Systematic Review: Emotion Recognition Based on Electrophysiological Patterns for Emotion Regulation Detection
Abstract
:1. Introduction
- less mood deterioration;
- less cortisol secretion in response to the stressor;
- less prolonged arousal in response to negative situations;
- are less likely to suffer from chronic arousal on physical health, including coronary heart disease, gastrointestinal disorders, asthma, psoriasis, and migraine;
- less at risk for substance-use-related health problems such as cirrhosis of the liver, pancreatitis, polyneuropathy;
- better quality and more refreshing sleep [9].
2. Methods
- Techniques for eliciting emotions: identify the strategies, materials, conditions, and environments that have been applied to evoke emotions.
- Quantitative and/or Qualitative Assessments: differentiate the tests based on objective and subjective measurements and highlight the necessary parameters to study EI.
- Data analysis: analyze the relation between electrophysiological signals, psychometric tests, and the evoked emotions.
- Applications: detect targets and reasons for evaluating some dimensions of emotional intelligence.Data outcomes were extracted at the last stage of the selection process.Data extraction was conducted to answer the following research questions (RQ):
- ▪
- RQ1: Which electrophysiological signals may index emotional processing?
- ▪
- RQ2: Which stimuli may be used to elicit emotions?
- ▪
- RQ3: How should psychometrics assess emotional experience?
- ▪
- RQ4: Under which conditions may emotion processing be assessed, and how does the experimental paradigm cause biases in emotional perception?
- ▪
- RQ5: How may correlates of emotion processing be applied to models of statistical analysis and artificial intelligence?
- ▪
- RQ6: What are the applications and impacts of assessing emotion processing?
2.1. Type of Studies
2.2. Exposures
2.3. Participants
2.4. Comparators
2.5. Study Records
3. Results
3.1. RQ1: Which Electrophysiological Signals May Index Emotional Processing?
3.1.1. EEG
3.1.2. ECG
3.1.3. EDA
3.1.4. EOG
3.1.5. Databases of Electrophysiological Data
3.2. RQ2: Which Stimuli May Be Used to Elicit Emotions?
3.2.1. Format and Nature of Stimuli
3.2.2. Databases of Emotional Stimuli
3.3. RQ3: How Should Psychometrics Assess Emotional Experience?
3.3.1. Emotion Experience
3.3.2. Mental Health
3.3.3. EI- and ER-Related Monitoring
3.4. RQ4: Under Which Conditions May Emotion Processing Be Assessed, and How Does the Experimental Paradigm Cause Biases in Emotional Perception?
3.4.1. Experimental Paradigms
3.4.2. Emotion Processing Mode
3.4.3. Timing Protocol and Procedure
3.5. RQ5: How May Correlates of Emotion Processing Be Applied to Models of Statistical Analysis and Artificial Intelligence?
3.5.1. Statistical Analysis: Parametric Methods
3.5.2. Statistical Analysis: Non-Parametric Methods
3.5.3. Other Statistical Methods
3.5.4. Classification Strategies
3.5.5. Sample
3.6. RQ6: What Are the Applications and Impacts of Assessing the Emotion Processing?
4. Discussion
4.1. RQ1: Which Electrophysiological Signals May Index Emotional Processing?
4.1.1. Electrophysiological Measurements and Analysis
4.1.2. Open Access Databases
4.2. RQ2: Which Stimuli May Be Used to Elicit Emotions?
4.3. RQ3: How Should Psychometrics Assess Emotional Experience?
4.4. RQ4: Under Which Conditions May Emotion Processing Be Assessed, and How Does the Experimental Paradigm Cause Biases in Emotional Perception?
4.5. RQ5: How May Correlates of Emotion Processing Be Applied to Models of Statistical Analysis and Artificial Intelligence?
