Predicting Glycemia in Diabetic Patients By Evolutionary Computation and Continuous Glucose Monitoring
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @InProceedings{Colmenar:2016:GECCOcomp,
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author = "J. Manuel Colmenar and Stephan M. Winkler and
Gabriel Kronberger and Esther Maqueda and Marta Botella and
J. Ignacio Hidalgo",
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title = "Predicting Glycemia in Diabetic Patients By
Evolutionary Computation and Continuous Glucose
Monitoring",
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booktitle = "GECCO '16 Companion: Proceedings of the Companion
Publication of the 2016 Annual Conference on Genetic
and Evolutionary Computation",
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year = "2016",
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editor = "Tobias Friedrich and Frank Neumann and
Andrew M. Sutton and Martin Middendorf and Xiaodong Li and
Emma Hart and Mengjie Zhang and Youhei Akimoto and
Peter A. N. Bosman and Terry Soule and Risto Miikkulainen and
Daniele Loiacono and Julian Togelius and
Manuel Lopez-Ibanez and Holger Hoos and Julia Handl and
Faustino Gomez and Carlos M. Fonseca and
Heike Trautmann and Alberto Moraglio and William F. Punch and
Krzysztof Krawiec and Zdenek Vasicek and
Thomas Jansen and Jim Smith and Simone Ludwig and JJ Merelo and
Boris Naujoks and Enrique Alba and Gabriela Ochoa and
Simon Poulding and Dirk Sudholt and Timo Koetzing",
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isbn13 = "978-1-4503-4323-7",
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pages = "1393--1400",
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address = "Denver, Colorado, USA",
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month = "20-24 " # jul,
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keywords = "genetic algorithms, genetic programming, grammatical
evolution",
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organisation = "SIGEVO",
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DOI = "doi:10.1145/2908961.2931734",
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publisher = "ACM",
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publisher_address = "New York, NY, USA",
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abstract = "Diabetes mellitus is a disease that affects more than
three hundreds million people worldwide. Maintaining a
good control of the disease is critical to avoid not
only severe long-term complications but also dangerous
short-term situations. Diabetics need to decide the
appropriate insulin injection, thus they need to be
able to estimate the level of glucose they are going to
have after a meal. In this paper we use machine
learning techniques for predicting glycemia in diabetic
patients. The algorithms use data collected from real
patients by a continuous glucose monitoring system, the
estimated number of carbohydrates, and insulin
administration for each meal. We compare (1) non-linear
regression with fixed model structure, (2)
identification of prognosis models by symbolic
regression using genetic programming, (3) prognosis by
k-nearest-neighbour time series search, and (4)
identification of prediction models by grammatical
evolution. We consider predictions horizons of 30, 60,
90 and 120 minutes.",
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notes = "Distributed at GECCO-2016.",
- }
Genetic Programming entries for
J Manuel Colmenar
Stephan M Winkler
Gabriel Kronberger
Esther Maqueda
Marta Botella-Serrano
Jose Ignacio Hidalgo Perez
Citations