Department of Small Molecule Analytical Chemistry, Research and Early Development, Genentech Inc., 1 DNA Way, South San Francisco, California 94080, United States.
Anal Chem. 2022 Jun 28;94(25):9081-9090. doi: 10.1021/acs.analchem.2c01346. Epub 2022 Jun 14.
Lipid nanoparticles (LNPs) are the most widely investigated delivery systems for nucleic acid-based therapeutics and vaccines. Loading efficiency of nucleic acids may vary with formulation conditions, and it is considered one of the critical quality attributes of LNP products. Current analytical methods for quantification of cargo loading in LNPs often require external standard preparations and preseparation of unloaded nucleic acids from LNPs; therefore, they are subject to tedious and lengthy procedures, LNP stability, and unpredictable recovery rates of the separated analytes. Here, we developed a modeling approach, which was based on locally weighted regression (LWR) of ultraviolet (UV) spectra of unpurified samples, to quantify the loading of nucleic acid cargos in LNPs . We trained the model to automatically tune the training library space according to the spectral features of a query sample so as to robustly predict the nucleic acid cargo concentration and rank loading capacity with similar performance as the more complicated experimental approaches. Furthermore, we successfully applied the model to a wide range of nucleic acid cargo species, including antisense oligonucleotides, single-guided RNA, and messenger RNA, in varied lipid matrices. The LWR modeling approach significantly saved analytical time and efforts by facile UV scans of 96-well sample plates within a few minutes and with minimal sample preprocessing. Our proof-of-concept study presented the very first data mining and modeling strategy to quantify nucleic acid loading in LNPs and is expected to better serve high-throughput screening workflows, thereby facilitates early-stage optimization and development of LNP formulations.
脂质纳米粒 (LNPs) 是核酸类治疗药物和疫苗最广泛研究的递药系统。核酸的载药效率可能因制剂条件而异,并且被认为是 LNP 产品的关键质量属性之一。目前用于定量 LNP 中货物载量的分析方法通常需要外部标准品制备,并预先将未加载的核酸从 LNP 中分离;因此,这些方法繁琐冗长,受 LNP 稳定性和分离分析物的不可预测回收率的影响。在这里,我们开发了一种建模方法,该方法基于未纯化样品的紫外 (UV) 光谱的局部加权回归 (LWR),用于定量 LNP 中核酸货物的载量。我们训练模型自动根据查询样品的光谱特征调整训练库空间,从而稳健地预测核酸货物浓度,并以与更复杂的实验方法相似的性能对载量能力进行排序。此外,我们成功地将该模型应用于多种核酸货物种类,包括反义寡核苷酸、单指导 RNA 和信使 RNA,以及不同的脂质基质。LWR 建模方法通过在几分钟内轻松进行 96 孔样品板的 UV 扫描,并进行最小的样品预处理,大大节省了分析时间和工作量。我们的概念验证研究提出了用于定量 LNP 中核酸载量的首个数据挖掘和建模策略,有望更好地服务于高通量筛选工作流程,从而促进 LNP 配方的早期优化和开发。