ENHANCED ANALYSIS OF EEG SIGNALS IN ASD INDIVIDUALS ACROSS EMOTIONAL STATES USING A WIRELESS DRY ELECTRODE EEG SYSTEM
DOI:
https://doi.org/10.11113/jurnalteknologi.v87.20350Keywords:
EEG, ASD, Emotion, T-test, Typical DevelopmentAbstract
Individuals with autism frequently struggle with emotion expression and emotion regulation. This study examines the relationship between electroencephalogram (EEG) band signal amplitude and mood in individuals with autism spectrum disorder (ASD) and typically developing (TD) individuals. Ten individuals with ASD and ten individuals with TD participated in this study. The participants wore wireless dry EEG sensors (MUSE 2) in order to get the EEG signal. The previously processed signals were classified as delta, beta, theta, delta, and gamma waves. In addition, positive mood, neutral emotion, and negative emotion are categorized in this study. In conclusion, the results of this investigation revealed substantial disparities in EEG signal amplitude between those with ASD and those with TD when experiencing distinct emotions. There are significant differences in 13 out of 20 EEG band signals from 4 electrodes for particular emotions in the ASD group.
References
S. Vanwoerden, S. D. Stepp. 2022. The Diagnostic and Statistical Manual of Mental Disorders. Fifth Edition. Alternative Model Conceptualization of Borderline Personality Disorder: A Review of the Evidence. Personal Disord. 13: 402–406.
C. Sarmiento, C. Lau. 2020. Diagnostic and Statistical Manual of Mental Disorders. 5th Ed. DSM-5. 125–129.
H. L. Hudson, C. C. Harkness, K. L. 2019. Prevalence of Depressive Disorders in Individuals with Autism Spectrum Disorder: A Meta-analysis. J Abnorm Child Psychol. 47: 165–175. 10.1007/s10802-018-0402-1.
G. Szumski, J. Smogorzewska, P. Grygiel, and A. M. Orlando, 2019. Examining the Effectiveness Of Naturalistic Social Skills Training in Developing Social Skills and Theory of Mind in Preschoolers with ASD. Journal of Autism and Developmental Disorders. 49(7): 2822–2837.
K. J. Trevis, N. J. Brown, C. C. Green, P. J. Lockhart, et al. 2020. Tracing Autism Traits in Large Multiplex Families to Identify Endophenotypes of the Broader Autism Phenotype. Int J Mol Sci. 21: 7965–7984.
S. N. Avery, S. Heckers, J. U. Blackford, R. M. VanDerKlok. 2016. Impaired Face Recognition is associated with social inhibition. Psychiatry Research. 236: 53–57. 10.1016/j.psychres.2015.12.035.
Dallman, Aaron. 2024. Affective Contact in Autism: A Phenomenological Study of the Emotional Experiences of Autistic Adults. The American Journal of Occupational Therapy. 78.
G. Szumski, J. Smogorzewska, P. Grygiel, A. M. Orlando, 2019. Examining the Effectiveness of Naturalistic Social Skills Training in Developing Social Skills and Theory of Mind in Preschoolers with ASD. J Autism Dev Disord. 49: 2822–2837.
Rolland, T., Cliquet, F., Anney, R. J. L. et al. 2023. Phenotypic Effects of Genetic Variants Associated with Autism. Nat Med. 29: 1671–1680.
S. N. Avery, S. Heckers, J. U. Blackford, R. M. VanDerKlok. 2016. Impaired Face Recognition is Associated with Social Inhibition. Psychiatry Research. 236: 53–57.
K. Kihara, Y. Takeda, 2019. The Role of Low-Spatial Frequency Components in the Processing of Deceptive Faces: A Study Using Artificial Face Models. Front. Psychol. 10: 1–10.
Habata, K., Cheong, Y., Kamiya, T. et al. 2021. Relationship between Sensory Characteristics and Cortical Thickness/Volume in Autism Spectrum Disorders. Transl Psychiatry. 11: 616–623.
P. Diaz, P. R. Peluso, R. Freund, A. Z. Baker and G. Peña, 2023. Understanding the Role of Emotion and Expertise in Psychotherapy: An Application of Dynamical Systems Mathematical Modeling to an Entire Course of Therapy. Front. Psychiatry. 14: 1–11.
