Genetic Programming-based induction of a glucose-dynamics model for telemedicine
Created by W.Langdon from
gp-bibliography.bib Revision:1.8120
- @Article{DEFALCO:2018:JNCA,
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author = "Ivanoe {De Falco} and Antonio {Della Cioppa} and
Tomas Koutny and Michal Krcma and Umberto Scafuri and
Ernesto Tarantino",
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title = "Genetic Programming-based induction of a
glucose-dynamics model for telemedicine",
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journal = "Journal of Network and Computer Applications",
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volume = "119",
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pages = "1--13",
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year = "2018",
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keywords = "genetic algorithms, genetic programming, Blood glucose
estimation, Interstitial glucose, Regression models,
Evolutionary algorithms",
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ISSN = "1084-8045",
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DOI = "doi:10.1016/j.jnca.2018.06.007",
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URL = "http://www.sciencedirect.com/science/article/pii/S1084804518302157",
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abstract = "This paper describes our preliminary steps towards the
deployment of a brand-new original feature for a
telemedicine portal aimed at helping people suffering
from diabetes. In fact, people with diabetes
necessitate careful handling of their disease to stay
healthy. As such a disease is correlated to a
malfunction of the pancreas that produces very little
or no insulin, a way to enhance the quality of life of
these subjects is to implement an artificial pancreas
able to inject an insulin bolus when needed. The goal
of this paper is to extrapolate a regression model,
capable of estimating the blood glucose (BG) through
interstitial glucose (IG) measurements, that represents
a possible revolutionizing step in constructing the
fundamental element of such an artificial pancreas. In
particular, a new evolutionary approach is illustrated
to stem a mathematical relationship between BG and IG.
To accomplish the task, an automatic evolutionary
procedure is also devised to estimate the missing BG
values within the investigated real-world database made
up of both BG and IG measurements of people suffering
from Type 1 diabetes. The discovered model is validated
through a comparison with other models during the
experimental phase on global and personalized data
treatment. Moreover, investigation is performed about
the accuracy of one single global relationship model
for all the subjects involved in the study, as opposed
to that obtained through a personalized model found for
each of them. Once this research is clinically
validated, the important feature of estimating BG will
be added to a web portal for diabetic subjects for
telemedicine purposes",
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keywords = "genetic algorithms, genetic programming, Blood glucose
estimation, Interstitial glucose, Regression models,
Evolutionary algorithms",
- }
Genetic Programming entries for
Ivanoe De Falco
Antonio Della Cioppa
Tomas Koutny
Michal Krcma
Umberto Scafuri
Ernesto Tarantino
Citations