Literature DB >> 29928121

Electroencephalogram alpha asymmetry in patients with depressive disorders: current perspectives.

Andreas Kurt Kaiser1, Maria-Theresa Gnjezda1, Stephanie Knasmüller1, Wolfgang Aichhorn2.   

Abstract

PURPOSE: Electroencephalogram (EEG) alpha asymmetry (AA) in depressive disorders has been of interest over the last few decades, but it continues to remain unclear whether EEG AA can discriminate between healthy and depressive individuals.
MATERIALS AND METHODS: A systematic literature search for papers addressing EEG AA using the keywords alpha asymmetry, depression, and EEG was performed in PubMed. All studies were checked for sample size, gender, handedness, reference, recording protocol, EEG band range, impedance, type of analysis, drugs, and comorbidity.
RESULTS: A total of 61 articles were found, of which 44 met our inclusion criteria. They have been consecutively analyzed in respect of methodology and results. Approximately 25% (11/44) of the studies did not mention or ignored handedness, 41% (18/44) of the studies used data with only self-reported handedness, and only 34.1% (15/44) of all studies tested handedness. Only 35% (15/44) of the studies reported pharmacological treatment, and only 35% (15/44) of the studies controlled for medication. A total of 52% (23/44) of the studies reported comorbidity, and only 30% (13/44) of the studies controlled for comorbidity. Only 29.6% (13/44) of the studies reported education. In all, 30.5% (13/44) of the studies analyzed group differences and correlations, while 15.9 (7/44) of the studies used only correlational analyses. A total of 52.3% (23/44) of the studies analyzed only group differences. Alpha range was fixed (8-13 Hz) in 59.1% (26/44) of all studies. Reference to common average was used in seven of 44 studies (15.9%). In all, nine of 44 (20.5%) studies used the midline central position as reference, 22 of 44 (50%) studies used the ear or the mastoid as reference, and four of 44 (9.1%) studies used the nose as reference.
CONCLUSION: Discriminative power of EEG AA for depressed and healthy controls remains unclear. A systematic analysis of 44 studies revealed that differences in methodology and disregarding proper sampling are problematic. Ignoring handedness, gender, age, medication, and comorbidity could explain inconsistent findings. Hence, we formulated a guideline for requirements for future studies on EEG AA in order to allow for better comparisons.

Entities:  

Keywords:  EEG; alpha asymmetry; depression; depressive disorders; electroencephalogram; review

Year:  2018        PMID: 29928121      PMCID: PMC6001846          DOI: 10.2147/NDT.S137776

Source DB:  PubMed          Journal:  Neuropsychiatr Dis Treat        ISSN: 1176-6328            Impact factor:   2.570