S. Deng, 2023. Face Expression Image Detection and Recognition based on Big Data Technology. International Journal of Intelligent Networks. 4: 218–223.
Al Machot, F., Elmachot, A., Ali, M., Al Machot, E., & Kyamakya, K. 2019. A Deep-Learning Model for Subject-Independent Human Emotion Recognition Using Electrodermal Activity Sensors. Sensors (Basel, Switzerland), 19: 1659. https://doi.org/10.3390/s19071659.
Kerkeni, Leila & Serrestou, Youssef & Raoof, Kosai & Cléder, Catherine & Mahjoub, Mohamed & Mbarki, Mohamed. 2019. Automatic Speech Emotion Recognition Using Machine Learning. IntechOpen. 10.5772/intechopen.84856
Loth, E., Garrido, L., Ahmad, J. et al. 2018. Facial Expression Recognition as a Candidate Marker for Autism Spectrum Disorder: How Frequent and Severe are Deficits? Molecular Autism. 9.
L. Vaiani , L. Cagliero and P. Garza. 2024. Emotion Recognition from Videos Using Multimodal Large Language Models. Future Internet. 16: 247–264.
I. Hina, A. Shaukat and M. U. Akram. 2022. Multimodal Emotion Recognition using Deep Learning Architectures. 2nd International Conference on Digital Futures and Transformative Technologies (ICoDT2). 1–6.
T. Hirota, B. H. King, 2023. Autism Spectrum Disorder: A Review. JAMA. 329: 157–168.
Joseph, 2021. Autism: A Spectrum Disorder. The American Journal of Medicine. 701–702.
R. M. Rady, N. D. Moussa, D. H. E. Salmawy, M. R. M. Rizk, O. A. Alim. 2022. A Comparison between Classical and New Proposed Feature Selection Methods for Attention Level Recognition in Disordered Children. Alexandria Engineering Journal. 61: 12785–12795.
M. Alneyadi, N. Drissi, M. Almeqbaali, S. Ouhbi. 2021. Biofeedback-Based Connected Mental Health Interventions for Anxiety: Systematic Literature Review. JMIR Mhealth Uhealth. 9: 1–9.
Hinrichs, H., Scholz, M., Baum, A.K. et al. 2020. Comparison between a Wireless Dry Electrode EEG System with a Conventional Wired Wet Electrode EEG System for Clinical Applications. Sci Rep. 10: 5218. 10.1038/s41598-020-62154-0.
Kumar, Akhilesh, and A. Kumar. 2021. DEEPHER: Human Emotion Recognition Using an EEG-Based DEEP Learning Network Model. Engineering Proceedings. 10: 32–38.
W. Xiaoman, W. Huang, S. Liu, H. Chunhua, et al. 2024. Music Therapy for Depression: A Narrative Review. Brain-X. 2: 1–17.
F. Duan, K. Watanabe, M.Kikuchi, et al. 2017. Detection of Atypical Network Development Patterns in Children with Autism Spectrum Disorder using Magnetoencephalography. PLoS One. 12: 1–24.
Fedotchev, S. B. Parin, S. Polevaia, S. Velikova. 2017. Brain-computer Interface and Neurofeedback Technologies: Current State, Problems and Clinical Prospects (Review). Sovremennye Tehnologi V Medicine. 9: 175–184.
Gurau, C. Newton, W. Bosl. 2017. How Useful is Electroencephalography in the Diagnosis of Autism Spectrum Disorders and the Delineation of Subtypes: A Systematic Review. Front Psychiatry. 8: 12–24.
Górecka, J., & Makiewicz, P. 2019. The Dependence of Electrode Impedance on the Number of Performed EEG Examinations. Sensors (Basel, Switzerland). 19: 2608.
Ng, C. R., Fiedler, P., Kuhlmann, L., Liley, D., Vasconcelos, B., Fonseca, C., Tamburro, G., Comani, S., Lui, T. K. -Y., Tse, C. -Y., et al. 2022. Multi-Center Evaluation of Gel-Based and Dry Multipin EEG Caps. Sensors. 22: 8079–8095.
