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Optimization of Ionizable Lipids for Aerosolizable Mrna Lipid Nanoparticles

BIOENGINEERING & TRANSLATIONAL MEDICINE(2023)

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Abstract
Abstract Although mRNA lipid nanoparticles (LNPs) are highly effective as vaccines, their efficacy for pulmonary delivery has not yet fully been established. A major barrier to this therapeutic goal is their instability during aerosolization for local delivery. This imparts a shear force that degrades the mRNA cargo and therefore reduces cell transfection. In addition to remaining stable upon aerosolization, mRNA LNPs must also possess the aerodynamic properties to achieve deposition in clinically relevant areas of the lungs. We addressed these challenges by formulating mRNA LNPs with SM‐102, the clinically approved ionizable lipid in the Spikevax COVID‐19 vaccine. Our lead candidate, B‐1, had the highest mRNA expression in both a physiologically relevant air–liquid interface (ALI) human lung cell model and in healthy mice lungs upon aerosolization. Further, B‐1 showed selective transfection in vivo of lung epithelial cells compared to immune cells and endothelial cells. These results show that the formulation can target therapeutically relevant cells in pulmonary diseases such as cystic fibrosis. Morphological studies of B‐1 revealed differences in the surface structure compared to LNPs with lower transfection efficiency. Importantly, the formulation maintained critical aerodynamic properties in simulated human airways upon next generation impaction. Finally, structure–function analysis of SM‐102 revealed that small changes in the number of carbons can improve upon mRNA delivery in ALI human lung cells. Overall, our study expands the application of SM‐102 and its analogs to aerosolized pulmonary delivery and identifies a potent lead candidate for future therapeutically active mRNA therapies.
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Key words
aerosolization,ionizable lipid,lipid nanoparticle,mRNA,pulmonary delivery
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