2005
DOI: 10.1016/j.neuroimage.2004.10.044
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Fractional Gaussian noise, functional MRI and Alzheimer's disease

Abstract: Fractional Gaussian noise (fGn) provides a parsimonious model for stationary increments of a self-similar process parameterised by the Hurst exponent, H, and variance, sigma2. Fractional Gaussian noise with H < 0.5 demonstrates negatively autocorrelated or antipersistent behaviour; fGn with H > 0.5 demonstrates 1/f, long memory or persistent behaviour; and the special case of fGn with H = 0.5 corresponds to classical Gaussian white noise. We comparatively evaluate four possible estimators of fGn parameters, on… Show more

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Cited by 269 publications
(262 citation statements)
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“…Fractal properties, i.e., self-similarity over several scales of measurement, have been described in many types of neurobiological data including electroencephalographic and functional MRI time series (28)(29)(30)(31), structural MRI measurements of the cortical surface and gray-white matter boundary (32,33), and microscopic data on neuronal dendritic and cerebrovascular arborizations (34). It is also notable that small-world networks have been generated computationally by a fractal growth process (35) and that adaptive rewiring of initially random networks by neurogenesis may allow development and maintenance of smallworld connectivity in the brain (36)(37)(38)(39)(40).…”
Section: Discussionmentioning
confidence: 99%
“…Fractal properties, i.e., self-similarity over several scales of measurement, have been described in many types of neurobiological data including electroencephalographic and functional MRI time series (28)(29)(30)(31), structural MRI measurements of the cortical surface and gray-white matter boundary (32,33), and microscopic data on neuronal dendritic and cerebrovascular arborizations (34). It is also notable that small-world networks have been generated computationally by a fractal growth process (35) and that adaptive rewiring of initially random networks by neurogenesis may allow development and maintenance of smallworld connectivity in the brain (36)(37)(38)(39)(40).…”
Section: Discussionmentioning
confidence: 99%
“…Indeed, there is considerable evidence pointing to deficits in the functional connectivity (7-9, 37-39), which may be related both to structural atrophy (28) and deficits in cholinergic or other neurotransmitter systems (18,36,40,41). Failures in any of the components of a large-scale circuit are expected also to affect the temporal dynamics of local activity.…”
Section: Discussionmentioning
confidence: 99%
“…2 A and B). The following filter settings were used (cut-off frequencies, filter order): delta (2-3 Hz, 251), theta (4 -5 Hz, 63), alpha (6 -13 Hz, 28), beta (15)(16)(17)(18)(19)(20)(21)(22)(23)(24)(25)28), and gamma (30)(31)(32)(33)(34)(35)(36)(37)(38)(39)(40)(41)(42)(43)(44)(45)13). The mean oscillation amplitude was computed as the time-averaged amplitude envelope.…”
Section: Methodsmentioning
confidence: 99%
“…From the power spectral factor f -a , the fractal dimension D f (D f = (3-a)/2) and the Hurst exponent (H) (H = 2-D f ) of a given signal can be estimated (Bullmore et al 2004). The Hurst exponent of the resting-state fMRI has been found to be sensitive to an acute pharmacological challenge (Wink et al 2006) and to the pathological changes of AD (Maxim et al 2005). Because spontaneous activity may have too complex a behavior to be adequately described by a single scaling exponent, multifractal formalism, in which the local scaling behavior in the neighborhood of a singularity is characterized by the Hölder exponent, has also been used to measure endogenous spontaneous fluctuations (Wink et al 2008).…”
Section: Properties Of Local Spontaneous Activitymentioning
confidence: 99%