Hinrichs, H., Scholz, M., Baum, A. K. et al. 2020. Comparison between a Wireless Dry Electrode EEG System with a Conventional Wired Wet Electrode EEG System for Clinical Applications. Sci Rep. 10: 5218.
Asif, M. Majid and S. M. Anwar. 2019. Human Stress Classification using EEG Signals in Response to Music Tracks. Computers in Biology and Medicine. 107: 182–196.
Alfonso, B., Taverner, J., Vivancos, E., Botti, V. 2021. From Affect Theoretical Foundations to Computational Models of Intelligent Affective Agents. Applied Sciences. 11: 10874–10903.
Kaur, B., Singh, D., Roy, P. P. 2018. EEG-based Emotion Classification Mechanism in BCI. Procedia Comput. Sci. 132: 752–758
Sawangjai, P., Hompoonsup, S., Leelaarporn, P., Kongwudhikunakorn, S., Wilaiprasitporn, T. 2019. Consumer-grade EEG MeasuringSensors as Research Tools: A Review. IEEE Sens. J. 20: 3996–4024.
A. Chaddad, Y. Wu, R. Kateb, A. Bouridane. 2023. Electroencephalography Signal Processing: A Comprehensive Review and Analysis of Methods and Techniques. Sensors. 23: 6434–6461.
T. Andrillon. 2023. How We Sleep: From Brain States to Processes. Revue Neurologique. 179: 649–657.
A. T. Nguyen, W. P. Hetrick, B. F. O'Donnell, C. A. Brenner. 2020. Abnormal Beta and Gamma Frequency Neural Oscillations Mediate Auditory Sensory Gating Deficit in Schizophrenia. Neurophysiol. 124: 13–21.f
C. H. Yeh, B. Al-Fatly, A. A. Kühn, A. C. Meidahl, G. Tinkhauser, H. Tan, P. Brown. 2007. Waveform Changes with the Evolution of Beta Bursts in the Human Subthalamic Nucleus. Clinical Neurophysiology. 131: 2086–2099.
An, K., Ikeda, T., Yoshimura, Y., Hasegawa, C., Saito, D. N., Kumazaki, H., and Kikuchi, M. 2018. Altered Gamma Oscillations during Motor Control in Children with Autism Spectrum Disorder. The Journal of Neuroscience. 38: 7878–7886.
Posada-Quintero, H. F., Reljin, N., Bolkhovsky, J. B., Orjuela-Cañón, A. D., & Chon, K. H. 2019. Brain Activity Correlates With Cognitive Performance Deterioration During Sleep Deprivation. Frontiers in neuroscience. 13: 1001.
D. Spain, J. Sin, K. B. Linder, J. McMahon, F. Happé. 2018. Social Anxiety in Autism Spectrum Disorder: A Systematic Review. Research in Autism Spectrum Disorders. 52: 51–68. 10.3389/fnins.2019.01001.
E. Rinaldo, A. Perry. 2023. Associations of Age, Anxiety, Cognitive Functioning, and Social Impairment with Aggression in Youth with Autism. Research in Autism Spectrum Disorders. 108: 102246–102257.
J. Chen, J. Li, H. Xu, J. Li, Y. Yuan, X. Xu, Y. Bi. 2023. Phosphatidylserine: An Overview of Functionality, Processing Techniques, Patents, and Prospects. Grain & Oil Science and Technology. 6: 206–218.
F. Castro, B. Lenggenhager, D. Zeller, G. Pellegrino, M. D’Alonzo, G. D. Pino. 2023. From Rubber Hands to Neuroprosthetics: Neural Correlates of Embodiment. Neuroscience & Biobehavioral Reviews. 153: 105351–105365.
A. Uslu, M. Ergen, H. Demirci, E. Lohmann, H. Hanagasi, T. Demiralp. 2020. Event-related Potential Changes due to Early-onset Parkinson’s Disease in Parkin (PARK2) Gene Mutation Carriers and Non-carriers. Clinical Neurophysiology. 131: 1444–1452.
Downloads
Published
Issue
Section
License
Copyright of articles that appear in Jurnal Teknologi belongs exclusively to Penerbit Universiti Teknologi Malaysia (Penerbit UTM Press). This copyright covers the rights to reproduce the article, including reprints, electronic reproductions, or any other reproductions of similar nature.













