School of Information Science and Engineering, Yunnan University, Kunming 650500, China.
State Key Laboratory for Conservation and Utilization of Bio-Resources in Yunnan, Yunnan University, Kunming 650500, China.
Viruses. 2023 Jun 29;15(7):1478. doi: 10.3390/v15071478.
Owing to the rapid changes in the antigenicity of influenza viruses, it is difficult for humans to obtain lasting immunity through antiviral therapy. Hence, tracking the dynamic changes in the antigenicity of influenza viruses can provide a basis for vaccines and drug treatments to cope with the spread of influenza viruses. In this paper, we developed a novel quantitative prediction method to predict the antigenic distance between virus strains using attribute network embedding techniques. An antigenic network is built to model and combine the genetic and antigenic characteristics of the influenza A virus H3N2, using the continuous distributed representation of the virus strain protein sequence (ProtVec) as a node attribute and the antigenic distance between virus strains as an edge weight. The results show a strong positive correlation between supplementing genetic features and antigenic distance prediction accuracy. Further analysis indicates that our prediction model can comprehensively and accurately track the differences in antigenic distances between vaccines and influenza virus strains, and it outperforms existing methods in predicting antigenic distances between strains.
由于流感病毒的抗原性迅速变化,人类很难通过抗病毒治疗获得持久的免疫力。因此,跟踪流感病毒抗原性的动态变化可为疫苗和药物治疗应对流感病毒的传播提供依据。在本文中,我们开发了一种新的定量预测方法,使用属性网络嵌入技术来预测病毒株之间的抗原距离。构建了一个抗原网络来对流感病毒 A 型 H3N2 的遗传和抗原特征进行建模和组合,将病毒株蛋白序列(ProtVec)的连续分布式表示作为节点属性,将病毒株之间的抗原距离作为边权重。结果表明,补充遗传特征与抗原距离预测准确性之间存在很强的正相关关系。进一步的分析表明,我们的预测模型可以全面、准确地跟踪疫苗和流感病毒株之间的抗原距离差异,并且在预测株间抗原距离方面优于现有方法。