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基于自适应增强的个性化血糖监测系统(PGMS)用于无创血糖预测,提高准确性。

Adaptive Boosting Based Personalized Glucose Monitoring System (PGMS) for Non-Invasive Blood Glucose Prediction with Improved Accuracy.

作者信息

Anand Pradeep Kumar, Shin Dong Ryeol, Memon Mudasar Latif

机构信息

College of Information and Communication Engineering, Sungkyunkwan University, Suwon 16419, Korea.

College of Software, Sungkyunkwan University, Suwon 16419, Korea.

出版信息

Diagnostics (Basel). 2020 May 7;10(5):285. doi: 10.3390/diagnostics10050285.

Abstract

In this paper, we present an architecture of a personalized glucose monitoring system (PGMS). PGMS consists of both invasive and non-invasive sensors on a single device. Initially, blood glucose is measured invasively and non-invasively, to train the machine learning models. Then, paired data and corresponding errors are divided scientifically into six different clusters based on blood glucose ranges as per the patient's diabetic conditions. Each cluster is trained to build the unique error prediction model using an adaptive boosting (AdaBoost) algorithm. Later, these error prediction models undergo personalized calibration based on the patient's characteristics. Once, the errors in predicted non-invasive values are within the acceptable error range, the device gets personalized for a patient to measure the blood glucose non-invasively. We verify PGMS on two different datasets. Performance analysis shows that the mean absolute relative difference (MARD) is reduced exceptionally to 7.3% and 7.1% for predicted values as compared to 25.4% and 18.4% for measured non-invasive glucose values. The Clarke error grid analysis (CEGA) plot for non-invasive predicted values shows 97% data in Zone A and 3% data in Zone B for dataset 1. Moreover, for dataset 2 results echoed with 98% and 2% in Zones A and B, respectively.

摘要

在本文中,我们展示了一种个性化血糖监测系统(PGMS)的架构。PGMS在单个设备上同时包含侵入性和非侵入性传感器。最初,通过侵入性和非侵入性方式测量血糖,以训练机器学习模型。然后,根据患者的糖尿病病情,按照血糖范围将配对数据和相应误差科学地分为六个不同的簇。使用自适应增强(AdaBoost)算法对每个簇进行训练,以构建独特的误差预测模型。之后,这些误差预测模型根据患者的特征进行个性化校准。一旦预测的非侵入性值中的误差在可接受的误差范围内,该设备就会针对患者进行个性化设置,以非侵入性方式测量血糖。我们在两个不同的数据集上对PGMS进行了验证。性能分析表明,预测值的平均绝对相对差异(MARD)异常降低至7.3%和7.1%,而测量的非侵入性血糖值的MARD分别为25.4%和18.4%。对于数据集1,非侵入性预测值的克拉克误差网格分析(CEGA)图显示,A区有97%的数据,B区有3%的数据。此外,对于数据集2,结果分别在A区和B区为98%和2%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/585f/7278000/5f468d0dcf76/diagnostics-10-00285-g001.jpg

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