4.5.1. Electrophysiological Correlates in Artificial Intelligence
4.5.2. Signal Fusion
4.5.3. Experimental Sample
4.6. RQ6: What Are the Applications and Impacts of Assessing the Emotion Processing?
5. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Index | Web of Science, EBSCO, PubMed and ScienceDirect | ProQuest |
---|---|---|
1 | emotion OR affective AND recognition OR regulation AND electroencephalography | (emotion OR affective) AND (recognition OR regulation) AND electroencephalography |
2 | emotion OR affective AND recognition OR regulation AND electrocardiography OR heart rate | (emotion OR affective) AND (recognition OR regulation) AND (electrocardiography OR heart rate) |
3 | emotion OR affective AND recognition OR regulation AND skin temperature OR galvanic skin response | (emotion OR affective) AND (recognition OR regulation) AND (skin temperature) OR (galvanic skin response) |
4 | emotion OR affective AND recognition OR regulation AND electrooculography | (emotion OR affective) AND (recognition OR regulation) AND electrooculography |
5 | emotional intelligence AND electroencephalography | emotional intelligence AND electroencephalography |
6 | emotional intelligence AND electrocardiography | emotional intelligence AND electrocardiography |
7 | emotional intelligence AND skin temperature | emotional intelligence AND skin temperature |
8 | emotional intelligence AND galvanic skin response | emotional intelligence AND galvanic skin response |
9 | emotional intelligence AND electrooculography | emotional intelligence AND electrooculography |
Study | Number of Subjects | Pathology | Elicitation Method | Emotion | Psychometric Test | Electrophysiological Signal | Statistical Analysis | Classification Method | Objective | |
---|---|---|---|---|---|---|---|---|---|---|
Healthy | Pathological | |||||||||
[25] | 29 | Picture | Sadness | SAM | EDA, EEG | ANOVA and bivariate correlation analyses | Compare the effects of three emotion regulation strategies: reappraisal, acceptance, and suppression | |||
[26] | 32 (DEAP); 15 (SEED) | Videos | Positive, negative, and calm (DEAP); positive, neutral, and negative (SEED) | EEG | Decision Tree, KNN and RF | Emotions classification according to the time variation of emotion processing | ||||
[27] | 26 | Videos | Positive, neutral, and negative | Ad hoc: Valence and/or arousal | EDA, ECG | SVM | Analyze autonomic control mechanisms and functional assessment of emotional responses of human | |||
[28] | 27 | 28 | Schizophrenia | Pictures | Positive, neutral, and negative | EEG | ANOVA | Study motion processing in schizophrenia | ||
[29] | 39 | Videos | Amusement, anger, fear, tenderness, and a neutral state | Ad hoc: Theory of mind | ECG, GSR | ANOVA and Bonferroni | Understand the physiology of socio-emotional processes in the cinema | |||
[30] | 28 | 68 | Borderline personality disorder and post-traumatic stress disorder | Pictures | Negative, positive, and neutral | SAM | ECG | ANOVA and Tukey’s HSD test | Analyze HRV during a cognitive reappraisal task in female patients with borderline personality disorder | |
[31] | 34 | Pictures | Negative (mild, and high intensity), neutral, | Ad hoc: boredom and engagement | EDA | Linear Mixed-Effect Modelling | Understand the difference between the emotional response toward real and fictional pictures | |||
[32] | 44 | Pictures and videos | Positive, negative, and neutral | EDA, EEG | LR, RIPPER, MLP | Validation of EEG activity as a good indicator of self-regulation | ||||
[33] | 16 | 13 | Moebius syndrome | Video | Disgust, surprise, anger, happiness and neutral | ECG | ANOVA | Study the alterations in the processing of facial expression of emotions due to congenital inability to produce facial expressions | ||
