Machine-learning-based diagnosis of schizophrenia using combined sensor-level and source-level EEG features.

Journal: Schizophrenia research
Published Date:

Abstract

Recently, an increasing number of researchers have endeavored to develop practical tools for diagnosing patients with schizophrenia using machine learning techniques applied to EEG biomarkers. Although a number of studies showed that source-level EEG features can potentially be applied to the differential diagnosis of schizophrenia, most studies have used only sensor-level EEG features such as ERP peak amplitude and power spectrum for machine learning-based diagnosis of schizophrenia. In this study, we used both sensor-level and source-level features extracted from EEG signals recorded during an auditory oddball task for the classification of patients with schizophrenia and healthy controls. EEG signals were recorded from 34 patients with schizophrenia and 34 healthy controls while each subject was asked to attend to oddball tones. Our results demonstrated higher classification accuracy when source-level features were used together with sensor-level features, compared to when only sensor-level features were used. In addition, the selected sensor-level features were mostly found in the frontal area, and the selected source-level features were mostly extracted from the temporal area, which coincide well with the well-known pathological region of cognitive processing in patients with schizophrenia. Our results suggest that our approach would be a promising tool for the computer-aided diagnosis of schizophrenia.

Authors

  • Miseon Shim
    Department of Biomedical Engineering, Hanyang University, Seoul, South Korea.
  • Han-Jeong Hwang
    Department of Medical IT Convergence Engineering, Kumoh National Institute of Technology, Gumi, South Korea.
  • Do-Won Kim
    Berlin Institute of Technology, Machine Learning Group, Marchstrasse 23, Berlin 10587, Germany.
  • Seung-Hwan Lee
    Department of Psychiatry, Clinical Emotion and Cognition Research Laboratory, Inje University, Goyang, Republic of Korea.
  • Chang-Hwan Im
    Department of Electronic Engineering, Hanyang University, Seoul, Republic of Korea.