An automated drug dependence detection system based on EEG

Comput Biol Med. 2023 May:158:106853. doi: 10.1016/j.compbiomed.2023.106853. Epub 2023 Apr 4.

Abstract

Objective: Substance abuse causes damage to the brain structure and function. This research aim is to design an automated drug dependence detection system based on EEG signals in a Multidrug (MD) abuser.

Methods: EEG signals were recorded from participants categorized into MD-dependents (n = 10) and Healthy Control (HC) (n = 12). The Recurrence Plot investigates the dynamic characteristics of the EEG signal. The entropy index (ENTR) measured from the Recurrence Quantification Analysis was considered the complexity index of the delta, theta, alpha, beta, gamma, and all-band EEG signals. Statistical analysis was performed by t-test. The support vector machine technique was used for the data classification.

Results: The results show decreased ENTR indices in the delta, alpha, beta, gamma, and all-band EEG signal and increased theta band in MD abusers compared to the HC group. That indicated the reduction of complexity in the delta, alpha, beta, gamma, and all-band EEG signals in the MD group. Additionally, the SVM classifier distinguished the MD group from the HC group with 90% accuracy, 89.36% sensitivity, 90.7% specificity, and 89.8% F1 score.

Conclusions and significance: The nonlinear analysis of brain data was used to build an automatic diagnostic aid system that could identify HC people apart from those who abuse MD.

Keywords: Diagnostic aid system; ENTR; Multidrug abusers; Recurrence quantification analysis.

MeSH terms

  • Electroencephalography* / methods
  • Entropy
  • Humans
  • Signal Processing, Computer-Assisted*
  • Support Vector Machine