[34] | 42 | Low interdependent Self construal (SC) and high interdependent SC | Pictures | Unpleasant and neutral | EEG | Random Effects Models | Asses the ability of emotion suppression | |||
[35] | 26 | Pictures | High-arousing positive valence, low-arousing positive valence, high-arousing negative valence, and low-arousing negative valence | EEG | ANOVA | Explore changes in cognitive-motor performance in response to emotional stimuli | ||||
[36] | 139 | 123 | Bipolar disorder | Pictures and sounds | Disgust, erotica, fear, happiness, neutral and sadness | Ad hoc: Valence and/or arousal | ECG, EOG | ANOVA | Study modes of emotional regulation according to type of bipolar disorder | |
[37] | 38 | 28 | Complex post-traumatic stress disorder and complex dissociative disorders | Pictures | Unpleasant and neutral | SAM | EEG | ANOVA and t-test | Examine the effects of trauma treatment in symptoms and the neural networks involved in emotional control | |
[38] | 69 | 61 | Attention-deficit/hyperactivity disorder | Pictures | Happiness, fear and neutral | EEG | ANOVA | Examine ADHD-related differences in attention to emotional and neutral stimuli | ||
[39] | 30 | Autism spectrum disorder | Pictures | Anger (mild and extreme), happiness and sadness | EEG | ANOVA | Research fathers of children with autism in facial emotion detection | |||
[40] | 40 | Social anxiety disorder | Pictures | Negative and neutral | Ad hoc: Discomfort | EEG | ANOVA and t-test | Utilize manifold-learning to understand EEG brain dynamics associated with emotion regulation processes | ||
[41] | 31 | 51 | Social anxiety disorder | Pictures | Negative and neutral | EEG | ANOVA and t-test | Study response to negative images in individuals with SAD and HC during emotion reactivity and reappraisal | ||
[42] | 10 | 10 | Asperger’s syndrome | Pictures | Angry, happy, and neutral | Ad hoc: Anger and happiness | EEG | MANOVA and F-test | Investigate EEG oscillatory activity and phase-synchronization during visual recognition of emotional faces in Asperger’s syndrome patients and healthy controls | |
[43] | 30 | Drug-resistant temporal lobe epilepsy | Videos | Fear, disgust, sadness, happiness, and peacefulness | SCR | ANOVA, t-test and χ2 test | Understand the impact of biofeedback on seizure control and emotional regulation | |||
[44] | 90 | Alcohol use disorder | Pictures | Positive, negative, and neutral valence | SAM | ECG | ANOVA, post hoc Bonferroni test. | Compare HF-HRV in response to emotional and neutral stimuli in two groups of alcohol use disorder abstinent patients, according to their length of abstinence | ||
[45] | 49 | Words | Negative and neutral | Ad hoc: discomfort | EEG | ANOVA, t-test | Examine the neural correlates of emotional reactivity and regulation to idiographic information | |||
[46] | 36 | Videos | Sadness | Ad hoc: Specific emotion | GSR, ECG | ANOVA | Study if women’s efforts and success at using cognitive reappraisal to regulate their emotions would be affected by the menstrual cycle and neuroticism levels | |||
[47] | 44 | Anorexia | Pictures and Words | Neutral, happiness, sadness, fear, and angry | EEG | ANOVA and t-tests | Explore the neurophysiological correlates of emotional face perception and recognition in adolescent AN patient using ERPs | |||
[48] | 117 | Videos | Amusement, sadness, and anger | Brief Differential Emotions Scale | ECG | Pearson’s and Spearman’s correlations | Asses if expression of different emotions predict different indices of physical health | |||
[49] | 50 | Depression | Pictures and words | Neutral and unpleasant | EEG | ANOVA | Understand changes in emotion during controlled processing of different semantic representations | |||
