Sugihara causality analysis of scalp EEG for detection of early Alzheimer's disease

Recently, Sugihara proposed an innovative causality concept, which, in contrast to statistical predictability in Granger sense, characterizes underlying deterministic causation of the system. This work exploits Sugihara causality analysis to develop novel EEG biomarkers for discriminating normal ag...

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Main Authors: Joseph C. McBride, Xiaopeng Zhao, Nancy B. Munro, Gregory A. Jicha, Frederick A. Schmitt, Richard J. Kryscio, Charles D. Smith, Yang Jiang
Format: Article
Language:English
Published: Elsevier 2015-01-01
Series:NeuroImage: Clinical
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2213158214001909
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spelling doaj-ac9a4f3158444f558b8b08b468188a4e2020-11-24T21:38:18ZengElsevierNeuroImage: Clinical2213-15822015-01-017C25826510.1016/j.nicl.2014.12.005Sugihara causality analysis of scalp EEG for detection of early Alzheimer's diseaseJoseph C. McBride0Xiaopeng Zhao1Nancy B. Munro2Gregory A. Jicha3Frederick A. Schmitt4Richard J. Kryscio5Charles D. Smith6Yang Jiang7Department of Mechanical, Aerospace and Biomedical Engineering, Knoxville, TN 37996, USADepartment of Mechanical, Aerospace and Biomedical Engineering, Knoxville, TN 37996, USAOak Ridge National Laboratory, Oak Ridge, TN 37831-6418, USASanders-Brown Center on Aging, University of Kentucky College of Medicine, Lexington, KY, USASanders-Brown Center on Aging, University of Kentucky College of Medicine, Lexington, KY, USASanders-Brown Center on Aging, University of Kentucky College of Medicine, Lexington, KY, USASanders-Brown Center on Aging, University of Kentucky College of Medicine, Lexington, KY, USASanders-Brown Center on Aging, University of Kentucky College of Medicine, Lexington, KY, USA Recently, Sugihara proposed an innovative causality concept, which, in contrast to statistical predictability in Granger sense, characterizes underlying deterministic causation of the system. This work exploits Sugihara causality analysis to develop novel EEG biomarkers for discriminating normal aging from mild cognitive impairment (MCI) and early Alzheimer's disease (AD). The hypothesis of this work is that scalp EEG based causality measurements have different distributions for different cognitive groups and hence the causality measurements can be used to distinguish between NC, MCI, and AD participants. The current results are based on 30-channel resting EEG records from 48 age-matched participants (mean age 75.7 years) — 15 normal controls (NCs), 16 MCI, and 17 early-stage AD. First, a reconstruction model is developed for each EEG channel, which predicts the signal in the current channel using data of the other 29 channels. The reconstruction model of the target channel is trained using NC, MCI, or AD records to generate an NC-, MCI-, or AD-specific model, respectively. To avoid over fitting, the training is based on the leave-one-out principle. Sugihara causality between the channels is described by a quality score based on comparison between the reconstructed signal and the original signal. The quality scores are studied for their potential as biomarkers to distinguish between the different cognitive groups. First, the dimension of the quality scores is reduced to two principal components. Then, a three-way classification based on the principal components is conducted. Accuracies of 95.8%, 95.8%, and 97.9% are achieved for resting eyes open, counting eyes closed, and resting eyes closed protocols, respectively. This work presents a novel application of Sugihara causality analysis to capture characteristic changes in EEG activity due to cognitive deficits. The developed method has excellent potential as individualized biomarkers in the detection of pathophysiological changes in early-stage AD. http://www.sciencedirect.com/science/article/pii/S2213158214001909Early Alzheimer's diseaseMild cognitive impairmentEEG-based diagnosisCausality analysis
collection DOAJ
language English
format Article
sources DOAJ
author Joseph C. McBride
Xiaopeng Zhao
Nancy B. Munro
Gregory A. Jicha
Frederick A. Schmitt
Richard J. Kryscio
Charles D. Smith
Yang Jiang
spellingShingle Joseph C. McBride
Xiaopeng Zhao
Nancy B. Munro
Gregory A. Jicha
Frederick A. Schmitt
Richard J. Kryscio
Charles D. Smith
Yang Jiang
Sugihara causality analysis of scalp EEG for detection of early Alzheimer's disease
NeuroImage: Clinical
Early Alzheimer's disease
Mild cognitive impairment
EEG-based diagnosis
Causality analysis
author_facet Joseph C. McBride
Xiaopeng Zhao
Nancy B. Munro
Gregory A. Jicha
Frederick A. Schmitt
Richard J. Kryscio
Charles D. Smith
Yang Jiang
author_sort Joseph C. McBride
title Sugihara causality analysis of scalp EEG for detection of early Alzheimer's disease
title_short Sugihara causality analysis of scalp EEG for detection of early Alzheimer's disease
title_full Sugihara causality analysis of scalp EEG for detection of early Alzheimer's disease
title_fullStr Sugihara causality analysis of scalp EEG for detection of early Alzheimer's disease
title_full_unstemmed Sugihara causality analysis of scalp EEG for detection of early Alzheimer's disease
title_sort sugihara causality analysis of scalp eeg for detection of early alzheimer's disease
publisher Elsevier
series NeuroImage: Clinical
issn 2213-1582
publishDate 2015-01-01
description Recently, Sugihara proposed an innovative causality concept, which, in contrast to statistical predictability in Granger sense, characterizes underlying deterministic causation of the system. This work exploits Sugihara causality analysis to develop novel EEG biomarkers for discriminating normal aging from mild cognitive impairment (MCI) and early Alzheimer's disease (AD). The hypothesis of this work is that scalp EEG based causality measurements have different distributions for different cognitive groups and hence the causality measurements can be used to distinguish between NC, MCI, and AD participants. The current results are based on 30-channel resting EEG records from 48 age-matched participants (mean age 75.7 years) — 15 normal controls (NCs), 16 MCI, and 17 early-stage AD. First, a reconstruction model is developed for each EEG channel, which predicts the signal in the current channel using data of the other 29 channels. The reconstruction model of the target channel is trained using NC, MCI, or AD records to generate an NC-, MCI-, or AD-specific model, respectively. To avoid over fitting, the training is based on the leave-one-out principle. Sugihara causality between the channels is described by a quality score based on comparison between the reconstructed signal and the original signal. The quality scores are studied for their potential as biomarkers to distinguish between the different cognitive groups. First, the dimension of the quality scores is reduced to two principal components. Then, a three-way classification based on the principal components is conducted. Accuracies of 95.8%, 95.8%, and 97.9% are achieved for resting eyes open, counting eyes closed, and resting eyes closed protocols, respectively. This work presents a novel application of Sugihara causality analysis to capture characteristic changes in EEG activity due to cognitive deficits. The developed method has excellent potential as individualized biomarkers in the detection of pathophysiological changes in early-stage AD.
topic Early Alzheimer's disease
Mild cognitive impairment
EEG-based diagnosis
Causality analysis
url http://www.sciencedirect.com/science/article/pii/S2213158214001909
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