Wang Peng, Zhu Wen, Liao Bo, Cai Lijun, Peng Lihong, Yang Jialiang
College of Information Science and Engineering, Hunan University, Changsha, Changsha, China.
School of Mathematics and Statistics, Hainan Normal University, Haikou, China.
Front Microbiol. 2018 Oct 23;9:2500. doi: 10.3389/fmicb.2018.02500. eCollection 2018.
The rapid mutation of influenza viruses especially on the two surface proteins hemagglutinin (HA) and neuraminidase (NA) has made them capable to escape from population immunity, which has become a key challenge for influenza vaccine design. Thus, it is crucial to predict influenza antigenic evolution and identify new antigenic variants in a timely manner. However, traditional experimental methods like hemagglutination inhibition (HI) assay to select vaccine strains are time and labor-intensive, while popular computational methods are less sensitive, which presents the need for more accurate algorithms. In this study, we have proposed a novel low-rank matrix completion model MCAAS to infer antigenic distances between antigens and antisera based on partially revealed antigenic distances, virus similarity based on HA protein sequences, and vaccine similarity based on vaccine strains. The model exploits the correlations of viruses and vaccines in serological tests as well as the ability of HAs from viruses and vaccine strains in inferring influenza antigenicity. We also compared the effects of comprehensive 65 amino acids substitution matrices in predicting influenza antigenicity. As a result, we applied MCAAS into H3N2 seasonal influenza virus data. Our model achieved a 10-fold cross validation root-mean-squared error (RMSE) of 0.5982, significantly outperformed existing computational methods like antigenic cartography, AntigenMap and BMCSI. We also constructed the antigenic map and studied the association between genetic and antigenic evolution of H3N2 influenza viruses. Finally, our analyses showed that homologous structure derived amino acid substitution matrix (HSDM) is most powerful in predicting influenza antigenicity, which is consistent with previous studies.
流感病毒的快速变异,尤其是其两种表面蛋白血凝素(HA)和神经氨酸酶(NA)的变异,使其能够逃避群体免疫,这已成为流感疫苗设计的关键挑战。因此,及时预测流感抗原进化并识别新的抗原变体至关重要。然而,像血凝抑制(HI)试验这样选择疫苗株的传统实验方法既耗时又费力,而流行的计算方法灵敏度较低,这就需要更精确的算法。在本研究中,我们提出了一种新颖的低秩矩阵补全模型MCAAS,以基于部分揭示的抗原距离、基于HA蛋白序列的病毒相似性以及基于疫苗株的疫苗相似性来推断抗原与抗血清之间的抗原距离。该模型利用了血清学检测中病毒与疫苗的相关性以及病毒和疫苗株的HA推断流感抗原性的能力。我们还比较了65种综合氨基酸替换矩阵在预测流感抗原性方面的效果。结果,我们将MCAAS应用于H3N2季节性流感病毒数据。我们的模型在10倍交叉验证中的均方根误差(RMSE)为0.5982,显著优于现有的计算方法,如抗原图谱法、AntigenMap和BMCSI。我们还构建了抗原图谱并研究了H3N2流感病毒的遗传进化与抗原进化之间的关联。最后,我们的分析表明同源结构衍生氨基酸替换矩阵(HSDM)在预测流感抗原性方面最有效,这与先前的研究一致。