Emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogram

IntroductionRecently, the microstate analysis method has been widely used to investigate the temporal and spatial dynamics of electroencephalogram (EEG) signals. However, most studies have focused on EEG at resting state, and few use microstate analysis to study emotional EEG. This paper aims to inv...

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Main Authors: Zhen Wei, Hongwei Li, Lin Ma, Haifeng Li
Format: Article
Language:English
Published: Frontiers Media S.A. 2024-03-01
Series:Frontiers in Neuroscience
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fnins.2024.1355512/full
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author Zhen Wei
Hongwei Li
Lin Ma
Haifeng Li
author_facet Zhen Wei
Hongwei Li
Lin Ma
Haifeng Li
author_sort Zhen Wei
collection DOAJ
description IntroductionRecently, the microstate analysis method has been widely used to investigate the temporal and spatial dynamics of electroencephalogram (EEG) signals. However, most studies have focused on EEG at resting state, and few use microstate analysis to study emotional EEG. This paper aims to investigate the temporal and spatial patterns of EEG in emotional states, and the specific neurophysiological significance of microstates during the emotion cognitive process, and further explore the feasibility and effectiveness of applying the microstate analysis to emotion recognition.MethodsWe proposed a KLGEV-criterion-based microstate analysis method, which can automatically and adaptively identify the optimal number of microstates in emotional EEG. The extracted temporal and spatial microstate features then served as novel feature sets to improve the performance of EEG emotion recognition. We evaluated the proposed method on two publicly available emotional EEG datasets: the SJTU Emotion EEG Dataset (SEED) and the Database for Emotion Analysis using Physiological Signals (DEAP).ResultsFor the SEED dataset, 10 microstates were identified using the proposed method. These temporal and spatial features were fed into AutoGluon, an open-source automatic machine learning model, yielding an average three-class accuracy of 70.38% (±8.03%) in subject-dependent emotion recognition. For the DEAP dataset, the method identified 9 microstates. The average accuracy in the arousal dimension was 74.33% (±5.17%) and 75.49% (±5.70%) in the valence dimension, which were competitive performance compared to some previous machine-learning-based studies. Based on these results, we further discussed the neurophysiological relationship between specific microstates and emotions, which broaden our knowledge of the interpretability of EEG microstates. In particular, we found that arousal ratings were positively correlated with the activity of microstate C (anterior regions of default mode network) and negatively correlated with the activity of microstate D (dorsal attention network), while valence ratings were positively correlated with the activity of microstate B (visual network) and negatively correlated with the activity of microstate D (dorsal attention network).DiscussionIn summary, the findings in this paper indicate that the proposed KLGEV-criterion-based method can be employed to research emotional EEG signals effectively, and the microstate features are promising feature sets for EEG-based emotion recognition.
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spelling doaj.art-4ca5ba98df064925bce08b1a663add782024-03-14T04:34:37ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2024-03-011810.3389/fnins.2024.13555121355512Emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogramZhen WeiHongwei LiLin MaHaifeng LiIntroductionRecently, the microstate analysis method has been widely used to investigate the temporal and spatial dynamics of electroencephalogram (EEG) signals. However, most studies have focused on EEG at resting state, and few use microstate analysis to study emotional EEG. This paper aims to investigate the temporal and spatial patterns of EEG in emotional states, and the specific neurophysiological significance of microstates during the emotion cognitive process, and further explore the feasibility and effectiveness of applying the microstate analysis to emotion recognition.MethodsWe proposed a KLGEV-criterion-based microstate analysis method, which can automatically and adaptively identify the optimal number of microstates in emotional EEG. The extracted temporal and spatial microstate features then served as novel feature sets to improve the performance of EEG emotion recognition. We evaluated the proposed method on two publicly available emotional EEG datasets: the SJTU Emotion EEG Dataset (SEED) and the Database for Emotion Analysis using Physiological Signals (DEAP).ResultsFor the SEED dataset, 10 microstates were identified using the proposed method. These temporal and spatial features were fed into AutoGluon, an open-source automatic machine learning model, yielding an average three-class accuracy of 70.38% (±8.03%) in subject-dependent emotion recognition. For the DEAP dataset, the method identified 9 microstates. The average accuracy in the arousal dimension was 74.33% (±5.17%) and 75.49% (±5.70%) in the valence dimension, which were competitive performance compared to some previous machine-learning-based studies. Based on these results, we further discussed the neurophysiological relationship between specific microstates and emotions, which broaden our knowledge of the interpretability of EEG microstates. In particular, we found that arousal ratings were positively correlated with the activity of microstate C (anterior regions of default mode network) and negatively correlated with the activity of microstate D (dorsal attention network), while valence ratings were positively correlated with the activity of microstate B (visual network) and negatively correlated with the activity of microstate D (dorsal attention network).DiscussionIn summary, the findings in this paper indicate that the proposed KLGEV-criterion-based method can be employed to research emotional EEG signals effectively, and the microstate features are promising feature sets for EEG-based emotion recognition.https://www.frontiersin.org/articles/10.3389/fnins.2024.1355512/fullelectroencephalogrammicrostate analysisaffective computingemotion recognitionevoked emotions
spellingShingle Zhen Wei
Hongwei Li
Lin Ma
Haifeng Li
Emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogram
Frontiers in Neuroscience
electroencephalogram
microstate analysis
affective computing
emotion recognition
evoked emotions
title Emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogram
title_full Emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogram
title_fullStr Emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogram
title_full_unstemmed Emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogram
title_short Emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogram
title_sort emotion recognition based on microstate analysis from temporal and spatial patterns of electroencephalogram
topic electroencephalogram
microstate analysis
affective computing
emotion recognition
evoked emotions
url https://www.frontiersin.org/articles/10.3389/fnins.2024.1355512/full
work_keys_str_mv AT zhenwei emotionrecognitionbasedonmicrostateanalysisfromtemporalandspatialpatternsofelectroencephalogram
AT hongweili emotionrecognitionbasedonmicrostateanalysisfromtemporalandspatialpatternsofelectroencephalogram
AT linma emotionrecognitionbasedonmicrostateanalysisfromtemporalandspatialpatternsofelectroencephalogram
AT haifengli emotionrecognitionbasedonmicrostateanalysisfromtemporalandspatialpatternsofelectroencephalogram