Результаты исследований: Материалы конференций › материалы › Рецензирование
Using PCA Machine Learning Approach Based on Psychological Questionnaires and Spectral Characteristics of the EEG to Separate the Healthy Participants and Participants with Major Depressive Disorder. / Merkulova, Ekaterina a.; Kozulin, Igor a.; Savostyanov, Alexandr n. и др.
2023. 1740-1745 Работа представлена на 2023 IEEE 24th International Conference of Young Professionals in Electron Devices and Materials (EDM).Результаты исследований: Материалы конференций › материалы › Рецензирование
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TY - CONF
T1 - Using PCA Machine Learning Approach Based on Psychological Questionnaires and Spectral Characteristics of the EEG to Separate the Healthy Participants and Participants with Major Depressive Disorder
AU - Merkulova, Ekaterina a.
AU - Kozulin, Igor a.
AU - Savostyanov, Alexandr n.
AU - Bocharov, Andrey v.
AU - Privodnova, Evgeniya yu.
PY - 2023/6/29
Y1 - 2023/6/29
N2 - Statistical method Principal Component Analysis (PCA) based on psychological questionnaires and EEG spectral characteristics was used to reduce the complex data by finding the most important variables to separate the healthy participants and participants with major depressive disorder from clinie of the State Researeh Institute of Neuroseienees and Medieine. The basic idea of PCA is to identify data patterns that are difficult to see otherwise. In this article it was used PCA for disease classification. We applied PCA to reduce the data dimensionality, for uncovering hidden patterns or relationships between the features. Finally, we trained the classification model on the reduced data to distinguish between healthy participants and participants with major depressive disorder. The study aimed to investigate the relationship between psychological factors and EEG spectral characteristics in participants with major depressive disorder. The study found that there was a significant correlation between the severity of depression and the EEG spectral characteristics. These findings suggest that the combination of psychological questionnaires and EEG spectral characteristics could be a useful tool for the diagnosis and classification of major depressive disorder.
AB - Statistical method Principal Component Analysis (PCA) based on psychological questionnaires and EEG spectral characteristics was used to reduce the complex data by finding the most important variables to separate the healthy participants and participants with major depressive disorder from clinie of the State Researeh Institute of Neuroseienees and Medieine. The basic idea of PCA is to identify data patterns that are difficult to see otherwise. In this article it was used PCA for disease classification. We applied PCA to reduce the data dimensionality, for uncovering hidden patterns or relationships between the features. Finally, we trained the classification model on the reduced data to distinguish between healthy participants and participants with major depressive disorder. The study aimed to investigate the relationship between psychological factors and EEG spectral characteristics in participants with major depressive disorder. The study found that there was a significant correlation between the severity of depression and the EEG spectral characteristics. These findings suggest that the combination of psychological questionnaires and EEG spectral characteristics could be a useful tool for the diagnosis and classification of major depressive disorder.
KW - PCA
KW - electroencephalogram
KW - hypothesis testing
KW - machine learning
KW - processing of experimental data
UR - https://www.mendeley.com/catalogue/4708804c-ff9c-33d5-94ae-805a0621adbc/
U2 - 10.1109/EDM58354.2023.10225096
DO - 10.1109/EDM58354.2023.10225096
M3 - Paper
SP - 1740
EP - 1745
T2 - 2023 IEEE 24th International Conference of Young Professionals in Electron Devices and Materials (EDM)
Y2 - 29 June 2023 through 3 July 2023
ER -
ID: 61403819