Van Poelvoorde Laura, Vanneste Kevin, De Keersmaecker Sigrid C J, Thomas Isabelle, Van Goethem Nina, Van Gucht Steven, Saelens Xavier, Roosens Nancy H C
Transversal Activities in Applied Genomics, Sciensano, Brussels, Belgium.
National Influenza Centre, Sciensano, Brussels, Belgium.
Front Microbiol. 2022 Apr 19;13:809887. doi: 10.3389/fmicb.2022.809887. eCollection 2022.
Each year, seasonal influenza results in high mortality and morbidity. The current classification of circulating influenza viruses is mainly focused on the hemagglutinin gene. Whole-genome sequencing (WGS) enables tracking mutations across all influenza segments allowing a better understanding of the epidemiological effects of intra- and inter-seasonal evolutionary dynamics, and exploring potential associations between mutations across the viral genome and patient's clinical data. In this study, mutations were identified in 253 Influenza A (H3N2) clinical isolates from the 2016-2017 influenza season in Belgium. As a proof of concept, available patient data were integrated with this genomic data, resulting in statistically significant associations that could be relevant to improve the vaccine and clinical management of infected patients. Several mutations were significantly associated with the sampling period. A new approach was proposed for exploring mutational effects in highly diverse Influenza A (H3N2) strains through considering the viral genetic background by using phylogenetic classification to stratify the samples. This resulted in several mutations that were significantly associated with patients suffering from renal insufficiency. This study demonstrates the usefulness of using WGS data for tracking mutations across the complete genome and linking these to patient data, and illustrates the importance of accounting for the viral genetic background in association studies. A limitation of this association study, especially when analyzing stratified groups, relates to the number of samples, especially in the context of national surveillance of small countries. Therefore, we investigated if international databases like GISAID may help to verify whether observed associations in the Belgium A (H3N2) samples, could be extrapolated to a global level. This work highlights the need to construct international databases with both information of viral genome sequences and patient data.
每年,季节性流感都会导致高死亡率和高发病率。目前对流行的流感病毒的分类主要集中在血凝素基因上。全基因组测序(WGS)能够追踪所有流感病毒片段的突变,从而更好地理解季节内和季节间进化动态的流行病学影响,并探索病毒基因组突变与患者临床数据之间的潜在关联。在本研究中,从比利时2016 - 2017年流感季节的253株甲型流感(H3N2)临床分离株中鉴定出了突变。作为概念验证,将可用的患者数据与该基因组数据整合,得出了具有统计学意义的关联,这些关联可能与改进疫苗和感染患者的临床管理相关。几个突变与采样期显著相关。提出了一种新方法,通过使用系统发育分类对样本进行分层来考虑病毒遗传背景,从而探索高度多样化的甲型流感(H3N2)毒株中的突变效应。这导致了几个与肾功能不全患者显著相关的突变。本研究证明了使用WGS数据追踪整个基因组突变并将其与患者数据联系起来的有用性,并说明了在关联研究中考虑病毒遗传背景的重要性。这项关联研究的一个局限性,特别是在分析分层组时,与样本数量有关,尤其是在小国的国家监测背景下。因此,我们研究了像GISAID这样的国际数据库是否有助于验证在比利时甲型流感(H3N2)样本中观察到的关联是否可以外推到全球范围。这项工作强调了构建同时包含病毒基因组序列信息和患者数据的国际数据库的必要性。