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Table 3 Applications of correlation analyses

From: The applied principles of EEG analysis methods in neuroscience and clinical neurology

References

Data type

Subjects

Method

Disease/state

Application

Effect evaluation

Kang et al. [73]

EEG

SHHS dataset

CORR

Sleep stages

Analyzed the severity of symptoms in patients with OSA using the CORR method

Variations in microstructures were identified between the PSG-derived sleep EEG of non-OSA participants and those with varying severities of OSA in this study

Dauwels et al. [74]

EEG

MCI (n = 25)

Normal (n = 56)

CORR

AD

Employed CORR to assess early symptoms of AD

Stochastic event synchrony was proposed as a feature to differentiate MCI patients from age-matched controls, achieving a leave-one-out classification rate of 83%, as reported in this article

Yasuhara [75]

EEG

Autistic children (n = 1014)

CORR

ASD

Used CORR to analyze the relationship between EEG abnormalities and ASD

The article suggested a correlation between ASD and dysfunction in the mirror neuron system

Islam et al. [76]

EEG

Normal (males = 16, females = 16)

CORR

Emotion

Integrated the CORR method with a CNN to identify emotions

Maximum accuracies of 78.22% on valence and 74.92% on arousal were attained using the internationally authorized DEAP dataset in this study

Sheorajpanday et al. [77]

EEG

Stroke (n = 110)

CORR

Stroke

Investigated the correlation between the EEG symmetry index and the Rankin scale and determined the prognostic value of EEG signals in the diagnosis of stroke

Prognostic value for disability, dependency, and death after 6 months in the subacute setting of ischemic stroke was attributed to EEG, according to this article

Alba et al. [78]

EEG

ADHD (n = 10)

Normal (n = 12)

COH

ADHD

Adopted COH to analyze the functional connectivity of EEG in patients with ADHD under different resting states

Global connectivity of each region and its temporal variability were posited as better reflections of the underlying neural dysfunctions producing ADHD in this article

Carrasco-Gomez et al. [79]

EEG

Postanoxic coma (n = 594)

COH

Postanoxic coma

Assessed EEG functional connectivity in the context of post-anoxic coma through COH

The best non-coupling-based model, using data at 12 h and 48 h, achieved a sensitivity of 32% at 100% specificity, as claimed in this article

Barry et al. [80]

EEG

Normal (boys = 40, girls = 40)

COH

Developmental trends in normal children

Employed COH to analyze brain development in normal children of different ages and genders

This article asserted that EEG coherences in normal children aged 8 to 12 systematically develop with age

Locatelli et al. [81]

EEG

AD (n = 10)

Normal (n = 10)

COH

AD

Analyzed the EEG signal characteristics of AD

Alpha coherence decrease was linked to alterations in cortico-cortical connections, while delta coherence increase was associated with the lack of influence of subcortical cholinergic structures on cortical electrical activity, as claimed in this article

Coben et al. [82]

EEG

ASD (n = 20)

Normal (n = 20)

COH

ASD

Found neural underconnectivity in patients with ASD through COH, which is consistent with the results of other methods

Dysfunctional integration of frontal and posterior brain regions, along with a pattern of neural underconnectivity, was suggested in autistic subjects, as reported in this article

Catarino et al. [83]

EEG

ASC (n = 15)

Normal (n = 15)

WTC

ASC

Probed task-related functional connections in the setting of the autism spectrum using the WTC algorithm

Impairment in task differentiation in individuals with ASC relative to typically developing individuals was reflected in this article

Omidvarnia et al. [84]

EEG

Epilepsy (n = 7)

WTC

Epilepsy

Discussed whether there was a direct correlation between EEG and regional hemodynamic brain connectivity changes in focal epilepsy

A strong time-varying relationship between local fMRI connectivity and interictal EEG power in focal epilepsy was claimed in this article

Khan et al. [85]

EEG

MDD (n = 30)

Normal (n = 30)

WTC

MDD

Studied the diagnosis of depression using the WTC approach

An accuracy of 98.1%, sensitivity of 98.0%, and specificity of 98.2% were achieved in this article, with another method yielding 100% accuracy, sensitivity, and specificity

Sankari et al. [86]

EEG

AD (n = 20)

WTC

AD

Utilized the WTC method to explore the diagnosis of AD

WTC was proposed as a powerful tool to differentiate between healthy older individuals and probable AD patients in this article

Briels et al. [87]

EEG

SCD (n = 399)

AD (n = 410)

PLV/PLI

AD

Analyzed the reproducibility of EEG functional connections in AD using PLV/PLI

In alpha/beta bands and PLI and wPLI in the theta band were highlighted for providing valid insights into disease-associated changes, correlating with disease severity, as indicated in this study

Olejarczyk et al. [88]

EEG

SZ (males = 7, females = 7)

Normal (males = 7, females = 7)

PLV/PLI

SZ

Assessed brain connectivity in patients with SZ using PLV/PLI

Comparing different connectivity measures using graph-based indices for each frequency band separately was suggested as a useful tool in the study of connectivity disorders, such as SZ

Wang et al. [89]

EEG

DEAP dataset

Normal (males = 7, females = 8)

PLV/PLI

Emotion

Explored the dynamics of rich-club structures in the brain during emotional changes, utilizing dynamic PLV brain networks and ReliefF algorithm to derive emotionally relevant features for accurate emotion recognition

Rich-club composition with subtle temporal variations was revealed, emphasizing the importance of small-scale structure connections in distinguishing emotions, achieving high accuracy (86.11% and 87.92%) in valence dimension validation on DEAP and SEED datasets

Huang et al. [90]

