A practical deep learning model for core temperature prediction of specialized workers in high-temperature environments.

Journal: Journal of thermal biology
PMID:

Abstract

The health issues of hazardous operations in high-temperature environments are increasing concerns to the public, especially since global warming and extreme weather conditions have made the high-temperature work more frequent and harsher. The abnormal elevation of human core temperature (T) due to high temperatures directly leads to a decline in physiological functions and may trigger various heat-related health issues, which is especially threatening for those working in such conditions. However, continuous real-time T monitoring and prediction are challenging, particularly considering the hazardous operations in extremely hot environments. To address this problem, a non-invasive T prediction model combining a Kalman filter and a long-term sequence forecasting deep learning model was developed. This model leverages monitored skin temperature (T) and heart rate (HR) as input features, enabling personalized real-time T predictions for various groups of specialized operations personnel. The model's accuracy was validated using the data from a series of chamber experiments with 13 participants under ambient temperatures ranging from 34 to 40 °C and T range of 37-39 °C. The optimal prediction results, evaluated by the test set using seven-point T combined with HR, obtain a MAE value of 0.07, a RMSE value of 0.09, and a R value of 0.93. Additionally, the errors of 95% of all T predictions fell within ±0.17 °C. The proposed model has the advantage of requiring simple input parameters/features and producing high-accuracy predictions, which makes it a practical tool for health monitoring and protection of hazardous operations in high-temperature environments.

Authors

  • Xinge Han
    School of Emergency Management & Safety Engineering, China University of Mining and Technology, Beijing, 100083, China.
  • Jiansong Wu
    School of Emergency Management & Safety Engineering, China University of Mining and Technology, Beijing, 100083, China. Electronic address: jiansongwu@cumtb.edu.cn.
  • Zhuqiang Hu
    School of Emergency Management & Safety Engineering, China University of Mining and Technology, Beijing, 100083, China.
  • Chuan Li
    State Key Laboratory for Molecular Virology and Genetic Engineering, National Institute for Viral Disease Control and Prevention, Chinese Center for Disease Control and Prevention, Beijing 102206, China.
  • Xiaofeng Hu
    Christian Doppler Laboratory for Ophthalmic Image Analysis, Vienna Reading Center, Department of Ophthalmology, Medical University of Vienna, Vienna, Austria.