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Conservation region finding for influenza A viruses by machine learning methods of N-linked glycosylation sites and B-cell epitopes

机译:N键合糖基化位点的机器学习方法和B细胞表位的机器学习方法为培养区寻找病毒

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Influenza type A, a serious infectious disease of the human respiratory tract, poses an enormous threat to human health worldwide. It leads to high mortality rates in poultry, pigs, and humans. The primary target identity regions for the human immune system are hemagglutinin (HA) and neuraminidase (NA), two surface proteins of the influenza A virus. Research and development of vaccines is highly complex because the influenza A virus evolves rapidly. This study focused on three genetic features of viral surface proteins: ribonucleic acid (RNA) sequence conservation, linear B-cell epitopes, and N-linked glycosylation. On the basis of these three properties, we analyzed 12,832 HA and 9487 NA protein sequences, which we retrieved from the influenza virus database. We classified the viral surface protein sequences into the 18 HA and 11 NA subtypes that have been identified thus far. Using available analytic tools, we searched for the representative strain of each virus subtype. Furthermore, using machine learning methods, we looked for conservation regions with sequences showing linear B-cell epitopes and N-linked glycosylation. Compared to the prediction of the Immune Epitope Database (IEDB) antibody neutralization response (i.e., screening of antibody sequence regions), in this study, the virus sequence coverage was large and accurate and contained N-linked glycosylation sites. The results of this study proved that we can use the machine learning-based prediction method to solve the problem of vaccine invalidation that occurred during the rapid evolution of the influenza A virus and also as a prevaccine assessment. In addition, the screening fragments can be used as a universal influenza vaccine design reference in the future.
机译:流感A型是人类呼吸道的严重传染病,对全世界对人类健康构成了巨大威胁。它导致家禽,猪和人类的高死亡率。人类免疫系统的主要目标身份区是血凝素(HA)和神经氨酸酶(NA),甲型流感病毒的两个表面蛋白。疫苗的研究和开发非常复杂,因为流感病毒迅速发展。该研究侧重于病毒表面蛋白的三种遗传特征:核糖核酸(RNA)序列保守,线性B细胞表位和N键合糖基化。在这三种性质的基础上,我们分析了12,832公顷HA和9487个纳米蛋白序列,我们从流感病毒数据库中检索。我们将病毒表面蛋白质序列分为到目前为止已经识别的18公顷和11个Na亚型。使用可用的分析工具,我们搜索了每个病毒亚型的代表性应变。此外,使用机器学习方法,我们寻找具有显示线性B细胞表位和N键合糖基化的序列的保护区。与预测免疫表位数据库(IEDB)抗体中和响应(即,抗体序列区域的筛选),在该研究中,病毒序列覆盖率大而准确,并含有N-连接的糖基化位点。该研究的结果证明,我们可以使用基于机器学习的预测方法来解决疫苗无效的问题,这些方法发生在流感病毒的快速演变过程中,也是预期的评估。此外,筛选片段可用于未来的通用流感疫苗设计参考。

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