Scientific Reports (Sep 2023)

Replicating superspreader dynamics with compartmental models

  • Michael T. Meehan,
  • Angus Hughes,
  • Romain R. Ragonnet,
  • Adeshina I. Adekunle,
  • James M. Trauer,
  • Pavithra Jayasundara,
  • Emma S. McBryde,
  • Alec S. Henderson

DOI
https://doi.org/10.1038/s41598-023-42567-3
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 11

Abstract

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Abstract Infectious disease outbreaks often exhibit superspreader dynamics, where most infected people generate no, or few secondary cases, and only a small fraction of individuals are responsible for a large proportion of transmission. Although capturing this heterogeneity is critical for estimating outbreak risk and the effectiveness of group-specific interventions, it is typically neglected in compartmental models of infectious disease transmission—which constitute the most common transmission dynamic modeling framework. In this study we propose different classes of compartmental epidemic models that incorporate transmission heterogeneity, fit them to a number of real outbreak datasets, and benchmark their performance against the canonical superspreader model (i.e., the negative binomial branching process model). We find that properly constructed compartmental models can capably reproduce observed superspreader dynamics and we provide the pathogen-specific parameter settings required to do so. As a consequence, we also show that compartmental models parameterized according to a binary clinical classification have limited support.