A deep learning framework for automatic diagnosis of unipolar depression

Affiliation auteursAffiliation ok
TitreA deep learning framework for automatic diagnosis of unipolar depression
Type de publicationJournal Article
Year of Publication2019
AuteursMumtaz W, Qayyum A
JournalINTERNATIONAL JOURNAL OF MEDICAL INFORMATICS
Volume132
Pagination103983
Date PublishedDEC
Type of ArticleArticle
ISSN1386-5056
Mots-clésConvolutional neural network for depression, EEG-based deep learning for depression, EEG-based diagnosis of unipolar depression, EEG-based machine learning methods for depression, Long short-term memory classifiers for depression
Résumé

{Background and purpose: In recent years, the development of machine learning (ML) frameworks for automatic diagnosis of unipolar depression has escalated to a next level of deep learning frameworks. However, this idea needs further validation. Therefore, this paper has proposed an electroencephalographic (EEG)-based deep learning framework that automatically discriminated depressed and healthy controls and provided the diagnosis. Basic procedures: In this paper, two different deep learning architectures were proposed that utilized one dimensional convolutional neural network (1DCNN) and 1DCNN with long short-term memory (LSTM) architecture. The proposed deep learning architectures automatically learn patterns in the EEG data that were useful for classifying the depressed and healthy controls. In addition, the proposed models were validated with resting-state EEG data obtained from 33 depressed patients and 30 healthy controls. Main findings: As results, significant differences were observed between the two groups. The classification results involving the CNN model were accuracy=98.32%

DOI10.1016/j.ijmedinf.2019.103983