Identifying relevant asymmetry features of EEG for emotion processing

The left and right hemispheres of the brain process emotion differently. Neuroscientists have proposed two models to explain this difference. The first model states that the right hemisphere is dominant over the left to process all emotions. In contrast, the second model states that the left hemisph...

Full description

Bibliographic Details
Main Authors: Fatima Islam Mouri, Camilo E. Valderrama, Sergio G. Camorlinga
Format: Article
Language:English
Published: Frontiers Media S.A. 2023-08-01
Series:Frontiers in Psychology
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fpsyg.2023.1217178/full
_version_ 1797741504566919168
author Fatima Islam Mouri
Camilo E. Valderrama
Sergio G. Camorlinga
author_facet Fatima Islam Mouri
Camilo E. Valderrama
Sergio G. Camorlinga
author_sort Fatima Islam Mouri
collection DOAJ
description The left and right hemispheres of the brain process emotion differently. Neuroscientists have proposed two models to explain this difference. The first model states that the right hemisphere is dominant over the left to process all emotions. In contrast, the second model states that the left hemisphere processes positive emotions, whereas the right hemisphere processes negative emotions. Previous studies have used these asymmetry models to enhance the classification of emotions in machine learning models. However, little research has been conducted to explore how machine learning models can help identify associations between hemisphere asymmetries and emotion processing. To address this gap, we conducted two experiments using a subject-independent approach to explore how the asymmetry of the brain hemispheres is involved in processing happiness, sadness, fear, and neutral emotions. We analyzed electroencephalogram (EEG) signals from 15 subjects collected while they watched video clips evoking these four emotions. We derived asymmetry features from the recorded EEG signals by calculating the log ratio between the relative energy of symmetrical left and right nodes. Using the asymmetry features, we trained four binary logistic regressions, one for each emotion, to identify which features were more relevant to the predictions. The average AUC-ROC across the 15 subjects was 56.2, 54.6, 51.6, and 58.4% for neutral, sad, fear, and happy, respectively. We validated these results with an independent dataset, achieving comparable AUC-ROC values. Our results showed that brain lateralization was observed primarily in the alpha frequency bands, whereas for the other frequency bands, both hemispheres were involved in emotion processing. Furthermore, the logistic regression analysis indicated that the gamma and alpha bands were the most relevant for predicting emotional states, particularly for the lateral frontal, parietal, and temporal EEG pairs, such as FT7-FT8, T7-T8, and TP7-TP8. These findings provide valuable insights into which brain areas and frequency bands need to be considered when developing predictive models for emotion recognition.
first_indexed 2024-03-12T14:27:30Z
format Article
id doaj.art-9241ca7af0824b7f82cdbb85477d03d7
institution Directory Open Access Journal
issn 1664-1078
language English
last_indexed 2024-03-12T14:27:30Z
publishDate 2023-08-01
publisher Frontiers Media S.A.
record_format Article
series Frontiers in Psychology
spelling doaj.art-9241ca7af0824b7f82cdbb85477d03d72023-08-18T01:52:50ZengFrontiers Media S.A.Frontiers in Psychology1664-10782023-08-011410.3389/fpsyg.2023.12171781217178Identifying relevant asymmetry features of EEG for emotion processingFatima Islam MouriCamilo E. ValderramaSergio G. CamorlingaThe left and right hemispheres of the brain process emotion differently. Neuroscientists have proposed two models to explain this difference. The first model states that the right hemisphere is dominant over the left to process all emotions. In contrast, the second model states that the left hemisphere processes positive emotions, whereas the right hemisphere processes negative emotions. Previous studies have used these asymmetry models to enhance the classification of emotions in machine learning models. However, little research has been conducted to explore how machine learning models can help identify associations between hemisphere asymmetries and emotion processing. To address this gap, we conducted two experiments using a subject-independent approach to explore how the asymmetry of the brain hemispheres is involved in processing happiness, sadness, fear, and neutral emotions. We analyzed electroencephalogram (EEG) signals from 15 subjects collected while they watched video clips evoking these four emotions. We derived asymmetry features from the recorded EEG signals by calculating the log ratio between the relative energy of symmetrical left and right nodes. Using the asymmetry features, we trained four binary logistic regressions, one for each emotion, to identify which features were more relevant to the predictions. The average AUC-ROC across the 15 subjects was 56.2, 54.6, 51.6, and 58.4% for neutral, sad, fear, and happy, respectively. We validated these results with an independent dataset, achieving comparable AUC-ROC values. Our results showed that brain lateralization was observed primarily in the alpha frequency bands, whereas for the other frequency bands, both hemispheres were involved in emotion processing. Furthermore, the logistic regression analysis indicated that the gamma and alpha bands were the most relevant for predicting emotional states, particularly for the lateral frontal, parietal, and temporal EEG pairs, such as FT7-FT8, T7-T8, and TP7-TP8. These findings provide valuable insights into which brain areas and frequency bands need to be considered when developing predictive models for emotion recognition.https://www.frontiersin.org/articles/10.3389/fpsyg.2023.1217178/fullemotion recognitionelectroencephalogramaffective computingbrain hemisphere asymmetrylogistic regressioninterpretable predictive models
spellingShingle Fatima Islam Mouri
Camilo E. Valderrama
Sergio G. Camorlinga
Identifying relevant asymmetry features of EEG for emotion processing
Frontiers in Psychology
emotion recognition
electroencephalogram
affective computing
brain hemisphere asymmetry
logistic regression
interpretable predictive models
title Identifying relevant asymmetry features of EEG for emotion processing
title_full Identifying relevant asymmetry features of EEG for emotion processing
title_fullStr Identifying relevant asymmetry features of EEG for emotion processing
title_full_unstemmed Identifying relevant asymmetry features of EEG for emotion processing
title_short Identifying relevant asymmetry features of EEG for emotion processing
title_sort identifying relevant asymmetry features of eeg for emotion processing
topic emotion recognition
electroencephalogram
affective computing
brain hemisphere asymmetry
logistic regression
interpretable predictive models
url https://www.frontiersin.org/articles/10.3389/fpsyg.2023.1217178/full
work_keys_str_mv AT fatimaislammouri identifyingrelevantasymmetryfeaturesofeegforemotionprocessing
AT camiloevalderrama identifyingrelevantasymmetryfeaturesofeegforemotionprocessing
AT sergiogcamorlinga identifyingrelevantasymmetryfeaturesofeegforemotionprocessing