Predictive analytics for blood glucose concentration: an empirical study using the tree-based ensemble approach
ISSN: 0737-8831
Article publication date: 7 July 2020
Issue publication date: 4 November 2020
Abstract
Purpose
The primary objective of this study was to recognize critical indicators in predicting blood glucose (BG) through data-driven methods and to compare the prediction performance of four tree-based ensemble models, i.e. bagging with tree regressors (bagging-decision tree [Bagging-DT]), AdaBoost with tree regressors (Adaboost-DT), random forest (RF) and gradient boosting decision tree (GBDT).
Design/methodology/approach
This study proposed a majority voting feature selection method by combining lasso regression with the Akaike information criterion (AIC) (LR-AIC), lasso regression with the Bayesian information criterion (BIC) (LR-BIC) and RF to select indicators with excellent predictive performance from initial 38 indicators in 5,642 samples. The selected features were deployed to build the tree-based ensemble models. The 10-fold cross-validation (CV) method was used to evaluate the performance of each ensemble model.
Findings
The results of feature selection indicated that age, corpuscular hemoglobin concentration (CHC), red blood cell volume distribution width (RBCVDW), red blood cell volume and leucocyte count are five most important clinical/physical indicators in BG prediction. Furthermore, this study also found that the GBDT ensemble model combined with the proposed majority voting feature selection method is better than other three models with respect to prediction performance and stability.
Practical implications
This study proposed a novel BG prediction framework for better predictive analytics in health care.
Social implications
This study incorporated medical background and machine learning technology to reduce diabetes morbidity and formulate precise medical schemes.
Originality/value
The majority voting feature selection method combined with the GBDT ensemble model provides an effective decision-making tool for predicting BG and detecting diabetes risk in advance.
Keywords
Acknowledgements
This work is supported by the National Natural Science Foundation of China (No. 71901014), the Postdoctoral Science Foundation of China (No. 2019M660427) and the Funds for First-class Discipline Construction (XK1802-5).
Citation
Liu, J., Wang, L., Zhang, L., Zhang, Z. and Zhang, S. (2020), "Predictive analytics for blood glucose concentration: an empirical study using the tree-based ensemble approach", Library Hi Tech, Vol. 38 No. 4, pp. 835-858. https://doi.org/10.1108/LHT-08-2019-0171
Publisher
:Emerald Publishing Limited
Copyright © 2020, Emerald Publishing Limited