Division of Infection Medicine, Department of Clinical Sciences, Faculty of Medicine, Lund University, Lund, Sweden.
Computational Biology and Biological Physics, Department of Astronomy and Theoretical Physics, Lund University, Lund, Sweden.
Front Immunol. 2021 Mar 22;12:629103. doi: 10.3389/fimmu.2021.629103. eCollection 2021.
Many bacteria can interfere with how antibodies bind to their surfaces. This bacterial antibody targeting makes it challenging to predict the immunological function of bacteria-associated antibodies. The M and M-like proteins of group A streptococci (GAS) exhibit IgGFc-binding regions, which they use to reverse IgG binding orientation depending on the host environment. Unraveling the mechanism behind these binding characteristics may identify conditions under which bound IgG can drive an efficient immune response. Here, we have developed a biophysical model for describing these complex protein-antibody interactions. We show how the model can be used as a tool for studying the binding behavior of various IgG samples to M protein by performing simulations and correlating this data with experimental measurements. Besides its use for mechanistic understanding, this model could potentially be used as a tool to aid in the development of antibody treatments. We illustrate this by simulating how IgG binding to GAS in serum is altered as specified amounts of monoclonal or pooled IgG is added. Phagocytosis experiments link this altered antibody binding to a physiological function and demonstrate that it is possible to predict the effect of an IgG treatment with our model. Our study gives a mechanistic understanding of bacterial antibody targeting and provides a tool for predicting the effect of antibody treatments in the presence of bacteria with IgG-modulating surface proteins.
许多细菌可以干扰抗体与其表面的结合方式。这种细菌抗体靶向性使得预测与细菌相关的抗体的免疫学功能具有挑战性。A 组链球菌(GAS)的 M 和 M 样蛋白表现出 IgGFc 结合区域,它们根据宿主环境使用该区域来反转 IgG 的结合方向。揭示这些结合特性背后的机制可能会确定在哪些条件下结合的 IgG 可以驱动有效的免疫反应。在这里,我们开发了一种生物物理模型来描述这些复杂的蛋白质-抗体相互作用。我们展示了如何通过模拟来使用该模型来研究各种 IgG 样本与 M 蛋白的结合行为,并将该数据与实验测量相关联。除了用于理解机制之外,该模型还可以用作辅助抗体治疗开发的工具。我们通过模拟模拟了当添加特定量的单克隆或混合 IgG 时,IgG 与 GAS 在血清中的结合如何改变来说明这一点。吞噬作用实验将这种改变的抗体结合与生理功能联系起来,并证明我们的模型可以预测 IgG 治疗的效果。我们的研究提供了对细菌抗体靶向的机制理解,并提供了一种在存在具有 IgG 调节表面蛋白的细菌的情况下预测抗体治疗效果的工具。