| Literature DB >> 35009935 |
Takunori Shimazaki1,2, Daisuke Anzai3, Kenta Watanabe4, Atsushi Nakajima4, Mitsuhiro Fukuda5, Shingo Ata2.
Abstract
Recently, wet-bulb globe temperature (WBGT) has attracted a lot of attention as a useful index for measuring heat strokes even when core body temperature cannot be available for the prevention. However, because the WBGT is only valid in the vicinity of the WBGT meter, the actual ambient heat could be different even in the same room owing to ventilation, clothes, and body size, especially in hot specific occupational environments. To realize reliable heat stroke prevention in hot working places, we proposed a new personalized vital sign index, which is combined with several types of vital data, including the personalized heat strain temperature (pHST) index based on the temperature/humidity measurement to adjust the WBGT at the individual level. In this study, a wearable device was equipped with the proposed pHST meter, a heart rate monitor, and an accelerometer. Additionally, supervised machine learning based on the proposed personalized vital index was introduced to improve the prevention accuracy. Our developed system with the proposed vital sign index achieved a prevention accuracy of 85.2% in a hot occupational experiment in the summer season, where the true positive rate and true negative rate were 96.3% and 83.7%, respectively.Entities:
Keywords: WBGT; heat stroke prevention; supervised machine learning; vital sensing
Mesh:
Year: 2022 PMID: 35009935 PMCID: PMC8749808 DOI: 10.3390/s22010395
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Example of hot specific working environment (train maintenance factory).
Figure 2Principle of personalized heat strain temperature (pHST) measurement.
Figure 3Principle of motion artifacts cancellation.
Figure 4Survey form in before- and after-workings.
Figure 5Developed wearable device for vital data sensing.
Figure 6System development to collect vital sensing data.
Hardware configurations.
| Parts | Model Number | Features |
|---|---|---|
| Optical sensor IC for heart rate monitor | BH1790GLC-E2 | Pulse wave |
| Optical sensor IC for heart rate monitor | BH1790GLC-E2 | Motion artifact cancellation |
| Thermopile | MLX90614ESF-BCC-000-TU | Body surface temperature |
| Humidity-temperature sensor | Si7021-A20-IM1 | Humidity and temperature in clothes |
| Inertial measurement unit | MPU-9250 | 3-axis acceleration |
| Wireless module | 4GIM V1.0 | Long term evolution (LTE) |
| Lithium-ion battery | DTP603450 |
Figure 7Variation of heart rate, pHST, environmental temperatures, and wind speed.
Figure 8Performance evaluation for different classifiers.
Figure 9Dependency of feature selection on prevention accuracy.
Heat strain indication results based on WBGT and pHST.
| 3 Aug. | 4 Aug. | 5 Aug. | 6 Aug. | 7 Aug. | 10 Aug. | 11 Aug. | 12 Aug. | |
|---|---|---|---|---|---|---|---|---|
| WBGT | - | - | - | - | - | indicated | indicated | indicated |
| pHST | indicated | indicated | indicated | indicated | indicated | - | indicated | indicated |
| Survey | - | indicated | indicated | indicated | - | - | - | indicated |
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| WBGT | indicated | indicated | indicated | indicated | - | - | indicated | indicated |
| pHST | - | - | - | indicated | indicated | indicated | indicated | indicated |
| Survey | - | - | - | indicated | indicated | indicated | indicated | indicated |
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| WBGT | indicated | - | indicated | indicated | indicated | indicated | indicated | indicated |
| pHST | - | indicated | - | - | - | - | - | - |
| Survey | - | indicated | - | - | - | - | - | - |
Figure 10Confusion matrix for KNN classifier.