One-Channel Wearable Mental Stress State Monitoring System
Abstract
:1. Introduction
- The development of a wearable system that integrates the information of EEGs and GSR, which can be used for the detection of elevations in stress. Usually, GSR systems are independent of EEGs and are used in research lab environments. Integrating both in a wearable system reduces the size of the device and the level of complexity while still maintaining a high accuracy.
- An EEG system comprising a 10–20 electrode system that uses the standard placement of electrodes on the scalp. They are high-density for use in research labs and clinical settings. Hence, it is difficult to use one-channel systems to identify and localize the source of stress. This study investigates and proposes a practical location for one-channel electrodes suitable for the detection of stress elevations using EEGs and GSR.
- This paper also proposes a frequency to induce sweat on the scalp and aid in the detection of stress using GSR.
2. Methodology
2.1. Data Acquisiton System
2.2. Mechanical Framework for Electrode
2.3. Mental Stress Task
2.4. Experimental Protocol
2.5. Subjects
2.6. Data Analysis
2.7. Signal Processing
2.8. Feature Extraction
3. Results
3.1. Hardware Testing of the Monitoring System to Detect Stress
3.2. Removal of Noise and Artifacts from EEG
3.3. Mental Stress Detection Using EEG
3.4. Classification of Stress Using EEG Only
3.5. Optimum Electrode Location to Detect Stress Response in EEG
3.6. Subjective and Behavioural Data for Control and Stress Phase
3.7. Stress Detection through the Integration of EEGs and GSR
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Acronym | Full Name | Description |
---|---|---|
EEG | Electroencephalogram | A method used to record the electrical activity of the brain, primarily used in this context for monitoring mental stress. |
GSR | Galvanic Skin Response | A method of measuring the electrical conductance of the skin, which varies with its moisture level due to sweat, used as an indicator of psychological or physiological arousal. |
SCWT | Stroop Color and Word Test | A psychological test involving the naming of the color of a word which is printed in a different color and that is used to induce stress and measure cognitive function. |
SNS | Sympathetic Nervous System | Part of the autonomic nervous system that activates the fight-or-flight response, releasing stress hormones. |
ANS | Autonomic Nervous System | Controls involuntary bodily functions such as heart rate, digestion, and respiratory rate and is involved in stress responses. |
CNS | Central Nervous System | Comprises the brain and spinal cord and controls most functions of the body and mind. |
RESPR | Respiration Rate | The number of breaths taken per minute, used in monitoring physiological responses to stress. |
ECG | Electrocardiogram | A recording of the electrical activity of the heart, sometimes used in stress monitoring. |
SC | Skin Conductance | Another term for galvanic skin response, measuring the conductance of the skin which varies with moisture level. |
EDA | Electrodermal Activity | A measure of the skin’s ability to conduct electricity, which varies with its moisture level and is used to gauge emotional and physiological arousal. |
TSST | Trier Social Stress Test | A commonly used protocol to induce stress in research participants through public speaking and mental arithmetic tasks. |
FP1 | Frontopolar 1 | An electrode position in the EEG system, located at the front of the scalp. |
FP2 | Frontopolar 2 | An electrode position in the EEG system, located at the front of the scalp. |
F7 | Frontal 7 | An electrode position in the EEG system, located at the front of the scalp, on the left side. |
F8 | Frontal 8 | An electrode position in the EEG system, located at the front of the scalp, on the right side. |
