Department of Pharmacy, Ludwig-Maximilians-Universität München, Butenandtstr. 5, 81377 Munich, Germany.
Coriolis Pharma Research GmbH, Fraunhoferstr. 18 b, 82152 Martinsried, Germany.
Mol Pharm. 2021 Jun 7;18(6):2242-2253. doi: 10.1021/acs.molpharmaceut.1c00017. Epub 2021 Apr 30.
The efficient development of new therapeutic antibodies relies on developability assessment with biophysical and computational methods to find molecules with drug-like properties such as resistance to aggregation. Despite the many novel approaches to select well-behaved proteins, antibody aggregation during storage is still challenging to predict. For this reason, there is a high demand for methods that can identify aggregation-resistant antibodies. Here, we show that three straightforward techniques can select the aggregation-resistant antibodies from a dataset with 13 molecules. The ReFOLD assay provided information about the ability of the antibodies to refold to monomers after unfolding with chemical denaturants. Modulated scanning fluorimetry (MSF) yielded the temperatures that start causing irreversible unfolding of the proteins. Aggregation was the main reason for poor unfolding reversibility in both ReFOLD and MSF experiments. We therefore performed temperature ramps in molecular dynamics (MD) simulations to obtain partially unfolded antibody domains and used CamSol to assess their aggregation potential. We compared the information from ReFOLD, MSF, and MD to size-exclusion chromatography (SEC) data that shows whether the antibodies aggregated during storage at 4, 25, and 40 °C. Contrary to the aggregation-prone molecules, the antibodies that were resistant to aggregation during storage at 40 °C shared three common features: (i) higher tendency to refold to monomers after unfolding with chemical denaturants, (ii) higher onset temperature of nonreversible unfolding, and (iii) unfolding of regions containing aggregation-prone sequences at higher temperatures in MD simulations.
高效开发新的治疗性抗体依赖于采用生物物理和计算方法进行可开发性评估,以寻找具有类似药物特性的分子,如抗聚集性。尽管有许多新颖的方法可以选择行为良好的蛋白质,但在储存过程中抗体聚集仍然难以预测。因此,需要能够识别抗聚集抗体的方法。在这里,我们展示了三种简单的技术可以从包含 13 种分子的数据集选择抗聚集的抗体。ReFOLD 测定法提供了有关抗体在化学变性剂作用下展开后重新折叠成单体的能力的信息。调制扫描荧光法(MSF)提供了导致蛋白质不可逆展开的温度。在 ReFOLD 和 MSF 实验中,聚集都是导致解折叠可逆性差的主要原因。因此,我们在分子动力学(MD)模拟中进行了温度斜坡实验,以获得部分展开的抗体结构域,并使用 CamSol 评估它们的聚集潜力。我们将 ReFOLD、MSF 和 MD 的信息与尺寸排阻色谱(SEC)数据进行了比较,SEC 数据显示了抗体在 4、25 和 40°C 下储存时是否聚集。与易于聚集的分子不同,在 40°C 下储存时抗聚集的抗体有三个共同特征:(i)在化学变性剂作用下展开后更倾向于重新折叠成单体,(ii)不可逆展开的起始温度更高,(iii)在 MD 模拟中在更高的温度下展开包含易于聚集序列的区域。