Introduction

Over the last few decades, a lot of research concerning electroencephalogram (EEG) alpha asymmetry (AA) in depressive disorders (DD) has been conducted. EEG is of interest in respect of diagnosis of DD, with a special focus on frontal EEG AA,1,2 as it is believed to be a useful biomarker for depression.1–3 EEG AA is usually calculated by subtracting the right-side EEG power estimates from the respective counterpart on the other side. While normal controls have more right-sided frontal alpha power, depressive patients seem to have comparatively higher left frontal alpha power.1,2,4 Cortical activity is related to reduced EEG power, which is reflected in left frontal hypoactivation in depressed subjects and as a deficit in approach mechanisms.5 On the other hand, higher alpha power could be interpreted as correlate of active inhibition rather than cognitive idleness.6–8 Several meta-analyses attempted to shed light on the usefulness of EEG AA for diagnostic purposes.9,10 While Gold et al8 concluded that there is sufficient reliability of frontal AA, correlations with depression scales were small and nonsignificant. The most recent meta-analysis including 883 major depressed patients and 2,161 controls found only a nonsignificant effect size for EEG AA in respect of major DD.10 Gender, age, and severity of depression were especially identified as covariates of EEG AA.10 While many studies focus on depressive symptoms, there are, however, several subtypes of DD in terms of symptoms, duration, and etiology. In clinical routine, DD are diagnosed by a physician using ICD-10,11 Diagnostic and Statistical Manual of Mental Disorders, Fourth Edition (DSM-IV),12 or Diagnostic and Statistical Manual of Mental Disorders, Fifth Edition (DSM-V)13 criteria. Depression scales are common for further specification of symptomatology and as diagnostic tools. Another issue worth considering is the fact that most studies include only young patients,14 and studies including older individuals were not able to replicate the diagnostic validity of EEG AA.15–17 One major problem in this context might be publication bias, which makes it hard to publish negative results on EEG AA and leads to overinterpretation of results. Another interesting aspect is the fact that most studies deal with female individuals and not with males. Since frontal AA was found to be more consistent in women,18 many studies focus only on females. While age and gender data are easily obtained, handedness needs specific testing. Simple verbal information about the presumed handedness does not give valid information about hemispheric lateralization. The Edinburgh Handedness Inventory19 can be used for proper documentation. Jesulola et al20 did not report handedness and argued that hemispheric brain dominance is not only determined by handedness. Approximately 61%–70% of left-handed people have left hemispheric dominance.21,22 As mentioned before, age seems to be a covariate of EEG AA, which raises the question if cognition is also a covariate. Cognition of participants is mostly ignored, although evidence for alpha 1 power correlation with cognitive abilities was found.23 Alpha power and theta power are correlated with memory decline24,25 and cognitive decline.26 Aging must be considered in respect of EEG AA, as there are specific age-related changes that could explain why EEG AA changes are not found in geriatric patients.16 One important theory, the right hemi-aging hypothesis, proposes that the right hemisphere is more affected by age-related changes.27 This kind of hemispheric difference could also affect AA. Cabeza28 established the “hemispheric asymmetry reduction in old adults” model, which assumes that hemispheric asymmetry is reduced during cognitive performance and reflects compensatory mechanisms. A third theory named “compensation-related utilisation of neural circuits hypothesis” states that elderly individuals activate additional brain regions not only from the contralateral hemisphere.29 Closely related to cognitive ability is education, which could be easily ascertained and might as well affect EEG measures. Furthermore, educational biases between groups need to be ruled out in addition to gender, age, and cognition. Even sexual motivation seems to affect frontal AA,30 expressed in a positive relationship between self-reported mental sexual arousal and a more left-sided AA. While most studies report findings on EEG AA, it is hard to find a consensus on what the alpha band range is. Some studies use fixed ranges, while others use individual alpha bands.31 Evidence for age-related individual alpha frequency changes can be found, and also for smaller amplitudes in older adults.32 Controlling for drugs is another important possible confounder in studies on EEG AA. While many studies15,16,85 describe medication taken by the probands, any effects on the recorded EEG are simply ignored. Summarizing the findings on EEG AA, it becomes evident that diagnostic validity is limited. One reason for this limitation could be the poor quality of some studies on EEG AA; also sample selection seems to affect the outcome. The aim of this review was to sum up methods used in studies on EEG AA and discuss potential flaws, which devalue the outcome and cannot help to shed light on the diagnostic validity of EEG AA. Not only handedness, gender, age, and education ought to be addressed but also culture, medication, and cognition need to be considered. A list of minimal requirements needs to be created in order to improve the quality of future studies on EEG AA and make the results comparable.

Materials and methods

Search procedure and characteristics of identified studies

On 13 July 2017, a search of PubMed was conducted using the combination of the following keywords in title and abstract: alpha asymmetry, depression, and EEG. Overall, the search resulted in finding 61 articles. Only studies that determined asymmetry on the basis of EEG data were included. Inclusion criteria for this review were a focus on EEG AA and affective disorders. Studies whose research focus was on the analysis of other EEG correlates instead of AA and/or other mental disorders or main symptoms that did not include depression symptoms were excluded. No study was excluded due to methodological limitations, but rather because it missed the proposed research topic. In the next step, cultural background, type of study, sample size, percentage of right-handers, and number of female participants were collected. Furthermore, we collected data on education, reference style, recording protocol and length, as well as impedance and alpha band range. Moreover, “controlling for handedness” and “controlling for drugs” were added. All collected data were transferred to Microsoft Excel 2016. Descriptive data analysis was performed using IBM SPSS Statistics 24.

Results

A total number of 61 publications were found using the following search criteria in PubMed (https://www.ncbi.nlm.nih.gov/pubmed/): (alpha asymmetry[Title/Abstract]) AND (depression[Title/Abstract]) AND (eeg[Title/Abstract]). In all, 17 studies were excluded from further analysis since they did not fully meet search criteria.33–49 From the remaining 44 studies published between 1996 and 2017, we collected data on the methods used.

