Title :
Multivariate Prediction of Subcutaneous Glucose Concentration in Type 1 Diabetes Patients Based on Support Vector Regression
Author :
Georga, Eleni I. ; Protopappas, Vasilios C. ; Ardigo, Diego ; Marina, M. ; Zavaroni, I. ; Polyzos, Dimitrios ; Fotiadis, Dimitrios I.
Author_Institution :
Dept. of Mater. Sci. & Eng., Univ. of Ioannina, Ioannina, Greece
Abstract :
Data-driven techniques have recently drawn significant interest in the predictive modeling of subcutaneous (s.c.) glucose concentration in type 1 diabetes. In this study, the s.c. glucose prediction is treated as a multivariate regression problem, which is addressed using support vector regression (SVR). The proposed method is based on variables concerning: 1) the s.c. glucose profile; 2) the plasma insulin concentration; 3) the appearance of meal-derived glucose in the systemic circulation; and 4) the energy expenditure during physical activities. Six cases corresponding to different combinations of the aforementioned variables are used to investigate the influence of the input on the daily glucose prediction. The proposed method is evaluated using a dataset of 27 patients in free-living conditions. Tenfold cross validation is applied to each dataset individually to both optimize and test the SVR model. In the case, where all the input variables are considered, the average prediction errors are 5.21, 6.03, 7.14, and 7.62 mg/dl for 15-, 30-, 60-, and 120-min prediction horizons, respectively. The results clearly indicate that the availability of multivariable data and their effective combination can significantly increase the accuracy of both short-term and long-term predictions.
Keywords :
biochemistry; diseases; medical computing; patient diagnosis; regression analysis; sugar; support vector machines; SVR model; data-driven technique; multivariate regression problem; physical activity; plasma insulin concentration; subcutaneous glucose concentration; subcutaneous glucose profile; support vector regression; time 120 min; time 15 min; time 30 min; time 60 min; type 1 diabetes patient; Blood; Diabetes; Input variables; Insulin; Plasmas; Predictive models; Sugar; Subcutaneous (s.c.) glucose concentration; support vector machines; type 1 diabetes; Adult; Aged; Blood Glucose; Blood Glucose Self-Monitoring; Diabetes Mellitus, Type 1; Female; Humans; Insulin; Male; Middle Aged; Models, Statistical; Multivariate Analysis; Reproducibility of Results; Subcutaneous Tissue; Support Vector Machines; Young Adult;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/TITB.2012.2219876