University of Maryland Institute for Bioscience and Biotechnology Research, Rockville, MD 20850, USA; Department of Cell Biology and Molecular Genetics, University of Maryland, College Park, MD 20742, USA.
Program in Bioinformatics and Integrative Biology, University of Massachusetts Medical School, Worcester, MA 01605, USA.
Structure. 2021 Jun 3;29(6):606-621.e5. doi: 10.1016/j.str.2021.01.005. Epub 2021 Feb 3.
Accurate predictive modeling of antibody-antigen complex structures and structure-based antibody design remain major challenges in computational biology, with implications for biotherapeutics, immunity, and vaccines. Through a systematic search for high-resolution structures of antibody-antigen complexes and unbound antibody and antigen structures, in conjunction with identification of experimentally determined binding affinities, we have assembled a non-redundant set of test cases for antibody-antigen docking and affinity prediction. This benchmark more than doubles the number of antibody-antigen complexes and corresponding affinities available in our previous benchmarks, providing an unprecedented view of the determinants of antibody recognition and insights into molecular flexibility. Initial assessments of docking and affinity prediction tools highlight the challenges posed by this diverse set of cases, which includes camelid nanobodies, therapeutic monoclonal antibodies, and broadly neutralizing antibodies targeting viral glycoproteins. This dataset will enable development of advanced predictive modeling and design methods for this therapeutically relevant class of protein-protein interactions.
抗体-抗原复合物结构的准确预测建模和基于结构的抗体设计仍然是计算生物学的主要挑战,这对生物疗法、免疫和疫苗都有影响。通过系统地搜索抗体-抗原复合物以及未结合的抗体和抗原结构的高分辨率结构,并结合确定实验测定的结合亲和力,我们组装了一个非冗余的抗体-抗原对接和亲和力预测测试用例集。该基准测试将抗体-抗原复合物的数量和我们之前基准测试中可用的相应亲和力增加了一倍以上,为抗体识别的决定因素提供了前所未有的视角,并深入了解了分子灵活性。对接和亲和力预测工具的初步评估突出了这组多样化案例带来的挑战,其中包括骆驼科纳米抗体、治疗性单克隆抗体以及针对病毒糖蛋白的广泛中和抗体。该数据集将为这一具有治疗意义的蛋白质-蛋白质相互作用类别开发先进的预测建模和设计方法提供支持。