TDD:Auxiliary framework for recognizing people with depression based on physiological and emotional characteristics of EEG signals
Due to the severe imbalance of the doctor-patient ratio in the world, many patients cannot get mental health diagnoses in time, and there is a lack of objective diagnostic methods for depression at present. To address these issues rapidly and automatically, this paper proposes a new framework, Two-t...
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Published in | 2022 Euro-Asia Conference on Frontiers of Computer Science and Information Technology (FCSIT) pp. 164 - 169 |
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Main Authors | , , , , , |
Format | Conference Proceeding |
Language | English |
Published |
IEEE
01.12.2022
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Subjects | |
Online Access | Get full text |
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Summary: | Due to the severe imbalance of the doctor-patient ratio in the world, many patients cannot get mental health diagnoses in time, and there is a lack of objective diagnostic methods for depression at present. To address these issues rapidly and automatically, this paper proposes a new framework, Two-tracks depression diagnosis(TDD), which only requires subjects to watch 60 seconds of emotion-induced material. The framework can extract linear and nonlinear features from Electro-EncephaloGram(EEG) signals for identifying depression. At the same time, it effectively extracts the subjects' emotional features as cues for identifying depression under the guidance of the emotion-induced paradigm. The accuracy of this method in a normal environment can reach 89.03%. The robustness of TDD is obviously better when using cross-individual physiological signals to train the model. Under the condition of using all subjects, the accuracy of TDD is 11.71% higher than that of the model using only physiological signal features. TDD is completely based on objective physiological signals for depression detection, which are difficult to be manipulated subjectively. Therefore, this method can eliminate subjective interference and make the results more realistic and objective than scale detection. |
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DOI: | 10.1109/FCSIT57414.2022.00041 |