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Prediction of glucose level conditions from sequential data

In type 1 diabetes management, mobile health applications are becoming a cornerstone to empower people to self-manage their disease. There are many applications addressed to calculate insulin doses based on the current information (e.g. carbohydrates intake) and a few of them are accompanied by modules able to supervise postprandial conditions and recommend corrective actions if the user falls in an abnormal state (i.e. hyperglycaemia or hypoglycaemia). On the other hand, mobile apps favour the gathering of historical data from which machine learning techniques can be used to predict if user conditions will worsen. This work presents the application of k-nearest neighbour on the historical data gathered on patients, so that given the information related to a sequence of meals, the method is able to predict if the patient will fall in an abnormal condition. The experimentation has been carried out with the UVA-Padova type 1 diabetes simulator over eleven adult profiles. Results corroborate that the use of sequential data improve significantly the prediction outcome when forecasts distinguish the type of meal (breakfast, lunch and dinner)

This work has received funding from the EU Horizon 2020 research and innovation programme under grant agreement No 689810 (PEPPER), and from the University of Girona under the grant MPCUdG2016 (Ajut per a la millora de la productivitat científica dels grups de recerca), and the Spanish MINECO under the grant number DPI2013- 47450-C21-R. This work has been developed with the support of the research group SITES awarded with distinction by the Generalitat de Catalunya (SGR 2014-2016)

© Frontiers in Artificial Intelligence and Applications, 2017, vol. 300, p. 227-232

http://hdl.handle.net/10256/17851

IOS Press

Manager: Ministerio de Economía y Competitividad (Espanya)
Author: Mordvanyuk, Natalia
Torrent-Fontbona, Ferran
López Ibáñez, Beatriz
Date: 2017 January 1
Abstract: In type 1 diabetes management, mobile health applications are becoming a cornerstone to empower people to self-manage their disease. There are many applications addressed to calculate insulin doses based on the current information (e.g. carbohydrates intake) and a few of them are accompanied by modules able to supervise postprandial conditions and recommend corrective actions if the user falls in an abnormal state (i.e. hyperglycaemia or hypoglycaemia). On the other hand, mobile apps favour the gathering of historical data from which machine learning techniques can be used to predict if user conditions will worsen. This work presents the application of k-nearest neighbour on the historical data gathered on patients, so that given the information related to a sequence of meals, the method is able to predict if the patient will fall in an abnormal condition. The experimentation has been carried out with the UVA-Padova type 1 diabetes simulator over eleven adult profiles. Results corroborate that the use of sequential data improve significantly the prediction outcome when forecasts distinguish the type of meal (breakfast, lunch and dinner)
This work has received funding from the EU Horizon 2020 research and innovation programme under grant agreement No 689810 (PEPPER), and from the University of Girona under the grant MPCUdG2016 (Ajut per a la millora de la productivitat científica dels grups de recerca), and the Spanish MINECO under the grant number DPI2013- 47450-C21-R. This work has been developed with the support of the research group SITES awarded with distinction by the Generalitat de Catalunya (SGR 2014-2016)
Format: application/pdf
Citation: https://doi.org/10.3233/978-1-61499-806-8-227
ISSN: 0922-6389
Document access: http://hdl.handle.net/10256/14860
Language: eng
Publisher: IOS Press
Collection: MINECO/PE 2014-2016/DPI2013-47450-C2-1-R
Versió postprint del document publicat a: https://doi.org/10.3233/978-1-61499-806-8-227
Articles publicats (D-EEEiA)
info:eu-repo/grantAgreement/EC/H2020/689810
Is part of: © Frontiers in Artificial Intelligence and Applications, 2017, vol. 300, p. 227-232
See also: http://hdl.handle.net/10256/17851
Rights: Tots els drets reservats
Subject: Diabetis -- Tractament
Diabetes -- Treatment
Hipoglucèmia
Hypoglycemia
Intel·ligència artificial -- Aplicacions a la medicina
Artificial intelligence -- Medical applications
Control intel·ligent
Intelligent control systems
Control intel·ligent
Intelligent control systems
Title: Prediction of glucose level conditions from sequential data
Type: info:eu-repo/semantics/article
Repository: DUGiDocs

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