Comparison of multi-linear regression, particle swarm optimization artificial neural networks and genetic programming in the development of mini-tablets
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{BARMPALEXIS:2018:IJP,
-
author = "Panagiotis Barmpalexis and Anna Karagianni and
Grigorios Karasavvaides and Kyriakos Kachrimanis",
-
title = "Comparison of multi-linear regression, particle swarm
optimization artificial neural networks and genetic
programming in the development of mini-tablets",
-
journal = "International Journal of Pharmaceutics",
-
volume = "551",
-
number = "1",
-
pages = "166--176",
-
year = "2018",
-
keywords = "genetic algorithms, genetic programming, Mini-tablets,
Quality by design (QbD), Particle swarm optimization
ANNs, Flow properties, DoE optimization",
-
ISSN = "0378-5173",
-
DOI = "doi:10.1016/j.ijpharm.2018.09.026",
-
URL = "http://www.sciencedirect.com/science/article/pii/S037851731830677X",
-
abstract = "In the present study, the preparation of
pharmaceutical mini-tablets was attempted in the
framework of Quality by Design (QbD) context, by
comparing traditionally used multi-linear regression
(MLR), with artificially-intelligence based regression
techniques (such as standard artificial neural networks
(ANNs), particle swarm optimization (PSO) ANNs and
genetic programming (GP)) during Design of Experiment
(DoE) implementation. Specifically, the effect of
diluent type and particle size fraction for three
commonly used direct compression diluents (lactose,
pregelatinized starch and dibasic calcium phosphate
dihydrate, DCPD) blended with either hydrophilic or
hydrophobic flowing aids was evaluated in terms of: a)
powder blend properties (such as bulk (Y1) and tapped
(Y2) density, Carr's compressibility index (Y3, CCI),
Kawakita's compaction fitting parameters a (Y4) and 1/b
(Y5)), and b) mini-tablet's properties (such as
relative density (Y6), average weight (Y7) and weight
variation (Y8)). Results showed better flowing
properties for pregelatinized starch and improved
packing properties for lactose and DPCD. MLR analysis
showed high goodness of fit for the Y1, Y2, Y4, Y6 and
Y8 with RMSE values of Y1a =a 0.028, Y2a =a 0.032, Y4a
=a 0.019, Y6a =a 0.015 and Y8a =a 0.130; while for rest
responses, high correlation was observed from both
standard ANNs and GP. PSO-ANNs fitting was the only
regression technique that was able to adequately fit
all responses simultaneously (RMSE values of Y1a =a
0.026, Y2a =a 0.022, Y3a =a 0.025, Y4a =a 0.010, Y5a =a
0.063, Y6a =a 0.013, Y7a =a 0.064 and Y8a =a 0.104)",
- }
Genetic Programming entries for
Panagiotis Barmpalexis
Anna Karagianni
Grigorios Karasavvaides
Kyriakos Kachrimanis
Citations