Incorporating Contact Network Uncertainty in Individual Level Models of Infectious Disease using Approximate Bayesian Computation

Int J Biostat. 2019 Dec 10;16(1). doi: 10.1515/ijb-2017-0092.

Abstract

Infectious disease transmission between individuals in a heterogeneous population is often best modelled through a contact network. However, such contact network data are often unobserved. Such missing data can be accounted for in a Bayesian data augmented framework using Markov chain Monte Carlo (MCMC). Unfortunately, fitting models in such a framework can be highly computationally intensive. We investigate the fitting of network-based infectious disease models with completely unknown contact networks using approximate Bayesian computation population Monte Carlo (ABC-PMC) methods. This is done in the context of both simulated data, and data from the UK 2001 foot-and-mouth disease epidemic. We show that ABC-PMC is able to obtain reasonable approximations of the underlying infectious disease model with huge savings in computation time when compared to a full Bayesian MCMC analysis.

Keywords: Markov chain Monte Carlo; approximate Bayesian computation; contact networks; epidemic models; population Monte Carlo.

MeSH terms

  • Animals
  • Bayes Theorem
  • Communicable Diseases / transmission*
  • Epidemiologic Methods*
  • Foot-and-Mouth Disease / transmission
  • Humans
  • Markov Chains
  • Models, Statistical*
  • Monte Carlo Method
  • Uncertainty*