Rational Design of Lipid Nanoparticles for Enhanced mRNA Vaccine Delivery via Machine Learning.
Seo-Hyeon BaeHosam ChoiJisun LeeMin-Ho KangSeong-Ho AhnYu-Sun LeeHuijeong ChoiSohee JoYeeun LeeHyo-Jung ParkSeonghyun LeeSubin YoonGahyun RohSeongje ChoYoungran ChoDahyeon HaSoo-Yeon LeeEun-Jin ChoiAyoung OhJungmin KimSowon LeeJungmin HongNakyung LeeMinyoung LeeJungwon ParkDong-Hwa JeongKiyoun LeeJae-Hwan NamPublished in: Small (Weinheim an der Bergstrasse, Germany) (2024)
Since the coronavirus pandemic, mRNA vaccines have revolutionized the field of vaccinology. Lipid nanoparticles (LNPs) are proposed to enhance mRNA delivery efficiency; however, their design is suboptimal. Here, a rational method for designing LNPs is explored, focusing on the ionizable lipid composition and structural optimization using machine learning (ML) techniques. A total of 213 LNPs are analyzed using random forest regression models trained with 314 features to predict the mRNA expression efficiency. The models, which predict mRNA expression levels post-administration of intradermal injection in mice, identify phenol as the dominant substructure affecting mRNA encapsulation and expression. The specific phospholipids used as components of the LNPs, as well as the N/P ratio and mass ratio, are found to affect the efficacy of mRNA delivery. Structural analysis highlights the impact of the carbon chain length on the encapsulation efficiency and LNP stability. This integrated approach offers a framework for designing advanced LNPs and has the potential to unlock the full potential of mRNA therapeutics.