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Modeling and Mitigation of High-Concentration Antibody Viscosity Through Structure-Based Computer-Aided Protein Design.

PLoS ONE(2020)SCI 3区

Pfizer Inc

Cited 31|Views20
Abstract
For an antibody to be a successful therapeutic many competing factors require optimization, including binding affinity, biophysical characteristics, and immunogenicity risk. Additional constraints may arise from the need to formulate antibodies at high concentrations (>150 mg/ml) to enable subcutaneous dosing with reasonable volume (ideally <1.0 mL). Unfortunately, antibodies at high concentrations may exhibit high viscosities that place impractical constraints (such as multiple injections or large needle diameters) on delivery and impede efficient manufacturing. Here we describe the optimization of an anti-PDGF-BB antibody to reduce viscosity, enabling an increase in the formulated concentration from 80 mg/ml to greater than 160 mg/ml, while maintaining the binding affinity. We performed two rounds of structure guided rational design to optimize the surface electrostatic properties. Analysis of this set demonstrated that a net-positive charge change, and disruption of negative charge patches were associated with decreased viscosity, but the effect was greatly dependent on the local surface environment. Our work here provides a comprehensive study exploring a wide sampling of charge-changes in the Fv and CDR regions along with targeting multiple negative charge patches. In total, we generated viscosity measurements for 40 unique antibody variants with full sequence information which provides a significantly larger and more complete dataset than has previously been reported.
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要点】:本文通过基于结构的计算机辅助蛋白质设计,对高浓度抗体粘度进行了建模和降低,实现了抗体浓度的提升同时保持其结合亲和力。

方法】:研究者使用结构引导的理性设计方法,优化抗体的表面静电特性,以减少粘度。

实验】:研究者进行了两轮设计,产生了40个独特的抗体变异体,并对这些变异体进行了粘度测量,使用的数据集包含了完整的序列信息,比之前报道的任何数据集都要大且完整。结果显示,通过改变净正电荷和破坏负电荷斑块,可以降低粘度,但效果极大地依赖于局部表面环境。