Exploring the Correlation between LC-MS Multi-Attribute Method and Conventional Chromatographic Product Quality Assays through Multivariate Data Analysis.
Tingting Jiang, Francis Kwofie, Nick Attanasio, Matthew Haas, John Higgins, Hari Kosanam
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引用次数: 0
Abstract
Biotherapeutics are subject to inherent heterogeneity due to the complex biomanufacturing processes. Numerous analytical techniques have been employed to identify, characterize, and monitor critical quality attributes (CQAs) to ensure product safety, and efficacy. Mass spectrometry (MS)-based multi-attribute method (MAM) has become increasingly popular in biopharmaceutical industry due to its potential to replace multiple traditional analytical methods. However, the correlation between MAM and conventional methods remains to be fully understood. Additionally, the complex analytical workflow and limited throughput of MAM restricts its implementation as a quality control (QC) release assay. Herein, we present a simple, robust, and rapid MAM workflow for monitoring CQAs. Our rapid approach allowed us to create a database from ~700 samples, including site-specific post-translational modifications (PTMs) quantitation results using MAM and data from traditional charge variant and oxidation characterization methods. To gain insights from this database, we employ multivariate data analysis (MVDA) to thoroughly exploit the data. By applying partial least squares regression (PLSR) models, we demonstrate the ability to quantitatively predict charge variants in ion exchange chromatography (IEX) assay and oxidation abundances in hydrophobic-interaction chromatography (HIC) assay using MAM data, highlighting the interconnectivity between MAM and traditional product quality assays. These findings help evaluate the suitability of MAM as a replacement for conventional methods for release, and more importantly, contribute to enhanced process and product understanding.
由于生物制造工艺复杂,生物治疗药物本身具有异质性。为确保产品的安全性和有效性,人们采用了大量分析技术来识别、表征和监测关键质量属性(CQA)。基于质谱(MS)的多属性方法(MAM)因其可替代多种传统分析方法而在生物制药行业日益流行。然而,MAM 与传统方法之间的相关性仍有待充分了解。此外,MAM 复杂的分析工作流程和有限的通量限制了其作为质量控制(QC)释放测定的应用。在此,我们介绍了一种用于监测 CQAs 的简单、稳健而快速的 MAM 工作流程。我们的快速方法使我们能够从约 700 个样品中创建一个数据库,其中包括使用 MAM 的特定位点翻译后修饰 (PTM) 定量结果以及传统电荷变异和氧化表征方法的数据。为了深入了解该数据库,我们采用了多元数据分析(MVDA)来全面利用这些数据。通过应用偏最小二乘法回归 (PLSR) 模型,我们展示了利用 MAM 数据定量预测离子交换色谱 (IEX) 检测中电荷变异和疏水相互作用色谱 (HIC) 检测中氧化丰度的能力,突出了 MAM 与传统产品质量检测之间的相互关联性。这些发现有助于评估 MAM 作为传统释放方法替代品的适用性,更重要的是,有助于增强对工艺和产品的了解。
期刊介绍:
The AAPS Journal, an official journal of the American Association of Pharmaceutical Scientists (AAPS), publishes novel and significant findings in the various areas of pharmaceutical sciences impacting human and veterinary therapeutics, including:
· Drug Design and Discovery
· Pharmaceutical Biotechnology
· Biopharmaceutics, Formulation, and Drug Delivery
· Metabolism and Transport
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· Translational Research
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· Regulatory Science
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