PLoS Computational Biology (Sep 2021)

PopART-IBM, a highly efficient stochastic individual-based simulation model of generalised HIV epidemics developed in the context of the HPTN 071 (PopART) trial.

  • Michael Pickles,
  • Anne Cori,
  • William J M Probert,
  • Rafael Sauter,
  • Robert Hinch,
  • Sarah Fidler,
  • Helen Ayles,
  • Peter Bock,
  • Deborah Donnell,
  • Ethan Wilson,
  • Estelle Piwowar-Manning,
  • Sian Floyd,
  • Richard J Hayes,
  • Christophe Fraser,
  • HPTN 071 (PopART) Study Team

DOI
https://doi.org/10.1371/journal.pcbi.1009301
Journal volume & issue
Vol. 17, no. 9
p. e1009301

Abstract

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Mathematical models are powerful tools in HIV epidemiology, producing quantitative projections of key indicators such as HIV incidence and prevalence. In order to improve the accuracy of predictions, such models need to incorporate a number of behavioural and biological heterogeneities, especially those related to the sexual network within which HIV transmission occurs. An individual-based model, which explicitly models sexual partnerships, is thus often the most natural type of model to choose. In this paper we present PopART-IBM, a computationally efficient individual-based model capable of simulating 50 years of an HIV epidemic in a large, high-prevalence community in under a minute. We show how the model calibrates within a Bayesian inference framework to detailed age- and sex-stratified data from multiple sources on HIV prevalence, awareness of HIV status, ART status, and viral suppression for an HPTN 071 (PopART) study community in Zambia, and present future projections of HIV prevalence and incidence for this community in the absence of trial intervention.