Accuracy of Algorithm to Non-Invasively Predict Core Body Temperature Using the Kenzen Wearable Device

Int J Environ Res Public Health. 2021 Dec 13;18(24):13126. doi: 10.3390/ijerph182413126.

Abstract

With climate change increasing global temperatures, more workers are exposed to hotter ambient temperatures that exacerbate risk for heat injury and illness. Continuously monitoring core body temperature (TC) can help workers avoid reaching unsafe TC. However, continuous TC measurements are currently cost-prohibitive or invasive for daily use. Here, we show that Kenzen's wearable device can accurately predict TC compared to gold standard TC measurements (rectal probe or gastrointestinal pill). Data from four different studies (n = 52 trials; 27 unique subjects; >4000 min data) were used to develop and validate Kenzen's machine learning TC algorithm, which uses subject's real-time physiological data combined with baseline anthropometric data. We show Kenzen's TC algorithm meets pre-established accuracy criteria compared to gold standard TC: mean absolute error = 0.25 °C, root mean squared error = 0.30 °C, Pearson r correlation = 0.94, standard error of the measurement = 0.18 °C, and mean bias = 0.07 °C. Overall, the Kenzen TC algorithm is accurate for a wide range of TC, environmental temperatures (13-43 °C), light to vigorous heart rate zones, and both biological sexes. To our knowledge, this is the first study demonstrating a wearable device can accurately predict TC in real-time, thus offering workers protection from heat injuries and illnesses.

Keywords: extended Kalman filter; heart rate; heat illness; heat injury; heat stress; machine learning.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • Benzimidazoles
  • Biphenyl Compounds
  • Body Temperature*
  • Hot Temperature
  • Humans
  • Tetrazoles
  • Wearable Electronic Devices*

Substances

  • Benzimidazoles
  • Biphenyl Compounds
  • Tetrazoles
  • candesartan cilexetil