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Reconstructing antibody dynamics to estimate the risk of influenza virus infection.

Tim K TsangRanawaka A P M PereraVicky J FangJessica Y WongEunice Y ShiuHau Chi SoDennis K M IpJoseph S Malik PeirisGabriel Matthew LeungBenjamin John CowlingSimon Cauchemez
Published in: Nature communications (2022)
For >70 years, a 4-fold or greater rise in antibody titer has been used to confirm influenza virus infections in paired sera, despite recognition that this heuristic can lack sensitivity. Here we analyze with a novel Bayesian model a large cohort of 2353 individuals followed for up to 5 years in Hong Kong to characterize influenza antibody dynamics and develop an algorithm to improve the identification of influenza virus infections. After infection, we estimate that hemagglutination-inhibiting (HAI) titers were boosted by 16-fold on average and subsequently decrease by 14% per year. In six epidemics, the infection risks for adults were 3%-19% while the infection risks for children were 1.6-4.4 times higher than that of younger adults. Every two-fold increase in pre-epidemic HAI titer was associated with 19%-58% protection against infection. Our inferential framework clarifies the contributions of age and pre-epidemic HAI titers to characterize individual infection risk.
Keyphrases
  • machine learning
  • young adults
  • risk assessment
  • human health
  • climate change