EEG

CAP dataset

PLV/PLI

Sleep stages

Highlighted the importance of exploring global information exchange between brain regions for improved sleep evaluation and disease diagnosis

High classification accuracy (96.91% intra-subject, 96.14% inter-subject) in sleep stage classification surpassed the performance of decision-level and hybrid fusion methods in this study

Zuchowicz et al. [91]

EEG

MDD (n = 8)

BP (n = 10)

PLV/PLI

MDD

Explored the impact of repeated transcranial magnetic stimulation on patients with depression through the PLV/PLI approach

PLV analysis was indicated as a potential indicator of the response to depression treatment, enhancing therapy effectiveness in this research

Chen et al. [92]

EEG

ADHD (girls = 9)

Normal (n = 51)

MI

ADHD

Adopted MI to extract the brain network of children with ADHD

A convincing performance with an accuracy of 94.67% regarding the test data was achieved in this article

Aydin et al. [93]

EEG

Normal

MI

Sleep stages

Analyzed the EEG of insomnia patients using MI

The level of cortical hemispheric connectivity was claimed to be strongly associated with sleep disorders in this article

Piho et al. [94]

EEG

DEAP dataset

MAHNOB dataset

MI

Emotion

Determined emotion recognition features through MI

Significant improvement in emotion recognition accuracy was demonstrated in experimental results on publicly available datasets, as claimed in this article

Hassan et al. [95]

EEG

Bonn dataset

CHB-MIT dataset

MI

Epilepsy

Applied MI to identify individual features for epileptic seizure detection

Significant performance improvement compared to recent state-of-the-art methods was reported in this article

Yin et al. [96]

EEG

SZ (positive = 14, negative = 14)

Normal (n = 14)

MI

SZ

Analyzed brain functional connectivity in patients with SZ using the MI approach

Information interactions in SZ patients were claimed to be fewer than in normal controls, with positive SZ exhibiting more interactions than negative SZ, along with slower and less efficient information transfer between brain regions, according to this article

Sanz-García et al. [97]

EEG

SAH (n = 21)

GC

Subarachnoid hemorrhage

Used the GC algorithm to determine the causal relationship between EEG activity and changes in ICP in neurocritical care patients

A significant GC statistic from EEG activity to ICP was found during 37.88% of the analyzed time, with typical lags of 25–50 s between them, as reported in this article

de Tommaso et al. [98]

EEG

Migraine (males = 3, females = 28)

GC

Migraine

Adopted the GC algorithm to explore the functional connectivity of EEG signals in migraine patients responding to laser stimulation

Brain network analysis was suggested to aid in understanding subtle changes in pain processing under laser stimuli in migraine patients in this article

Nicolaou et al. [99]

EEG

Normal (males = 21)

GC

Anesthetized

Utilized the GC algorithm to distinguish between “awake” and “anesthetized” states

Features derived from GC estimates resulted in the classification of awake and "anesthetized" states in 21 patients with maximum average accuracies of 0.98 and 0.95, respectively, according to this article

Nicolaou et al. [100]

EEG

Normal (males = 21)

GC

Anesthetized

Utilized the GC algorithm to distinguish between “awake” and “anesthetized” states

The methodology of GC analysis of EEG data was claimed to carry implications for integrated information and causal density theories of consciousness in this article

Barrett et al. [101]

EEG

Normal (n = 7)

GC

Anesthetized

Investigated propofol-induced anesthesia using the GC algorithm

Significant increases in bidirectional GC during loss of consciousness, especially in the beta and gamma frequency ranges, were claimed in this article

Coben et al. [102]

EEG

Epilepsy (n = 2)

GC

Seizure location

Analyzed brain functional connectivity in epilepsy through the GC algorithm

Hypercoupling near the seizure foci and low causality across nearby and associated neuronal pathways were suggested in this article

Chen et al. [103]

EEG

MCI (n = 46)

AD (n = 43)

MCI and AD

CFC

Analyzed resting state EEG in patients with MCI and AD using CFC

Alterations in theta-gamma coupling in the temporal lobe were claimed to become progressively obvious during disease progression, serving as a valuable indicator of MCI and AD pathology, as suggested in this article

Lynn et al. [104]

EEG

Not reported

SZ

CFC

Analyzed the working memory of schizophrenic patients using CFC

Formal testing of theta-gamma interaction was proposed as imperative in this article

Papadaniil et al. [105]

EEG

Normal (males = 14)

Auditory Perception

CFC

Used CFC to study auditory perception tasks

Stronger coupling in the delta band, closely linked to sensory processing, was observed and claimed in this article

Park et al. [106]

EEG

Normal

visual memories

CFD

Used CFD to study the formation of visual memory

Encoding of visual information reflecting a state determined by the interaction between alpha and gamma activity was asserted in this article

  1. AD Alzheimer’s disease, ADHD attention deficit hyperactivity disorder, ASC autism spectrum condition, ASD autism spectrum disorder, CFC cross-frequency coupling, CFD cross-frequency directionality, CHB-MIT Children’s Hospital Boston and the Massachusetts Institute of Technology, COH coherence, CORR correlation, DEAP database for emotion analysis using physiological signals, EEG electroencephalography, fMRI functional magnetic resonance imaging, GC granger causality, ICP intracranial pressure, MAHNOB Multimodal Database for Affect Recognition and Implicit Tagging, MCI mild cognitive impairment, MDD major depressive disorder, MI mutual information, OSA obstructive sleep apnea, PLV/PLI phase lag value/index, PSG polysomnography, SEED Shanghai Jiao Tong University emotion EEG dataset, SHHS sleep heart health study, SZ schizophrenia, wPLI weighted phase lag index, WTC wavelet coherence