| Literature DB >> 30405860 |
Raymundo Cassani1, Mar Estarellas1,2, Rodrigo San-Martin3, Francisco J Fraga4, Tiago H Falk1.
Abstract
Alzheimer's disease (AD) is a neurodegenerative disorder that accounts for nearly 70% of the more than 46 million dementia cases estimated worldwide. Although there is no cure for AD, early diagnosis and an accurate characterization of the disease progression can improve the quality of life of AD patients and their caregivers. Currently, AD diagnosis is carried out using standardized mental status examinations, which are commonly assisted by expensive neuroimaging scans and invasive laboratory tests, thus rendering the diagnosis time consuming and costly. Notwithstanding, over the last decade, electroencephalography (EEG) has emerged as a noninvasive alternative technique for the study of AD, competing with more expensive neuroimaging tools, such as MRI and PET. This paper reports on the results of a systematic review on the utilization of resting-state EEG signals for AD diagnosis and progression assessment. Recent journal articles obtained from four major bibliographic databases were analyzed. A total of 112 journal articles published from January 2010 to February 2018 were meticulously reviewed, and relevant aspects of these papers were compared across articles to provide a general overview of the research on this noninvasive AD diagnosis technique. Finally, recommendations for future studies with resting-state EEG were presented to improve and facilitate the knowledge transfer among research groups.Entities:
Mesh:
Year: 2018 PMID: 30405860 PMCID: PMC6200063 DOI: 10.1155/2018/5174815
Source DB: PubMed Journal: Dis Markers ISSN: 0278-0240 Impact factor: 3.434
Eligibility criteria.
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| Studies using EEG to assess AD progression |
| Studies using EEG to AD diagnosis |
| Studies using EEG to perform differential diagnosis between AD and other dementias |
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| Studies on AD-related epilepsy |
| Studies without resting-state EEG recordings |
| Studies focused on dementias other than AD |
| Studies focused on the effects of AD treatment drugs |
| Studies on animals (nonhuman studies) |
| Studies not treating MCI as a prodromal stage for AD |
| Review articles |
Extracted items from each article.
| Category | Data item | Description |
|---|---|---|
| Study rationale | Study goal | Application or aim of the article |
| Other dementias | Differential diagnosis of different types of dementias with respect to AD | |
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| Study population | Sample size | Size of the population in the study |
| Group matching | Groups matched (or not) by sample size, age, gender, and education level | |
| Following of MCI participants | Follow-up of MCI participants, when required | |
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| Experiment setup | Other modalities | Other modalities utilized beside EEG |
| Number of electrodes and layout | Electrode number and positioning system | |
| External channels | Report the acquisition (or not) of EOG and ECG signals | |
| Resting-state recording state | EEG recorded only in resting state or with task performing too | |
| Experiment duration | Session duration of each experiment | |
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| EEG processing | Preprocessing | Survey on preprocessing techniques |
| EEG bandwidth | Bandpass filtering of EEG signal and type of filters used | |
| Artifact handling | Artifact rejection and/or correction methods | |
| Effective sampling frequency | Sampling frequency of EEG data for feature extraction | |
| EEG epoching | Epoching process, length, and quantity of epochs | |
| Effective EEG signal duration | Length of EEG signal used for feature extraction | |
| Source localization | Survey on source localization methods when required | |
| EEG feature types | Survey on the types of EEG features used | |
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| Reported outcomes | Discriminative studies | Methods for discriminative task and reported results |
| Assessment studies | Methods for assessment task and reported results | |
| Reported limitations | Limitations reported in the study | |
Figure 1Diagram showing the selection process of articles from PubMed, IEEE Xplore, Web of Science, and Scopus.
Figure 2Distribution of selected articles according to world regions.
Figure 3Number of reviewed articles by publication year.