Topical heterogeneity of included literature

While all studies included in this study addressed EEG AA in DD, most of the studies tried to test the validity of EEG AA as a surrogate marker for depression and claimed to show evidence for that.4,50–56 Some of the studies addressed specific topics such as melancholia and EEG AA.57 It is inferred that it remains unclear whether this can be used as a surrogate marker or not.8,10,20,58 Anxiety was found to be correlated with the most evident relative change in frontal alpha asymmetry in one study.54 Some studies only proved EEG AA findings for anxiety and not for depression.59 EEG AA changes were found only in schizophrenia and depression and not in other clinical disorders.60 In addition, a general decrease in EEG power in all frequency bands in depression61 as well as a lowered frontal EEG power in rumination was found.62 Shyness was also a criterion and was able to predict greater relative right frontal AA only after controlling for depressive mood63 and self-esteem, which was found to be a mediator of EEG AA only in its explicit type.64 In suicide attempters, greater alpha power over the left hemisphere was found.65 One study addressed activity level in general, which might be correlated to EEG AA.66 Some interventional studies also proved a shift in EEG AA.35,67–69 A prediction of the course of depression was not possible with EEG AA.70 There was also a focus on whether EEG AA is a state or trait marker for depression,16,71,72 which still remains undetermined.72 A large number of the studies were not able to prove the diagnostic reliability of EEG AA.73–75 In particular, findings on correlations between depression scores and EEG AA were inconsistent.8,79 Studies that addressed age had difficulties in validating previous findings on EEG AA.16,17,80 Especially in young people and the oldest olds, previous EEG AA findings were not able to be replicated.16,17 Other factors such as cortical thickness as a mediator of AA could be ruled out.81 Cognition was discussed as a possible moderator of EEG AA.15–17,82,83 Hereditary effects might play a role,84 but it was found that less left frontal activity at lateral sites was only associated with lifetime major depressive disorder (MDD) in offspring and not in parental MDD.47 The issue of drug effects on EEG AA was discussed.85 It was also argued that conventional EEG analysis lacks temporal and spatial precision.56

Methodological analysis

In Table 1, a comparison of methods in all publications is provided. While most studies tried to focus on EEG AA correlates of depression, the samples were small and, in many cases, not representative. Using students as probands is common as is the use of nonclinical samples. A transfer of the evidence data to clinical patients is often not possible since no clinical samples were used for analysis. Most of the studies used only female participants. The classification of depressive status was measured using depression scores or symptom ratings according to ICD-10 and DSM-IV. Recording length varied between 2 and 8 minutes. The reference points for EEG measurement were placed on the ear, mastoid, nose, or the midline central position (Cz) in most of the studies. In detail, reference to common average (CA) was used in seven of 44 studies (15.9%), while nine of 44 (20.5%) studies used Cz as reference. Half of all studies (22/44) used the ear or the mastoid as reference, and four of 44 (9.1%) studies used the nose as reference.
Table 1

