Laxminarayan Srinivas, Hornby Samantha, Belval Luke N, Giersch Gabrielle E W, Morrissey Margaret C, Casa Douglas J, Reifman Jaques
Korey Stringer Institute, University of Connecticut, Storrs, CT.
Department of Defense Biotechnology High Performance Computing Software Applications Institute, Telemedicine and Advanced Technology Research Center, U.S. Army Medical Research and Development Command, Fort Detrick, MD.
Med Sci Sports Exerc. 2023 Apr 1;55(4):751-764. doi: 10.1249/MSS.0000000000003093. Epub 2022 Dec 1.
An uncontrollably rising core body temperature (T C ) is an indicator of an impending exertional heat illness. However, measuring T C invasively in field settings is challenging. By contrast, wearable sensors combined with machine-learning algorithms can continuously monitor T C nonintrusively. Here, we prospectively validated 2B-Cool , a hardware/software system that automatically learns how individuals respond to heat stress and provides individualized estimates of T C , 20-min ahead predictions, and early warning of a rising T C .
We performed a crossover heat stress study in an environmental chamber, involving 11 men and 11 women (mean ± SD age = 20 ± 2 yr) who performed three bouts of varying physical activities on a treadmill over a 7.5-h trial, each under four different clothing and environmental conditions. Subjects wore the 2B-Cool system, consisting of a smartwatch, which collected vital signs, and a paired smartphone, which housed machine-learning algorithms and used the vital sign data to make individualized real-time forecasts. Subjects also wore a chest strap heart rate sensor and a rectal probe for comparison purposes.
We observed very good agreement between the 2B-Cool forecasts and the measured T C , with a mean bias of 0.16°C for T C estimates and nearly 75% of measurements falling within the 95% prediction intervals of ±0.62°C for the 20-min predictions. The early-warning system results for a 38.50°C threshold yielded a 98% sensitivity, an 81% specificity, a prediction horizon of 35 min, and a false alarm rate of 0.12 events per hour. We observed no sex differences in the measured or predicted peak T C .
2B-Cool provides early warning of a rising T C with a sufficient lead time to enable clinical interventions and to help reduce the risk of exertional heat illness.
核心体温(TC) uncontrollably上升是即将发生运动性热疾病的一个指标。然而,在野外环境中进行侵入性TC测量具有挑战性。相比之下,可穿戴传感器与机器学习算法相结合可以非侵入性地连续监测TC。在此,我们前瞻性地验证了2B-Cool,这是一种硬件/软件系统,它能自动了解个体对热应激的反应,并提供TC的个性化估计、提前20分钟的预测以及TC上升的早期预警。
我们在环境舱中进行了一项交叉热应激研究,涉及11名男性和11名女性(平均±标准差年龄 = 20±2岁),他们在7.5小时的试验中在跑步机上进行了三轮不同强度的体育活动,每次处于四种不同的服装和环境条件下。受试者佩戴2B-Cool系统,该系统由一个收集生命体征的智能手表和一个配对的智能手机组成,智能手机中装有机器学习算法,并使用生命体征数据进行个性化实时预测。受试者还佩戴了胸带心率传感器和直肠探头用于比较。
我们观察到2B-Cool预测值与测量的TC之间具有非常好的一致性,TC估计的平均偏差为0.16°C,近75%的测量值落在20分钟预测的±0.62°C的95%预测区间内。对于38.50°C阈值的早期预警系统结果显示,灵敏度为98%,特异性为81%,预测提前期为35分钟,误报率为每小时0.12次事件。我们在测量或预测的峰值TC中未观察到性别差异。
2B-Cool能在TC上升时提供早期预警,有足够的提前期以进行临床干预并帮助降低运动性热疾病的风险。