基于葡萄糖运输生物物理模型的汗液传感血糖水平估计

Xiaoyu Yin, Elisabetta Peri, E. Pelssers, J. M. J. Toonder, M. Mischi
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引用次数: 0

摘要

监测汗液中的葡萄糖浓度可能是糖尿病患者传统侵入性血液采样的一种非侵入性替代方法。血液中的葡萄糖浓度和汗液中的葡萄糖浓度之间的关系在很大程度上是未知的,通过测量汗液中的葡萄糖水平来估计血糖水平的方法是至关重要的。在本文中,我们提出了一种新的方法,该方法是通过首先估计血液输入的汗液葡萄糖浓度而开发的。该方法在La Count等人提出的汗腺模型的基础上,考虑了组织间隙与汗腺之间不同排汗率对葡萄糖浓度的稀释作用。本模型估算的汗液葡萄糖浓度的平均均方根百分比误差(RMSPE= 11%±6%)小于原始模型(RMSPE=21%±9%)。这可以更准确地估计汗液和血液中葡萄糖水平之间的关系。其次,通过迭代优化方法求解反问题,得到由汗液葡萄糖浓度估算的血糖浓度的平均RMSPE = 16.7%±9.2%。结果表明,预测精度令人满意。我们的研究首次实现了基于已知的汗液葡萄糖浓度对血糖变化的高精度估计。此外,本研究对实现半连续、长时间的糖尿病汗液传感监测具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of blood glucose levels by sweat sensing based on biophysical modeling of glucose transport
Monitoring glucose concentration in sweat might represent a non-invasive alternative to traditional invasive blood sampling for diabetic patients. The relationship between glucose concentration in blood and in sweat is largely unknown, and methods that can estimate blood glucose levels from measured sweat glucose levels are crucial. In this paper, we present a novel method that was developed by first estimating sweat glucose concentration from blood inputs. Such a method builds on a sweat gland model proposed by La Count et al., additionally considering the dilution effect of different sweat rates between the interstitial space and sweat glands on glucose concentration. The sweat glucose concentration estimated by our model shows an average root mean square percentage error (RMSPE = 11%± 6%), smaller than the original model (RMSPE=21%± 9%). This enables a more accurate estimation of the relationship between glucose levels in sweat and blood. Secondly, solving the inverse problem by an iterative optimization method, we obtained the average RMSPE of blood glucose concentration estimated from the sweat glucose concentration equal to 16.7%± 9.2%. These results show satisfactory prediction accuracy. Our study is the first to realize the estimation of blood glucose changes with high precision based on known sweat glucose concentrations. Furthermore, this research could be significant for the implementation of semi-continuous and prolonged diabetes monitoring by sweat sensing technology.
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