| Literature DB >> 30671443 |
Sanay Muhammad Umar Saeed1, Syed Muhammad Anwar2, Muhammad Majid1, Muhammad Awais3, Majdi Alnowami4.
Abstract
A study on classification of psychological stress in humans using electroencephalography (EEG) is presented. The stress is classified using a correlation-based feature subset selection method that efficiently reduces the feature vector length. In this study, twenty-eight participants are involved by filling in the perceived stress scale-10 (PSS-10) questionnaire and their EEG is also recorded in closed eye condition to measure the baseline stress. The recorded data is labelled on the basis of the stress level that is indicated by the participant's PSS score. The feature selection method has shown that, among the EEG oscillations, low beta, high beta, and low gamma are the most significant neural oscillations for classifying human stress. The proposed method not only reduces the time to build a classification model but also improves the classification accuracy up to 78.57% using a single channel wearable EEG device.Entities:
Mesh:
Year: 2018 PMID: 30671443 PMCID: PMC6323535 DOI: 10.1155/2018/1049257
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1A diagram showing major steps involved for human stress classification using electroencephalography.
Frequency bands of the EEG oscillatory subbands involved in feature vector creation to classify stress.
| Sr. No. | Neural Oscillations | Bands |
|---|---|---|
| 1 | Delta | 1 |
| 2 | Theta | 4 |
| 3 | Low Alpha | 8 |
| 4 | High Alpha | 10 |
| 5 | Low beta | 13 |
| 6 | High beta | 18 |
| 7 | Low Gamma | 31 |
| 8 | Mid Gamma | 41 |
Figure 2PSS scores for the participants involved in the study. The horizontal line represents the threshold value.
Figure 3A breakdown in terms of the percentage of selected EEG subband oscillatory features by using correlation-based feature subset selection.
A comparison of the performance parameters of algorithm used for classification of human stress using single channel headset.
| Neural Oscillations | ACC (%) | Kappa | F-Measure | Time (sec) | RMSE | RAE | Classifier |
|---|---|---|---|---|---|---|---|
| All Oscillations ([ | 71.43 | 0.21 | 0.531 | 0.080 | 64.61 | 114.03 | Naive Bayes |
| Low Beta ([ | 71.43 | 0.2 | 0.662 | 0.004 | 52.00 | 65.29 | SVM |
| Discrete Cosine Transform ([ | 72.00 | − | − | − | − | − | K-nearest Neighbour |
| delta, theta, alpha and beta and IMFs ([ | 83.33 | − | − | − | − | − | Naive Bayes |
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Figure 4Trend lines showing the normalized power and the PSS scores for all participants in oscillatory band (a) delta, (b) theta, (c) low alpha, (d) high alph,a (e) low beta, (f) high beta, (g) low gamma, and (h) mid gamma.