Non-invasive Blood Glucose Estimation Using Statistical Features Defined via Convex Combination of One Norm and Infinity Norm Optimization Problems

Xiaoyu Ding, B. Ling, Cuilian Huang
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Abstract

In the past few decades, due to the increasing emphasis on health, blood glucose, a healthy reference value, has received more and more attention. Traditional invasive blood glucose testing methods require pricking a finger to take a drop of blood, and measuring blood glucose levels based on how the device reacts with the blood. Due to various shortcomings of traditional methods, and the semi-invasive or minimally invasive blood glucose monitoring systems that have been marketed in many countries and regions have high costs and some usage limitations, a new type of easy-to-use non-invasive blood glucose detection and prediction system is rapidly developing. This paper introduces a wearable non-invasive blood glucose detection device using near-infrared technology and its data processing technology, which includes extracting features from the obtained signals and using machine learning methods for blood glucose level prediction, and novel use of the solution The optimization problem of different norm values is used to obtain new statistical features to further improve the accuracy of non-invasive blood glucose prediction.
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基于一范数和无穷范数优化问题凸组合的统计特征的无创血糖估计
近几十年来,由于人们对健康的日益重视,血糖作为一种健康参考值,受到了越来越多的关注。传统的侵入式血糖测试方法需要刺破手指取一滴血,然后根据设备与血液的反应来测量血糖水平。由于传统方法的种种缺点,以及已在许多国家和地区上市的半侵入式或微创式血糖监测系统存在成本高、使用局限性等问题,一种易于使用的新型无创血糖检测与预测系统正在迅速发展。本文介绍了一种采用近红外技术的可穿戴式无创血糖检测装置及其数据处理技术,包括从获得的信号中提取特征并利用机器学习方法进行血糖水平预测,并新颖地利用解决不同规范值的优化问题来获得新的统计特征,进一步提高无创血糖预测的准确性。
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