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机器学习增强的 IgG1 knob-into-hole 双特异性抗体中二硫键和半胱氨酸相关变体的快速鉴定。

Rapid Identification of Disulfide Bonds and Cysteine-Related Variants in an IgG1 Knob-into-Hole Bispecific Antibody Enhanced by Machine Learning.

机构信息

Genentech , 1 DNA Way , South San Francisco , California 94080 , United States.

出版信息

Anal Chem. 2019 Jan 2;91(1):965-976. doi: 10.1021/acs.analchem.8b04071. Epub 2018 Dec 14.

Abstract

Bispecific antibodies are regarded as the next generation of therapeutic modalities as they can simultaneously bind multiple targets, increasing the efficacy of treatments for several diseases and opening up previously unattainable treatment designs. Linking two half antibodies to form the knob-into-hole bispecific antibody requires an additional in vitro assembly step, starting with reduction of the antibodies and then reoxidization. Analysis of the disulfide bonds (DSBs) is vital to ensuring the correct assembly, stability, and higher-order structures of these important biomolecules because incorrect disulfide bond formation and/or presence of cysteine-related post-translational modifications can cause a loss of biological activity or even elicit an immune response from the host. Despite advancements in analytical methods, characterization of cysteine forms remains technically challenging and time-consuming. Herein, we report the development of an improved nonreduced peptide map method coupled with machine learning to enable rapid identification of disulfide bonds and cysteine-related variants in an IgG1 knob-into-hole bispecific antibody. The enhanced method offers a fast, consistent, and accurate workflow in mapping-out expected disulfide bonds in both half antibodies and bispecific antibodies and identifying cysteine-related modifications. Comparisons between two versions of the bispecific antibody molecule and analysis of stressed samples were also accomplished, indicating this method can be utilized to identify alterations originating from bioprocess changes and to determine the impact of assembly and postassembly stress conditions to product quality.

摘要

双特异性抗体被认为是下一代治疗模式,因为它们可以同时结合多个靶点,提高几种疾病的治疗效果,并开辟以前无法实现的治疗设计。将两个半抗体连接形成 knob-into-hole 双特异性抗体需要额外的体外组装步骤,从抗体的还原开始,然后再氧化。分析二硫键(DSB)对于确保这些重要生物分子的正确组装、稳定性和高级结构至关重要,因为不正确的二硫键形成和/或存在半胱氨酸相关的翻译后修饰可能导致生物活性丧失,甚至引起宿主的免疫反应。尽管分析方法有所进步,但半胱氨酸形式的表征在技术上仍然具有挑战性和耗时。本文报道了一种改进的非还原肽图方法的开发,该方法与机器学习相结合,可快速鉴定 IgG1 knob-into-hole 双特异性抗体中的二硫键和半胱氨酸相关变体。增强后的方法提供了一种快速、一致和准确的工作流程,用于绘制两个半抗体和双特异性抗体中预期的二硫键,并识别半胱氨酸相关的修饰。还比较了两种双特异性抗体分子版本,并对应激样品进行了分析,表明该方法可用于鉴定源自生物工艺变化的变化,并确定组装和组装后应激条件对产品质量的影响。

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