Ring Matthias, Lohmueller Clemens, Rauh Manfred, Mester Joachim, Eskofier Bjoern M
IEEE J Biomed Health Inform. 2017 Sep;21(5):1306-1314. doi: 10.1109/JBHI.2016.2598854.
Salivary markers have been proposed as noninvasive and easy-to-collect indicators of dehydrations during physical exercise. It has been demonstrated that threshold-based classifications can distinguish dehydrated from euhydrated subjects. However, considerable challenges were reported simultaneously, for example, high intersubject variabilities in these markers. Therefore, we propose a machine-learning approach to handle the intersubject variabilities and to advance from binary classifications to quantitative estimations of total body water (TBW) loss. For this purpose, salivary samples and reference values of TBW loss were collected from ten subjects during a 2-h running workout without fluid intake. The salivary samples were analyzed for previously investigated markers (osmolality, proteins) as well as additional unexplored markers (amylase, chloride, cortisol, cortisone, and potassium). Processing all these markers with a Gaussian process approach showed that quantitative TBW loss estimations are possible within an error of 0.34 l, roughly speaking, a glass of water. Furthermore, a data analysis illustrated that the salivary markers grow nonlinearly during progressive dehydration, which is in contrast to previously reported linear observations. This insight could help to develop more accurate physiological models for salivary markers and TBW loss. Such models, in turn, could facilitate even more precise TBW loss estimations in the future.
唾液标志物已被提议作为体育锻炼期间脱水的非侵入性且易于采集的指标。业已证明,基于阈值的分类能够区分脱水受试者与水分正常受试者。然而,同时也报告了相当多的挑战,例如,这些标志物存在较高的个体间差异。因此,我们提出一种机器学习方法来处理个体间差异,并从二元分类推进到对总体水(TBW)丢失的定量估计。为此,在2小时无液体摄入的跑步锻炼期间,从十名受试者收集了唾液样本和TBW丢失的参考值。对唾液样本分析了先前研究过的标志物(渗透压、蛋白质)以及其他未探索的标志物(淀粉酶、氯化物、皮质醇、可的松和钾)。用高斯过程方法处理所有这些标志物表明,TBW丢失的定量估计在0.34升的误差范围内是可行的,粗略地说,就是一杯水的量。此外,数据分析表明,在渐进性脱水过程中,唾液标志物呈非线性增长,这与先前报道的线性观察结果相反。这一见解有助于为唾液标志物和TBW丢失开发更准确的生理模型。反过来,这样的模型在未来可能有助于更精确地估计TBW丢失。