SLS | Selective Laser Sintering | A three-dimensional printing technology that uses a laser to sinter powdered material, binding it together to create a solid structure, often used for creating prototypes and end-use parts. |
PA12 | Polyamide 12 | A type of thermoplastic polymer used in three-dimensional printing and other applications. |
PSS | Perceived Stress Scale | A psychological instrument used to measure the perception of stress. |
PSD | Power Spectral Density | A measure of the power present in a signal as a function of frequency, used in signal processing. |
IRB | Institutional Review Board | A committee that reviews and approves research involving human subjects to ensure ethical standards are met. |
ADC | Analog-to-Digital Converter | A device that converts analog signals to digital data for processing. |
KNN | K-Nearest Neighbors | A machine learning algorithm used for classification and regression tasks. |
SVM | Support Vector Machine | A supervised learning algorithm used for classification and regression analysis. |
DT | Decision Tree | A decision support tool that uses a tree-like model of decisions and their possible consequences. |
DA | Discriminant Analysis | A statistical technique used to classify a set of observations into predefined classes. |
NB | Naive Bayes | A classification technique based on Bayes’s theorem with an assumption of independence between predictors. |
LDA | Linear Discriminant Analysis | A classification and dimensionality reduction technique in machine learning. |
V-I | Voltage–Current | Refers to the relationship between voltage and current in electrical circuits. |
EMG | Electromyography | A technique for evaluating and recording the electrical activity produced by skeletal muscles. |
EOG | Electrooculography | A technique for measuring the corneo-retinal standing potential that exists between the front and the back of the human eye. |
LS | Low Stress | A category indicating a low level of stress, determined by the perceived stress scale. |
MS | Medium Stress | A category indicating a medium level of stress, determined by the perceived stress scale. |
HS | High Stress | A category indicating a high level of stress, determined by the perceived stress scale. |
HRV | Heart Rate Variability | The variation in the time interval between heartbeats, used as an indicator of stress and autonomic nervous system activity. |
Sens. | Sensitivity | Measures how well a machine learning model can detect positive instances. |
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Accuracy and Sensitivity (Sens.) for Each Classifier (%) | EEG Frequency Bands | |||
---|---|---|---|---|
Beta | Theta | Delta | Alpha | |
KNN | 69.73% ± 0.125 Sens. 64.45% | 65.93% ± 0.079 Sens. 59.02% | 57.84% ± 0.093 Sens. 56.86% | 64.7% ± 0.11 Sens. 57.59% |
LDA | 70.32% ± 0.134 Sens. 65.75% | 64.25% ± 0.082 Sens. 63.35% | 60.86% ± 0.091 Sens. 60.69% | 65.04% ± 0.11 Sens. 63.95% |
DT | 68.57% ± 0.121 Sens. 63.38% | 65.63% ± 0.074 Sens. 61.15% | 58.25% ± 0.089 Sens. 54.78% | 63.33% ± 0.13 Sens. 63.1% |
SVM | 69.16% ± 0.123 Sens. 63.99% | 62.85% ± 0.065 Sens. 60.93% | 57.29% ± 0.085 Sens. 53.48% | 61.23% ± 0.09 Sens. 60.465% |
NB | 70.74% ± 0.105 Sens. 68.60% | 67.7% ± 0.078 Sens. 67.44% | 61.86% ± 0.091 Sens. 58.13% | 65.07% ± 0.01 Sens. 61.63% |
p-Value for Each Electrode Location | |||
---|---|---|---|
Subjects | Subjects | ||
# | Fp1 and Fp2 | # | F8 and F7 |
1 | 2.22 × 10−10 | 11 | 1.85 × 10−3 |
2 | 4.16 × 10−18 | 12 | 3.44 × 10−5 |
3 | 5.97 × 10−13 | 13 | 2.73 × 10−2 |
4 | 9.42 × 10−17 | 14 | 8.47 × 10−1 |
5 | 8.29 × 10−42 | 15 | 2.19 × 10−1 |
6 | 1.09 × 10−6 | 16 | 2.57 × 10−1 |
7 | 2.56 × 10−13 | 17 | 4.67 × 10−5 |
8 | 1.90 × 10−54 | 18 | 2.48 × 10−1 |
9 | 1.16 × 10−10 | 19 | 1.25 × 10−3 |
10 | 6.67 × 10−5 | 20 | 9.37 × 10−5 |
Subjects | Control | Stress | Subjects | Control | Stress |
---|---|---|---|---|---|
1 | 6 (LS) | 5(LS) | 11 | 27 (HS) | 24 (MS) |
