A computational technique to predict the level of glucose of a diabetic patient with uncertainty in the short term.

Autor: Burgos Simón, Clara, Cervigón, Carlos, Hidalgo, José‐Ignacio, Villanueva, Rafael‐J.
Předmět:
Zdroj: Computational & Mathematical Methods; Mar2020, Vol. 2 Issue 2, p1-11, 11p
Abstrakt: On advanced stages of the disease, diabetic patients have to inject insulin doses to maintain blood glucose levels inside of a healthy range. The decision of how much insulin is injected implies somehow to predict the level of glucose they will have after a certain time. Due to the sudden changes in the glucose levels, their estimation is a very difficult task. If we were able to give reliable estimations in advance, it would facilitate the process of taking therapeutic decisions to control the disease and improve the health of the patient. In this work, we present a technique to estimate the glucose level of a diabetic patient, capturing the measurement errors produced by continuous glucose monitoring systems (CGMSs), smart devices that measure glucose levels. To do that, we will use a model of glucose dynamics and we calibrate it with the aim to capture the glucose level data of the patient in a time interval of 30 minutes and the uncertainty given by the glucose measurement. Then, we use the calibrated parameters to predict the levels of glucose over the next 15 minutes. Repeating this procedure every 15 minutes, we are able to give short‐term accurate predictions. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index