Antibodies are proteins in the immune system which bind to antigens to detect and neutralise them. The binding sites in an antibody-antigen interaction are known as the paratope and epitope, respectively, and the prediction of these regions is key to vaccine and synthetic antibody development. Contrary to prior art, we argue that paratope and epitope predictors require asymmetric treatment, and propose distinct neural message passing architectures that are geared towards the specific aspects of paratope and epitope prediction, respectively. We obtain significant improvements on both tasks, setting the new state-of-the-art and recovering favourable qualitative predictions on antigens of relevance to COVID-19.
翻译:抗体是免疫系统中的抗体蛋白质,与抗原结合,以探测抗原和中和它们。抗体-抗原相互作用中的结合点分别称为副尾和副尾,对这些地区的预测是疫苗和合成抗体发展的关键。 与先前的艺术相反,我们争辩说,对对副尾和上尾的预测器需要非对称处理,并提议不同的神经信息传递结构,分别针对对副尾和副尾的预测的具体方面。 我们在这两项任务上都取得了显著改进,确定了与COVID-19相关的新的先进抗原,并恢复了对抗原的有利定性预测。