Study goal description.
| Study type | Study goal | Articles |
|---|---|---|
| Diagnosis (72) | AD vs Nold (48) | [ |
| MCI vs AD (2) | [ | |
| MCI vs Nold (4) | [ | |
| AD vs Nold vs others (6) | [ | |
| AD vs MCI vs Nold (12) | [ | |
|
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| Progression assessment (18) | AD (3) | [ |
| AD vs Nold (1) | [ | |
| MCI vs AD (3) | [ | |
| MCI (11) | [ | |
|
| ||
| Diagnosis and progression assessment (22) | AD vs Nold (11) | [ |
| AD vs MCI vs Nold (4) | [ | |
| AD vs Nold vs others (2) | [ | |
| AD vs others (1) | [ | |
| MCI vs AD (3) | [ | |
Combination of AD diagnosis with other dementias.
| Type of dementia | Articles |
|---|---|
| VaD | [ |
| FtD/FTLD | [ |
| DLB | [ |
| PDD | [ |
| PDD/DLB | [ |
| PDD/DLB/FtD | [ |
| PDD/DLB/FtD/VaD | [ |
VaD: vascular dementia; FtD: frontotemporal dementia; FTLD: frontotemporal lobar degeneration; DLB: Lewy body dementia; PDD: Parkison's disease dementia.
Figure 4Number of subject histogram.
Datasets used repeatedly in the selected studies.
| Datasets used in more than one study | Articles |
|---|---|
| 22 subjects (11 AD, 11 Nold) | 4 [ |
| 24 subjects (10 mild AD, 14 Nold) | 2 [ |
| 27 subjects (20 probable AD, 7 Nold) | 3 [ |
| 28 subjects (14 probable AD, 14 Nold) | 3 [ |
| 34 subjects (22 probable AD, 12 Nold) | 2 [ |
| 34 subjects (17 AD, 17 Nold) | 3 [ |
| 48 subjects (17 early AD, 16 MCI, 15 Nold) | 4 [ |
| 62 subjects (3 databases: (a) 17 mAD, 24 Nold; (b) 5 mAD and 5 Nold; (c) 8 mAD and 3 Nold) | 3 [ |
| 74 subjects (74 MCI) | 9 [ |
| 79 subjects (79 probable AD) | 4 [ |
| 220 subjects (120 AD, 100 Nold) | 2 [ |
Group matching according to the number of subjects, age, gender, and education.
| Group matching | Articles |
|---|---|
| One group only (15) | [ |
| Number, age, gender, education (8) | [ |
| Number, age, gender (10) | [ |
| Number, age, education (7) | [ |
| Age, gender, education (4) | [ |
| Number, age (18) | [ |
| Number, gender (2) | [ |
| Number, education (3) | [ |
| Age, gender (3) | [ |
| Age, education (3) | [ |
| Number (8) | [ |
| Age (12) | [ |
| Not paired or no information (19) | [ |
Combination of EEG with other modalities.
| Modality | Biomarkers | Articles |
|---|---|---|
| MRI (11) | Cortical thickness, hippocampal atrophy, and other cortical density alterations | [ |
| MRI and SPECT (5) | Regional blood perfusion and other cortical density alterations | [ |
| SPECT (1) | Anomalous activities of cerebral neurons in NAT (neuronal activity topography) | [ |
| MRI and genetic (1) | Comparison of Genetic (ApoE) and neuroimaging alterations | [ |
| Genetic data (1) | ApoE genotype; PSEN1 E280A mutation | [ |
| PET (1) | Disease processes revealed by cortical hypometabolism | [ |
MRI: magnetic resonance imaging; SPECT: single-photon emission computed tomography; ApoE: apolipoprotein E; PET: positron emission tomography.
Number of electrodes used by each selected study.
| Electrode | Articles |
|---|---|
| 1–16 (14) | [ |
| 17–32 (89) | [ |
| 33–64 (2) | [ |
| 65–128 (5) | [ |
| 129–256 (2) | [ |
Recording conditions.
| Condition | Articles |
|---|---|
| Resting-awake EC (85) | [ |
| Resting-awake EC + EO (13) | [ |
| Resting-awake EC + EO + sensory stimulus (3) | [ |
| Resting-awake EC + EO + cognitive tasks (8) | [ |
| Resting awake, eye condition not reported (3) | [ |
Signal duration.
