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Validation of fluid bed granulation utilizing artificial neural network.
Int J Pharm. 2005 Mar 03; 291(1-2):139-48.IJ

Abstract

Three innovative components (an annular gap spray system, a booster bottom and an outlet filter) have been developed by Innojet Technologies to improve fluid bed technology and to reduce the common interference factors (clogging of nozzles and outlet filters, spray loss, spray drying and fluidized bed heterogeneity). In a fluid bed granulator, three conventional components have been replaced with these innovative components. Validation of the modified fluid bed granulator has been conducted using a generalized regression neural network (GRNN). Under different operating conditions (by variation of inlet air temperature, liquid-binder spray rate, atomizing air pressure, air velocity, amount and concentration of binder solution and batch size), sucrose was granulated and the properties of size, size distribution, flow rate, repose angle and bulk and tapped volumes of granules were measured. To confirm the method's validity, the trained network has been used to predict new granulation parameters as well as granule properties. These forecasts were then compared with the corresponding experimental results. Good correlation has been obtained between the predicted and the experimental data. From these findings, we conclude that the GRNN may serve as a reliable method to validate the modified fluid bed apparatus.

Authors+Show Affiliations

Institute of Pharmaceutical Technology and Biopharmaceutics, University of Vienna, Althan Strasse 14, 1090 Vienna, Austria.No affiliation info availableNo affiliation info availableNo affiliation info availableNo affiliation info available

Pub Type(s)

Journal Article
Research Support, Non-U.S. Gov't
Validation Study

Language

eng

PubMed ID

15707740

Citation

Behzadi, Sharareh Salar, et al. "Validation of Fluid Bed Granulation Utilizing Artificial Neural Network." International Journal of Pharmaceutics, vol. 291, no. 1-2, 2005, pp. 139-48.
Behzadi SS, Klocker J, Hüttlin H, et al. Validation of fluid bed granulation utilizing artificial neural network. Int J Pharm. 2005;291(1-2):139-48.
Behzadi, S. S., Klocker, J., Hüttlin, H., Wolschann, P., & Viernstein, H. (2005). Validation of fluid bed granulation utilizing artificial neural network. International Journal of Pharmaceutics, 291(1-2), 139-48.
Behzadi SS, et al. Validation of Fluid Bed Granulation Utilizing Artificial Neural Network. Int J Pharm. 2005 Mar 3;291(1-2):139-48. PubMed PMID: 15707740.
* Article titles in AMA citation format should be in sentence-case
TY - JOUR T1 - Validation of fluid bed granulation utilizing artificial neural network. AU - Behzadi,Sharareh Salar, AU - Klocker,Johanna, AU - Hüttlin,Herbert, AU - Wolschann,Peter, AU - Viernstein,Helmut, Y1 - 2005/01/08/ PY - 2004/01/26/received PY - 2004/06/11/revised PY - 2004/07/19/accepted PY - 2005/2/15/pubmed PY - 2006/4/25/medline PY - 2005/2/15/entrez SP - 139 EP - 48 JF - International journal of pharmaceutics JO - Int J Pharm VL - 291 IS - 1-2 N2 - Three innovative components (an annular gap spray system, a booster bottom and an outlet filter) have been developed by Innojet Technologies to improve fluid bed technology and to reduce the common interference factors (clogging of nozzles and outlet filters, spray loss, spray drying and fluidized bed heterogeneity). In a fluid bed granulator, three conventional components have been replaced with these innovative components. Validation of the modified fluid bed granulator has been conducted using a generalized regression neural network (GRNN). Under different operating conditions (by variation of inlet air temperature, liquid-binder spray rate, atomizing air pressure, air velocity, amount and concentration of binder solution and batch size), sucrose was granulated and the properties of size, size distribution, flow rate, repose angle and bulk and tapped volumes of granules were measured. To confirm the method's validity, the trained network has been used to predict new granulation parameters as well as granule properties. These forecasts were then compared with the corresponding experimental results. Good correlation has been obtained between the predicted and the experimental data. From these findings, we conclude that the GRNN may serve as a reliable method to validate the modified fluid bed apparatus. SN - 0378-5173 UR - https://www.unboundmedicine.com/medline/citation/15707740/Validation_of_fluid_bed_granulation_utilizing_artificial_neural_network_ DB - PRIME DP - Unbound Medicine ER -