Interdisciplinary Perspectives on Infectious Diseases (Jan 2011)

Pathogens, Social Networks, and the Paradox of Transmission Scaling

  • Matthew J. Ferrari,
  • Sarah E. Perkins,
  • Laura W. Pomeroy,
  • Ottar N. Bjørnstad

DOI
https://doi.org/10.1155/2011/267049
Journal volume & issue
Vol. 2011

Abstract

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Understanding the scaling of transmission is critical to predicting how infectious diseases will affect populations of different sizes and densities. The two classic “mean-field” epidemic models—either assuming density-dependent or frequency-dependent transmission—make predictions that are discordant with patterns seen in either within-population dynamics or across-population comparisons. In this paper, we propose that the source of this inconsistency lies in the greatly simplifying “mean-field” assumption of transmission within a fully-mixed population. Mixing in real populations is more accurately represented by a network of contacts, with interactions and infectious contacts confined to the local social neighborhood. We use network models to show that density-dependent transmission on heterogeneous networks often leads to apparent frequency dependency in the scaling of transmission across populations of different sizes. Network-methodology allows us to reconcile seemingly conflicting patterns of within- and across-population epidemiology.