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基于能量守恒法的无创血糖检测系统

Non-invasive blood glucose detection system based on conservation of energy method.

作者信息

Zhang Yang, Zhu Jian-Ming, Liang Yong-Bo, Chen Hong-Bo, Yin Shi-Min, Chen Zhen-Cheng

机构信息

School of Electronic Engineer and Automatic, Guilin University of Electronic Technology, GuiLin, People's Republic of China.

出版信息

Physiol Meas. 2017 Feb;38(2):325-342. doi: 10.1088/1361-6579/aa50cf. Epub 2017 Jan 20.

DOI:10.1088/1361-6579/aa50cf
PMID:28107204
Abstract

The most common method used for minimizing the occurrence of diabetes complications is frequent glucose testing to adjust the insulin dose. However, using blood glucose (BG) meters presents a risk of infection. It is of great importance to develop non-invasive BG detection techniques. To realize high-accuracy, low-cost and continuous glucose monitoring, we have developed a non-invasive BG detection system using a mixed signal processor 430 (MSP430) microcontroller. This method is based on the combination of the conservation-of-energy method with a sensor integration module, which collects physiological parameters, such as the blood oxygen saturation (SPO), blood flow velocity and heart rate. New methods to detect the basal metabolic rate (BMR) and BV are proposed, which combine the human body heat balance and characteristic signals of photoplethysmography as well dual elastic chambers theory. Four hundred clinical trials on real-time non-invasive BG monitoring under suitable experiment conditions were performed on different individuals, including diabetic patients, senior citizens and healthy adults. A multisensory information fusion model was applied to process these samples. The algorithm (we defined it as DCBPN algorithm) applied in the model combines a decision tree and back propagation neural network, which classifies the physiological and environmental parameters into three categories, and then establishes a corresponding prediction model for the three categories. The DCBPN algorithm provides an accuracy of 88.53% in predicting the BG of new samples. Thus, this system demonstrates a great potential to reliably detect BG values in a non-invasive setting.

摘要

用于将糖尿病并发症发生率降至最低的最常见方法是频繁进行血糖检测以调整胰岛素剂量。然而,使用血糖仪存在感染风险。开发非侵入性血糖检测技术非常重要。为了实现高精度、低成本和连续血糖监测,我们开发了一种使用混合信号处理器430(MSP430)微控制器的非侵入性血糖检测系统。该方法基于能量守恒法与传感器集成模块的结合,该模块收集诸如血氧饱和度(SPO)、血流速度和心率等生理参数。提出了检测基础代谢率(BMR)和血容量(BV)的新方法,这些方法结合了人体热平衡和光电容积脉搏波特征信号以及双弹性腔理论。在包括糖尿病患者、老年人和健康成年人在内的不同个体上,在合适的实验条件下进行了400次实时非侵入性血糖监测的临床试验。应用多感官信息融合模型来处理这些样本。模型中应用的算法(我们将其定义为DCBPN算法)结合了决策树和反向传播神经网络,将生理和环境参数分为三类,然后为这三类建立相应的预测模型。DCBPN算法在预测新样本的血糖时提供了88.53%的准确率。因此,该系统在非侵入性环境中可靠检测血糖值方面显示出巨大潜力。

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