Publication:
Application of Artificial Neural Network to Determine Optimum Formulation Development and in Vitro Characterization of Methylene Blue and Galantamine Loaded Polymeric Nanoparticles for the Treatment of Alzheimer's Disease

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Abstract

Alzheimer's disease is a major neurodegenerative disorder characterized by complex pathophysiology and currently lacks a curative treatment. This study aims to develop and characterize methylene blue and galantamine co-loaded PLGA nanoparticles, surface-modified with poloxamer 188 and GSH, to increase blood residence time and improve brain-targeted delivery. The nanoparticles were prepared using the double emulsion solvent evaporation method, and their physicochemical properties were characterized by TEM, FT-IR, DSC, XRD, and C-13 NMR. Artificial neural network modeling was used to optimize the formulation parameters, including PLGA %, PVA %, and sonication time, for predicting particle size and encapsulation efficiencies of methylene blue and galantamine. Results showed that the optimized nanoparticles had particle sizes <200 nm, appropriate zeta potential, and high encapsulation efficiencies. DSC, FT-IR, XRD, and NMR analyses confirmed the absence of crystalline peaks for methylene blue and galantamine, indicating successful encapsulation. Artificial neural network models demonstrated high predictive accuracy, serving as a valuable tool for formulation optimization. This dual-drug, surface-modified nanoparticle approach offers promising potential for multi-target therapy in Alzheimer's disease.

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European Journal of Pharmaceutical Sciences

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216

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