Challenges and Potential Solutions of Psychophysiological State Monitoring with Bioradar Technology
Abstract
:1. Introduction
2. Materials and Methods
2.1. Experimental Setup
2.2. Description of the Experimental Procedure
- Calm breathing test: During this test, an examinee was asked to sit relaxed and breathe normally. If the subject was in a state of psycho-emotional agitation, then vital signs estimation should be performed only after the respiratory and heart rates dropped stationary levels, which corresponded to the calm state of the examinee. It took, in general, between 1 and 2 min for vital signs to stabilize after the beginning of the experiment as shown in [27]. That is why, to prevent the influence of the psycho-emotional agitation of some examinees at the start of the experiment, 2 min were added to the experiment duration. In total, calm breathing test lasted for 5 min; however, only the last 3 min of data were used in further analysis.
- Mental workload test: The volunteer was asked to perform a mental arithmetic task, which was more complex that the one from our previous papers dealing with mental stress monitoring [27,28]. The usage of a more complex arithmetic task was needed to present a challenge that resulted in a physiological response (increasing of cerebral oxygen consumption) in the examinees. The duration of this experimental stage was 3 min for each subject. We did not use standard stress-inducing procedures such as the Trier social stress test because it requires communication with the examinee during the experiments, which may significantly reduce the quality of useful signals registered by the bioradar.
- Exercise tolerance test: Each volunteer was asked to perform some physical exercises (30 bobs or plank exercise for 1 min). After that, the examinee’s vital signs were registered by a bioradar for 3 min.
2.3. Signal Processing Technique
2.3.1. Pre-Processing Algorithm
2.3.2. Classification Algorithm
3. Results
3.1. Classification Calm State/Mental Workload
3.2. Classification Calm State/Physical Workload
4. Discussion
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
ADC | Analog-to-Digital Converter |
AUC | Area Under the Curve |
BMI | Body Mass Index |
BMSTU | Bauman Moscow State Technical University |
HRV | Heart Rate Variability |
I2C | Inter-Integrated Circuit |
MA | Movement Artifact |
MC | Micro-Controller |
PC | Personal Computer |
ROC | Receiver Operating Characteristic |
SVM | Support Vector Machine |
VCO | Voltage-Controlled Oscillator |
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Dataset Characteristics | Values |
---|---|
Male : Female | 14 : 21 |
Age (Years) | 20.1 ± 0.6 (19–22) |
Body Mass Index (kg/m) | 22.0 ± 3.6 (17.4–30.4) |
Respiration rate (breath per minute) | 16.9 ± 5.0 (7–36) |
Predicted Class | |||
---|---|---|---|
Steady State | Mental Stress | ||
True Class | Steady state | 26 | 9 |
Mental stress | 9 | 26 | |
Accuracy, % | |||
Sensitivity, % | 74.3 | ||
Specificity, % |
F | F | F | |
---|---|---|---|
Accuracy, % | 74.3 | 64.7 | 77.5 |
F | F | F | |
---|---|---|---|
Accuracy, % | 84.6 | 78.8 | 88.5 |
F | F | F | |
---|---|---|---|
Accuracy (dataset for all 35 examinees), % | 69.1 | 73.5 | 77.9 |
Accuracy (dataset without 9 outliers), % | 75.0 | 80.8 | 82.7 |
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Anishchenko, L. Challenges and Potential Solutions of Psychophysiological State Monitoring with Bioradar Technology. Diagnostics 2018, 8, 73. https://doi.org/10.3390/diagnostics8040073
Anishchenko L. Challenges and Potential Solutions of Psychophysiological State Monitoring with Bioradar Technology. Diagnostics. 2018; 8(4):73. https://doi.org/10.3390/diagnostics8040073
Chicago/Turabian StyleAnishchenko, Lesya. 2018. "Challenges and Potential Solutions of Psychophysiological State Monitoring with Bioradar Technology" Diagnostics 8, no. 4: 73. https://doi.org/10.3390/diagnostics8040073
APA StyleAnishchenko, L. (2018). Challenges and Potential Solutions of Psychophysiological State Monitoring with Bioradar Technology. Diagnostics, 8(4), 73. https://doi.org/10.3390/diagnostics8040073