后,研究这些和的方差作为段长度的函数。所提出的新方法的出发点是观察到经典方法本质上是非平稳的,而没有相应的数据非平稳性的证明。这导致波动的不稳定估计,以至于不可能通过在广泛的时间尺度上拟合一条线来估计除了斜率之外的波动。我们在这里通过将去趋势表述为严格平稳的操作来修改经典方法。通过这种修改,可以将去趋势波动表示为信号的功率谱的加权平均值。最重要的是,我们还可以将斜率表示为波动相对于尺度的解析导数的统计稳健加权平均值。该方法应用于静息状态下脑磁图测量的脑振荡幅度。我们发现,在双对数图中,时间尺度上的alpha 节律的包络的波动与时间尺度之间的线性关系有很大不同,时间尺度低于 10 秒。特别是,我们将表明模型选择无法确定准确的标度定律,并且标准参数设置可能取决于信噪比而不是真正的长程时间相关性。