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eLife Assessment: Antigenic drift and subtype interference shape A(H3N2) epidemic dynamics in the United States

2024· peer-review· en· 0 citations· W4400934472 on OpenAlex· 10.7554/elife.91849.2.sa2

Why is this work in the frame?

A frame that forgets how it found something cannot be audited. These are the routes that admitted this work.

Canadian affiliationAn author listed a Canadian institution. This is the only route the usual frame has.

The three-model screen

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All three models called this out of scope.

stratum: aff_core · design weight: 5595.24 (the sample is stratified; any rate computed without the weight is wrong)
Claude Opus 4.8OUT
genre: other
about Canada: no
confidence: high

eLife peer-review assessment of an influenza epidemiology paper; it is a peer review artifact whose object is viral dynamics, not a study of peer review.

GPT-5.6 (high)OUT
genre: editorial/commentary
about Canada: no
confidence: high

The work studies influenza epidemic dynamics rather than research practice.

Grok 4.5OUT
genre: other
about Canada: no
confidence: high

eLife assessment of an influenza epidemiology paper; peer review as document, not study of peer review or research practice.

Abstract

Influenza viruses continually evolve new antigenic variants, through mutations in epitopes of their major surface proteins, hemagglutinin (HA) and neuraminidase (NA). Antigenic drift potentiates the reinfection of previously infected individuals, but the contribution of this process to variability in annual epidemics is not well understood. Here we link influenza A(H3N2) virus evolution to regional epidemic dynamics in the United States during 1997—2019. We integrate phenotypic measures of HA antigenic drift and sequence-based measures of HA and NA fitness to infer antigenic and genetic distances between viruses circulating in successive seasons. We estimate the magnitude, severity, timing, transmission rate, age-specific patterns, and subtype dominance of each regional outbreak and find that genetic distance based on broad sets of epitope sites is the strongest evolutionary predictor of A(H3N2) virus epidemiology. Increased HA and NA epitope distance between seasons correlates with larger, more intense epidemics, higher transmission, greater A(H3N2) subtype dominance, and a greater proportion of cases in adults relative to children, consistent with increased population susceptibility. Based on random forest models, A(H1N1) incidence impacts A(H3N2) epidemics to a greater extent than viral evolution, suggesting that subtype interference is a major driver of influenza A virus infection dynamics, presumably via heterosubtypic cross-immunity.Impact statement: Antigenic drift in influenza’s major surface proteins – hemagglutinin and neuraminidase – contributes to variability in epidemic magnitude across seasons but is less influential than subtype interference in shaping annual outbreaks.

Stored with the screening record, where it is evidence for the labels above.

The record

Venue
Topic
Data-Driven Disease Surveillance
Field
Medicine
Canadian institutions
McGill University
Funders
Keywords
Dynamics (music)Interference (communication)VirologyBiologyComputer sciencePhysicsTelecommunications
Has abstract in OpenAlex
yes