Power spectral density-based resting-state EEG classification of first-episode psychosis

Sci Rep. 2024 Jul 2;14(1):15154. doi: 10.1038/s41598-024-66110-0.

Abstract

Historically, the analysis of stimulus-dependent time-frequency patterns has been the cornerstone of most electroencephalography (EEG) studies. The abnormal oscillations in high-frequency waves associated with psychotic disorders during sensory and cognitive tasks have been studied many times. However, any significant dissimilarity in the resting-state low-frequency bands is yet to be established. Spectral analysis of the alpha and delta band waves shows the effectiveness of stimulus-independent EEG in identifying the abnormal activity patterns of pathological brains. A generalized model incorporating multiple frequency bands should be more efficient in associating potential EEG biomarkers with first-episode psychosis (FEP), leading to an accurate diagnosis. We explore multiple machine-learning methods, including random-forest, support vector machine, and Gaussian process classifier (GPC), to demonstrate the practicality of resting-state power spectral density (PSD) to distinguish patients of FEP from healthy controls. A comprehensive discussion of our preprocessing methods for PSD analysis and a detailed comparison of different models are included in this paper. The GPC model outperforms the other models with a specificity of 95.78% to show that PSD can be used as an effective feature extraction technique for analyzing and classifying resting-state EEG signals of psychiatric disorders.

Keywords: EEG; First-episode psychosis; GPC; Machine-learning; PSD.

MeSH terms

  • Adolescent
  • Adult
  • Brain / physiopathology
  • Electroencephalography* / methods
  • Female
  • Humans
  • Machine Learning
  • Male
  • Psychotic Disorders* / diagnosis
  • Psychotic Disorders* / physiopathology
  • Rest / physiology
  • Signal Processing, Computer-Assisted
  • Support Vector Machine*
  • Young Adult