[50] | 20 | 20 | Anterior cruciate ligament reconstruction patients | Pictures | Neutral and fear | SAM | EEG and ECG | ANOVA | Identify how negative emotional stimuli affect neural processing in the brain and muscle coordination in patients after anterior cruciate ligament reconstruction | |
[51] | 136 | Videos | Fear | EEG | ANOVA | Assess emotion-regulation strategy during viewing of a fear-inducing film clip | ||||
[52] | 31 | Pictures and words | Neutral and negative | SAM | EEG | ANOVA | Study emotion regulation with picture and word stimuli | |||
[53] | 31 | Pictures | Neutral and negative | SAM | EEG | ANOVA | Investigate how stimulus arousal affects reappraisal success | |||
[54] | 24 | Pictures | Neutral, positive, and negative | SAM | EDA | Spearman’s correlation χ2 test | Compare the thermal reactivity to subjective and electrodermal responses | |||
[55] | 26 | 26 | Schizophrenia | Pictures | Neutral and negative | SAM | EEG | ANOVA | Assess regulation of negative emotion in individuals with high schizotypal traits | |
[56] | 96 | Pictures | Neutral and negative | Ad hoc: discomfort | EEG | Pearson’s bivariate | Evaluate spontaneous emotion regulation by EEG activity | |||
[57] | 18 | Pictures | Neutral and negative | SAM | EEG | ANOVA | Study the relation between distraction as an emotion regulation strategy and emotion generation | |||
[58] | 42 | Words | Positive, neutral, and negative | EEG | ANOVA | Explore whether extraversion and neuroticism influence the processing of positive, neutral, and negative words. | ||||
[59] | 10 | Videos | Positive, neutral, and negative | Ad hoc: Valence and/or arousal | EEG | SVM | Investigate environmental psychological perception in adolescents | |||
[60] | 9 | 18 | Schizophrenia | Pictures | Positive, neutral, and negative | SAM | EEG | ANOVA | Study emotion processing in the brain before and after emotional neurofeedback | |
[61] | 229 | Pictures | Sadness, anger, happiness, and neutral | Ad hoc: Valence and/or arousal | ECG and EDA | Mixed-Effect Modelling | Examine the relations of ANS activity in the parasympathetic nervous system and sympathetic nervous system with brain activity during emotional face processing in adolescents | |||
[62] | 24 | 16 | Anorexia nervosa | Videos | Negative | ECG | Linear regression | Explore changes in HRV during and after negative emotional induction in patients suffering from restrictive type anorexia nervosa | ||
[63] | 72 | Pictures | Pain | EEG | ANOVA and Bonferroni correction | Examine age-related changes in response to the perception of another’s distress or pain from early to middle childhood | ||||
[64] | 17 | 16 | Autism spectrum disorder | Pictures | Pain | Ad hoc: discomfort | EDA | Bayesian inference | Study the link between autonomic, cortical, and socio-emotional abnormalities in autism spectrum disorder ASD | |
[65] | 40 | 20 | Empathy deficit disorder | Pictures | Positive, neutral, and negative | Ad hoc: Valence and/or arousal | EEG | ANOVA | Analyze the emotional processing in Colombian ex-combatants with different empathy profiles | |
[66] | 41 | Healthy | Healthy | Videos | Positive, neutral, and negative | EEG | ANOVA | Identify potential behavioral and neural correlates of EI |
Electrophysiological Technique | Analysis Method | Analyzed Feature | Emotional Correlation |
---|---|---|---|
EEG | Spontaneous activity in frequency domain | Delta | High activity in schizophrenia patients |
Alpha | High band power and high recovery from discomfort | ||
Beta | High activity in fathers of autistic children | ||
Inhibitory control | |||
Theta | High activity with fearful pictures | ||
High activity in SAD participants | |||
Higher activity in female than male | |||
Evoked activity based on ERPs | P1 | Larger amplitude with positive stimuli than neutral in children with ADHD | |
