Resting state EEG biomarkers of cognitive decline associated with Alzheimer's disease and mild cognitive impairment.

In this paper, we explore the utility of resting-state EEG measures as potential biomarkers for the detection and assessment of cognitive decline in mild cognitive impairment (MCI) and Alzheimer's disease (AD). Neurophysiological biomarkers of AD derived from EEG and FDG-PET, once characterized...

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Main Authors: Amir H Meghdadi, Marija Stevanović Karić, Marissa McConnell, Greg Rupp, Christian Richard, Joanne Hamilton, David Salat, Chris Berka
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0244180
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spelling doaj-26cdd89a4e60417a8d781d4eb72f7c822021-07-23T04:31:23ZengPublic Library of Science (PLoS)PLoS ONE1932-62032021-01-01162e024418010.1371/journal.pone.0244180Resting state EEG biomarkers of cognitive decline associated with Alzheimer's disease and mild cognitive impairment.Amir H MeghdadiMarija Stevanović KarićMarissa McConnellGreg RuppChristian RichardJoanne HamiltonDavid SalatChris BerkaIn this paper, we explore the utility of resting-state EEG measures as potential biomarkers for the detection and assessment of cognitive decline in mild cognitive impairment (MCI) and Alzheimer's disease (AD). Neurophysiological biomarkers of AD derived from EEG and FDG-PET, once characterized and validated, would expand the set of existing diagnostic molecular biomarkers of AD pathology with associated biomarkers of disease progression and neural dysfunction. Since symptoms of AD often begin to appear later in life, successful identification of EEG-based biomarkers must account for age-related neurophysiological changes that occur even in healthy individuals. To this end, we collected EEG data from individuals with AD (n = 26), MCI (n = 53), and cognitively normal healthy controls stratified by age into three groups: 18-40 (n = 129), 40-60 (n = 62) and 60-90 (= 55) years old. For each participant, we computed power spectral density at each channel and spectral coherence between pairs of channels. Compared to age matched controls, in the AD group, we found increases in both spectral power and coherence at the slower frequencies (Delta, Theta). A smaller but significant increase in power of slow frequencies was observed for the MCI group, localized to temporal areas. These effects on slow frequency spectral power opposed that of normal aging observed by a decrease in the power of slow frequencies in our control groups. The AD group showed a significant decrease in the spectral power and coherence in the Alpha band consistent with the same effect in normal aging. However, the MCI group did not show any significant change in the Alpha band. Overall, Theta to Alpha ratio (TAR) provided the largest and most significant differences between the AD group and controls. However, differences in the MCI group remained small and localized. We proposed a novel method to quantify these small differences between Theta and Alpha bands' power using empirically derived distributions of spectral power across the time domain as opposed to averaging power across time. We defined Power Distribution Distance Measure (PDDM) as a distance measure between probability distribution functions (pdf) of Theta and Alpha power. Compared to average TAR, using PDDF enhanced the statistical significance, the effect size, and the spatial distribution of significant effects in the MCI group. We designed classifiers for differentiating individual MCI and AD participants from age-matched controls. The classification performance measured by the area under ROC curve after cross-validation were AUC = 0.85 and AUC = 0.6, for AD and MCI classifiers, respectively. Posterior probability of AD, TAR, and the proposed PDDM measure were all significantly correlated with MMSE score and neuropsychological tests in the AD group.https://doi.org/10.1371/journal.pone.0244180
collection DOAJ
language English
format Article
sources DOAJ
author Amir H Meghdadi
Marija Stevanović Karić
Marissa McConnell
Greg Rupp
Christian Richard
Joanne Hamilton
David Salat
Chris Berka
spellingShingle Amir H Meghdadi
Marija Stevanović Karić
Marissa McConnell
Greg Rupp
Christian Richard
Joanne Hamilton
David Salat
Chris Berka
Resting state EEG biomarkers of cognitive decline associated with Alzheimer's disease and mild cognitive impairment.
PLoS ONE
author_facet Amir H Meghdadi
Marija Stevanović Karić
Marissa McConnell
Greg Rupp
Christian Richard
Joanne Hamilton
David Salat
Chris Berka
author_sort Amir H Meghdadi
title Resting state EEG biomarkers of cognitive decline associated with Alzheimer's disease and mild cognitive impairment.
title_short Resting state EEG biomarkers of cognitive decline associated with Alzheimer's disease and mild cognitive impairment.
title_full Resting state EEG biomarkers of cognitive decline associated with Alzheimer's disease and mild cognitive impairment.
title_fullStr Resting state EEG biomarkers of cognitive decline associated with Alzheimer's disease and mild cognitive impairment.
title_full_unstemmed Resting state EEG biomarkers of cognitive decline associated with Alzheimer's disease and mild cognitive impairment.
title_sort resting state eeg biomarkers of cognitive decline associated with alzheimer's disease and mild cognitive impairment.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2021-01-01
description In this paper, we explore the utility of resting-state EEG measures as potential biomarkers for the detection and assessment of cognitive decline in mild cognitive impairment (MCI) and Alzheimer's disease (AD). Neurophysiological biomarkers of AD derived from EEG and FDG-PET, once characterized and validated, would expand the set of existing diagnostic molecular biomarkers of AD pathology with associated biomarkers of disease progression and neural dysfunction. Since symptoms of AD often begin to appear later in life, successful identification of EEG-based biomarkers must account for age-related neurophysiological changes that occur even in healthy individuals. To this end, we collected EEG data from individuals with AD (n = 26), MCI (n = 53), and cognitively normal healthy controls stratified by age into three groups: 18-40 (n = 129), 40-60 (n = 62) and 60-90 (= 55) years old. For each participant, we computed power spectral density at each channel and spectral coherence between pairs of channels. Compared to age matched controls, in the AD group, we found increases in both spectral power and coherence at the slower frequencies (Delta, Theta). A smaller but significant increase in power of slow frequencies was observed for the MCI group, localized to temporal areas. These effects on slow frequency spectral power opposed that of normal aging observed by a decrease in the power of slow frequencies in our control groups. The AD group showed a significant decrease in the spectral power and coherence in the Alpha band consistent with the same effect in normal aging. However, the MCI group did not show any significant change in the Alpha band. Overall, Theta to Alpha ratio (TAR) provided the largest and most significant differences between the AD group and controls. However, differences in the MCI group remained small and localized. We proposed a novel method to quantify these small differences between Theta and Alpha bands' power using empirically derived distributions of spectral power across the time domain as opposed to averaging power across time. We defined Power Distribution Distance Measure (PDDM) as a distance measure between probability distribution functions (pdf) of Theta and Alpha power. Compared to average TAR, using PDDF enhanced the statistical significance, the effect size, and the spatial distribution of significant effects in the MCI group. We designed classifiers for differentiating individual MCI and AD participants from age-matched controls. The classification performance measured by the area under ROC curve after cross-validation were AUC = 0.85 and AUC = 0.6, for AD and MCI classifiers, respectively. Posterior probability of AD, TAR, and the proposed PDDM measure were all significantly correlated with MMSE score and neuropsychological tests in the AD group.
url https://doi.org/10.1371/journal.pone.0244180
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