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Bleb formation induced by acidic mixing buffers improves liquid stability of mRNA-LNPs

Grundler, J.; Chertok, B.; Nilam, A.; Edmundson, A.; Song, M.; Newton, M.; Scholfield, M. R.; Padilla, A. M.; Payton, N. M.

2026-03-06 biochemistry
10.64898/2026.03.05.709631 bioRxiv
Show abstract

mRNA-lipid nanoparticles (LNP) have proven their potential as a rapidly adaptable vaccine platform and promise to revolutionize numerous therapeutic areas. A major hurdle towards the widespread adoption of mRNA-LNP vaccines and therapeutics is their limited liquid shelf-life compared to more established modalities currently necessitating an ultralow temperature cold-chain to enable their distribution and storage. While ongoing efforts aim to improve liquid stability through chemical modification of mRNA and lipid components, complementary strategies that are broadly applicable across chemistries may further accelerate translation. Here, we present an approach to improve the liquid shelf-life of mRNA-LNPs that does not rely on modifications to the mRNA or LNP chemistry. In particular, we show that bleb formation induced by high ionic strength acidic citrate buffers during LNP formation reduces mRNA degradation and retains in vitro activity during extended liquid storage. We observed an increase in the in vitro activity storage half-life from 2.8 to 18.9 days at 25{degrees}C when prepared using high ionic strength buffers translating into a [~]7-fold improvement in the liquid shelf-life of MC3-LNPs. This enhanced stability of LNPs with large amount of bleb formation was mainly attributed to reduced rates of lipid-mRNA adduct formation and mRNA fragmentation. Furthermore, the acidic buffer dependent stabilization was observed across different ionizable lipids with the extent dependent on the ionizable lipid head group. We envision that the induction of bleb formation via selection of appropriate acidic mixing buffers may represent a universal approach to enhance mRNA-LNPs stability and enable extended long-term refrigerated storage.

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