预测病毒进化的概念和方法。

ArXiv Pub Date : 2024-11-27
Matthijs Meijers, Denis Ruchnewitz, Jan Eberhardt, Malancha Karmakar, Marta Luksza, Michael Lässig
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引用次数: 0

摘要

季节性人类流感病毒进化迅速,导致每年流行的病毒株都会发生重大变化。这些变化通常是由适应性突变驱动的,尤其是抗原表位,即人类抗体所针对的病毒表面蛋白血凝素区域。在这里,我们介绍了一套一致的方法,用于对病毒进化进行数据驱动的预测分析。我们的管道整合了四类数据:(1) 在全球范围内收集的病毒分离序列数据,(2) 流行病学发病率数据,(3) 循环病毒的抗原特征,以及 (4) 固有病毒表型。通过对这些数据的综合分析,我们可以估算出循环毒株的相对适合度,并预测出长达一年的支系频率。此外,我们还获得了候选疫苗毒株对未来病毒种群保护能力的比较估计值,为先发制人的疫苗毒株选择提供了依据。从流感和 SARS-CoV-2 预测管道获得的持续更新的预测结果可在网站 https://previr.app 上查阅。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concepts and methods for predicting viral evolution.

The seasonal human influenza virus undergoes rapid evolution, leading to significant changes in circulating viral strains from year to year. These changes are typically driven by adaptive mutations, particularly in the antigenic epitopes, the regions of the viral surface protein haemagglutinin targeted by human antibodies. Here we describe a consistent set of methods for data-driven predictive analysis of viral evolution. Our pipeline integrates four types of data: (1) sequence data of viral isolates collected on a worldwide scale, (2) epidemiological data on incidences, (3) antigenic characterization of circulating viruses, and (4) intrinsic viral phenotypes. From the combined analysis of these data, we obtain estimates of relative fitness for circulating strains and predictions of clade frequencies for periods of up to one year. Furthermore, we obtain comparative estimates of protection against future viral populations for candidate vaccine strains, providing a basis for pre-emptive vaccine strain selection. Continuously updated predictions obtained from the prediction pipeline for influenza and SARS-CoV-2 are available on the website previr.app.

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