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Improving the Accuracy of Continuous Blood Glucose Measurement Using Personalized Calibration and Machine Learningopen access

Authors
Kumari, R.[Kumari, Ranjita]Anand, P.K.[Anand, Pradeep Kumar]Shin, J.[Shin, Jitae]
Issue Date
Aug-2023
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Keywords
continuous blood glucose; diabetes; machine learning; multilayer perceptron; personalized calibration
Citation
Diagnostics, v.13, no.15
Indexed
SCIE
SCOPUS
Journal Title
Diagnostics
Volume
13
Number
15
URI
https://scholarworks.bwise.kr/skku/handle/2021.sw.skku/107729
DOI
10.3390/diagnostics13152514
ISSN
2075-4418
Abstract
Despite tremendous developments in continuous blood glucose measurement (CBGM) sensors, they are still not accurate for all patients with diabetes. As glucose concentration in the blood is <1% of the total blood volume, it is challenging to accurately measure glucose levels in the interstitial fluid using CBGM sensors due to within-patient and between-patient variations. To address this issue, we developed a novel data-driven approach to accurately predict CBGM values using personalized calibration and machine learning. First, we scientifically divided measured blood glucose into smaller groups, namely, hypoglycemia (<80 mg/dL), nondiabetic (81–115 mg/dL), prediabetes (116–150 mg/dL), diabetes (151–181 mg/dL), severe diabetes (181–250 mg/dL), and critical diabetes (>250 mg/dL). Second, we separately trained each group using different machine learning models based on patients’ personalized parameters, such as physical activity, posture, heart rate, breath rate, skin temperature, and food intake. Lastly, we used multilayer perceptron (MLP) for the D1NAMO dataset (training to test ratio: 70:30) and grid search for hyperparameter optimization to predict accurate blood glucose concentrations. We successfully applied our proposed approach in nine patients with type 1 diabetes and observed that the mean absolute relative difference (MARD) decreased from 17.8% to 8.3%. © 2023 by the authors.
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Medicine > Department of Medicine > 1. Journal Articles
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