Title :
Online prediction of glucose concentration in type 1 diabetes using extreme learning machines
Author :
Eleni I. Georga;Vasilios C. Protopappas;Demosthenes Polyzos;Dimitrios I. Fotiadis
Author_Institution :
Unit of Medical Technology and Intelligent Information Systems, Materials Science and Engineering Department, University of Ioannina, GR 45110 Greece
Abstract :
We propose an online machine-learning solution to the problem of nonlinear glucose time series prediction in type 1 diabetes. Recently, extreme learning machine (ELM) has been proposed for training single hidden layer feed-forward neural networks. The high accuracy and fast learning speed of ELM drive us to investigate its applicability to the glucose prediction problem. Given that diabetes self-monitoring data are received sequentially, we focus on online sequential ELM (OS-ELM) and online sequential ELM kernels (KOS-ELM). A multivariate feature set is utilized concerning subcutaneous glucose, insulin therapy, carbohydrates intake and physical activity. The dataset comes from the continuous multi-day recordings of 15 type 1 patients in free-living conditions. Assuming stationarity and evaluating the performance of the proposed method by 10-fold cross- validation, KOS-ELM were found to perform better than OS-ELM in terms of prediction error, temporal gain and regularity of predictions for a 30-min prediction horizon.
Keywords :
"Sugar","Diabetes","Kernel","Insulin","Predictive models","Yttrium","Time series analysis"
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2015 37th Annual International Conference of the IEEE
Electronic_ISBN :
1558-4615
DOI :
10.1109/EMBC.2015.7319088