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AI-Driven Optimization of Curcumin Nanoparticles for Antidiabetic Drug Delivery

Nitin Gulab SutarDepartment of Pharmacognosy, Sanjivani College of Pharmaceutical Education and Research, Kopargaon, Dist. Ahilyanagar, Maharashtra, IndiaXasanboyeva Nafisaxon AbdullojonovnaDepartment of Folk Medicine and Pharmacology, Fergana Medical Institute of Public Health, Fergana–150100, UzbekistanOxunjonov Toxirmalik Abdumalik o’g’liDepartment of Folk Medicine and Pharmacology, Fergana Medical Institute of Public Health, Fergana–150100, UzbekistanHemant Ramchandra TawaleSt. Wilfred’s Institute of Pharmaceutical Science and Research (Affiliated to University of Mumbai), Mira Road (East), Thane–401107, Maharashtra, IndiaDinesh P. PatilMahatma Gandhi Vidymandirs, Samajshri Prashantdada Hiray College of Pharmacy, Malegaon, Maharashtra– 423105, IndiaMobeen ShaikKL college of Pharmacy, Koneru Lakshmaiah Education Foundation (Deemed to be University) Guntur, Andhra pradesh, IndiaSatish PandavSt. Wilfred’s Institute of Pharmaceutical Science and Research (Affiliated to University of Mumbai), Mira Road (East), Thane–401107, Maharashtra, IndiaVeerabathiran BalasubramanianJoy University, School of Pharmacy, Tirunelveli, Tamil Nadu–627116, India
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Curcumin, the principal bioactive polyphenol of Curcuma longa, exhibits broad pharmacological properties including anti-hyperglycemic, antioxidant, and anti-inflammatory activities. However, its clinical translation is severely impeded by poor aqueous solubility (< 0.1 μg/mL), rapid systemic metabolism, and negligible oral bioavailability (< 1%). Nanoparticle-based drug delivery systems offer a mechanistically sound strategy to overcome these limitations; nonetheless, conventional trial-and-error formulation methods are inherently time-consuming, resource-intensive, and incapable of capturing complex nonlinear interactions among critical formulation variables. This study aimed to develop, characterize, and AI-optimize PLGA-based curcumin nanoparticles (Cur-NPs) for antidiabetic applications using a hybrid artificial neural network (ANN)–random forest (RF) modeling framework integrated with Bayesian optimization. Curcumin-loaded PLGA nanoparticles were fabricated via the nanoprecipitation–solvent evaporation method. A Box–Behnken experimental design (33 runs) was employed to generate the training dataset, encompassing five independent formulation variables. Two machine learning architectures—a multilayer perceptron ANN and a Random Forest ensemble—were trained, validated, and evaluated against hold-out test sets. Optimized formulations were characterized by dynamic light scattering (DLS), transmission electron microscopy (TEM), zeta potential analysis, Fourier-transform infrared spectroscopy (FTIR), and differential scanning calorimetry (DSC). In vitro drug release kinetics were modeled using Higuchi and Korsmeyer–Peppas equations. Antidiabetic efficacy was assessed via α-glucosidase inhibition assays. The AI-optimized Cur-NPs exhibited a particle size of 128.6 ± 6.2 nm, PDI of 0.18 ± 0.02, zeta potential of −28.7 ± 1.8 mV, and entrapment efficiency of 87.3 ± 2.9%. The ANN model achieved an R² of 0.961 and RMSE of 5.32 nm for particle size prediction on the test set. Drug release followed Korsmeyer– Peppas kinetics (n = 0.62), indicating an anomalous diffusion–erosion mechanism. The optimized nanoparticles demonstrated a 1.77-fold improvement in α-glucosidase inhibitory activity (IC50 = 43.7 ± 3.2 μg/mL) compared to non-optimized formulations (IC50 = 89.4 ± 5.1 μg/mL). The hybrid AI-DoE optimization strategy significantly enhanced nanoparticle performance compared to conventional formulation approaches, demonstrating the transformative potential of machine learning integration in pharmaceutical nanotechnology for antidiabetic applications.

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