P2 N2 | Higher amplitudes for high arousal and negative valence stimuli in healthy participants | ||
N4 | Absence in Asperger participants | ||
Less N400 in Neurotic participants | |||
EPN | The less prominent the EPN, the better the sad and afraid states were recognized | ||
LPP | Amplitude reduction in reappraisal conditions | ||
Amplitude reduction in suppression strategy (marker depression and East-Asian descendants) | |||
Increase with acceptance regulation | |||
Increments marker for SAD and schizophrenic participants, and low empathy levels | |||
ECG | Time Domain | HR | Decrease in fear (anterior cruciate ligament reconstruction) |
Decrease while watching tender scenes | |||
RSA | No effect | ||
Time and Frequency domain | HRV | Lower high frequency component in positive, negative, and neutral stimuli (BPD+PTSD). Decrease after negative stimuli (anorexia nervosa) | |
EDA | Phasic activity | SCR | Increase in stimuli with high arousal, anger, fear, pain, and stress |
Decrease in pain stimuli (autism) | |||
Tonic activity | SCL | Increase in anger | |
EOG | Global velocity | Eyeball movement | Increase in happiness and sadness stimuli after disgust stimulus |
Increase in disgust stimulus after neutral stimulus |
Electrode Montage | Sampling Conditions [Hz] | Recording Systems | Computer Software | Signal Conditioning | |
---|---|---|---|---|---|
EEG | 10–132 channels according to 10/20 International System | Fs = 250–2048 | Brain Vision | EEGLAB | Z < 5–60 kΩ |
Quik-Cap128 NSL | ERPLAB | Notch filtering at 50 Hz | |||
Emotiv EPOC | Neuroscan 4.4 | Lowpass filtering at 100 and 134 Hz | |||
Neuron-Spectrum-1 | BrainVision Analyzer | Lowpass fifth order sinc filter with a half-power cut-off at 204 Hz | |||
BrainVision PyCorder | Curry 7 and Neuroscan 4.5 | Analogue filters were at 0.05 and 100 Hz | |||
V-AMP | BrainVision Analyzer 2.0 software | ||||
g.Hlamp | Net Station, Version 4.2 software | ||||
NuAmps | Net StationDense Array EEG | ||||
NeuroScan | |||||
BW = 0.05–100 | BioSemi Active Two system | ||||
Nu AmpsNeuroScan | |||||
NeurOne | |||||
Neuronic Medicid | |||||
SynAmps | |||||
actiCAP Brain Products Inc. | |||||
Brain Products GmbH | |||||
NeuroScan Synamp2 | |||||
HydroCel Geodesic Sensor Net | |||||
One Hydro-Cel Geodesic Sensor Net | |||||
ECG | 1–3 Ag/AgCl electrodes, electrodes in any or combinations of the following areas: arms, legs, Einthoven’s triangle, shoulders, hip, chest, wrists, clavicle, rib, wrists, sternum, abdomen | Fs = 4–2000 | BIOPAC MP150 (ECG100C) | AcqKnowledge | Amplifier Gain: 2000 |
Powerlab and OctalBioAmp8/30 | Kubios HRV | Mode: Normal | |||
Biosemi Active Two system | LabView | Notch: 50 Hz | |||
BW= 0.05–100 | Biopac fMRI compatible wireless signal logging | Mindware HRV | Band-pass: 0.5–100 Hz | ||
LabChart | |||||
CMetX | |||||
EDA | Bipolar Ag/AgCl or dry-nickel plated electrodes in any or combinations of the following areas:
| Fs = 500–2000 | Empatica | Acqknowledge | Amplifier gain: 5 μOhms/V, 10 μS |
BIOPAC MP150 (GSR100C) | SCRalyze | ||||
BIOPAC MP35 (EDA100C) | Mindware EDA | High-pass filter: DC | |||
BW = 0.159–10 | Biograph | PsPM | Low-pass filter: 10 Hz | ||
PowerlabNeurOne | Brain Vision Analyzer 2.1.2 | Butterworth band-pass filter: 0.159–5 Hz | |||
Impedance level: <10 kW | |||||
EOG | Two Ag/AgC1 electrodes, placed on the outer canthi of both eyes | Fs = 1000 | BIOPAC MP150 (EOG100C) | AcqKnowledge | Amplifier Gain: 2000 |
Mode: Normal | |||||
BW = 0.05–100 | Notch: 50 Hz | ||||
Band-pass: 0.05–100 Hz |
Test | Variation | Variables |
---|---|---|
ANOVA | Repeated measures | Stimuli effect on electrophysiological signals |
Hemisphere (Laterality or electrode position), regulation strategy or cognitive task | ||