Comparison of methods in studies on EEG AA

NoStudySampleAge (years)% femaleClassification of depressive statusMethodEEG detail
Experimental groupCGExperimental groupCGReference montageEO/ECRecording length (min)Alpha range (Hz)
1Liu et al57EG: N = 141 (38 melancholic MDD and 103 non-melancholic MDD)CG: 113 non-MDD patientsEG1 – melancholic: M = 35.92 (SD = 12.86) and EG2 – non-melancholic: M = 32.79 (SD = 11.66)CG: M = 32.56 (SD = 12.50)66.50SCID, HRSGroup comparisonLMasEO + EC6 × 17.8–12.7
2Cantisani et al66EG: 20 patients with a diagnosis of MDDCG: 19 healthy adultsEG: M = 43.3 (SD = 14.03)CG: M = 41.05 (SD = 13.82)53.80SCID, HAMD, MADRS, BDIGroup comparison and correlationCAEO + EC68–12.5
3Arns et al73EG: 1,008 MDD patientsCG: 336 healthy controlsEG: M = 37.84 (SD = 12.6)CG: M = 36.99 (SD = 13.1)57MINI-Plus, HRSDGroup comparisonLMasEO + EC2 × 28–13
4Stewart et al71EG: 143 MDDCG: 163 healthy controlsM = 19.1 (SD = 0.1)Range: 17–3469.00SCID, BDIGroup comparisonCA, Cz, LMas, CSDEO + EC8 × 18–13
5Manna et al82EG1: 14 high- anxiety depressive and EG2: 14 low-anxiety depressiveCG: 21 healthy controlsEG1: M = 39.9 (SD = 11.7) and EG2: M = 31.4 (SD = 11.7)CG: M = 34.0 (SD = 11.8)57.10BDIGroup comparisonLMasEO8–13
6Escolano et al7474 MDD patients were randomly allocated to the NF group (n = 50) or to the CG (n = 24)CG: 24 MDD patients randomly selectedNF group: M = 53.70 (SD = 10.87)CG: M = 49.50 (SD = 10.18)68.30BDI-II, PHQ-9Group comparisonFPz, l earEO + EC68–12
7Spronk et al, 2008768 patients with MDDM = 42.6 (range 28–50)37.50BDI, MINI-PlusLMasEO + EC48–13; alpha 1 (8–11) and alpha 2 (11–13)
8Mathersul et al54428 subjects selected from the Brain Resource International DatabaseM = 34.85 (SD = 12.59), range 18–6050DASS-21Group comparisonCAEC28–13
9Pössel et al, 20087780 mentally healthy adolescentsM = 13.92 (SD = 0.57), range: 13–1543.75DSQ, DISYPS-KJ: SBB-DERegression analysesNoseEO + EC4 × 28–13
10Tops et al7911 healthy male volunteersM = 27.7, range: 19–420BDIGroup comparisonl ear/LEEO + EC28–13
11Metzger et al7550 female Vietnam War nurse veteransM = 53.7 (SD = 2.8)100SCID, SCL-90-RCorrelationLEEO + EC2 × 38–13
12Kentgen et al80EG: 25 outpatients (19 MDD [11 MDD + current anxiety disorder] and 6 anxiety disorders)CG: 10 non-ill controlsM = 15.5, range: 12.2–18.8100PARIS, K-SADS, DISC-2.3-CGroup comparisonNoseEO + EC2 × 37.8–12.5
13Graae et al65EG: 16 Hispanic females after suicide attemptCG: 22 normal Hispanic adolescent girlsM = 14, range: 12–17100BDI, HASSGroup comparisonNose, C3 & C4EO + EC2 × 38–13
14Adolph and Margraf5943 healthy students showing symptoms of depression or anxietyRange: 19–3465.12D-SRegression analysesl-MasEO + EC88–13
15Cantisani et al66EG: 20 MDD patientsCG: 19 healthy controlsEG: M = 43.3 (SD = 14.03)CG: M = 41.05 (SD = 13.82)53.80SCID, HAMD, MADRS, BDIGroup comparison and correlationCzEC6Lower alpha: 8–10 and upper alpha: 10.5–12.5
16Moynihan et al67EG: 105 MBSR groupCG: 103EG: M = 73.3 (SD = 6.7)CG: M = 73.6 (SD = 6.7)59.60CES-D-RGroup comparisonr-MasEO + EC8 × 18–13
17Bruder et al81EG: high-risk group (37)CG: low-risk group (38)EG: M = 33.9 (SD = 11.7)CG: M = 27.4 (SD = 13.5)53.33SADS-L, K-SADS-E, K-SADS-PLGroup comparison and correlationl earEO + EC4 × 27.0–12.5
18Keune et al68N = 57 recurrently depressed women in remission EG: mindfulness support group 25CG: rumination challenge group (32)EG: M = 43.56 (SD = 9.67)CG: M = 49.09 (SD = 10.82)100BDI-II, PANASGroup comparison and correlationLMasEO + EC8 × 1 and 108–13
19Segrave et al85EG: 16 MDDCG: 18 controlsEG: M = 40.75 (SD = 11.39)CG: M = 42.11 (SD = 13.02)100BDI, MINI-Plus, MADRSGroup comparisonCz, CAEO + EC2 × 38–13 and IAF
20Chan et al55Participants with depression, EG1: 17 CBT and EG2: 17 DMBIParticipants with depression, CG: WLEG1: M = 46.94 (SD = 6.54) and EG2: M = 47.06 (SD = 9.54)CG: M = 45.44 (SD = 8.25)80SCIDGroup comparison and correlationLEEC58–13
21Gordon et al60EG: 567 participants across 6 clinical groupsCG: 1,908 healthy control participants from the BRIDRange: 6–8745.80MINIGroup comparisonLMasEO + EC2 × 28–13
22Kemp et al51EG: 14 patients with PTSD and 15 patients with MDDCG: 15 healthy controlsEG – PTSD: M = 41.4 (SD = 12.3) and MDD: M = 39.9 (SD = 14.0)CG: M = 42.4 (SD = 16.7)61.40MINI, HRSD, DASSGroup comparisonLMasEC28–13
23Beaton et al63Undergraduate students, EG: 24 high socially anxiousUndergraduate students, CG: 25 low socially anxiousM = 20.32 (SD = 4.18)75.50DASS-21Group comparison and correlationCzEC + EO28–13
24De Raedt et al6420 volunteer students85BDI-IIRegression analysesCzEC28–12
25Bruder et al84EG1: 19 highest risk group and EG2: 14 intermediate risk groupCG: 16 lowest risk groupEG1: M = 15.4 (SD = 4.7) and EG2: M = 10.6 (SD = 4.5)CG: M = 13.6 (SD = 6.2)53SADS-L, K-SADS-E, K-SADS-PLGroup comparisonLEEO + EC4 × 27.0–12.5
26McFarland et al7070 participantsM = 34.64 (SD = 12.97), range: 18–6365.70SCIDCorrelationLEEO + EC6 × 18–13
27Diego et al52Woman (effects of maternal depression), EG: 20 undefined (CES-D = 0–2); 10 borderline (CES-D = 13–15), 69 depressed (CES-D >16)CG: 64 non- depressed (CES-D = 3–12)M = 23 (SD = 5.0)100CES-DGroup comparison and correlationCz38–12
28Bruder et al4EG: 44 depressed outpatientsCG: 26 normal patientsEG: anxious group: M = 36.7 (SD = 11.5); Nonanxious: M = 41.3 (SD = 10.7)CG: M = 32.9 (SD = 9.8)50BDIGroup comparison and correlationNoseEO + EC2 × 37.8–12.5
29Tomarken et al53EG: 25 high-risk patientsCG: 13 low-risk patientsEG: M = 13.1 (SD = 0.3)CG: M = 13.0 (SD = 0.4)52.60SCID, K-SADS-E, CDI, K-LIFEGroup comparison and regression analysesCzEO + EC8 × 18.5–12.5
30Jesulola et al20100 participants32.5 (SD = 14.13)54SDSGroup comparison and correlationCAEO + EC3 × 38–13
31Kaiser et al1739 females: EG1: anxiety + depression; EG2: depression participantsCG: healthy participantsEG1: M = 78.6 (SD = 6.7) and EG2: M = 80.5 (SD = 5.7)CG: M = 80.9 (SD = 7.0)100HADS-A, HADS-D, GDSGroup comparison and correlationr-MasEC + EO3Alpha 1 (6.9–8.9), alpha 2 (8.9–10.9), and alpha 3 (10.9–12.9)
32Brzezicka et al83EG: 26 depressed patientsCG: 26 controlsM = 26.42 (SD = 6.5)ICD-10 classification criteriaGroup comparison and correlationCSDEC58–13
33Mennella et al35EG: 23 dysphoric individualsCG: 24 nondysphoric individualsEG: M = 21.0 (SD = 1.6)CG: M = 15.9 (SD = 4.4)100BDI-II, SCIDGroup comparisonl-MasEO58–13
34Quinn et al58EG: 117 MDD patients (57 with melancholia and 60 with non- melancholia)CG: 120 healthy controlsMINI-PlusGroup comparisonLMas, CAEC28–13
35Gold et al879 adultsM = 35.6 (SD = 9.8), range: 18–5078.5MADRS, HADS-ACorrelationsECEC58–12
36Allen and Cohen56306 young adults – 143 with MDDM = 19.1 (SE = 0.1), range: 17–3469BDIGroup comparison and correlationCz, CSDEC + EO88–13
37Saletu et al61EG: 60 female depressed menopausal syndrome patientsCG: 30 normal controlsEG: M = 51.10 (SD = 3.13)100DSM-IIIRGroup comparison (SPM)EC78–10
38Carvalho et al16EG1: 12 depressed patients and EG2: 8 remitted patientsCG: 7 non-depressed patientsM = 71.366.60DSM-IVGroup comparisonl earEC88–12.9
39Deslandes et al15EG: 22 depressed elderly participantsCG: 14 healthy elderly participantsEG: M = 71.6 (SD = 1.2)CG: M = 72.4 (SD = 1.7)94.40DSM-IVGroup comparisonLEEC88–13
40Putnam and McSweeney62EG: 6 depressed outpatient groupsCG: 7 healthy CGEG: M = 32.6 (SD = 12.1)CG: M = 32.8 (SD = 11.3)69.20BDIGroup comparisonCzEC + EO4 × 48–13
41Barnhofer et al6922 individuals with a previous history of suicidal depression were randomly assigned to either MBCT (n = 10) or treatment-as-usual group (n = 12)CG: 12 treatment-as-usual groupEG: M = 48.0 (SD = 10.2)CG: M = 38.6 (SD = 9.6)50BDIGroup comparisonCA, LEEC + EO88–13
42Bruder et al47EG1: 18 subjects were both parents and had an MDD and EG2: 40 subjects were one parent and had an MDDCG: 29 subjects were neither parent and had an MDDEG1: M = 29.0 (SD = 11.0), range: 8–47 and EG2: M = 37.0 (SD = 8.0), range: 22–50CG: M = 37.1 (SD = 4.7), range: 29–4760.90SADS-L, K-SADS-E, K-SADS-PLGroup comparisonl earEC4 × 27.0–12.5
43Allen et al1430 womenrange: 18–45100SCIDGroup comparison and correlationCz, LMasEO + EC88–13
44Debener et al72EG: 15 clinically depressed patientsCG: 22 healthy adultsEG: M = 48.5, range: 23–64CG: M = 45.9, range: 26–6467.6Structural clinical interview ICD-10Group comparisonLEEO + EC28–13

