Department of Engineering and Chemical Sciences, Karlstad University, SE-651 88 Karlstad, Sweden.
Department of Chemical and Process Engineering, Rzeszów University of Technology, PL-35 959 Rzeszów, Poland.
J Chromatogr A. 2023 Nov 22;1711:464446. doi: 10.1016/j.chroma.2023.464446. Epub 2023 Oct 12.
Due to their potential for gene regulation, oligonucleotides have moved into focus as one of the preferred modalities modulating currently undruggable disease-associated targets. In the course of synthesis and storage of oligonucleotides a significant number of compound-related impurities can be generated. Purification protocols and analytical methods have become crucial for the therapeutic application of any oligonucleotides, be they antisense oligonucleotides (ASOs), small interfering ribonucleic acids (siRNAs) or conjugates. Ion-pair chromatography is currently the standard method for separating and analyzing therapeutic oligonucleotides. Although mathematical modeling can improve the accuracy and efficiency of ion-pair chromatography, its application remains challenging. Simple models may not be suitable to treat advanced single molecules, while complex models are still inefficient for industrial oligonucleotide optimization processes. Therefore, fundamental research to improve the accuracy and simplicity of mathematical models in ion-pair chromatography is still a necessity. In this study, we predict overloaded concentration profiles of oligonucleotides in ion-pair chromatography and compare relatively simple and more advanced predictive models. The experimental system consists of a traditional C18 column using (dibutyl)amine as the ion-pair reagent and acetonitrile as organic modifier. The models were built and tested based on three crude 16-mer oligonucleotides with varying degrees of phosphorothioation, as well as their respective n - 1 and (P = O) impurities. In short, the proposed models were suitable to predict the overloaded concentration profiles for different slopes of the organic modifier gradient and column load.
由于其在基因调控方面的潜力,寡核苷酸已成为调节目前无法成药的疾病相关靶标的首选模式之一。在寡核苷酸的合成和储存过程中,会产生大量与化合物相关的杂质。对于任何寡核苷酸的治疗应用,无论是反义寡核苷酸(ASO)、小干扰 RNA(siRNA)还是缀合物,纯化方案和分析方法都变得至关重要。离子对色谱法目前是分离和分析治疗性寡核苷酸的标准方法。尽管数学建模可以提高离子对色谱法的准确性和效率,但它的应用仍然具有挑战性。简单的模型可能不适合处理先进的单分子,而复杂的模型对于工业寡核苷酸的优化过程仍然效率低下。因此,改善离子对色谱法中数学模型的准确性和简单性的基础研究仍然是必要的。在这项研究中,我们预测了离子对色谱中寡核苷酸的过载浓度分布,并比较了相对简单和更先进的预测模型。实验系统由使用(二丁基)胺作为离子对试剂和乙腈作为有机溶剂改性剂的传统 C18 柱组成。该模型是基于三种不同程度硫代磷酸化的 16 聚体寡核苷酸以及它们各自的 n-1 和(P=O)杂质构建和测试的。简而言之,所提出的模型适合于预测不同有机改性剂梯度斜率和柱负荷的过载浓度分布。