2 | 12 (LS) | 17 (MS) | 12 | 13 (LS) | 20 (MS) |
3 | 18 (MS) | 19 (MS) | 13 | 17 (MS) | 20(MS) |
4 | 7 (LS) | 6 (LS) | 14 | 18 (MS) | 20 (MS) |
5 | 21 (MS) | 24 (MS) | 15 | 20 (MS) | 22 (MS) |
6 | 26 (MS) | 28 (HS) | 16 | 25 (MS) | 27 (MS) |
7 | 26 (MS) | 28 (HS) | 17 | 4 (LS) | 25 (MS) |
8 | 23 (MS) | 25 (MS) | 18 | 26 (MS) | 28 (HS) |
9 | 11 (LS) | 15 (MS) | 19 | 25 (MS) | 28 (HS) |
10 | 26 (MS) | 29 (HS) | 20 | 21 (MS) | 22 (MS) |
Accuracy/Sensitivity of EEG + GSR | ||
---|---|---|
Accuracy/Sensitivity at Beta band of EEG | ||
Classification type | EEG + GSR (100 Hz) | EEG |
KNN | Accuracy: 83.77%, Sensitivity: 81.16% | Accuracy: 69.73% |
DA | Accuracy: 43.39%, Sensitivity: 41.57% | Accuracy: 70.32% |
DT | Accuracy: 67.38%, Sensitivity: 62.85% | Accuracy: 68.57% |
SVM | Accuracy: 80.04%, Sensitivity: 79.05% | Accuracy: 69.16% |
NB | Accuracy: 72.58%, Sensitivity: 73.52% | Accuracy: 70.74% |
Accuracy at Theta band of EEG | ||
Classification type | EEG + GSR (100 Hz) | EEG |
KNN | Accuracy: 79.58%, Sensitivity:78.97% | Accuracy: 69.73% |
DA | Accuracy: 52.06%, Sensitivity: 54.27% | Accuracy: 70.32% |
DT | Accuracy: 58.85%, Sensitivity: 57.31% | Accuracy: 68.57% |
SVM | Accuracy: 73.57%, Sensitivity:73.37% | Accuracy: 69.16% |
NB | Accuracy: 76.04%, Sensitivity: 77.2% | Accuracy: 70.74% |
Accuracy at Beta band of EEG | ||
Classification type | EEG + GSR (1 kHz) | EEG |
KNN | Accuracy: 75.44%, Sensitivity: 73.89% | Accuracy: 69.73% |
DA | Accuracy: 42.77%, Sensitivity: 48.82% | Accuracy: 70.32% |
DT | Accuracy: 58.70%, Sensitivity: 60.92% | Accuracy: 68.57% |
SVM | Accuracy: 74.46%, Sensitivity: 72.19% | Accuracy: 69.16% |
NB | Accuracy: 72.56%, Sensitivity: 71.63% | Accuracy: 70.74% |
Accuracy at Theta band of EEG | ||
Classification type | EEG + GSR (1 kHz) | EEG |
KNN | Accuracy: 73.33%, Sensitivity: 68.64% | Accuracy: 65.93% |
DA | Accuracy: 56.23%, Sensitivity: 58.79% | Accuracy: 64.25% |
DT | Accuracy: 55.91%, Sensitivity: 56.72% | Accuracy: 65.62% |
SVM | Accuracy: 69.63%, Sensitivity: 67.52% | Accuracy: 62.85% |
NB | Accuracy: 73.71%, Sensitivity: 77.56% | Accuracy: 67.70% |
Accuracy at Beta band for EEG | ||
Classification type | EEG + GSR (10 kHz) | EEG |
KNN | Accuracy: 83.44%, Sensitivity: 84.22% | Accuracy: 69.73% |
DA | Accuracy: 42.89%, Sensitivity: 41.90% | Accuracy: 70.32% |
DT | Accuracy: 43.06%, Sensitivity: 42.36% | Accuracy: 68.57% |
SVM | Accuracy: 79.25%, Sensitivity: 74.44% | Accuracy: 69.16% |
NB | Accuracy: 64.52%, Sensitivity: 62.78% | Accuracy: 70.74% |
Accuracy at Theta band for EEG | ||
Classification type | EEG + GSR (10 kHz) | EEG |
KNN | Accuracy: 83.83%, Sensitivity: 82.90% | Accuracy: 69.73% |
DA | Accuracy: 45.55%, Sensitivity: 43.73% | Accuracy: 70.32% |
DT | Accuracy: 58.74%, Sensitivity: 54.27% | Accuracy: 68.57% |
SVM | Accuracy: 77.98%, Sensitivity: 73.53% | Accuracy: 69.16% |
NB | Accuracy: 64.55%, Sensitivity: 62.39% | Accuracy: 70.74% |
Accuracy/Sensitivity at Beta band of EEG | ||
Classification type | EEG + GSR (100 Hz) | EEG |
KNN | Accuracy: 83.77%, Sensitivity: 81.16% | Accuracy: 69.73% |
DA | Accuracy: 43.39%, Sensitivity: 41.57% | Accuracy: 70.32% |
DT | Accuracy: 67.38%, Sensitivity: 62.85% | Accuracy: 68.57% |
SVM | Accuracy: 80.04%, Sensitivity: 79.05% | Accuracy: 69.16% |
NB | Accuracy: 72.58%, Sensitivity: 73.52% | Accuracy: 70.74% |
Accuracy at Theta band of EEG | ||
Classification type | EEG + GSR (100 Hz) | EEG |
KNN | Accuracy: 79.58%, Sensitivity:78.97% | Accuracy: 69.73% |
DA | Accuracy: 52.06%, Sensitivity: 54.27% | Accuracy: 70.32% |
DT | Accuracy: 58.85%, Sensitivity: 57.31% | Accuracy: 68.57% |
SVM | Accuracy: 73.57%, Sensitivity:73.37% | Accuracy: 69.16% |
NB | Accuracy: 76.04%, Sensitivity: 77.2% | Accuracy: 70.74% |
Accuracy at Beta band of EEG | ||
Classification type | EEG + GSR (1 kHz) | EEG |
KNN | Accuracy: 75.44%, Sensitivity: 73.89% | Accuracy: 69.73% |
