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Data-driven estimation of core body temperature during physical activity under heat exposure: A systematic review and standardized evaluation

Build Environ. 2026 Jun 1;297:None. doi: 10.1016/j.buildenv.2026.114591.

ABSTRACT

Accurate, real-time estimation of core body temperature (CBT) during physical activity is essential for monitoring heat strain and mitigating the risk of heat-related illness under hot environmental conditions. Although numerous data-driven algorithms using wearable sensors have been proposed, their practical reliability remains unclear due to substantial methodological heterogeneity and the absence of standardized evaluation. This study combined a systematic review with a standardized quantitative benchmark. A total of 38 studies employing non-invasive inputs for CBT estimation were identified. Of these, 14 eligible models, including Kalman filter-based methods, statistical models, and machine-learning approaches, were re-implemented and evaluated under identical preprocessing and evaluation settings using two independent datasets: Dataset 1 (treadmill walking, n = 16 ) and Dataset 2 (cycling, n = 13 ). The benchmark revealed notable differences between originally reported performance and reproduced performance under standardized conditions. For the widely used heart-rate-based extended Kalman filter, the root mean square error (RMSE) increased from typically reported values of 0.21-0.41 C to 0.41 C on Dataset 1 and 0.66 C on Dataset 2. Incorporating skin temperature improved tracking accuracy in some configurations, but performance gains were highly dependent on measurement site and dataset. Sensitivity for detecting elevated CBT ( 38.0 C) varied markedly across methods, particularly for the cycling protocol. In conclusion, no single CBT estimation approach consistently outperformed others across all settings. Heart-rate-only models provided a stable baseline under limited sensing conditions, whereas multimodal approaches offered conditional benefits in more controlled scenarios. This work establishes a standardized benchmark framework to support fair comparison, method selection, and future development of (wearable) CBT estimation technologies.

PMID:42405303 | PMC:PMC13328076 | DOI:10.1016/j.buildenv.2026.114591

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