Prediction of Blood Glucose Concentration Based on OptiScanner and XGBoost in ICU

Hyperglycemia, a stress-induced physiological condition, is associated with severe complications, including sepsis, multiple organ failure, and higher mortality rates. The seminal 2001 Leuven study highlighted the potential for strict blood glucose control (80-110 mg/dL) to lower mortality rates by...

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Main Authors: Chun-Han Lin, Chien-Liang Liu
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10287341/
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author Chun-Han Lin
Chien-Liang Liu
author_facet Chun-Han Lin
Chien-Liang Liu
author_sort Chun-Han Lin
collection DOAJ
description Hyperglycemia, a stress-induced physiological condition, is associated with severe complications, including sepsis, multiple organ failure, and higher mortality rates. The seminal 2001 Leuven study highlighted the potential for strict blood glucose control (80-110 mg/dL) to lower mortality rates by 34% among critically ill surgical patients. Consequently, monitoring blood glucose levels in ICU patients has become imperative. This study aims to use recent medical technology advancements to streamline the monitoring of blood glucose levels, traditionally requiring trained personnel to operate a blood glucose monitor. We used the OptiScanner to collect patient blood data, separate plasma, and acquire mid-IR-related data. XGBoost was used to improve the prediction of blood glucose concentration based on patient classification types and its performance was compared with two other machine learning algorithms. We also used the LASSO model to predict plasma blood glucose concentrations. Additionally, we applied SHAP (SHapley Additive exPlanations) to identify critical wavelengths in the classifier and compared these with the functional groups corresponding to the actual IR spectrum. Our experimental findings demonstrate that XGBoost exhibits promising performance. Furthermore, the interpretation of the model is in alignment with domain knowledge. Through this study, we emphasize the potential of advanced medical technology, particularly machine learning algorithms such as XGBoost, to improve the efficacy and precision of blood glucose monitoring in ICU settings.
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spelling doaj.art-add5d27472f0411082fad68f7b77a0852023-10-25T23:00:31ZengIEEEIEEE Access2169-35362023-01-011111652411653310.1109/ACCESS.2023.332543010287341Prediction of Blood Glucose Concentration Based on OptiScanner and XGBoost in ICUChun-Han Lin0Chien-Liang Liu1https://orcid.org/0000-0002-2724-7199Department of Industrial Engineering and Management, National Yang Ming Chiao Tung University, Hsinchu, TaiwanDepartment of Industrial Engineering and Management, National Yang Ming Chiao Tung University, Hsinchu, TaiwanHyperglycemia, a stress-induced physiological condition, is associated with severe complications, including sepsis, multiple organ failure, and higher mortality rates. The seminal 2001 Leuven study highlighted the potential for strict blood glucose control (80-110 mg/dL) to lower mortality rates by 34% among critically ill surgical patients. Consequently, monitoring blood glucose levels in ICU patients has become imperative. This study aims to use recent medical technology advancements to streamline the monitoring of blood glucose levels, traditionally requiring trained personnel to operate a blood glucose monitor. We used the OptiScanner to collect patient blood data, separate plasma, and acquire mid-IR-related data. XGBoost was used to improve the prediction of blood glucose concentration based on patient classification types and its performance was compared with two other machine learning algorithms. We also used the LASSO model to predict plasma blood glucose concentrations. Additionally, we applied SHAP (SHapley Additive exPlanations) to identify critical wavelengths in the classifier and compared these with the functional groups corresponding to the actual IR spectrum. Our experimental findings demonstrate that XGBoost exhibits promising performance. Furthermore, the interpretation of the model is in alignment with domain knowledge. Through this study, we emphasize the potential of advanced medical technology, particularly machine learning algorithms such as XGBoost, to improve the efficacy and precision of blood glucose monitoring in ICU settings.https://ieeexplore.ieee.org/document/10287341/Hyperglycemiablood glucose monitoringOptiScannerXGBoostmachine learningLASSO model
spellingShingle Chun-Han Lin
Chien-Liang Liu
Prediction of Blood Glucose Concentration Based on OptiScanner and XGBoost in ICU
IEEE Access
Hyperglycemia
blood glucose monitoring
OptiScanner
XGBoost
machine learning
LASSO model
title Prediction of Blood Glucose Concentration Based on OptiScanner and XGBoost in ICU
title_full Prediction of Blood Glucose Concentration Based on OptiScanner and XGBoost in ICU
title_fullStr Prediction of Blood Glucose Concentration Based on OptiScanner and XGBoost in ICU
title_full_unstemmed Prediction of Blood Glucose Concentration Based on OptiScanner and XGBoost in ICU
title_short Prediction of Blood Glucose Concentration Based on OptiScanner and XGBoost in ICU
title_sort prediction of blood glucose concentration based on optiscanner and xgboost in icu
topic Hyperglycemia
blood glucose monitoring
OptiScanner
XGBoost
machine learning
LASSO model
url https://ieeexplore.ieee.org/document/10287341/
work_keys_str_mv AT chunhanlin predictionofbloodglucoseconcentrationbasedonoptiscannerandxgboostinicu
AT chienliangliu predictionofbloodglucoseconcentrationbasedonoptiscannerandxgboostinicu