Literature DB >> 22402474

Optimization of matrix tablets controlled drug release using Elman dynamic neural networks and decision trees.

Jelena Petrović1, Svetlana Ibrić, Gabriele Betz, Zorica Đurić.   

Abstract

The main objective of the study was to develop artificial intelligence methods for optimization of drug release from matrix tablets regardless of the matrix type. Static and dynamic artificial neural networks of the same topology were developed to model dissolution profiles of different matrix tablets types (hydrophilic/lipid) using formulation composition, compression force used for tableting and tablets porosity and tensile strength as input data. Potential application of decision trees in discovering knowledge from experimental data was also investigated. Polyethylene oxide polymer and glyceryl palmitostearate were used as matrix forming materials for hydrophilic and lipid matrix tablets, respectively whereas selected model drugs were diclofenac sodium and caffeine. Matrix tablets were prepared by direct compression method and tested for in vitro dissolution profiles. Optimization of static and dynamic neural networks used for modeling of drug release was performed using Monte Carlo simulations or genetic algorithms optimizer. Decision trees were constructed following discretization of data. Calculated difference (f(1)) and similarity (f(2)) factors for predicted and experimentally obtained dissolution profiles of test matrix tablets formulations indicate that Elman dynamic neural networks as well as decision trees are capable of accurate predictions of both hydrophilic and lipid matrix tablets dissolution profiles. Elman neural networks were compared to most frequently used static network, Multi-layered perceptron, and superiority of Elman networks have been demonstrated. Developed methods allow simple, yet very precise way of drug release predictions for both hydrophilic and lipid matrix tablets having controlled drug release.
Copyright © 2012 Elsevier B.V. All rights reserved.

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Year:  2012        PMID: 22402474     DOI: 10.1016/j.ijpharm.2012.02.031

Source DB:  PubMed          Journal:  Int J Pharm        ISSN: 0378-5173            Impact factor:   5.875


  4 in total

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Authors:  Cheng-Min Chao; Ya-Wen Yu; Bor-Wen Cheng; Yao-Lung Kuo
Journal:  J Med Syst       Date:  2014-08-14       Impact factor: 4.460

2.  A Precise Prediction Method for the Properties of API-Containing Tablets Based on Data from Placebo Tablets.

Authors:  Yoshihiro Hayashi; Kaede Shirotori; Atsushi Kosugi; Shungo Kumada; Kok Hoong Leong; Kotaro Okada; Yoshinori Onuki
Journal:  Pharmaceutics       Date:  2020-06-28       Impact factor: 6.321

3.  Artificial neural networks in evaluation and optimization of modified release solid dosage forms.

Authors:  Svetlana Ibrić; Jelena Djuriš; Jelena Parojčić; Zorica Djurić
Journal:  Pharmaceutics       Date:  2012-10-18       Impact factor: 6.321

Review 4.  State-of-the-Art Review of Artificial Neural Networks to Predict, Characterize and Optimize Pharmaceutical Formulation.

Authors:  Shan Wang; Jinwei Di; Dan Wang; Xudong Dai; Yabing Hua; Xiang Gao; Aiping Zheng; Jing Gao
Journal:  Pharmaceutics       Date:  2022-01-13       Impact factor: 6.321

  4 in total

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