Abbreviations: AA, alpha asymmetry; BDI, Beck Depression Inventory; BRID, Brain Resource International Database; C3 and C4, average between central left and right; CA, common average; CBT, cognitive behavioral therapy; CG, control group; CES-D-R, depression scale-revised; CSD, current source density transformation; Cz, the midline central position; DASS, depression anxiety stress scales; DISC-2.3-C, Diagnostic Interview Schedule for Children; DISYPS-KJ: SBB-DE, self-rating questionnaire for depressive disorders measures symptom criteria in accordance with DSM-IV diagnoses of depressive disorders; DSQ, depressions-screening questionnaire; DMBI, Chan-based Dejian mind-body intervention; DSM-IIIR, Diagnostic and Statistical Manual of Mental Disorders, Third Edition, Revised; DSM-IV, Diagnostic and Statistical Manual of Mental Disorders, Fourth Edition; EC, eyes closed; EEG, electroencephalogram; EG, experimental group; EO, eyes open; FPz, frontal-midline electrode; GDS, geriatric depression scale; HADS-A, hospital anxiety and depression scale; HADS-D, hospital anxiety and depression scale – German version; HAMD, Hamilton depression rating scale; HASS, Harkavy, Asnis Suicide scale; HRS, Hamilton rating scale; HRSD, Hamilton rating scale for depression; K-SADS, schedule for affective disorders and schizophrenia; K-SADS-PL, Kiddie-sads-present and lifetime version; LE, left ear; LMas, left-mastoid; M, median; MADRS, Montgomery–Åsberg Depression Rating Scale; MBCT, Mindfulness-based cognitive therapy; MBSR, mindfulness-based stress reduction; MINI-Plus, mini-international neuropsychiatric interview; MDD, major depressive disorder; NF, neurofeedback; PANAS, positive and negative affect scales; PARIS, Parent as Respondent Informant Schedule; PHQ-9, Patient Health Questionnaire; PTSD, posttraumatic stress disorder; SE, standard error; SADS-L, schedule for affective disorders and schizophrenia lifetime version for adults and for children between the ages 6 and 17, the child version (K-SADS-E); SCID, structured clinical interview for DSM-IV; SCL-90-R, symptom checklist revised; SPM, statistical parametric maps; WL, waitlist control group.

