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首页> 外文期刊>Sadhana: Academy Proceedings in Engineering Science >Estimation of blood glucose by non-invasive method using photoplethysmography
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Estimation of blood glucose by non-invasive method using photoplethysmography

机译:使用光学读物术用非侵入方法估计血糖

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This paper presents a system which estimates blood glucose level (BGL) by non-invasive method using Photoplethysmography (PPG). Previous studies have shown better estimation of blood glucose level using an optical sensor. An optical sensor based data acquisition system is built and the PPG signal of the subjects is recorded. The main contribution of this paper is exploring various features of a PPG signal using Single Pulse Analysis technique for effective estimation of BGL values. A PPG data of 611 individuals is recorded over duration of 3 minutes each. BGL value estimation is performed using two types of feature sets, (i) Time and frequency domain features and (ii) Single Pulse Analysis (SPA). Neural network is trained using above mentioned proposed feature sets and BGL value estimation is performed. First we validate our methodology using the same features used by Monte Moreno in his earlier work. The experimentation is performed on our own dataset. We obtained comparable results of BGL value estimation as compared with Monte Moreno, with maximum R-2=0.81. Further, BGL estimation using (i) Time and frequency domain features and (ii) Single Pulse Analysis (SPA) is performed and the resulting coefficient of determination (i.e., R-2) obtained for reference vs. prediction are 0.84 and 0.91, respectively. Clarke Error Grid analysis for BGL estimation is clinically accepted, so we performed similar analysis. Using Time and frequency domain feature set, the distributions of data samples is obtained as 80.6% in class A and 17.4% in class B. 1% samples in zone C and Zone D. For Single Pulse Analysis technique (SPA) the distribution of data samples are 83% in class A and 17% in class B. The proposed features in SPA have shown significant improvement in R-2 and Clarke Error grid analysis. SPA technique with the proposed feature set is a good choice for the implementation of system for measurement of non-invasive glucometer.
机译:本文介绍了一种通过使用光学溶精描绘(PPG)通过非侵入性方法估算血糖水平(BGL)的系统。以前的研究表明使用光学传感器更好地估计血糖水平。基于光学传感器的数据采集系统,并记录受试者的PPG信号。本文的主要贡献是使用单脉冲分析技术探索PPG信号的各种特征,以有效地估计BGL值。 611个体的PPG数据每次记录在3分钟内。使用两种类型的特征集,(i)时间和频域特征和(ii)单脉冲分析(SPA)来执行BGL值估计。使用上述提出的特征集训练神经网络,并且执行BGL值估计。首先,我们使用Monte Moreno使用的相同功能验证了我们之前的工作。实验在我们自己的数据集上执行。与Monte Moreno相比,我们获得了BGL值估计的可比结果,最大R-2 = 0.81。此外,使用(i)时间和频域特征和(ii)单脉冲分析(SPA)的BGL估计,并分别获得用于参考与参考与参考Vs的判定系数(即,R-2)分别为0.84和0.91 。临床上接受BGL估计的克拉克错误网格分析,因此我们进行了类似的分析。使用时间和频域特征集,在A类A和17.4%的A组中获得数据样本的分布和17.4%.1%的C区和区D.为单脉冲分析技术(SPA)数据分布A类中的样品为83%,B类中的17%。SPA中的提出特征在R-2和Clarke误差网格分析中显示出显着改善。具有拟议功能集的SPA技术是实现无侵入性血糖仪测量系统的良好选择。

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