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Blood glucose level prediction based on support vector regression using mobile platforms.

作者信息

Reymann Maximilian P, Dorschky Eva, Groh Benjamin H, Martindale Christine, Blank Peter, Eskofier Bjoern M

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:2990-2993. doi: 10.1109/EMBC.2016.7591358.

DOI:10.1109/EMBC.2016.7591358
PMID:28268941
Abstract

The correct treatment of diabetes is vital to a patient's health: Staying within defined blood glucose levels prevents dangerous short- and long-term effects on the body. Mobile devices informing patients about their future blood glucose levels could enable them to take counter-measures to prevent hypo or hyper periods. Previous work addressed this challenge by predicting the blood glucose levels using regression models. However, these approaches required a physiological model, representing the human body's response to insulin and glucose intake, or are not directly applicable to mobile platforms (smart phones, tablets). In this paper, we propose an algorithm for mobile platforms to predict blood glucose levels without the need for a physiological model. Using an online software simulator program, we trained a Support Vector Regression (SVR) model and exported the parameter settings to our mobile platform. The prediction accuracy of our mobile platform was evaluated with pre-recorded data of a type 1 diabetes patient. The blood glucose level was predicted with an error of 19 % compared to the true value. Considering the permitted error of commercially used devices of 15 %, our algorithm is the basis for further development of mobile prediction algorithms.

摘要

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