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Erschienen in: Memetic Computing 3/2018

22.06.2018 | Regular Research Paper

Combining data augmentation, EDAs and grammatical evolution for blood glucose forecasting

verfasst von: Jose Manuel Velasco, Oscar Garnica, Juan Lanchares, Marta Botella, J. Ignacio Hidalgo

Erschienen in: Memetic Computing | Ausgabe 3/2018

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Abstract

The ideal solution for diabetes mellitus type 1 patients is the generalization of artificial pancreas systems. Artificial pancreas will control blood glucose levels of diabetics, improving their quality of live. At the core of the system, an algorithm will forecast future glucose levels as a function of food ingestion and insulin bolus sizes. In previous works several evolutionary computation techniques has been proposed as modeling or identification techniques in this area. One of the main obstacles that researchers have found for training the models is the lack of significant amounts of data. As in many other fields in medicine, the collection of data from real patients is not an easy task, since it is necessary to control the environmental and patient conditions. In this paper, we propose three evolutionary algorithms that generate synthetic glucose time series using real data from a patient. This way, the models can be trained with an augmented data set. The synthetic time series are used to train grammatical evolution models that work together in an ensemble. Experimental results show that, in a scarce data context, grammatical evolution models can get more accurate and robust predictions using data augmentation. In particular we reduce the number of potentially dangerous predictions to 0 for a 30 min horizon, 2.5% for 60 min, 3.6% on 90 min and 5.5% for 2 h. The Ensemble approach presented in this paper showed excellent performance when compared to not only a classical approach such as ARIMA, but also with other grammatical evolution approaches. We tested our techniques with data from real patients.

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Fußnoten
1
On 6 June 2012, the Clinical Research Ethics Committee of the Hospital of Alcalá de Henares (Spain) authorized the use of the data collected, provided that the privacy of the data is ensured and the informed consent of patients is made.
 
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Metadaten
Titel
Combining data augmentation, EDAs and grammatical evolution for blood glucose forecasting
verfasst von
Jose Manuel Velasco
Oscar Garnica
Juan Lanchares
Marta Botella
J. Ignacio Hidalgo
Publikationsdatum
22.06.2018
Verlag
Springer Berlin Heidelberg
Erschienen in
Memetic Computing / Ausgabe 3/2018
Print ISSN: 1865-9284
Elektronische ISSN: 1865-9292
DOI
https://doi.org/10.1007/s12293-018-0265-6

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