Pedotti Mattia, Simonelli Luca, Livoti Elsa, Varani Luca
Institute for Research in Biomedicine, via Vela 6, 6500 Bellinzona, Switzerland; E-Mails:
Int J Mol Sci. 2011 Jan 5;12(1):226-51. doi: 10.3390/ijms12010226.
Antibodies play an increasingly important role in both basic research and the pharmaceutical industry. Since their efficiency depends, in ultimate analysis, on their atomic interactions with an antigen, studying such interactions is important to understand how they function and, in the long run, to design new molecules with desired properties. Computational docking, the process of predicting the conformation of a complex from its separated components, is emerging as a fast and affordable technique for the structural characterization of antibody-antigen complexes. In this manuscript, we first describe the different computational strategies for the modeling of antibodies and docking of their complexes, and then predict the binding of two antibodies to the stalk region of influenza hemagglutinin, an important pharmaceutical target. The purpose is two-fold: on a general note, we want to illustrate the advantages and pitfalls of computational docking with a practical example, using different approaches and comparing the results to known experimental structures. On a more specific note, we want to assess if docking can be successful in characterizing the binding to the same influenza epitope of other antibodies with unknown structure, which has practical relevance for pharmaceutical and biological research. The paper clearly shows that some of the computational docking predictions can be very accurate, but the algorithm often fails to discriminate them from inaccurate solutions. It is of paramount importance, therefore, to use rapidly obtained experimental data to validate the computational results.
抗体在基础研究和制药行业中发挥着越来越重要的作用。由于它们的效率归根结底取决于与抗原的原子相互作用,因此研究此类相互作用对于理解它们的功能以及从长远来看设计具有所需特性的新分子非常重要。计算对接,即从分离的组分预测复合物构象的过程,正在成为一种用于抗体 - 抗原复合物结构表征的快速且经济实惠的技术。在本手稿中,我们首先描述了用于抗体建模及其复合物对接的不同计算策略,然后预测了两种抗体与流感血凝素茎区的结合,流感血凝素是一个重要的药物靶点。目的有两个:一般来说,我们想用一个实际例子说明计算对接的优点和缺陷,使用不同方法并将结果与已知实验结构进行比较。更具体地说,我们想评估对接在表征与其他结构未知的抗体的相同流感表位结合方面是否能够成功,这对制药和生物学研究具有实际意义。该论文清楚地表明,一些计算对接预测可能非常准确,但该算法常常无法将它们与不准确的解决方案区分开来。因此使用快速获得的实验数据来验证计算结果至关重要。