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Artificial Neural Networks Modelling the Prednisolone Nanoprecipitation in Microfluidic Reactors

ملخص البحث
This study employs artificial neural networks (ANNs) to create a model to identify relationships between variables affecting drug nanoprecipitation using microfluidic reactors. The input variables examined were saturation levels of prednisolone, solvent and antisolvent flow rates, microreactor inlet angles and internal diameters, while particle size was the single output. ANNs software was used to analyse a set of data obtained by random selection of the variables. The developed model was then assessed using a separate set of validation data and provided good agreement with the observed results. The antisolvent flow rate was found to have the dominant role on determining final particle size.
مؤلف البحث
Hany S.M. Ali, Nicholas Blagden, Peter York, Amir Amani, Toni Brook
قسم البحث
مجلة البحث
European Journal of Pharmaceutical Sciences.
مؤلف البحث
تصنيف البحث
1
عدد البحث
Vol. 37
سنة البحث
2009