使用近红外光谱和双回归分析的无创血糖评估

S. Ramasahayam, Sri Haindavi Koppuravuri, Bharat Kavala, S. R. Chowdhury
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引用次数: 20

摘要

本文介绍了一种独特的近红外光谱无创血糖浓度测定技术。对葡萄糖在近红外区域的第二泛音进行了光谱分析。利用透射光体积图(PPG)进行了近红外光谱分析。模拟前端系统实现了近红外1070nm、950nm、935nm的PPG信号采集。对得到的PPG信号进行处理,利用人工神经网络进行双回归分析,估计血糖水平。预测的均方根误差为5.84mg/dL。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non invasive estimation of blood glucose using near infra red spectroscopy and double regression analysis
This paper presents a unique technique for noninvasive estimation of blood glucose concentration using near infra red spectroscopy. The spectroscopy has been performed at the second overtone of glucose which falls in the near infra red region. The near infra red spectroscopy has been performed using transmission photoplethsymography (PPG). The analog front end system has been implemented to get the PPG signal at the near infra red wavelengths of 1070nm, 950nm, 935nm. The PPG signal that has been obtained is processed and double regression analysis is carried out with the artificial neural network for estimating the glucose levels. The root mean square error of the prediction was 5.84mg/dL.
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