Re-referencing was also common in some cases. Statistical analysis relied on correlational analysis and analyses of variance (ANOVAs) in most of the studies. Analysis of group differences and correlation was performed in 30.5% of studies, correlational analysis was performed only in 15.9% of studies, and group differences were performed in 52.3% of studies. The alpha band range was mostly fixed at 8–13 Hz (26/44 studies). Concerning the controlling for common known confounders (Table 2), we found that 11 of 44 studies did not mention or even ignored the handedness of the participants. Only 15 studies relied on data of participants with tested handedness, while 18 studies relied on self-reported handedness. Regarding pharmacological treatment, only 15 of 44 (35%) studies reported this, and only 35% of the studies controlled for drugs in statistical analysis. Comorbidity was reported in 52% studies, and 30% studies controlled for it. Educational status was reported in 29.6% of all studies. Only nine of 44 (20.5%) studies included an additional task condition in the recording protocol. No study controlled for all common known confounders (Table 2).
Table 2

Controlling for common known confounders

StudyControlled for
Handedness controlledHandedness inquiredEducation reportedMedication reportedMedication controlledComorbidity reportedComorbidity controlled
Debener et al72xxxx
Manna et al82xxx
Carvalho et al16xxx
Segrave et al85xxx
Deslandes et al15xxx
Allen and Cohen56xxx
Allen et al14xxx
Tomarken et al53xx
Graae et al65xx
Stewart et al71xx
Cantisani et al66xxxx
Cantisani et al66xxxx
Bruder et al4xxxx
Kemp et al51xxx
Pössel et al77xx
Kaiser et al17xxx
Putnam and McSweeney62xxxx
McFarland et al70xxx
Bruder et al84xxx
Barnhofer et al69xxx
Kentgen et al80xxx
Menella et al78xxx
Quinn et al58xxx
Adolph and Margraf59xxx
Beaton et al63xxx
Liu et al57xx
Keune et al68xx
Gold et al8xx
Bruder et al47xx
Tops et al76xx
Brzezicka et al83x
Metzger et al75xxxx
Mathersul et al54xxx
Moynihan et al67xxx
Chan et al55xxx
Arns et al73xxx
Diego et al52xx
Bruder et al81xx
Spronk et al76x
Saletu et al61x
Gordon et al60xx
Escolano et al74x
De Raedt et al64
Jesulola et al20

Note: x indicates variable was controlled.