Difference on emotional tasks (emotion recognition or regulation) considering electrophysiological signals between groups | ||
Associations with mental or physical issues (extraversion, neuroticism, and menstrual cycle phase) | ||
Two-way | Emotions and groups versus electrophysiological data | |
Group and condition for ER | ||
Three-way | Group, electrode, and emotion stimuli vs electrophysiological data | |
Four-way | Age, gender, stimuli, and electrode versus ERP | |
Mixed design | Group differences and stimuli effect on electrophysiological signals | |
MANOVA | Differences in tasks | |
Mass univariate | Average occipital theta perturbations | |
ANCOVA | Gender, regulation strategy and hemisphere | |
T-test | - | Emotion regulation and EEG frequency. Post hoc test: stimuli, task and time, groups, condition, and activity; electrophysiological data; groups; effectivity and time |
Pearson’s test | - | Emotion regulation and electrophysiological data |
F-Test | - | Emotion recognition conditions, emotions, factor time window and physiological data |
Tukey’s HSD | Valence and emotion recognition vs electrophysiological data | |
Comparisons between emotional conditions and electrophysiological data |
Test | Variables |
---|---|
Spearman’s test | Subjective evaluation and electrophysiological signals |
Bonferroni adjusted pairwise comparison (post hoc) | Condition, valence, arousal, electrode, and electrophysiological data |
Wilcoxon test | Time period with the tonic and phasic HRV |
Bootstrapping | Emotional behavior, SCR, and dynamic causal modeling connectivity parameters |
χ2 test | Pathological conditions and discrete emotions |
Classes | Electrophysiological Features | Validation Method | Selection Method | Classifier | Performance |
---|---|---|---|---|---|
Positive, neutral, and negative | EDA, HRV | Leave-one-subject out | Recursive feature elimination | SVM | 73.08% |
Pleasant, unpleasant and neutral | EEG, EDA | 10-fold cross-validation | Data divided in self-regulated and non-self-regulated groups | SVM, Logistic, RF, LR, RIPPER, MLP, KNN, Naïve Bayes, C4.5 and Radial Basis Function | Best accuracy for the non-self-regulated group: LR, 40.9091%. Best Accuracy Self-regulated group: MLP, 42.7035%. Best overall accuracy: RIPPER, 42.4606% |
Valence and Arousal | EEG | Confusion matrix | ICA | SVM | 73.35% arousal and 68.54% on the valence dimension |
Positive, negative, and calm | EEG | K-fold cross-validation | Autoencoder neural network | Decision Tree, KNN and RF | Best accuracies: 62.63% (DEAP); 74.85% (SEED) |
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Share and Cite
Duville, M.M.; Pérez, Y.; Hugues-Gudiño, R.; Naal-Ruiz, N.E.; Alonso-Valerdi, L.M.; Ibarra-Zarate, D.I. Systematic Review: Emotion Recognition Based on Electrophysiological Patterns for Emotion Regulation Detection. Appl. Sci. 2023, 13, 6896. https://doi.org/10.3390/app13126896
Duville MM, Pérez Y, Hugues-Gudiño R, Naal-Ruiz NE, Alonso-Valerdi LM, Ibarra-Zarate DI. Systematic Review: Emotion Recognition Based on Electrophysiological Patterns for Emotion Regulation Detection. Applied Sciences. 2023; 13(12):6896. https://doi.org/10.3390/app13126896
Chicago/Turabian StyleDuville, Mathilde Marie, Yeremi Pérez, Rodrigo Hugues-Gudiño, Norberto E. Naal-Ruiz, Luz María Alonso-Valerdi, and David I. Ibarra-Zarate. 2023. "Systematic Review: Emotion Recognition Based on Electrophysiological Patterns for Emotion Regulation Detection" Applied Sciences 13, no. 12: 6896. https://doi.org/10.3390/app13126896
APA StyleDuville, M. M., Pérez, Y., Hugues-Gudiño, R., Naal-Ruiz, N. E., Alonso-Valerdi, L. M., & Ibarra-Zarate, D. I. (2023). Systematic Review: Emotion Recognition Based on Electrophysiological Patterns for Emotion Regulation Detection. Applied Sciences, 13(12), 6896. https://doi.org/10.3390/app13126896