| Description | Articles |
|---|---|
|
| [ |
| 5–9 min (39) | [ |
| 10–20 min (17) | [ |
|
| [ |
| Not informed (30) | [ |
Filters.
| Filter/preprocessing | Articles |
|---|---|
| Notch filter for power grid interference (35) | [ |
| Resampling (12) | [ |
| Rereference to common average (28) | [ |
| Interpolation of bad channels (3) | [ |
Different upper limit bandwidths used by the selected EEG studies.
| Upper limit (Hz) | Articles |
|---|---|
| ≤25 (4) | [ |
| 26–50 (57) | [ |
| 51–75 (36) | [ |
| ≥76 (8) | [ |
| Not reported (7) | [ |
Different lower limit bandwidths used by the selected EEG studies.
| Lower limit (Hz) | Articles |
|---|---|
| ≤0.5 (32) | [ |
| 0.5— | [ |
| ≥1 (26) | [ |
| Not reported (18) | [ |
Filter type.
| Filter | Articles |
|---|---|
| FIR (26) | [ |
| HOLS (1) | [ |
| IIR (19) | [ |
| Not reported (68) | [ |
Artifact removal techniques.
| Category | Method | Articles |
|---|---|---|
| Manual (65) | Epoch selection | [ |
| Semiautomated (8) | ICA | [ |
| ICA (IWASOBI) | [ | |
| ICA (JADE) | [ | |
| ICA in a sample and then ICA templates used to automatic removal | [ | |
| ICA and wavelet denoising | [ | |
| Automated (19) | FASTER | [ |
| Notch filter on blink frequency | [ | |
| LR to EMG electrodes | [ | |
| wICA | [ | |
| BSS-SOBI-CCA and wICA | [ | |
| No filtering or no description (20) | — | [ |
BSS-SOBI-CCA: blind source separation based on second-order blind identification and canonical correlation analysis; ICA: independent component analysis; wICA: wavelet ICA; LR: linear regression; EMG: electromyographic.
Sample frequency.
| Frequency (Hz) | Articles |
|---|---|
| 125 or 128 (22) | [ |
| 200 or 256 (60) | [ |
| 500 or 512 (12) | [ |
| 1000 or 1024 (11) | [ |
| Not informed (7) | [ |
Epoch duration.
| Duration (s) | Articles |
|---|---|
| 0.3–1 (8) | [ |
| 1.1-2 (27) | [ |
| 2.1–5 (22) | [ |
| 5.1–10 (21) | [ |
| 10.1–20 (8) | [ |
| 21–70 (7) | [ |
| Not informed (19) | [ |
Number of epochs.
| Number of epochs | Articles |
|---|---|
| 1–3 (12) | [ |
| 4–10 (14) | [ |
| 11–50 (20) | [ |
| 51–150 (20) | [ |
| 151–500 (7) | [ |
| Not informed (39) | [ |
Effective EEG duration.
| EEG duration (s) | Articles |
|---|---|
| 8–30 (12) | [ |
| 31–70 (20) | [ |
| 71–150 (9) | [ |
| 151–300 (20) | [ |
| 301–600 (9) | [ |
| 601–1500 (3) | [ |
| Not informed (39) | [ |
Slowing features.
| Category | Description | Articles |
|---|---|---|
| Current source density | Source localization solutions | [ |
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| Spectral | Barlow's metrics | [ |
| Individual alpha peak (IAP) | [ | |
| Individual alpha3 alpha2 | [ | |
| Individual beta peak | [ | |
| PSD (absolute and relative band power) | [ | |
| PSD (band power ratios) | [ | |
| PSD (central frequency) | [ | |
| PSD (frequency peak in bands) | [ | |
| PSD (mean frequency in bads) | [ | |
| PSD (median frequency in bands) | [ | |
| PSD (modelling parameters) | [ | |
| Wackermann's metrics | [ | |
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| Spectrotemporal | Wavelet (continuous) parameters | [ |
| Wavelet (continuous) sparsification | [ | |
| Wavelet (discrete) parameters | [ | |
| Wavelet maximum frequency | [ | |
Complexity features.
