School of Computer Science and Engineering, Central South University, Changsha, China.
Mobile Health Ministry of Education-China Mobile Joint Laboratory, Changsha, China.
PLoS One. 2022 Mar 28;17(3):e0266198. doi: 10.1371/journal.pone.0266198. eCollection 2022.
The growing risk of new variants of the influenza A virus is the most significant to public health. The risk imposed from new variants may have been lethal, as witnessed in the year 2009. Even though the improvement in predicting antigenicity of influenza viruses has rapidly progressed, few studies employed deep learning methodologies. The most recent literature mostly relied on classification techniques, while a model that generates the HA protein of the antigenic variant is not developed. However, the antigenic pair of influenza virus A can be determined in a laboratory setup, the process needs a tremendous amount of time and labor. Antigenic shift and drift which are caused by changes in surface protein favored the influenza A virus in evading immunity. The high frequency of the minor changes in the surface protein poses a challenge to identifying the antigenic variant of an emerging virus. These changes slow down vaccine selection and the manufacturing process. In this vein, the proposed model could help save the time and efforts exerted to identify the antigenic pair of the influenza virus. The proposed model utilized an end-to-end learning methodology relying on deep sequence-to-sequence architecture to generate the antigenic variant of a given influenza A virus using surface protein. Employing the BLEU score to evaluate the generated HA protein of the antigenic variant of influenza virus A against the actual variant, the proposed model achieved a mean accuracy of 97.57%.
甲型流感病毒新变体不断增加的风险对公共卫生来说是最重大的。新变体带来的风险可能是致命的,正如 2009 年所见证的那样。尽管预测流感病毒抗原性的方法有了迅速的进步,但很少有研究采用深度学习方法。最近的文献大多依赖于分类技术,而没有开发出生成抗原变体 HA 蛋白的模型。然而,甲型流感病毒的抗原对可以在实验室环境中确定,这个过程需要大量的时间和劳动力。表面蛋白的变化引起的抗原转变和漂移使甲型流感病毒能够逃避免疫。表面蛋白的微小变化频率很高,给识别新出现病毒的抗原变体带来了挑战。这些变化减缓了疫苗选择和制造过程。在这方面,所提出的模型可以帮助节省识别流感病毒抗原对的时间和精力。所提出的模型利用了端到端的学习方法,依赖于深度序列到序列架构,使用表面蛋白生成给定甲型流感病毒的抗原变体。通过使用 BLEU 分数来评估所生成的抗原变体的 HA 蛋白与实际变体的匹配程度,所提出的模型在预测流感病毒 A 的抗原变体时的平均准确率达到了 97.57%。