2013
DOI: 10.1007/s10439-013-0795-5
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Identification of Resting and Active State EEG Features of Alzheimer’s Disease using Discrete Wavelet Transform

Abstract: Alzheimer's disease (AD) is associated with deficits in a number of cognitive processes and executive functions. Moreover, abnormalities in the electroencephalogram (EEG) power spectrum develop with the progression of AD. These features have been traditionally characterized with montage recordings and conventional spectral analysis during resting eyes-closed and resting eyes-open (EO) conditions. In this study, we introduce a single lead dry electrode EEG device which was employed on AD and control subjects du… Show more

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Cited by 50 publications
(28 citation statements)
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“…In the paper proposed by Torabi et al [17], 336 features extracted from gray-level cooccurrence matrix (GLMC) were used for classification of AD. Ghorbanian et al [18] used discrete wavelet transform to extract features to diagnose AD. At present, morphometric MRI can be adapted to improve the performance of diagnosing AD, which is safe, reliable, and noninvasive.…”
Section: Introductionmentioning
confidence: 99%
“…In the paper proposed by Torabi et al [17], 336 features extracted from gray-level cooccurrence matrix (GLMC) were used for classification of AD. Ghorbanian et al [18] used discrete wavelet transform to extract features to diagnose AD. At present, morphometric MRI can be adapted to improve the performance of diagnosing AD, which is safe, reliable, and noninvasive.…”
Section: Introductionmentioning
confidence: 99%
“…15 The human EEG rhythms include: d (< 4 Hz), u (4-8 Hz), a (8-13 Hz), b (13-30 Hz), g (> 30 Hz). 16 A pattern could be found from the correspondence between those DB4 bands and EEG rhythm, and that two DB4 bands always cover one EEG rhythm. Thus, we chose DB4 for decomposing EEG signals.…”
Section: Preprocessing Based On Discrete Wavelet Transformationmentioning
confidence: 95%
“…The residual signal (a5) represents 0–3 Hz, and the detail signals represent 50–100 Hz (d1), 25–50 Hz (d2), 12–25 Hz (d3), 6–12 Hz (d4), and 3–6 Hz (d5) . The human EEG rhythms include: δ (< 4 Hz), θ (4–8 Hz), α (8–13 Hz), β (13–30 Hz), γ (> 30 Hz) . A pattern could be found from the correspondence between those DB4 bands and EEG rhythm, and that two DB4 bands always cover one EEG rhythm.…”
Section: Methodsmentioning
confidence: 99%
“…A global optimization routine is employed in order to match the output of with EEG recordings in terms of power spectrum, Shannon entropy, and sample entropy. The EEG signals were recorded under resting EC and EO conditions in an earlier pilot study of Alzheimer's disease (AD) patients vs. age-matched healthy control (CTL) subjects (Ghorbanian et al, 2013 ). The model parameters obtained for the oscillators representing EC and EO EEG signals for CTL and AD patients are compared in order to establish statistically significant, distinct models for AD and CTL subjects under each condition.…”
Section: Introductionmentioning
confidence: 99%