Prediction of High-Performing Spleen-Targeted Lipid Nanoparticles Using a Deep Learning Model for Robust Anticancer Immunotherapy†

Abstract

Messenger RNA (mRNA) therapeutics hold significant potential across a wide range of medical applications. LNPs are the most clinically advanced mRNA delivery vehicles, but challenges such as off-target effects and liver accumulation limit their broader clinical use. While high-throughput screening is effective for identifying more efficient and selective ionizable lipids, the substantial experimental validation required limits its practical application. In this study, we developed a deep learning model to accelerate ionizable lipid optimization by virtually predicting high-performing ionizable cationic lipids. After applying this model to a series of Bis-Hydroxyethylamine Derived Lipids (BDLs), 24 promising candidates were synthesized for delivery efficiency and organ-selectivity validation. Among them, YK-407 exhibited superior in vitro transfection efficiency and in vivo organ-specific mRNA delivery. YK-407 LNPs predominantly targeted the spleen, particularly antigen-presenting cells (APCs). In a mouse OVA tumor model, YK-407 LNPs encapsulating OVA-mRNA almost completely inhibited tumor growth and induced a robust cytotoxic CD8+ T cell response in the spleen, outperforming clinically approved SM-102 and Dlin-MC3-DMA. Additionally, we demonstrated that YK-407 LNPs exhibited minimal toxicity for both the liver and spleen, with no significant inflammatory cytokine release. These findings highlight the potential of AI in LNP development and YK-407 holds great promise for applications in mRNA-based treatments.

Supplementary files

Article information

Article type
Paper
Submitted
21 May 2025
Accepted
07 Aug 2025
First published
12 Aug 2025

J. Mater. Chem. B, 2025, Accepted Manuscript

Prediction of High-Performing Spleen-Targeted Lipid Nanoparticles Using a Deep Learning Model for Robust Anticancer Immunotherapy†

H. Zhang, J. Ma, F. Pan, Y. Liu, M. Zhang, Y. Li, C. Zhang, H. Huang, W. Zhang, D. Xiu, W. Zhang and G. Song, J. Mater. Chem. B, 2025, Accepted Manuscript , DOI: 10.1039/D5TB01217A

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