| Category | Description | Articles |
|---|---|---|
| Entropy | Auto mutual information | [ |
| Epoch-based entropy | [ | |
| Fuzzy entropy | [ | |
| Multiscale entropy | [ | |
| Multivariate multiscale entropy | [ | |
| Quadratic sample entropy | [ | |
| Sample entropy | [ | |
| Shannon entropy | [ | |
| Spectral entropy | [ | |
| Tsallis entropy | [ | |
| Wavelet entropy | [ | |
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| Other | Bispectrum analysis | [ |
| Central tendency measure | [ | |
| Correlation dimension | [ | |
| Distance-based LempelZiv complexity (dLZC) | [ | |
| Hjorth activity, mobility, and complexity | [ | |
| Lempel-Ziv complexity | [ | |
| Visibility graphs | [ | |
| Wavelet compression coefficients | [ | |
Synchronization features.
| Group | Description | Articles |
|---|---|---|
| Directed model based | Direct transfer function | [ |
| Direct directed transfer function | [ | |
| Full frequency transfer function | [ | |
| Granger causality | [ | |
| Kullback–Leibler divergence | [ | |
| Lateral asymmetry index (LAI) | [ | |
| Phase slope index (PSI) | [ | |
| Sugihara causality | [ | |
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| Directed model free | Relative wavelet entropy | [ |
| Peak interregional transfer entropy delays (PITED) | [ | |
|
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| Nondirected model based | Coherence | [ |
| Coherence (wavelet) | [ | |
| Correlation | [ | |
| Correlation (amplitude envelopes) | [ | |
| Detrended cross-correlation analysis (DCCA) | [ | |
| Global field synchronization (GFS) | [ | |
| Global phase synchronization | [ | |
| Global synchronization index | [ | |
| Lagged linear connectivity (LLC) | [ | |
| Multivariate phase synchronization (MPS) | [ | |
| Omega complexity | [ | |
| Phase lag index (PLI) | [ | |
| Phase synchrony | [ | |
| S-estimator | [ | |
| Stochastic event synchrony | [ | |
|
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| Nondirected model free | Coherence entropy coefficient | [ |
| Correlation entropy coefficient | [ | |
| Mutual information | [ | |
| Permutation disalignment index | [ | |
| Synchronization likelihood | [ | |
| Wavelet entropy coefficient | [ | |
|
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| Others | Canonical correlation | [ |
| Global field power (GFP) | [ | |
| Graph theory metrics | [ | |
| Static canonical correlation | [ | |
Neromodulatory features.
| Description | Articles |
|---|---|
| Amplitude envelope, spectral analysis | [ |
| Amplitude envelope, statistics | [ |
Nonbiological features.
| Description | Articles |
|---|---|
| ANN extracting spatial content from EEG | [ |
| Back-predictive model | [ |
| Linear predictive model | [ |
| Paraconsistent artificial neural network (PANN) using morphological analysis of EEG | [ |
| Symmetric predictive model | [ |
Classification, statistical analysis, or both.
| Description | Articles |
|---|---|
| Statistical (35) | [ |
| Classification (36) | [ |
| Both (23) | [ |
Statistical analysis strategy in the selected studies.
| Description | Articles |
|---|---|
| ANOVA | [ |
| Anterior hub ratio | [ |
| chi squared | [ |
| Correlation | [ |
| Correlation | [ |
| Correlation | [ |
| Cost function | [ |
| Graph analysis | [ |
| Kruskal-Wallis | [ |
| LDA | [ |
| Lilliefors test | [ |
| Log- | [ |
| Mahalanobis D2 | [ |
| MANCOVA | [ |
| Mann–Whitney | [ |
| MANOVA | [ |
| Mean and standard deviation | [ |
| PCA | [ |
| Quadratic univariate regressions | [ |
| SNK | [ |
LDA: linear discriminant analysis; MANCOVA: multivariate analysis of covariance; SNK: Student–Newman–Keuls.