DA | Accuracy: 42.77%, Sensitivity: 48.82% | Accuracy: 70.32% |
DT | Accuracy: 58.70%, Sensitivity: 60.92% | Accuracy: 68.57% |
SVM | Accuracy: 74.46%, Sensitivity: 72.19% | Accuracy: 69.16% |
NB | Accuracy: 72.56%, Sensitivity: 71.63% | Accuracy: 70.74% |
Accuracy at Theta band of EEG | ||
Classification type | EEG + GSR (1 kHz) | EEG |
KNN | Accuracy: 73.33%, Sensitivity: 68.64% | Accuracy: 65.93% |
DA | Accuracy: 56.23%, Sensitivity: 58.79% | Accuracy: 64.25% |
DT | Accuracy: 55.91%, Sensitivity: 56.72% | Accuracy: 65.62% |
SVM | Accuracy: 69.63%, Sensitivity: 67.52% | Accuracy: 62.85% |
NB | Accuracy: 73.71%, Sensitivity: 77.56% | Accuracy: 67.70% |
Accuracy at Beta band for EEG | ||
Classification type | EEG + GSR (10 kHz) | EEG |
KNN | Accuracy: 83.44%, Sensitivity: 84.22% | Accuracy: 69.73% |
DA | Accuracy: 42.89%, Sensitivity: 41.90% | Accuracy: 70.32% |
DT | Accuracy: 43.06%, Sensitivity: 42.36% | Accuracy: 68.57% |
SVM | Accuracy: 79.25%, Sensitivity: 74.44% | Accuracy: 69.16% |
NB | Accuracy: 64.52%, Sensitivity: 62.78% | Accuracy: 70.74% |
Accuracy at Theta band for EEG | ||
Classification type | EEG + GSR (10 kHz) | EEG |
KNN | Accuracy: 83.83%, Sensitivity: 82.90% | Accuracy: 69.73% |
DA | Accuracy: 45.55%, Sensitivity: 43.73% | Accuracy: 70.32% |
DT | Accuracy: 58.74%, Sensitivity: 54.27% | Accuracy: 68.57% |
SVM | Accuracy: 77.98%, Sensitivity: 73.53% | Accuracy: 69.16% |
NB | Accuracy: 64.55%, Sensitivity: 62.39% | Accuracy: 70.74% |
Study | Number of Channels | Type of Stressor | Electrode Location on Brain Region | Methodology | Accuracy |
---|---|---|---|---|---|
[57] | 14 | SCWT | Frontal, Temporal, Occipital | SCWT was used in 18 patients to elicit stress. Each session consisted of 24 trials; each lasted for 1 s. Logistic regression, KNN, and QDA were developed to obtain the accuracy. | Accuracy: 70.71% Alpha waves are significant at the pre-frontal lobe |
[58] | 10 | SCWT, mental arithmetic | Frontal, Central, Temporal, Parietal, Occipital | Twelve subjects took the SCWT. They rested for 60 s (control) and then took the SCWT twice for 30 s. They used PSD for feature extraction and logistic regression. XGBoost, SVM, DT, and random forest were used for classification of mental stress. | Accuracy is 86.49% |
[59] | 14 | SCWT | Frontal, Temporal, occipital | The SCWT was designed to wait only one second to obtain the user’s response. This was performed for 10 sessions in order to induce mental stress. Logistic regression and KNN were used to further classify stress. | Accuracy: 73.96% |
[45] | 30 | SCWT | Right prefrontal region | Highest sensitivity to stress was at the right pre-frontal lobe region. High accuracy due to the combination of EEG with FNIRs and stress mitigation was found. | Accuracy of EEG increased by 20.83% |
This paper | 1 | SCWT | Fp1 and FP2 (prefrontal region) | Through sensor fusion, EEG and GSR were used to classify stress. This improved overall accuracy. | Accuracy: 83.7% |
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© 2024 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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Abdul Kader, L.; Al-Shargie, F.; Tariq, U.; Al-Nashash, H. One-Channel Wearable Mental Stress State Monitoring System. Sensors 2024, 24, 5373. https://doi.org/10.3390/s24165373
Abdul Kader L, Al-Shargie F, Tariq U, Al-Nashash H. One-Channel Wearable Mental Stress State Monitoring System. Sensors. 2024; 24(16):5373. https://doi.org/10.3390/s24165373
Chicago/Turabian StyleAbdul Kader, Lamis, Fares Al-Shargie, Usman Tariq, and Hasan Al-Nashash. 2024. "One-Channel Wearable Mental Stress State Monitoring System" Sensors 24, no. 16: 5373. https://doi.org/10.3390/s24165373
APA StyleAbdul Kader, L., Al-Shargie, F., Tariq, U., & Al-Nashash, H. (2024). One-Channel Wearable Mental Stress State Monitoring System. Sensors, 24(16), 5373. https://doi.org/10.3390/s24165373