Documentdetail
ID kaart

oai:arXiv.org:2109.12407

Onderwerp
Quantitative Biology - Populations... Nonlinear Sciences - Adaptation an...
Auteur
Williams, Blake J. M. Ogbunugafor, C. Brandon Althouse, Benjamin M. Hébert-Dufresne, Laurent
Categorie

sciences : non linéaires 2

Jaar

2021

vermelding datum

15-05-2023

Trefwoorden
models immunity network networks epidemic structure influenza
Metriek

Beschrijving

Seasonal influenza kills hundreds of thousands every year, with multiple constantly-changing strains in circulation at any given time.

A high mutation rate enables the influenza virus to evade recognition by the human immune system, including immunity acquired through past infection and vaccination.

Here, we capture the genetic similarity of influenza strains and their evolutionary dynamics with genotype networks.

We show that the genotype networks of influenza A (H3N2) hemagglutinin are characterized by heavy-tailed distributions of module sizes and connectivity, suggesting critical-like behavior.

We argue that: (i) genotype networks are driven by mutation and host immunity to explore a subspace of networks predictable in structure, and (ii) genotype networks provide an underlying structure necessary to capture the rich dynamics of multistrain epidemic models.

In particular, inclusion of strain-transcending immunity in epidemic models is dependent upon the structure of an underlying genotype network.

This interplay suggests a self-organized criticality where the epidemic dynamics of influenza locates critical-like regions of its genotype network.

We conclude that this interplay between disease dynamics and network structure might be key for future network analysis of pathogen evolution and realistic multistrain epidemic models.

Williams, Blake J. M.,Ogbunugafor, C. Brandon,Althouse, Benjamin M.,Hébert-Dufresne, Laurent, 2021, Immunity-induced criticality of the genotype network of influenza A (H3N2) hemagglutinin

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