Single-Trial Cognitive Stress Classification Using Portable Wireless Electroencephalography

Justin A. Blanco, Ann C. Vanleer, Taylor K. Calibo, Samara L. Firebaugh

Research output: Contribution to journalArticlepeer-review

Abstract

This work used a low-cost wireless electroencephalography (EEG) headset to quantify the human response to different cognitive stress states on a single-trial basis. We used a Stroop-type color⁻word interference test to elicit mild stress responses in 18 subjects while recording scalp EEG. Signals recorded from thirteen scalp locations were analyzed using an algorithm that computes the root mean square voltages in the theta (4⁻8 Hz), alpha (8⁻13 Hz), and beta (13⁻30 Hz) bands immediately following the initiation of Stroop stimuli; the mean of the Teager energy in each of these three bands; and the wideband EEG signal line-length and number of peaks. These computational features were extracted from the EEG signals on thirteen electrodes during each stimulus presentation and used as inputs to logistic regression, quadratic discriminant analysis, and k-nearest neighbor classifiers. Two complementary analysis methodologies indicated classification accuracies over subjects of around 80% on a balanced dataset for the logistic regression classifier when information from all electrodes was taken into account simultaneously. Additionally, we found evidence that stress responses were preferentially time-locked to stimulus presentation, and that certain electrode⁻feature combinations worked broadly well across subjects to distinguish stress states.

Original languageEnglish
Article number499
JournalSensors (Basel, Switzerland)
Volume19
Issue number3
DOIs
Publication statusPublished - 2019 Jan 25

Subject classification (UKÄ)

  • Medical Laboratory and Measurements Technologies

Free keywords

  • Biomedical signal processing
  • Brain–computer interface
  • Cognitive stress
  • Electroencephalography
  • Stroop test

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