Predictive evolutionary modelling for influenza virus by site-based dynamics of mutations.
Jingzhi LouNicholas C WuLirong CaoInchi HuShi ZhaoZigui ChenRenee Wan Yi ChanPeter Pak-Hang CheungHong ZhengCaiqi LiuQi LiMarc Ka Chun ChongYexian ZhangEng-Kiong YeohPaul Kay Sheung ChanBenny Chung-Ying ZeeChris Ka Pun MokMaggie Haitian WangPublished in: Nature communications (2024)
Influenza virus continuously evolves to escape human adaptive immunity and generates seasonal epidemics. Therefore, influenza vaccine strains need to be updated annually for the upcoming flu season to ensure vaccine effectiveness. We develop a computational approach, beth-1, to forecast virus evolution and select representative virus for influenza vaccine. The method involves modelling site-wise mutation fitness. Informed by virus genome and population sero-positivity, we calibrate transition time of mutations and project the fitness landscape to future time, based on which beth-1 selects the optimal vaccine strain. In season-to-season prediction in historical data for the influenza A pH1N1 and H3N2 viruses, beth-1 demonstrates superior genetic matching compared to existing approaches. In prospective validations, the model shows superior or non-inferior genetic matching and neutralization against circulating virus in mice immunization experiments compared to the current vaccine. The method offers a promising and ready-to-use tool to facilitate vaccine strain selection for the influenza virus through capturing heterogeneous evolutionary dynamics over genome space-time and linking molecular variants to population immune response.
Keyphrases
- genome wide
- immune response
- copy number
- endothelial cells
- physical activity
- body composition
- randomized controlled trial
- dna methylation
- escherichia coli
- quality improvement
- systematic review
- type diabetes
- metabolic syndrome
- big data
- single cell
- toll like receptor
- dendritic cells
- electronic health record
- skeletal muscle
- adipose tissue
- machine learning
- cross sectional
- deep learning
- pluripotent stem cells
- induced pluripotent stem cells