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Incorporating structure context of HA protein to improve antigenicity calculation for influenza virus A/H3N2

机译:整合HA蛋白的结构背景以改善A / H3N2流感病毒的抗原性计算

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摘要

The rapid and consistent mutation of influenza requires frequent evaluation of antigenicity variation among newly emerged strains, during which several in-silico methods have been reported to facilitate the assays. In this paper, we designed a structure-based antigenicity scoring model instead of those sequence-based previously published. Protein structural context was adopted to derive the antigenicity-dominant positions, as well as the physic-chemical change of local micro-environment in correlation with antigenicity change. Then a position specific scoring matrix (PSSM) profile and local environmental change over above positions were integrated to predict the antigenicity variance. Independent testing showed a high accuracy of 0.875, and sensitivity of 0.986, with a significant ability to discover antigenic-escaping strains. When applying this model to the historical data, global and regional antigenic drift events can be successfully detected. Furthermore, two well-known vaccine failure events were clearly suggested. Therefore, this structure-context model may be particularly useful to identify those to-be-failed vaccine strains, in addition to suggest potential new vaccine strains.
机译:流感的快速一致突变要求经常评估新出现的菌株之间的抗原性变异,在此期间,据报导有几种计算机内方法可促进测定。在本文中,我们设计了基于结构的抗原性评分模型,而不是先前基于序列的抗原性评分模型。采用蛋白质结构背景来推导抗原性占优势的位置,以及与抗原性变化相关的局部微环境的物理化学变化。然后整合特定位置评分矩阵(PSSM)资料和上述位置的局部环境变化,以预测抗原性差异。独立测试显示出0.875的高精度和0.986的灵敏度,并且具有发现抗原逃逸菌株的显着能力。当将此模型应用于历史数据时,可以成功检测到全局和区域性抗原漂移事件。此外,明确提出了两个众所周知的疫苗失败事件。因此,除了建议潜在的新疫苗株外,该结构背景模型对于鉴定那些将要失败的疫苗株可能特别有用。

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