| Literature DB >> 32364145 |
Xiaoli Fan1, Chaoyi Zhao1, Xin Zhang1, Hong Luo1, Wei Zhang2.
Abstract
BACKGROUND: Mental workload is one of the contributing factors to human errors in road accidents or other potentially adverse incidents.Entities:
Keywords: ECG; EEG; Mental workload; PCA; SVM
Mesh:
Year: 2020 PMID: 32364145 PMCID: PMC7369076 DOI: 10.3233/THC-209008
Source DB: PubMed Journal: Technol Health Care ISSN: 0928-7329 Impact factor: 1.285
Figure 1.Interfaces of instrument-monitoring tasks with different difficulties.
Figure 2.Experiment procedure.
Subjective evaluation scale for mental workload
| Descriptions for 1 | Descriptions for 2 | Score |
|---|---|---|
| Difficulty level is acceptable | Very easy | 1 |
| Easy | 2 | |
| Normal | 3 | |
| Difficulty level is a little high | Low but annoying | 4 |
| Medium and objectionable | 5 | |
| Very objectionable but endurable | 6 | |
| Difficulty level is higher | Requiring extreme effort to reduce the error to a medium level | 7 |
| Requiring extreme effort to avoid countless mistakes | 8 | |
| Requiring extreme effort to complete task, but still with countless mistakes | 9 | |
| Difficulty level is highest | Unable to complete the task | 10 |
Figure 3.Schematic diagram of wavelet packet decomposition.
Figure 4.Subjective scores and performance results.
One-way ANOVA results of EEG parameters in different brain regions
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Figure 5.The comparisons of EEG characteristic parameters among three tasks with different degrees of difficulty.
Figure 6.One subject’s brain topography.
Statistical analysis results of ECG parameters
| Parameters | L | M | H | P | P (L-M) | P (L-H) | P (M-H) | |||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 863.75 | (76.38) | 850.05 | (71.26) | 846.84 | (110.64) |
| 0.05 | 0.11 | 1. | 0 | ||
| SDNN | 143.11 | (36.45) | 148.44 | (35.88) | 126.75 | (36.40) | 0.167 | / | / | / | ||
| SDANN | 133.77 | (25.04) | 136.31 | (26.11) | 124.52 | (27.79) | 0.355 | / | / | / | ||
| RMSSD | 42.47 | (8.97) | 35.40 | (10.44) | 33.28 | (9.17) |
| 0.05 | 0.078 | 1. | 0 | |
| SDNNI | 26.46 | (10.56) | 25.73 | (6.63) | 30.12 | (10.63) | 0.436 | / | / | / | ||
| NN50 | 38.00 | (15.24) | 27.65 | (19.44) | 36.00 | (22.17) | 0.767 | / | / | / | ||
| PNN50 | 22.30 | (6.58) | 20.53 | (7.02) | 19.08 | (6.05) | 0.392 | / | / | / | ||
| LF_norm | 43.19 | (12.65) | 49.69 | (13.02) | 59.20 | (11.89) |
| 0.01 | 0.347 | 0. | 068 | |
| HF_norm | 43.89 | (7.49) | 42.56 | (8.36) | 36.37 | (5.03) |
| 0.01 | 1.0 | 05 | ||
| LF/HF | 1.01 | (0.33) | 1.18 | (0.23) | 1.65 | (0.38) |
| 0.01 | 0.329 | 01 | ||
| SampEn | 2.55 | (0.35) | 2.30 | (0.44) | 2.18 | (0.37) |
| 0.05 | 0.068 | 0. | 353 | |
Training results of the classification models
| Kernel function | Loss function parameter ( | Regularization parameter ( | Accuracy |
|---|---|---|---|
| Polynomial | 5.773 | 0.608 | 89.2% |
| Radial basis | 5.628 | 0.562 | 92.2% |
| Sigmoid | 4.375 | 0.563 | 87.4% |
Figure 7.Optimization of radial basis kernel function parameters.
Figure 8.Actual and predictive classifications of test set.