Physiological time series:: distinguishing fractal noises from motions

被引:290
作者
Eke, A
Hermán, P
Bassingthwaighte, JB
Raymond, GM
Percival, DB
Cannon, M
Balla, I
Ikrényi, C
机构
[1] Semmelweis Univ, Inst Physiol, Expt Res Dept 2, H-1446 Budapest, Hungary
[2] Univ Washington, Ctr Bioengn, Natl Stimulat Resource, Seattle, WA 98195 USA
[3] Univ Washington, Appl Phys Lab, Seattle, WA 98195 USA
来源
PFLUGERS ARCHIV-EUROPEAN JOURNAL OF PHYSIOLOGY | 2000年 / 439卷 / 04期
关键词
brain microcirculation; correlation; fractal dimension; fractals; Hurst coefficient; laser-Doppler flowmetry; temporal heterogeneity; time series analysis;
D O I
10.1007/s004249900135
中图分类号
Q4 [生理学];
学科分类号
071003 ;
摘要
Many physiological signals appear fractal, in having self-similarity over a large range of their power spectral densities. They are analogous to one of two classes of discretely sampled pure fractal time signals, fractional Gaussian noise (fGn) or fractional Brownian motion (fBm). The fGn series are the successive differences between elements of a fBm series; they are stationary and are completely characterized by two parameters, sigma(2), the variance, and H, the Hurst coefficient. Such efficient characterization of physiological signals Is valuable since Il defines the autocorrelation and the fractal dimension of the time series. Estimation of H from Fourier analysis is inaccurate, so more robust methods are needed. Dispersional analysis (Disp) is good for noise signals while bridge detrended scaled windowed variance analysis (bdSWV) is good for motion signals. Signals whose slopes of their power spectral densities lie near the border between fGn and fBm are difficult to classify. A new method using signal summation conversion (SSC), wherein an fGn is converted to an fBm or an fBm to a summed fBm and bdSWV then applied, greatly improves the classification and the reliability of (H) over cap, the estimates of H, for the times series. Applying these methods to laser-Doppler blood cell perfusion signals obtained from the brain cortex of anesthetized rats gave A of; 0.24+/-0.02 (SD, n=8) and defined the signal as a fractional Brownian motion. The implication is that the flow signal is the summation (motion) of a set of local velocities from neighboring vessels that are negatively correlated, as if induced by local resistance fluctuations.
引用
收藏
页码:403 / 415
页数:13
相关论文
共 37 条
  • [1] [Anonymous], 1983, New York
  • [2] BASSINGTHWAIGHT.JB, 1995, WORKSH CHAOS FRACT M
  • [3] Bassingthwaighte J. B., 1994, FRACTAL PHYSL, DOI DOI 10.1007/978-1-4614-7572-9
  • [4] EVALUATING RESCALED RANGE ANALYSIS FOR TIME-SERIES
    BASSINGTHWAIGHTE, JB
    RAYMOND, GM
    [J]. ANNALS OF BIOMEDICAL ENGINEERING, 1994, 22 (04) : 432 - 444
  • [5] FRACTAL CORRELATION IN HETEROGENEOUS SYSTEMS
    BASSINGTHWAIGHTE, JB
    BEYER, RP
    [J]. PHYSICA D, 1991, 53 (01): : 71 - 84
  • [6] BASSINGTHWAIGHTE JB, 1988, NEWS PHYSIOL SCI, V3, P5
  • [7] EVALUATION OF THE DISPERSIONAL ANALYSIS METHOD FOR FRACTAL TIME-SERIES
    BASSINGTHWAIGHTE, JB
    RAYMOND, GM
    [J]. ANNALS OF BIOMEDICAL ENGINEERING, 1995, 23 (04) : 491 - 505
  • [8] Beran J, 1994, STAT LONG MEMORY PRO
  • [9] Analyzing exact fractal time series: evaluating dispersional analysis and rescaled range methods
    Caccia, DC
    Percival, D
    Cannon, MJ
    Raymond, G
    Bassingthwaighte, JB
    [J]. PHYSICA A, 1997, 246 (3-4): : 609 - 632
  • [10] Evaluating scaled windowed variance methods for estimating the Hurst coefficient of time series
    Cannon, MJ
    Percival, DB
    Caccia, DC
    Raymond, GM
    Bassingthwaighte, JB
    [J]. PHYSICA A, 1997, 241 (3-4): : 606 - 626