Feature selection.
| Feature selection methods | Articles |
|---|---|
| AUC maximization | [ |
| BFE | [ |
| Consistency-based filter (CBF), correlation-based feature selection (CFS), filtered subset evaluator (FSE), Chi squared (CS), gain ratio (GR), relief- | [ |
| Correlation-based pursuit | [ |
| FCBF | [ |
| Fit-curve model | [ |
| Genetic | [ |
| Logistic regression | [ |
| Manual | [ |
| OFR | [ |
|
| [ |
| PCA | [ |
| Ranking by Fisher ratio score | [ |
| Reverse sequential feature selection | [ |
| SVD | [ |
| SVM classifier (best performers) | [ |
BFE: best feature extraction; FCBF: fast correlation-based filter; OFR: orthogonal forward regression; SVD: singular value decomposition.
Cross validation methods.
| Description | Articles |
|---|---|
| 5-fold CV | [ |
| 10-fold CV | [ |
| 100-fold CV | [ |
| 500-fold CV | [ |
| Dataset split in train and test set splits | [ |
| LOSO | [ |
| Leave one epoch out | [ |
CV: cross-validation; LOSO: leave one subject out.
Classifying Strategy.
| Classifier | Articles |
|---|---|
| ANN | [ |
| ANOVA | [ |
| Autoregressive models | [ |
| Back predictive model | [ |
| Decision tree | [ |
| k-nearest neighbor | [ |
| LDA | [ |
| LR | [ |
| LRA | [ |
| Nave Bayes | [ |
| PANN | [ |
| Parzen classifier | [ |
| PCA | [ |
| PDM-based model | [ |
| PNN | [ |
| QDA | [ |
| ROC | [ |
| SMO | [ |
| SVM | [ |
| Takagi-Sugeno neurofuzzy inference system | [ |
ANN: artificial neural network; LDA: linear discriminant analysis; LR: logistic regression; LRA: logistic regression analyses; PANN: paraconsistent artificial neural network; PDM: principal dynamic mode; PNN: probabilistic neural network; QDA: quadratic discriminant analysis; SMO: sequential minimal optimization.
AD progression assessment.
| Description | Articles |
|---|---|
| ANOVA | [ |
| ANCOVA | [ |
| ANOVA 2 way | [ |
| Chi squared | [ |
| Correlation | [ |
| Correlation (Pearson) | [ |
| Correlation partial | [ |
| Correlation (Spearman) | [ |
| Genetic search multiple markers | [ |
| K-means | [ |
| LDA | [ |
| Linear regression | [ |
| Mahalanobis D2 | [ |
| Mann–Whitney | [ |
| Quadratic ordinary least squares regression models | [ |
| R2 | [ |
| Scheffes test | [ |
|
| [ |
|
| [ |
| Wilcoxon rank-sum test | [ |
ANCOVA: analysis of covariance.
Reported limitations.
| Category | Description | Articles |
|---|---|---|
| Population | Small number of subjects in the study | [ |
| Merged databases are different due to local implementations | [ | |
| Lack of different stages in AD cohort | [ | |
| AD cohort includes participants taking antidementia drugs | [ | |
| Lack of population matching, age, gender, and/or education | [ | |
| Possible preclinical AD in N cohort | [ | |
| Prodromal AD was applied in aMCI with A | [ | |
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| EEG experiment setup | No severe AD as hard to perform EEG recordings | [ |
| Presence of dominant alpha activity during EC condition | [ | |
| Differences in datasets due manual artifact handling | [ | |
| Low number of electrodes for source localization methods | [ | |
| Low number of electrodes for connectivity analysis | [ | |
| Low number electrodes for advanced AAR methods | [ | |
|
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| Reported results | Lack of research for other dementia types | [ |
| Lack of longitudinal approach for N, MCI, AD populations | [ | |
Recommendations.
| Recommendations for future EEG-based AD studies |
| Provide detailed population characteristics |
| Describe how the AD diagnosis was performed |
| Mention whether the MCI participants were followed-up |
| Detail EEG experiment in duration and phases |
| Use standard EEG layouts |
| Mention not only the quantity of channels but their location |
| Define EEG processing in more detail |
| Use standard features such as PSD features as baseline |
| Describe artifact handling strategies |