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一种用于快速评估和检测重组蛋白产品中序列变异的优化方法。

An optimized approach to the rapid assessment and detection of sequence variants in recombinant protein products.

作者信息

Brady Lowell J, Scott Rebecca A, Balland Alain

机构信息

Process and Product Development, Amgen Inc., 1201 Amgen Court West, Seattle, WA, 98119, USA.

出版信息

Anal Bioanal Chem. 2015 May;407(13):3851-60. doi: 10.1007/s00216-015-8618-1. Epub 2015 Mar 21.

Abstract

The development of sensitive techniques to detect sequence variants (SVs), which naturally arise due to DNA mutations and errors in transcription/translation (amino acid misincorporations), has resulted in increased attention to their potential presence in protein-based biologic drugs in recent years. Often, these SVs may be below 0.1%, adding challenges for consistent and accurate detection. Furthermore, the presence of false-positive (FP) signals, a hallmark of SV analysis, requires time-consuming analyst inspection of the data to sort true from erroneous signal. Consequently, gaps in information about the prevalence, type, and impact of SVs in marketed and in-development products are significant. Here, we report the results of a simple, straightforward, and sensitive approach to sequence variant analysis. This strategy employs mixing of two samples of an antibody or protein with the same amino acid sequence in a dilution series followed by subsequent sequence variant analysis. Using automated peptide map analysis software, a quantitative assessment of the levels of SVs in each sample can be made based on the signal derived from the mass spectrometric data. We used this strategy to rapidly detect differences in sequence variants in a monoclonal antibody after a change in process scale, and in a comparison of three mAbs as part of a biosimilar program. This approach is powerful, as true signals can be readily distinguished from FP signal, even at a level well below 0.1%, by using a simple linear regression analysis across the data set with none to minimal inspection of the MS/MS data. Additionally, the data produced from these studies can also be used to make a quantitative assessment of relative levels of product quality attributes. The information provided here extends the published knowledge about SVs and provides context for the discussion around the potential impact of these SVs on product heterogeneity and immunogenicity.

摘要

用于检测序列变异(SVs)的灵敏技术不断发展,这些变异是由DNA突变以及转录/翻译过程中的错误(氨基酸错掺入)自然产生的,近年来人们因此越来越关注它们在基于蛋白质的生物药物中的潜在存在。通常,这些SVs的含量可能低于0.1%,这给持续且准确的检测带来了挑战。此外,假阳性(FP)信号的存在是SV分析的一个特点,需要分析人员花费大量时间检查数据以区分真实信号和错误信号。因此,关于已上市和在研产品中SVs的发生率、类型及影响的信息存在重大缺口。在此,我们报告一种简单、直接且灵敏的序列变异分析方法的结果。该策略是将具有相同氨基酸序列的抗体或蛋白质的两个样品按稀释系列混合,随后进行序列变异分析。使用自动化肽图分析软件,可根据质谱数据得出的信号对每个样品中的SVs水平进行定量评估。我们使用这种策略快速检测了工艺规模改变后单克隆抗体中序列变异的差异,以及作为生物类似药项目一部分对三种单克隆抗体进行比较时的序列变异差异。这种方法很强大,通过对整个数据集进行简单的线性回归分析,几乎无需检查MS/MS数据,就能轻松将真实信号与FP信号区分开来,即使在远低于0.1%的水平也是如此。此外,这些研究产生的数据还可用于对产品质量属性的相对水平进行定量评估。本文提供的信息扩展了关于SVs的已发表知识,并为围绕这些SVs对产品异质性和免疫原性的潜在影响的讨论提供了背景。

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