Symbolic regression via genetic programming in the optimization of a controlled release pharmaceutical formulation
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Barmpalexis201175,
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author = "P. Barmpalexis and K. Kachrimanis and A. Tsakonas and
E. Georgarakis",
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title = "Symbolic regression via genetic programming in the
optimization of a controlled release pharmaceutical
formulation",
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journal = "Chemometrics and Intelligent Laboratory Systems",
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volume = "107",
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number = "1",
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pages = "75--82",
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year = "2011",
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ISSN = "0169-7439",
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DOI = "doi:10.1016/j.chemolab.2011.01.012",
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broken = "http://www.sciencedirect.com/science/article/B6TFP-523CDG2-4/2/67c4e87b7f04a0e4f5f6fe07a1127ef8",
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keywords = "genetic algorithms, genetic programming, Artificial
neural networks, Controlled release, Experimental
design, Optimisation",
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abstract = "Symbolic regression via genetic programming (GP) was
used in the optimisation of a pharmaceutical zero-order
release matrix tablet, and its predictive performance
was compared to that of artificial neural network (ANN)
models. Two types of GP algorithms were employed: 1)
standard GP, where a single population is used with a
restricted or an extended function set, and 2)
multi-population (island model) GP, where a finite
number of populations is adopted. The amounts of four
polymers, namely PEG4000, PVP K30, HPMC K100 and HPMC
E50LV were selected as independent variables, while the
percentage of nimodipine released in 2 and 8 h (Y2h,
and Y8h), respectively, and the time at which 90% of
the drug was dissolved (t90%), were selected as
responses. Optimal models were selected by minimisation
of the Euclidian distance between predicted and optimum
release parameters. It was found that the prediction
ability of GP on an external validation set was higher
compared to that of the ANNs, with the multi population
and standard GP combined with an extended function set,
showing slightly better predictive performance.
Similarity factor (f2) values confirmed GP's increased
prediction performance for multi-population GP (f2 =
85.52) and standard GP using an extended function set
(f2 = 84.47).",
- }
Genetic Programming entries for
Panagiotis Barmpalexis
Kyriakos Kachrimanis
Athanasios D Tsakonas
Emanouil Georgarakis
Citations