EEG based functional connectivity in resting and emotional states may identify major depressive disorder using machine learning.
Clin Neurophysiol
; 164: 130-137, 2024 Aug.
Article
de En
| MEDLINE
| ID: mdl-38870669
ABSTRACT
OBJECTIVE:
Disrupted brain network connectivity underlies major depressive disorder (MDD). Altered EEG based Functional connectivity (FC) with Emotional stimuli in major depressive disorder (MDD) in addition to resting state FC may help in improving the diagnostic accuracy of machine learning classification models. We explored the potential of EEG-based FC during resting state and emotional processing, for diagnosing MDD using machine learning approach.METHODS:
EEG was recorded during resting state and while watching emotionally contagious happy and sad videos in 24 drug-naïve MDD patients and 25 healthy controls. FC was quantified using the Phase Lag Index. Three Random Forest classifier models were constructed to classify MDD patients and healthy controls, Model-I incorporating FC features from the resting state and Model-II and Model-III incorporating FC features while watching happy and sad videos respectively.RESULTS:
Important features distinguishing MDD and healthy controls were from all frequency bands and represent functional connectivity between fronto-temporal, fronto-parietal and fronto occipital regions. The cross-validation accuracies for Model-I, Model-II and Model-III were 92.3%, 94.9% and 89.7% and test accuracies were 60%, 80% and 70% respectively. Incorporating emotionally contagious videos improved the classification accuracies.CONCLUSION:
Findings support EEG FC patterns during resting state and emotional processing along with machine learning can be used to diagnose MDD. Future research should focus on replicating and validating these results.SIGNIFICANCE:
EEG FC pattern combined with machine learning may be used for assisting in diagnosing MDD.Mots clés
Texte intégral:
1
Collection:
01-internacional
Base de données:
MEDLINE
Sujet principal:
Trouble dépressif majeur
/
Électroencéphalographie
/
Émotions
/
Apprentissage machine
Limites:
Adult
/
Female
/
Humans
/
Male
/
Middle aged
Langue:
En
Journal:
Clin Neurophysiol
/
Clin. neurophysiol
/
Clinical neurophysiology
Sujet du journal:
NEUROLOGIA
/
PSICOFISIOLOGIA
Année:
2024
Type de document:
Article
Pays d'affiliation:
Inde
Pays de publication:
Pays-Bas