
ABSTRACT Inter-pandemic or seasonal influenza exacts an enormous annual burden both in terms of human health and economic impact. Incidence prediction ahead of season remains a challenge largely because of the virus’ antigenic evolution. We propose here a forecasting approach that incorporates evolutionary change into a mechanistic epidemiological model. The proposed models are simple enough that their parameters can be estimated from retrospective surveillance data. These models link amino-acid sequences of hemagglutinin epitopes with a transmission model for seasonal H3N2 influenza, also informed by H1N1 levels. With a monthly time series of H3N2 incidence in the United States over 10 years, we demonstrate the feasibility of prediction ahead of season and an accurate real-time forecast for the 2016/2017 influenza season. SUMMARY Skillful forecasting of seasonal (H3N2) influenza incidence ahead of the season is shown to be possible by means of a transmission model that explicitly tracks evolutionary change in the virus, integrating information from both epidemiological surveillance and readily available genetic sequences.
Risk Factors, Influenza A Virus, H3N2 Subtype, Influenza, Human, Humans, Seasons, Models, Theoretical, Biological Evolution, United States, Forecasting
Risk Factors, Influenza A Virus, H3N2 Subtype, Influenza, Human, Humans, Seasons, Models, Theoretical, Biological Evolution, United States, Forecasting
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