[Identifying Depressive Disorder With Sleep Electroencephalogram Data: A Study Based on Deep Learning].

Sichuan Da Xue Xue Bao Yi Xue Ban

Department of Sleep Medicine, Peking University Sixth Hospital, Peking University Institute of Mental Health, and Key Laboratory of Mental Health of the National Health Commission (Peking University), Beijing 100191, China.

Published: March 2023

AI Article Synopsis

  • The study investigates the use of a deep learning approach that integrates Vision Transformer (ViT) and Transformer to identify depressive disorder from sleep EEG signals.
  • The research involves preprocessing EEG data from 28 patients with depression and 37 control participants, converting the signals into images, and analyzing them to extract relevant features for classification.
  • Results indicate that the combination of delta, theta, and beta waves from REM sleep leads to high accuracy (92.8%) and precision (93.8%) in detecting depression, with generally lower performance during sleep stage transitions.

Article Abstract

Objective: To explore the effectiveness of using deep learning network combined Vision Transformer (ViT) and Transformer to identify patients with depressive disorder on the basis of their sleep electroencephalogram (EEG) signals.

Methods: The sleep EEG signals of 28 patients with depressive disorder and 37 normal controls were preprocessed. Then, the signals were converted into image format and the feature information on frequency domain and spatial domain was retained. After that, the images were transmitted to the ViT-Transformer coding network for deep learning of the EEG signal characteristics of the rapid eye movement (REM) sleep and non-rapid eye movement (NREM) sleep in patients with depressive disorder and those in normal controls, respectively, and to identify patients with depressive disorder.

Results: Based on the ViT-Transformer network, after examining different EEG frequencies, we found that the combination of delta, theta, and beta waves produced better results in identifying depressive disorder. Among the different EEG frequencies, EEG signal features of delta-theta-beta combination waves in REM sleep achieved 92.8% accuracy and 93.8% precision for identifying depression, with the recall rate of patients with depression being 84.7%, and the F value being 0.917±0.074. When using the delta-theta-beta combination EEG signal features in NREM sleep to identify depressive disorder, the accuracy was 91.7%, the precision was 90.8%, the recall rate was 85.2%, and the F value was 0.914±0.062. In addition, through visualization of the sleep EEG of different sleep stages for the whole night, it was found that classification errors usually occurred during transition to a different sleep stage.

Conclusion: Using the deep learning ViT-Transformer network, we found that the EEG signal features in REM sleep based on delta-theta-beta combination waves showed better effect in identifying depressive disorder.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10409169PMC
http://dx.doi.org/10.12182/20230360212DOI Listing

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