2003
DOI: 10.1208/pt040109
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Artificial neural networks in the modeling and optimization of aspirin extended release tablets with eudragit L 100 as matrix substance

Abstract: KEYWORDS: artificial neural network, matrix tablets, controlled release, Eudragit L 100, aspirinThe purpose of the present study was to model the effects of the concentration of Eudragit L 100 and compression pressure as the most important process and formulation variables on the in vitro release profile of aspirin from matrix tablets formulated with Eudragit L 100 as matrix substance and to optimize the formulation by artificial neural network. As model formulations, 10 kinds of aspirin matrix tablets were pr… Show more

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Cited by 53 publications
(18 citation statements)
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“…Due to the excellent elongation of Eudragit FS 30D, it is commonly used to modify the mechanical properties of Eudragit L 30D-55 films 21 . Meanwhile, the addition of Eudragit FS 30D would not change the enteric property of the film, but only adjust the release rate of drug for its insolubility at pH 5.5.…”
Section: Discussionmentioning
confidence: 99%
“…Due to the excellent elongation of Eudragit FS 30D, it is commonly used to modify the mechanical properties of Eudragit L 30D-55 films 21 . Meanwhile, the addition of Eudragit FS 30D would not change the enteric property of the film, but only adjust the release rate of drug for its insolubility at pH 5.5.…”
Section: Discussionmentioning
confidence: 99%
“…For example, the reliability of ANNs in optimizing controlled release capsules and ketoprofen hydrogel ointment has been demonstrated by Hussain et al [54]. A trained ANN model has been successfully employed to predict release profile and optimize formulation of various drug formulations such as aspirin extended release tablets [55,56], diclofenac sodium sustained release matrix tablets [57], salbutamol sulfate osmotic pump tablets [58], transdermal ketoprofen hydrogel [59], and nimodipine floating tablet formulation [60].…”
Section: Optimization Of Pharmaceutical Formulationsmentioning
confidence: 99%
“…Moreover surrogate models built without derivatives are superior to local surrogate models built with derivatives for some surprisingly simple and smooth frameworks [34,6]. Some experiments with very different forms of meta-models can be found in [18,28,37], and many applications can be found in [35,32,22,23,27,20,29,24]. Theorem 5.2 can also be applied to optimization with surrogate models.…”
Section: Application To Surrogate Modelsmentioning
confidence: 99%