QMCELGMNJul 3, 2025

LANTERN: A Machine Learning Framework for Lipid Nanoparticle Transfection Efficiency Prediction

arXiv:2507.03209v11 citationsh-index: 53
Originality Incremental advance
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This work addresses a critical bottleneck in RNA-based therapeutics development by providing a tool for accelerating lipid design, though it is incremental as it builds on prior ML approaches.

The authors tackled the problem of predicting lipid nanoparticle transfection efficiency for RNA delivery by developing LANTERN, a machine learning framework that achieved an R² of 0.8161, significantly outperforming the existing AGILE model with an R² of 0.2655.

The discovery of new ionizable lipids for efficient lipid nanoparticle (LNP)-mediated RNA delivery remains a critical bottleneck for RNA-based therapeutics development. Recent advances have highlighted the potential of machine learning (ML) to predict transfection efficiency from molecular structure, enabling high-throughput virtual screening and accelerating lead identification. However, existing approaches are hindered by inadequate data quality, ineffective feature representations, low predictive accuracy, and poor generalizability. Here, we present LANTERN (Lipid nANoparticle Transfection Efficiency pRedictioN), a robust ML framework for predicting transfection efficiency based on ionizable lipid representation. We benchmarked a diverse set of ML models against AGILE, a previously published model developed for transfection prediction. Our results show that combining simpler models with chemically informative features, particularly count-based Morgan fingerprints, outperforms more complex models that rely on internally learned embeddings, such as AGILE. We also show that a multi-layer perceptron trained on a combination of Morgan fingerprints and Expert descriptors achieved the highest performance ($\text{R}^2$ = 0.8161, r = 0.9053), significantly exceeding AGILE ($\text{R}^2$ = 0.2655, r = 0.5488). We show that the models in LANTERN consistently have strong performance across multiple evaluation metrics. Thus, LANTERN offers a robust benchmarking framework for LNP transfection prediction and serves as a valuable tool for accelerating lipid-based RNA delivery systems design.

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