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Continuous Scoring of Depression From EEG Signals via a Hybrid of Convolutional Neural Networks

S. Hashempour, R. Boostani, M. Mohammadi, S. Sanei

2022IEEE Transactions on Neural Systems and Rehabilitation Engineering54 citationsDOIOpen Access PDF

Abstract

Depression score is traditionally determined by taking the Beck depression inventory (BDI) test, which is a qualitative questionnaire. Quantitative scoring of depression has also been achieved by analyzing and classifying pre-recorded electroencephalography (EEG) signals. Here, we go one step further and apply raw EEG signals to a proposed hybrid convolutional and temporal-convolutional neural network (CNN-TCN) to continuously estimate the BDI score. In this research, the EEG signals of 119 individuals are captured by 64 scalp electrodes through successive eyes-closed and eyes-open intervals. Moreover, all the subjects take the BDI test and their scores are determined. The proposed CNN-TCN provides mean squared error (MSE) of 5.64±1.6 and mean absolute error (MAE) of 1.73±0.27 for eyes-open state and also provides MSE of 9.53±2.94 and MAE of 2.32±0.35 for the eyes-closed state, which significantly surpasses state-of-the-art deep network methods. In another approach, conventional EEG features are elicited from the EEG signals in successive frames and apply them to the proposed CNN-TCN in conjunction with known statistical regression methods. Our method provides MSE of 10.81±5.14 and MAE of 2.41±0.59 that statistically outperform the statistical regression methods. Moreover, the results with raw EEG are significantly better than those with EEG features.

Topics & Concepts

ElectroencephalographyPattern recognition (psychology)Artificial intelligenceConvolutional neural networkComputer scienceMean squared errorArtificial neural networkRegressionBeck Depression InventorySpeech recognitionRegression analysisFeature (linguistics)StatisticsDepression (economics)Linear regressionFeature extractionStatistical hypothesis testingMathematicsPsychologyMachine learningBrain activity and meditationEEG and Brain-Computer InterfacesEmotion and Mood RecognitionECG Monitoring and Analysis