Discussion

We conducted a systematic review on EEG AA in patients with DD, which is still discussed as a possible biomarker for depression.1–3 However, the use of EEG AA as a surrogate marker for depression still remains unclear,9,10 which is not surprising if we take a closer look on the methodological quality of studies concerning EEG AA. The issues of small sample sizes and quality have been discussed repeatedly.8–10 In our analysis, we found that many studies on EEG AA do not consider common known confounders, which could have a tremendous effect on the recorded EEG data. Taking a closer look at meta-analyses,9,10 we found that most of the analyzed studies differ in sample age, education, gender, handedness, medication, clinical symptoms and severity, and comorbidity. EEG AA was tested as a biomarker for melancholia,57 with unclear validity.8,10,20,58 EEG AA seems to be the most robust in anxiety.54,59 In depression, a general decrease in EEG power can be found,61 which is a sign of cortical activity. This can also be found in rumination.62 Interventional studies have also been analyzed, which could prove a shift in EEG AA.35,67–69 Future studies on EEG AA need to focus on specific changes in the course of depression, which could also help answer the question if EEG AA is a state or trait marker for depression, which still remains unclear.72 If EEG AA is used as a diagnostic measure for clinical depression, we will need normative data. A simple lateralization measure of activity or idleness in the brain cannot be used across different genders, age, educational levels, left- and right-handedness, and medicated and not medicated individuals. In comparison to common correlational analysis and group comparison with ANOVAs, modern statistical analysis methods, such as peri-burst metrics, could help overcome the lack of temporal and spatial precision.56 A consensus of proper sampling and controlling for confounders has to be found in order to validate or reject the hypothesis of EEG as a surrogate marker or marker for treatment response. The following section lists the minimal requirements for studies on EEG AA.

Guidelines for future studies on AA

Future studies on EEG AA ought to include the following commonly known confounders and recording protocols (controlling implies statistical consideration): clinical samples; controlling for handedness with a handedness inventory (eg, Edinburgh Handedness Inventory); controlling for drugs and point of taking; controlling for gender; controlling for age; controlling for cognition with cognitive test or screening; controlling for education; controlling for comorbidity with clinical screening; and EEG protocol including task and resting state condition.

Conclusion

We conducted a literature search on EEG AA in DD and found that methodological flaws could account for the unclear results. Some of the studies do not take into consideration commonly known confounders such as education, age, gender, handedness, drugs, and comorbidity. We have designed a list of requirements to improve the quality of future studies on EEG AA, thus allowing a better comparison of results.
  80 in total

1.  Paradox lost? Exploring the role of alpha oscillations during externally vs. internally directed attention and the implications for idling and inhibition hypotheses.

Authors:  Nicholas R Cooper; Rodney J Croft; Samuel J J Dominey; Adrian P Burgess; John H Gruzelier
Journal:  Int J Psychophysiol       Date:  2003-01       Impact factor: 2.997

Review 2.  Aligning strategies for using EEG as a surrogate biomarker: a review of preclinical and clinical research.

Authors:  Steven C Leiser; John Dunlop; Mark R Bowlby; David M Devilbiss
Journal:  Biochem Pharmacol       Date:  2010-10-19       Impact factor: 5.858

3.  EEG topography and tomography (LORETA) in diagnosis and pharmacotherapy of depression.

Authors:  B Saletu; P Anderer; G M Saletu-Zyhlarz
Journal:  Clin EEG Neurosci       Date:  2010-10       Impact factor: 1.843

4.  Acute cortisol administration modulates EEG alpha asymmetry in volunteers: relevance to depression.

Authors:  Mattie Tops; Albertus A Wijers; Annoesjka S J van Staveren; Klaas J Bruin; Johan A Den Boer; Theo F Meijman; Jacob Korf
Journal:  Biol Psychol       Date:  2005-05       Impact factor: 3.251

5.  Anticipatory reward deficits in melancholia.

Authors:  Huiting Liu; Casey Sarapas; Stewart A Shankman
Journal:  J Abnorm Psychol       Date:  2016-05-12

6.  The impact of melancholia versus non-melancholia on resting-state, EEG alpha asymmetry: electrophysiological evidence for depression heterogeneity.

