IEEE J Biomed Health Inform. 2022 Sep;26(9):4725-4732. doi: 10.1109/JBHI.2022.3186150. Epub 2022 Sep 9.
Improper hydration routines can reduce athletic performance. Recent studies show that data from noninvasive biomarker recordings can help to evaluate the hydration status of subjects during endurance exercise. These studies are usually carried out on multiple subjects. In this work, we present the first study on predicting hydration status using machine learning models from single-subject experiments, which involve 32 exercise sessions of constant moderate intensity performed with and without fluid intake. During exercise, we measured four noninvasive physiological and sweat biomarkers including heart rate, core temperature, sweat sodium concentration, and whole-body sweat rate. Sweat sodium concentration was measured from six body regions using absorbent patches. We used three machine learning models to determine the percentage of body weight loss as an indicator of dehydration with these biomarkers and compared the prediction accuracy. The results on this single subject show that these models gave similar mean absolute errors, while in general the nonlinear models slightly outperformed the linear model in most of the experiments. The prediction accuracy of using the whole-body sweat rate or heart rate was higher than using core temperature or sweat sodium concentration. In addition, the model trained on the sweat sodium concentration collected from the arms gave slightly better accuracy than from the other five body regions. This exploratory work paves the way for the use of these machine learning models to develop personalized health monitoring together with emerging, noninvasive wearable sensor devices.
不当的水合作用会降低运动表现。最近的研究表明,非侵入性生物标志物记录的数据可帮助评估耐力运动中受试者的水合状态。这些研究通常在多个受试者上进行。在这项工作中,我们进行了第一项研究,即使用来自单试次实验的机器学习模型来预测水合状态,这些实验涉及 32 次恒定中等强度的运动,其中有和没有液体摄入。在运动过程中,我们测量了四个非侵入性的生理和汗液生物标志物,包括心率、核心体温、汗液钠浓度和全身汗液率。汗液钠浓度使用吸收垫从六个身体部位进行测量。我们使用三种机器学习模型来确定体重减轻的百分比作为脱水的指标,并用这些生物标志物比较了预测准确性。在这个单试次上的结果表明,这些模型的平均绝对误差相似,而在大多数实验中,非线性模型的表现略优于线性模型。使用全身汗液率或心率的预测准确性高于使用核心体温或汗液钠浓度。此外,在手臂上收集的汗液钠浓度上训练的模型比在其他五个身体部位上的模型具有略高的准确性。这项探索性工作为使用这些机器学习模型与新兴的非侵入性可穿戴传感器设备一起开发个性化健康监测铺平了道路。