Machine learning-based classification using electroencephalographic multi-paradigms between drug-naïve patients with depression and healthy controls

J Affect Disord. 2023 Oct 1:338:270-277. doi: 10.1016/j.jad.2023.06.002. Epub 2023 Jun 2.

Abstract

Background: Electroencephalography (EEG) is a supplementary diagnostic tool in psychiatry but lacks practical usage. EEG has demonstrated inconsistent diagnostic ability because major depressive disorder (MDD) is a heterogeneous psychiatric disorder with complex pathologies. In clinical psychiatry, it is essential to detect these complexities using multiple EEG paradigms. Though the application of machine learning to EEG signals in psychiatry has increased, an improvement in its classification performance is still required clinically. We tested the classification performance of multiple EEG paradigms in drug-naïve patients with MDD and healthy controls (HCs).

Methods: Thirty-one drug-naïve patients with MDD and 31 HCs were recruited in this study. Resting-state EEG (REEG), the loudness dependence of auditory evoked potentials (LDAEP), and P300 were recorded for all participants. Linear discriminant analysis (LDA) and support vector machine (SVM) classifiers with t-test-based feature selection were used to classify patients and HCs.

Results: The highest accuracy was 94.52 % when 14 selected features, including 12 P300 amplitudes (P300A) and two LDAEP features, were layered. The accuracy was 90.32 % when a SVM classifier for 30 selected features (14 P300A, 14 LDAEP, and 2 REEG) was layered in comparison to each REEG, P300A, and LDAEP, the best accuracies of which were 71.57 % (2-layered with LDA), 87.12 % (1-layered with LDA), and 83.87 % (6-layered with SVM), respectively.

Limitations: The present study was limited by small sample size and difference in formal education year.

Conclusions: Multiple EEG paradigms are more beneficial than a single EEG paradigm for classifying drug-naïve patients with MDD and HCs.

Keywords: Depression; Drug-Naïve patient; Electroencephalography; Loudness dependence of auditory evoked potential; P300.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Depression
  • Depressive Disorder, Major* / diagnosis
  • Electroencephalography
  • Evoked Potentials, Auditory
  • Humans
  • Machine Learning
  • Support Vector Machine