Authors:  Candice R Quinn; Chris J Rennie; Anthony W F Harris; Andrew H Kemp
Journal:  Psychiatry Res       Date:  2014-01-09       Impact factor: 3.222

7.  Grandchildren at high and low risk for depression differ in EEG measures of regional brain asymmetry.

Authors:  Gerard E Bruder; Craig E Tenke; Virginia Warner; Myrna M Weissman
Journal:  Biol Psychiatry       Date:  2007-05-03       Impact factor: 13.382

8.  Is the relationship between frontal EEG alpha asymmetry and depression mediated by implicit or explicit self-esteem?

Authors:  Rudi De Raedt; Erik Franck; Katrien Fannes; Edwin Verstraeten
Journal:  Biol Psychol       Date:  2007-06-30       Impact factor: 3.251

9.  Neuromarkers of anxiety and depression in a patient after neuro-ophthalmic surgery of the meningioma - effect of individually-tailored tDCS and neurofeedback.

Authors:  Andrzej Mirski; Maria Pąchalska; Marek Moskała; Michał Orski; Małgorzata Orska; Maria Miąskiewicz; Jan Zapała; Juri D Kropotov
Journal:  Ann Agric Environ Med       Date:  2015       Impact factor: 1.447

10.  Neurophysiological correlates of persistent psycho-affective alterations in athletes with a history of concussion.

Authors:  Robert Davis Moore; William Sauve; Dave Ellemberg
Journal:  Brain Imaging Behav       Date:  2016-12       Impact factor: 3.978

View more
  9 in total

1.  Elucidating age and sex-dependent association between frontal EEG asymmetry and depression: An application of multiple imputation in functional regression.

Authors:  Adam Ciarleglio; Eva Petkova; Ofer Harel
Journal:  J Am Stat Assoc       Date:  2021-07-26       Impact factor: 5.033

2.  The novel frontal alpha asymmetry factor and its association with depression, anxiety, and personality traits.

Authors:  Alessandra Monni; Katherine L Collison; Kaylin E Hill; Belel Ait Oumeziane; Dan Foti
Journal:  Psychophysiology       Date:  2022-05-26       Impact factor: 4.348

3.  Disinhibition of right inferior frontal gyrus underlies alpha asymmetry in women with low testosterone.

Authors:  Justin Riddle; David R Rubinow; Susan Girdler; Flavio Frohlich
Journal:  Biol Psychol       Date:  2021-03-08       Impact factor: 3.251

4.  Atypical Temporal Dynamics of Resting State Shapes Stimulus-Evoked Activity in Depression-An EEG Study on Rest-Stimulus Interaction.

Authors:  Annemnarie Wolff; Sara de la Salle; Alana Sorgini; Emma Lynn; Pierre Blier; Verner Knott; Georg Northoff
Journal:  Front Psychiatry       Date:  2019-10-15       Impact factor: 4.157

5.  Quantitative Electroencephalogram Standardization: A Sex- and Age-Differentiated Normative Database.

Authors:  Juhee Ko; Ukeob Park; Daekeun Kim; Seung Wan Kang
Journal:  Front Neurosci       Date:  2021-12-17       Impact factor: 4.677

6.  Predictability of Seasonal Mood Fluctuations Based on Self-Report Questionnaires and EEG Biomarkers in a Non-clinical Sample.

Authors:  Yvonne Höller; Maeva Marlene Urbschat; Gísli Kort Kristófersson; Ragnar Pétur Ólafsson
Journal:  Front Psychiatry       Date:  2022-04-08       Impact factor: 5.435

7.  EEG-responses to mood induction interact with seasonality and age.

Authors:  Yvonne Höller; Sara Teresa Jónsdóttir; Anna Hjálmveig Hannesdóttir; Ragnar Pétur Ólafsson
Journal:  Front Psychiatry       Date:  2022-08-09       Impact factor: 5.435

Review 8.  EEG Frequency Bands in Psychiatric Disorders: A Review of Resting State Studies.

Authors:  Jennifer J Newson; Tara C Thiagarajan
Journal:  Front Hum Neurosci       Date:  2019-01-09       Impact factor: 3.169

9.  Prediction of Antidepressant Treatment Outcome Using Event-Related Potential in Patients with Major Depressive Disorder.

Authors:  Hyun Seo Lee; Seung Yeon Baik; Yong-Wook Kim; Jeong-Youn Kim; Seung-Hwan Lee
Journal:  Diagnostics (Basel)       Date:  2020-05-03
  9 in total

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