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高通量测量、相关分析和机器学习预测辉瑞生成抗体的 pH 值和热稳定性。

High-throughput measurement, correlation analysis, and machine-learning predictions for pH and thermal stabilities of Pfizer-generated antibodies.

机构信息

Pfizer Global BioTherapeutic Technologies, Cambridge, Massachusetts 02140, USA.

出版信息

Protein Sci. 2011 Sep;20(9):1546-57. doi: 10.1002/pro.680. Epub 2011 Jul 13.

Abstract

Generating stable antibodies is an important goal in the development of antibody-based drugs. Often, thermal stability is assumed predictive of overall stability. To test this, we used different internally created antibodies and first studied changes in antibody structure as a function of pH, using the dye ANS. Comparison of the pH(50) values, the midpoint of the transition from the high-pH to the low-pH conformation, allowed us for the first time to rank antibodies based on their pH stability. Next, thermal stability was probed by heating the protein in the presence of the dye Sypro Orange. A new data analysis method allowed extraction of all three antibody unfolding transitions and showed close correspondence to values obtained by differential scanning calorimetry. T(1%) , the temperature at which 1% of the protein is unfolded, was also determined. Importantly, no correlations could be found between thermal stability and pH(50) , suggesting that to accurately quantify antibody stability, different measures of protein stability are necessary. The experimental data were further analyzed using a machine-learning approach with a trained model that allowed the prediction of biophysical stability using primary sequence alone. The pH stability predictions proved most successful and were accurate to within pH ±0.2.

摘要

产生稳定的抗体是开发基于抗体的药物的一个重要目标。通常,热稳定性被认为是整体稳定性的预测指标。为了验证这一点,我们使用了不同的内部开发的抗体,并首先研究了抗体结构随 pH 值的变化,使用了染料 ANS。通过比较 pH(50) 值,即从高 pH 值构象到低 pH 值构象转变的中点,可以首次根据 pH 值稳定性对抗体进行排序。接下来,通过在染料 Sypro Orange 的存在下加热蛋白质来探测热稳定性。一种新的数据分析方法允许提取所有三种抗体展开的转变,并与差示扫描量热法获得的值密切对应。T(1%),即蛋白质展开 1%的温度,也被确定。重要的是,没有发现热稳定性与 pH(50)之间的相关性,这表明要准确量化抗体的稳定性,需要使用不同的蛋白质稳定性测量方法。实验数据进一步使用机器学习方法进行了分析,使用经过训练的模型,可以仅使用原始序列来预测生物物理稳定性。pH 稳定性预测最为成功,准确度在 pH ±0.2 以内。

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